专利摘要:
Summary The present invention presents a method and system for estimating parameters which affect a chore resistance driving race for the vehicle. The system includes a model unit and a fixing unit. The model unit is arranged to define a longitudinal vehicle model, which comprises representations of forces with horizontal action on the vehicle at valid caftans. Determination unit is arranged to establish an estimated weight test for the vehicle and to establish a representation of an estimated rolling resistance force acting on the vehicle. The determination unit is arranged to base the determination of the weight most and the representation of the rolling resistance force Fgh on the longitudinal vehicle model together with known values for the representations of the forces with horizontal action on the vehicle to minimize a model error in the vehicle model.
公开号:SE1350172A1
申请号:SE1350172
申请日:2013-02-14
公开日:2014-08-15
发明作者:Jörgen Hansson
申请人:Scania Cv Ab;
IPC主号:
专利说明:

TECHNICAL FIELD The present invention relates to a method for estimating parameters which affect a chore resistance force for a vehicle according to the preamble of claim 1 and a system for estimating parameters which affect a chromium resistance force for a chromium resistance force according to claim 21. .
The present invention also relates to a computer program and a computer program product, which implement the method according to the invention. Background The following background description constitutes a description of the background to the present invention, which must not constitute prior art.
Control systems comprising one or more regulators are currently used for controlling a large number of different types of systems in a vehicle, for example systems for gear selection and cruise control. The control is based on a number of parameters, which are necessary for the control systems to be able to make calculations and / or make the right decision.
A weight must be given to a vehicle, where the vehicle can be made of a vehicle stay, constitutes an important parameter in many functions in a vehicle's control system. The weight of the vehicle must significantly affect the vehicle in many situations, which makes it very important to be able to correctly estimate this weight. The weight of the vehicle typically measures in dynamic models of the vehicle, which, for example, describe forces acting on the vehicle. Such models can be used for a number of different calculations and controls in the vehicle, for example when controlling braking systems in the vehicle. For a vehicle which can transport large loads, such as buses, which can transport a starting number of people, or trucks, which can transport different types of loads with large weights, the weight can vary considerably. For example, an unladen truck weighs considerably less On the same truck when it Or is maximally loaded. An empty bus also has considerably less mass on the same bus when it is full of passengers. For example, for a passenger car, the variations are much smaller than for vehicles intended to transport large loads, but Oven has the difference between an empty and a fully loaded passenger car, where the fully loaded passenger car Oven can include a packaged and loaded slap, can be relatively large in terms of to the legal weight of the car.
A rolling resistance F -rou that the vehicle experiences is also an important parameter for the steering system in the vehicle. Also the slope of a rock section where the vehicle is located sip and / or has a rock section in front of the vehicle and an air resistance parameter Gar related to the air resistance Fair the vehicle can be important parameters for the control systems in several applications.
The vehicle mass rn, the rolling resistance force F the air resistance parameter car and the vagal slope a affect a vessel resistance force Fdri, ingress for the vehicle, which means that one or more of the vehicle's weight rn, the rolling resistance parameter Fro, the air resistance parameter Gar and the vagal slope a are important parameters. Automatic shaft selection is made, for example, in an automatic gearbox manual gearbox, for which it is important to be able to determine a current vessel resistance Fdri, is included and thus which gear shaft is to be selected in a current case. 3 How a topography for a road section affects the vehicle there also strongly depends on the road slope and the mass of the vehicle, since the weight m and the road slope is decisive for how much the vehicle is accelerated or decelerated by a downhill or uphill slope. Both the weight of the vehicle and a carriageway slope for a carriageway section are therefore important parameters even in speedometers which take into account the topography of a carriageway section, so-called Look-Ahead cruise control, where the size of a requested engine torque at a time depends on how future carriageway section topography will affect the speed of the vehicle.
Correct and robust calculations of the vehicle's torque resistance Fdriv is thus important for several vehicle systems, such as for automatic gear selection, which needs to know how difficult it is to drive the vehicle to be able to choose electric gear, or for Si called economic speed, which with the help of map data and GPS (Global Positioning System) try to optimize the vehicle speed when reversing, where the correctly estimated vehicle parameters are needed to be able to make simulations of the vehicle's upcoming speed. A force that reappears in, for example, these applications for gear selection and speed control, ie the force resistance Fdrivingresr which describes the sum of the external forces that must be overcome to accelerate the car or to maintain a constant speed. In other words, correct estimates of the driving resistance Fdriving are absolutely necessary to ensure correct function for the systems in the vehicle which use the driving resistance force Fdrivingres in their calculations. 4 Vessel driving resistance F -drivingres is the sum of rolling, aerial and inclined resistance forces and can be valid vessel cases written as: Fdrivingres = Fair + M. • g • sincc + m • g • Cr, (equ. 1) or alternatively as: Fdrivingres = Ftrac in • a • (eq. 2) dar a is a vehicle acceleration; m is the total vehicle weight; g is the gravitational constant; Cr. is a rolling resistance coefficient; Fair = Cair • V2 is the air resistance force, ddr C -air is the air resistance parameter; a is a current vdglutning; and Ftrac dr a traction force.
Irrespective of how the vehicle resistance Fdriv is included is determined, with equation 1 or 2, knowledge of the vehicle weight is therefore required, which as a rule cannot be met on the vehicle and therefore requires a slight form of estimation. If Equation 1 is used in the determination, knowledge is also required in a number of other parameters than the vehicle weight, such as the rolling resistance force Frou, which is lost.
Brief description of the invention There are today several methods which are applied to estimate the vehicle mass / 11. Such a method uses information from an air suspension system in the vehicle. The air suspension system measures axle pressure on all axles that have air suspension, and reports the load corresponding to this axle pressure to a control unit, which based on this load can calculate the mass of the vehicle. This method works well if all axles are air-suspended. However, the method works unsatisfactorily, or not at all, if one or more axles lack air suspension. This method is, for example, particularly problematic for vehicle paths that include slips or trailers, which do not report axle load. This can relatively often be dangerous if the more or less unknown slip is often connected to the vehicle stage when using the vehicle.
This method is also problematic during operation of the vehicle, as the axle pressure varies in the vehicle due to irregularities in the road surface, which can lead to the weight estimate being incorrect due to the varying axle pressure.
Other known methods for mass estimation consist of acceleration-based mass estimates. These take advantage of the fact that it is possible to calculate the mass based on a force the engine applies to the vehicle and an acceleration this force results in. The force pushes the engine here in the vehicle, but if these methods the acceleration needs to be fed or estimated.
According to one method, the acceleration is estimated by performing a derivation of the vehicle speed. This method works well at high accelerations, that is, ph liga gears at relatively low speeds, but it is a disadvantage of the method that it is affected by the vagal slope, because the vagal slope is an unknown parameter of the method. 6 According to another method, the acceleration is estimated using an accelerometer. The accelerometer-based method has the advantage that the acceleration is fed directly. However, only a limited number of today's vehicles include an accelerometer, which means that this method is not generally applicable to all vehicles.
According to another method, the acceleration during shifting is estimated. This method uses the assumption that the vessel resistance dr unchanged during a shift and therefore the vehicle's acceleration before, during and after shifting must determine the weight of the vehicle. This method results in very unsatisfactory estimates of the vehicle mass.
The acceleration-based mass estimates generally have disadvantages in that certain basket exposures must be met in order for a good estimate to be performed. It is not ails certain that these hazardous exposures are met during a harvest, so a good mass estimate is not possible. For example, the acceleration-based mass estimates require a sufficiently strong acceleration to give a reliable result. If a side of sufficiently strong acceleration does not occur during a run, such as if the vehicle starts the run on a downhill slope, for example from a petrol station at an exit to a motorway, and you with the help of the downhill slope can accelerate relatively calmly then keep essentially a constant speed during the rest of the ride, these methods often do not provide a good estimate of vehicle weight. Even in the case that the vehicle is so heavy that the engine does not have the power to give a sufficiently strong acceleration, these methods often give a substandard estimate of the vehicle weight.
Previously known weight estimates also often require assumptions about the rolling resistance to be made, for example that the rolling resistance has a predetermined constant value or that it can be neglected. This detracts from the accuracy of the weight estimates, as such assumptions are not always accurate.
The rolling resistance Fro, or the rolling friction as it is also called, depends, among other things, on the material of the tires and the type of surface. A gravel road, for example, gives stiffer rolling resistance to asphalt. The rolling resistance force F -roll can, according to previous kanda lasings, be determined by assuming that everything except the rolling resistance force Frou Or edge in a dynamic vehicle model and then letting the rolling resistance force u u be formed by the remaining forces in the model. The rolling resistance Fro can also be calculated from data in two operating points am vehicle weight in, acceleration a, and vagal slope a, are known at these two different times.
The road slope a can be obtained based on a map together with GPS information (Global Positioning System), on radar information, on camera information, on information from another vehicle, on positioning information and road information previously stored in the vehicle, or on information obtained from traffic systems related to the said vagavsnitt. The road inclination a can also be determined in the vehicle by using an accelerometer, a force equation and / or a shear change. In systems where information exchange between vehicles is used, a vehicle inclined to an estimated by a vehicle can be provided to other vehicles, either directly, or via an intermediate unit such as a database or the like.
The air resistance force Fair can, for example, in the same way as the rolling resistance force Frou above, be calculated based on data in two operating points about the vehicle weight rn, the acceleration a, and the vagal inclination a, kanda at these two different times. Previously known ways of determining the air resistance Fair has often assumed that the air resistance Fair consists of a constant air resistance parameter Cair multiplied by the vehicle speed squared, Fair = Cat, .v2. This assumption, which is thus based on a constant air resistance parameter Cab., Can give incorrect values for the air resistance force Fair cm for example an air resistance coefficient, which affects the air resistance parameter car, actually varies in size, so that the air resistance parameter car is not always constant.
In summary, previous estimates, which are performed to determine the driving resistance Fcjrivingrcs, the viii saga estimates of the vehicle mass rn, the rolling resistance Frog, the air resistance Fair and vdglutningen, are fraught with coral-dependent problems and / or spreading problems.
In several of the estimation methods, what is to be estimated directly is calculated, which often requires that the vehicle is in an approved driving range, located in a static operating point with a small variation in the measurement signals. This means that if the cases do not arise, no new estimates will be obtained. If no approved choir falls occur, for example, after a reloading, it can take a long time before the coverage of the vehicle mass reaches, and thus the choir resistance Fdrivingres becomes correct again.
Several of the methods sample data for a while when approved choruses occur. Then an estimate is made of this sampled data, after which the estimated value is sent out and the previously sampled data is discarded and the method starts. The estimate does not improve the longer the time passes, but depends on the quality of the current data used for that particular estimate. As a result, a proliferation problem arises which 9 must be read afterwards, for example by averaging the estimates that are sent out.
It is an object of the present invention to solve the above-mentioned problems.
This object is achieved by the above-mentioned method according to the characterizing part of claim 1. The purpose is also achieved by the above-mentioned system according to the characterizing part of claim 21. The object is also achieved by the above-mentioned computer program and computer program product.
According to the present invention, a longitudinal vehicle model is defined so as to include representations of forces having a horizontal action on the vehicle in the event of a valid vessel fall. Then an estimated vehicle weight Test is determined and a representation of an estimated rolling resistance FM gets the vehicle. When determining the vehicle weight residual and the representation of the rolling resistance force FM, a model error is used for the longitudinal vehicle model in such a way that the longitudinal vehicle model is used together with the standard representations of the forces in the model to minimize the model error. The model error is the tel that is obtained from the longitudinal vehicle model as representations of known forces and the parameters to be estimated are included in the vehicle model.
The concept of knowing the values of the representations of the forces includes has and in this application the values calculated in the representations of the forces, which have been calculated based on measured parameters and / or assumptions in parameters which are related to the representations of the forces. Thus, according to the invention, the longitudinal vehicle model is used together with calculations of the known values obtained by the representations of the forces, based on measured and / or assumed parameters which are related to the representations of the forces in the model, to minimize model error. the known values for the representations of the forces dr infarda in the model.
When the vehicle is newly manufactured, or for example the control unit which calculates the vehicle weight leftover and the representation of the rolling resistance force FrA is replaced, there is no evidence to base it on estimates of, for example, the weight most and the representation of the rolling resistance force F. = gars. If the known value is completely missing, the standard values are determined for danger, for example the weight most, and the representation of the rolling resistance force F, in which the more accurate values are given, is estimated the aura for the first time. After the aura first, the value for the weight the most and the representation of the rolling resistance Fgri has been estimated, the values obtained in the previous estimate are used. As a result, more and more accurate values are obtained for, for example, the weight residual and the representation of the rolling resistance F.
The present invention provides a simultaneous and high quality estimate of the mass most and of the representation of the rolling resistance force F, which provides better performance than previous known weight estimates which often require assumptions of the rolling resistance, for example that the rolling resistance has a color constant or can be summed.
According to one embodiment of the present invention, a longitudinal vehicle model is defined as fitting into a recursive least-square method. The recursive method used has the potential to estimate the mass most and the representation of 11 rolling resistance Ff that minimizes the error in this vehicle model. Using a recursive least-squares method has significantly increased performance when estimating.
The least squares algorithm gives a better estimate the longer the time has elapsed and the more food data it has made available. Tests have shown that the algorithm very often swings very close to the true weight of the vehicle.
The estimated mass of grass and the representation of the rolling resistance force Fiez is used, among other things, for vessel resistance calculations in automatic gear selection. The estimated mass certificate is used above for calculations in speeding of various kinds. As a result, the present invention results in more optimized gear selections and speeds in the vehicle.
In addition to estimating the mass size and the representation of the rolling resistance force, it is possible to utilize the present invention. Additional parameters are also estimated.
According to one embodiment, in addition to the mass arst and the representation of the rolling resistance FM, Oven air resistance parameter Cgf is estimated by a simultaneous estimation of the vehicle weight a / est, the representation of the rolling resistance L.estest and the air resistance parameter CRt C. epresen caration of the air resistance Fair depends on the square speed of the vehicle Fair = Cair • V2 r dar car is the air resistance parameter, which means that changes in vehicle speed above give large changes in the representation of the air resistance force Fair.
The air resistance parameter Cair depends mainly on the front area of the vehicle and on the coefficient of air resistance of the vehicle. The coefficient of air resistance can be changed, for example if new equipment is mounted or dismantled on the vehicle, such as 12 light ramps or other equipment, for example decoration. The front area can be used by others, for example if a trailer is connected to or by the vehicle and you, for example, protrude outside the wheelhouse.
According to one embodiment, in addition to the mass test and the representation of the rolling resistance FM, an agglomeration is also estimated by a simultaneous estimation of the vehicle weight met, the representation of the rolling resistance Foch aglutningen a '.
According to one embodiment, in addition to the mass attestation and the representation of the rolling resistance FM, the air resistance parameter and the slope inclination are estimated by a simultaneous estimation of the vehicle weight certificate, the representation of the rolling resistance F, the air resistance parameter CJ and the slope inclination. in size di feeds gars. Since the traction force F -trac naturally changes in size during normal churning, the present invention will work as the choice for normal churning of the vehicle. Thus, the present invention utilizes a problem with prior art solutions to its vehicle portion.
The present invention is less carfall-dependent than previous readings, since the method will have as much food data as possible to make a good estimate. This means that the method can be carried out in principle all the time the vehicle is driven. This is a stark difference from previous known estimates that require special vessel cases where you sample data for a while and then estimate a value that can be good or poor, and without knowledge of the quality of the estimate. 13 A covariance matrix used in the recursion describes the variance in the estimate and can therefore be used as a quality measure in the estimate itself.
BRIEF DESCRIPTION OF THE DRAWINGS The invention will be further elucidated below with reference to the accompanying drawings, in which like reference numerals are used for like parts, and in: Figure 1 shows a flow chart of a method according to the present invention, Figure 2 shows a graphical illustration of the algorithm of the invention. 3a-d show simulation results, Figure 4 shows a control unit.
Description of Preferred Embodiments Figure 1 shows a flow chart of the process of the present invention, in which the process may be carried out by a system of the present invention.
In a first step 101 of the process, which can be performed, for example, by a model unit, a longitudinal vehicle model is defined. This vehicle model includes representations of forces with horizontal action on the vehicle in the event of a valid vessel fall.
According to an embodiment of the present invention, the valid chord cases are the chord cases when the vehicle model is valid, i.e. a correct description of the vehicle.
The vehicle model Or valid in a gravitational force acting on the vehicle Or negotiable and in a traction force Ftra, acting on the vehicle Or kdnd. Since the oscillating force is negligible, there are thus essentially no lateral forces in the vehicle, for example in the form of centrifugal-like forces in which the vehicle oscillates, at the valid corals. The valid chirps, in which the force of gravity is negligible, therefore include, for example, choruses in which the vehicle is driven essentially straight ahead, that is to say essentially without turning. In the case of valid corals, there should also be virtually no extra frictional forces related to turns, where these extra frictional forces arise, for example, at the wheels of vehicles with several pairs of wheels at sharp turns, for example by pulling the wheels sideways, which gives a higher ground friction. These extra frictional forces typically occur for vehicles with several pairs of wheels, such as vehicles with a trailer, slip or several wheel axles.
The vehicle model is therefore valid if the lateral forces acting on the vehicle are dangerous and if a traction force acting on the vehicle is dangerous. The traction force F -trac is hdr and in this document the total driving or braking force acting on the vehicle. The traction force Ftrac, for example, is the cheek for the caftan in which the vehicle is propelled by the propulsion provided by an internal combustion engine, such as a petrol engine or a diesel engine, or an electric machine, which drives the propulsion there.
The traction force F -trac is also a kind of crank case including braking with additional brakes, for which the braking force is in the cheek, for example in exhaust braking, retarder braking or braking by utilizing a braking torque provided by an electric machine.
In a second stage of the procedure, which can be carried out, for example, by a determining unit, an estimated weight is determined next to the vehicle and a representation of an estimated rolling resistance force acting on the vehicle.
The determination of the estimated weight residue and the representation of the estimated rolling resistance Fgh is performed by using the longitudinal vehicle model together with the standards available for the representations of the forces in the vehicle model to minimize a model error in the longitudinal vehicle model defined in the first step 101. The known values for the representations of the forces may be based on measured and / or assumed parameters which Or are related to the representations of the forces. Measured parameters refer to and in this document have parameter values which, for example, are measured during operation of the vehicle, where this feeding can take place in real time. The estimation of the weight RC 'and the representation of the rolling resistance by minimizing the model error will be described in more detail below.
In a third step of the procedure 103, a utilization unit then uses the estimated weight RC 'for the vehicle and the representation of the estimated rolling resistance F. According to one embodiment, the utilization comprises control systems and other systems which utilize the vehicle weight RC' and / or the representation of the rolling resistance FM as parameters. in their calculations, these new estimated values are provided, so that the calculations can be based on the values estimated according to the invention for the vehicle weight RC 'and / or the representation of the rolling resistance force F.
By the method according to the present invention a high quality and simultaneous estimation of both the vehicle weight RC 'and the representation of the rolling resistance is obtained which can be carried out almost all the time as the vehicle is in an approved caftan, which in normal cornering is very common.
The method for the estimation according to the invention can, according to one embodiment, be carried out in response to an indication that new estimates of the vehicle weight are being tested and of the representation of the estimated rolling resistance force from oU should be increased and / or accelerated due to changes. Such an indication may, according to an embodiment of the present invention, be the result of a method in which a longitudinal vehicle model is defined so as to include representations of forces having a horizontal action on the vehicle at a valid caftan. Since a change in travel is determined, one or more of a representation of a real rolling resistance FQ and a real weight have not occurred before the vehicle was carried. In this determination, a determination of the representations of the forces having a horizontal effect on the vehicle takes each other away from an estimated weight and a representation of an estimated rolling resistance force FQ is introduced in the longitudinal vehicle model. According to one embodiment, a residual-based detector is provided to identify travel changes if the weight is tested and / or has the representation of the rolling resistance force F. the reinforcement in the least squared estimate, whereby the estimate more quickly reaches a correct value On the reinforcement has been retained unchanged. Correspondingly, the procedure for the estimation according to the invention can be carried out in response to an indication that new estimates of the air resistance parameter C, and the slope are expected to be raised and / or accelerated due to changes in travel.
According to an embodiment of the present invention, the longitudinal vehicle model is based on Newton's second law, that is to say on the so-called force equation. 17 If a vehicle does not swing or is affected by an unknown driving or braking force, the external forces affecting the vehicle are based on air resistance, rolling resistance and gravity due to vaginal inclination.
These forces can be used to model the vehicle according to Newton's second law as the representations of the forces constitute forces in Newton's second law so that the longitudinal motion of the vehicle can be described as: in • a = Ftrac - Fair - Fs lope - Fro11 (eq. 3) 10About Frou - in. 9. Cr; and (eq. 4) Fslope = in • g • sina; (eq. 5) equation 3 can be written as: m • a = Ftrac Fair M. • g • sina - m • g • Cr,; (eq. 6) where a is the above-mentioned vehicle acceleration, which can be calculated based on the vehicle speed, for example by using speed sensors on the wheels of the vehicle, or can be determined by means of an accelerometer; - m is the total vehicle weight, which is estimated; the gravitational constant; -Cr is the above-mentioned rolling resistance coefficient, which can be estimated or assumed to be constant; Fair = Cair • v2 is the air resistance force, which is based on an air resistance parameter car times the speed we square, where the air resistance parameter Gar can be estimated or created 18 a model for in which the air resistance parameter Gar can be assumed to be constant, and where the speed v is measurable by speed sensor pi vehicle wheels; a is the current vdglutningen, which for example can be measured indirectly with an accelerometer or obtained Iran GPS with map data; Ftrac is the traction force, which is the total driving or braking current torque converted to a total driving or braking external force by means of gear ratios in the vehicle's driveline and wheel radius. Current moments are typically provided by the torque sources that affect the vehicle such as a combustion engine, an electric machine or auxiliary brakes, such as retarder or exhaust brakes. Thus, the traction force Ftrac can be calculated based on reports from the side torque sources at the current gears of the driveline are known and at the wheel radius is known or can be estimated. The traction force can then be calculated according to Ftrac = Ttrac • ngear box • nfinal drive irwheel ° M moment Ttrac is created danger gearbox, ngearbox and nfinal drive output gears for the gearbox and the final gear and rw heel is the wheel radius.
According to one embodiment of the present invention, the longitudinal vehicle model is based on Newton's second law of rotational speeds, inertia and torques, also called Newton's second law of rotation. The representations of the forces with a horizontal effect on these rotational speeds, inertia and moments are thus based. Torque and velocities in the driveline depend for Newton's second law on rotation of a choice of reference point in the driveline, that is to say at which point in the driveline the torque equilibrium is calculated, due to the changes of the driveline, for example in the gearbox. 19 For a reference point at the wheel of the vehicle, the longitudinal motion of the vehicle can be expressed as:, 2 m • wheel • thwheel = Ttrac Tresistance (eq. 7 days - m Or total vehicle weight, which is estimated; rlowet Or a wheel radius for the vehicle wheel; thwheel Or angular acceleration for current reference point, the viii saga for the vehicle's wheel axle di the reference point in Equation 6 Or at the vehicle's wheel.The angular acceleration thwheel can be calculated, for example, by a derivative of the signal from a speed sensor located somewhere along the driveline at the gears between the sensor position and the reference point Or kanda. For example, in modern trucks, there are often speed sensors on the engine and after the gearbox. Vehicles with some form of automatic transmission system often also have sensors in the gearbox. Vehicles with an electric braking system often have sensors on one or more of the wheels. Angle acceleration can also be calculated with an accelerometer. Or kand; Ttrac is a total traction, which constitutes de t total driving or braking torque geared to the current reference point, the viii saga to the vehicle wheel for Equation 6; and Tresistance Or a total coefficient of resistance, which in the reference point at the wheel of the vehicle Or the coefficients of force Fair, Fsiope and Fro u multiplied by the wheel radius rwheel according to: Tresistance = (Fair slope Froll) • rwheel dar Fair, Fsiope and Frou are defined as described above p1 sO according to Fair = Cair • V2 and in equations 4-5.
For Newton's second law of rotation, the traction torque Ttrac trac depends on the location of the reference point for the equilibrium, since the traction torque Ttrac Or is a sum of the torques affecting different points along the driveline. Different actuators in the vehicle apply torque at different points in the driveline, which means that the torque must be scaled with any gear ratios and efficiencies between the point where the torque affects the driveline and the reference point when the total traction torque Ttrac in the reference point is to be calculated. For example, the torque of the engine acts before the gearbox while a retarder circuit torque acts after the gearbox, which means that different gear ratios are used for the engine and the retarder circuit when calculating the total traction torque Ttrac. The chore resistance torque Tresistance also gears along the driveline.
One skilled in the art will recognize that the traction torque Ttrac is changed by gears along the driveline and / or that the vessel resistance torque Tres istance can be scaled along the driveline, from the engine to the vehicle wheel, and that equation 6 applies generally to all different reference points along the driveline, while the expression for the traction torque and / or the vessel resistance moment T resistance has different appearance and scaling respectively different points of reference.
The position of the speed sensor also affects the equilibrium and thus the appearance of the equilibrium expression, since the speed must also be scaled back to the current reference point. If the speed sensor Or is located between the engine and the reference point, for which the equilibrium is calculated, the torque equilibrium, and thus the vehicle model, can generally be described as: m r22 wheel // wheelToRef • (i) sensor / nsensorToRef = Ttrac TresistancelnwheelToRef needs to be scaled by 21 reference points (eq. 8) there is a total vehicle weight, which is estimated; rwiteet ar fordonets hjuiradie; - di sensor dr an angular acceleration for a current position far the speed sensor; Ttrac draws a total traction; and Tresistance is a total chore resistance moment; T resistance = (Fair + Fslope + Fro11) • rwheel r where Fair, F -slope and Frou are defined in the manner described above according to Fair r = -air • V2 and in equations 4-5; nsensorToRef Or a gear ratio between the speed sensor and the reference point, including any losses in the gears; and nwheelToRef is a gear ratio between the wheels and the reference point, including any losses in the gears.
If the speed sensor is placed between the reference point, for which the equilibrium is calculated, and the wheels, the torque equilibrium, and thus the vehicle model, can generally be described as: m • r2 / n2 wheel wheelToRef • thsensor • nsensorToRef = Ttrac - Tresistance / nwheelToR). is the total vehicle weight, which is estimated; 22 rwheeldr wheel radius of the vehicle; (;) sensor is an angular acceleration for a current position of the speed sensor; Ttrac is a total traction; and Tresistance is a total chore resistance moment; T resistance = (Fair + Fslope + Frog) • rwheel ddr Fair, F - slope and Frou are defined in the manner described above according to Fair = Cair • equations 4-5; nsens orToRef is a gear ratio between the speed sensor and the reference point, including any losses in the gears; and nwheelToRef is a gear ratio between the wheels and the reference point, including any losses in the gears.
Since the longitudinal vehicle model is based on Newton's second law of rotation, the representations of the forces of torque correspond to the same traction force Ftrac corresponds to the traction torque Ttrac and the chore resistance force Fdrivingres corresponds to the torque resistance torque Tresistance. In other words, the rolling resistance force corresponds to the rolling resistance element Trou, the air resistance force Fair to the air resistance moment Tair and a force caused by high-velocity Fsiope corresponds to a moment caused by high-velocity Tstapc. The acceleration a corresponds to the angular acceleration cb.
The following is described how the estimation of, among other things, the vehicle weight est and the representation of the rolling resistance force F7 according to the invention is carried out when Newton's second law based on forces V2 and in 23 is used for the vehicle model, the same . Corresponding estimation of, for example, the vehicle weight next and the representation of the rolling resistance force Fr% according to the invention can also be performed when Newton's second law based on rotation is used as a vehicle model, the representations of the forces being rotational speeds, inertia and torques, as described above. In other words, the estimation of, for example, the vehicle weight nest and the representation of the rolling resistance force FreA according to the invention can be derived from any of equations 7-9. A person skilled in the art can, based on the above description of Newton's second law of rotation, deduce procedural steps and / or expressions corresponding to the below described estimation of the vehicle weight next and the representation of the rolling resistance Fest according to the invention also Newton's second law of rotation.
Thus, as described above, the known values of the representations of the forces are the longitudinal vehicle model, for example described in Equation 6, measured or determined by means of a model.
The frame resistance model can be obtained by a reformulation of the rolling resistance model in equation 6: a + g • sina - 1 mestfrac - Fair) u (eq. 10) where a is the above-mentioned vehicle acceleration; nrst is a total vehicle weight, which is to be estimated; 24 g dr above mentioned gravity constant; Crst dr the rolling resistance coefficient, which is to be estimated; Fair dr above mentioned air resistanceAndskraft; a is the above-mentioned vdglutning; - Ftrac dr above ndmnda traction force.
The expression in equation 10 is particularly exemplary using a recursive least-square estimate to minimize the model error, which will be described in more detail below. The division with the vehicle mass to be estimated as residual is used here to separate the rolling resistance coefficient Crt from the vehicle mass next in equation 10.
As shown in Equation 10, the representation of the rolling resistance force F1 is estimated by first determining an estimated rolling resistance coefficient CTA, after which the representation of the rolling resistance force is calculated that according to: F reoS [l = CreSt ineSt According to an embodiment of the invention, the rolling resistance is most a minimization of the model error, that is to say by a minimization of the error obtained for the longitudinal vehicle model in which the parameters to be estimated are entered in the model and in the representations of the known forces, which can be based on measured and / or assumed parameters related to the representations of the forces, infors in the model.
The minimization can hdr be performed by using a recursive method for identifying the estimated values which give a least square error for the longitudinal vehicle model compared with the corresponding known value for the representations of the forces. Other methods of minimizing the model error can also be used in the determination, such as a least mean square method, a normalized least mean square method, a recursive least squares method, a least squares method with glOmske factor, a recursive least squares method with glOmske factor, a maximum likelihood a method using Kalman filtering. Hereinafter, a minimum square estimate will be described. However, those skilled in the art will recognize that the corresponding estimate utilizes a least mean square method, a normalized least mean square method, a recursive least squares method, a least squares method with glOmske factor, a recursive least squares method with glOmske factor, a maximum likelihood filtering method, can be harledas. Essentially any suitable method which can find the parameter value which minimizes a model error can be used for estimates according to the present invention, as will be appreciated by a person skilled in the art.
If equation 10 is vectorized, we get: a [n] + g • sina [n] - [Ftrac [n] Fair [n], - gl [1 hnest [n], (eq. [N] eq. 11) 11) and if the vectors are given names according to: -d [n] = [cli „mesttl, (eq.
) FFtrac [n] - Fair [n] - (eq. 13) and 26 y [n] = a [n] +9 • sina [n] (eq. 14), equation 11 can be written as: y [n] - cioT [n] • [n]. (eq. 15) Equation 15 can be used in a standard form for a recursive least-square estimate, which is very advantageous. A recursive least-square estimate is described in detail below.
According to an embodiment of the present invention, the determination of the parameters comprises a determination of the estimated vehicle weight the most, the representation of the rolling resistance force F1 and an estimated air resistance parameter CV which acts on the vehicle.
The vessel resistance model according to equation 6 can be written am according to: a + g • sina - 1Cest F_L airv2 cest g = Or Mesttrac 'mestr (equ. 16) ddr - a is the above-mentioned vehicle acceleration; est -är above ndmnda total vehicle weight, which is to be estimated; the gravitational constant; crest is the above-mentioned rolling resistance coefficient, which is to be estimated; CV is the above-mentioned air resistance parameter, which is to be estimated; a is the above-mentioned current vdglutning; 27 Ftrac is the traction force mentioned above.
As can be seen from equation 16, the representation of the air resistance force Ff has is estimated by first determining an estimated air resistance parameter CO, after which the representation of the air resistance force is calculated = caeiSrt * v2 Since varying values of the air resistance parameter CJ can be easily estimated by the present embodiment. that the air resistance parameter cff is a constant in color is avoided, for example when rebuilding and disconnecting or disconnecting the trailer / slap, which typically gives changed values for the air resistance force.
According to an embodiment of the invention, in the corresponding manner as described above, the estimate of the vehicle weight is determined next, the representation of the rolling resistance force FrA and the air resistance parameter CJ by minimizing the model error for the vehicle model. The minimization can also be performed by using a recursive method for identifying the estimated values which gives a least square number for the longitudinal vehicle model with the estimated values introduced and with the above-mentioned standard value for other representations of the forces introduced. This method will be described below. However, for example, a least mean square method, a normalized least mean square method, a recursive least squares method, a least squares method with glow factor, a recursive least squares method with glow factor, a maximum likelihood method, or a method using Kalman filtering to find the estimated value that minimizes the model error. Equation 16 can be factorized according to: ihnest [n] a [n] +9. sina [n] - [Ftrac [n], _9, _v2crest [i] (eq. 17) cceasit. in est If the vectors bendmns according to: [ihnest [72] el [n] = crt [72], caefit mest (eq. 18) Ftrac [n] I cp [it] = [—g —v2 (eq. 19) and y [n] = a [n] + • sina [n] (equ. 20) equation 14 can be written as: y [n] - (pT [n] • [n]. (equ. 21) Equation 21 can be used in a standard form for a recursive least-square estimate, which is very advantageous.A recursive least-square estimate is described in detail below.
According to an embodiment of the invention, the determination of the parameters comprises a determination of the estimated vehicle weight certificate, the representation of the estimated rolling resistance Fest and an estimated vagal slope est musom the vehicle experiences.
Hdr, the longitudinal vehicle model can be described as: a + g • sina '- mest (trac Fair) + Crest • g = 0 (eq. 22) dar 29 a is a vehicle acceleration; _ most is a total vehicle weight, which is to be estimated; the gravitational constant; Crst is a coefficient of rolling resistance, which is to be estimated; - Fair dr an air resistance; _ aest is a current vagal slope, which is to be estimated; Ftrac is a traction force.
According to one embodiment of the invention, in the corresponding manner as described above, the estimation of the vehicle weight next, the representation of the rolling resistance force PTA and the vagal slope is determined by minimizing the model error of the vehicle model. The minimization can also be carried out by using a recursive method for identifying estimated values which give a least square number for the longitudinal vehicle model with the estimated parameters introduced and with the known values for different representations of forces introduced, or by using any of the the above-mentioned methods for minimizing the model error.
If equation 19 a [n] - [Ftrac [n] and the vectors [n] = (I) [n] = vector factorized - Fair [n], names are given ', Horse - (aest [n]) CgSt + sin [Ftrac [n] Fair [n] - 91 r according to: erhalls: [1 / rnest [n] [CPt [n] + sin (aest [n]) (eq. 23) (eq.24) (eq.25) and y [n] = a [n] (eq. 26) Equation 20 can be written as: y [n] - (pT [n] • o [n]. (eq. 27) Equation 27 can be used in a standard form for a recursive least-square estimate, which is very advantageous.A recursive least-square estimate is described in detail below.
According to one embodiment of the invention, the determination of parameters comprises a determination of the estimated vehicle weight Test, the representation of the estimated rolling resistance force FQ, an estimated air resistance parameter CJ and an estimated water gradient aest that the vehicle experiences.
Hdr, the longitudinal vehicle model can be described as: 1 a + g • sinaest -r, - cest mest trac m s aetrtest v2 urr • g = 0 (eq. 28) ddr - a is a vehicle acceleration; est - mar a total vehicle weight, which is to be estimated; the gravitational constant; qst is a coefficient of rolling resistance, which is to be estimated; - CZ is the above-mentioned air resistance parameter, which is to be estimated; aest is a current vagal slope, which is to be estimated; Ftrac is a traction force. 31 According to an embodiment of the invention, in the corresponding manner as described above, the estimate of the vehicle weight is most determined, the representation of the rolling resistance Pesti air resistance parameter Ce't and the vagal slope ae. by a -rocar minimizing the model error for the vehicle model. The minimization can also be performed by using a recursive method for identifying estimated values which give a least square number for the longitudinal vehicle model with the estimated parameters introduced and with the known values for other representations of forces introduced, or by using any of the above mentioned methods for minimizing the model error.
Equation 25 can be factorized according to: vinest [n] a [n] _ rtratini, —I) 21 Cgst [n] Sin (aest [n]) c est m est (eq. 29) If the vectors are named e [n], according to : [vinest [n] Cgst [n] + sin cgg (a9 n]), (eq. most Ftrac [n] [n] = [—g I (eq. and —V2 y [n] = a [n can equation 29 is written as: (equ. y [n] - (pT [n] • [n]. (equ. 32 Equation 33 can be used in a standard form for a recursive least-square estimate, which is very advantageous. A recursive minimum -square estimate is described in detail below.
According to one embodiment, the above-mentioned recursive least-square method for minimizing the model error in square means that the calculations are updated at each time step, the viii saga at the usual time that new food data is provided. Since new food data is provided, only this new data, the viii saga food data sampled at this time step, needs to be used in the calculations. Thus, the recursive minimization of the model error has an advantage in that the calculations do not require long food vectors of collected data to be provided, which would mean that the memory requirements are reduced. The recursive method also includes the use of a glow spoon factor, which indicates a filter constant A which says how long the loaded data should be remembered in the calculations.
The recursion at time step n, which uses the calculated value for a previous time step n-1, can be described as: e [n] = —1] + K [n] • Cy [n] - [n] • e [n - 1] ) (eq. 34) K [n] = P [n] • cp [n] (eq. 35) P [n] = (P [n - 1] P [n-1] .cp [n]. ( pT [n] .P [n-1]) (equ. 36) A-FcpT [n] .P [n – l] cp [n] I Ear erhalls dm, y [n] and T [n] from equation 15, 21, 27 or 33, where y [n] and (pm outputs outputs at time n.
Parameter A is a filter constant that constitutes a so-called glam factor, which indicates how long the loaded data should remain in the recursion. If the parameter value A = 1, the estimate adapts to all previously measured data. According to one embodiment of the invention, the filter constant is set to a value of 33 less than one, A <1, since the rolling resistance can change during grinding, so it often increases the quality of the estimates to forget old measurements after a suitably selected period of time.
P [n] is a covariance matrix with a size that depends on the number of rows in the vector e [n]. If the vector d [n] has N rows sa, the matrix P [n] is an NxN matrix. The covariance matrix P [n] can also be used to provide a quality measure of the estimate, since the variance for the estimate can be derived from the matrix P [n].
The recursion can be seen as the estimate j [n] at time step n being updated with a gain K [n] times the model error.
The gain K [n] depends on the variance of the food data and on the glam factor A.
Figure 2 shows a non-limiting graphical illustration of the problem the present invention seeks to solve.
Vehicle acceleration a and the slope of a are indicated along the y-axis as a function of traction force minus air resistance, Fo. „Ldngs x-axis. If collected data from valid carcasses during caring is entered in the diagram, it appears that the data is relatively collected so that it is possible to draw a line straight through the data set.
The line can be analyzed using the equation of the straight line: y = k • x + b, (eq. 37) ddr k is the slope of the line and b is the intersection with the y-axis. Let the variables for the line be given by: y = a + g • sina (eq. 38) and 34 = Ftrac - Fair (eq. 39) If equation 10 is equated with equation 37 for the line in figure 2 it can be stated that the slope k for the line should be k = 1 / rn and the intersection with the y-axis must be b = -g • Cr requires that equation 37 be adapted to equation 10. To find the line that fits best with the food data, the vehicle mass m and the rolling resistance coefficient Cr must be estimated, which is exactly what the present invention entails.
Figure 2 also illustrates an advantage of the method according to the present invention, since it is clear from the figure that it is easier to obtain an exemplary slope on the line if there is a lot of data spread over the x-axis to adapt to. Ants & is it just good am traction force minus air resistance force, Ft, -Fair, varies in size as the feeds are gars. Since the traction force F - trac changes size during normal caring, the present invention will work as a choice for a large part of the time the vehicle will normally be cared for, since it is then more common for the forces to be varied than for them to be in static operating points.
This is a star ride compared to previously known solutions.
Figures 3a-d show a non-limiting example of the process of the present invention in actual operation. According to this example, the vehicle has an actual weight of about 60 tonnes.
Figure 3a shows the vehicle speed at the grain and figure 3b shows the estimated rolling resistance coefficient Cr- At the time shortly after 500 s, the vehicle travels from gravel / sand to asphalt, whereby rolling resistance coefficient Cr decreases clearly, which stems from reality. natural Figure 3c shows with a dashed line the true weight, the viii saga about 60 tons. The vehicle has initially stopped and a slack has been connected to the vehicle. The thick solid curve shows the weight estimate according to the present invention. The dotted line shows a median value of previous kanda estimates, that is to say those who require a certain chore, during which they sample for a while and then make a calculation. The more estimates of the previously known type that have been made, the closer the correct values are to the estimate.
However, this sometimes takes a considerable amount of time.
Figure 3d shows the condition number for the covariance matrix P [n]. The curve is drawn on a logarithmic scale because it has a relatively sharp value at the beginning of the mating. It is clear from this that the curve drops relatively quickly at the beginning of the grain when the estimate improves and the quality increases before the estimate.
Then it is around a relatively added value, which meant that the quality remained good. The fluctuations around the legal value are due to the noise of the signals being different.
Those skilled in the art will appreciate that a method of estimating parameters which affect a chore resistance Farivingres for a vehicle according to the present invention may additionally be implemented in a computer program, which when executed in a computer causes the computer to execute the method. The computer program usually forms part of a computer program product 403, where the computer program product comprises an appropriate digital storage medium on which the computer program is stored. Said computer readable medium consists of a suitable memory, such as: ROM (Read-Only Memory), PROM (Programmable Read-Only Memory), EPROM (Erasable PROM), Flash memory, EEPROM (Electrically Erasable PROM), a hard disk drive, etc Figure 4 schematically shows a control unit 400. The control unit 400 comprises a computing unit 401, which can be constituted by essentially some exemplary type of processor or microcomputer, e.g. a Digital Signal Processor (DSP), or an Application Specific Integrated Circuit (ASIC). The bending unit 401 is connected to a memory unit 402 arranged in the control unit 400, which provides the bending unit 401 e.g. the stored program code and / or the stored data calculation unit 401 need to be able to perform calculations. The coverage unit 401 is also arranged to store partial or final results of coverage in the memory unit 402.
Furthermore, the control unit 400 is provided with devices 411, 412, 413, 414 for receiving and transmitting input and output signals, respectively. These input and output signals may contain waveforms, pulses, or other attributes, which of the input signals receiving devices 411, 413 may be detected as information and may be converted into signals which may be processed by the calculating unit 401. These signals are then provided to the calculating unit 401. The devices 412 , 414 for transmitting output signals are arranged to convert signals received from the recovery unit 401 for creating output signals by e.g. modulate the signals, which can be transmitted to other parts of the vehicle.
Each of the connections to the devices for receiving and transmitting input and output signals, respectively, may be one or more of a cable; a data bus, such as a CAN bus (Controller Area Network bus), a MOST bus (Media Orientated Systems Transport bus), or any other bus configuration; or by a wired connection. One skilled in the art will appreciate that the above-mentioned computer may be constituted by the storage unit 401 and that the above-mentioned memory may be constituted by the memory unit 402.
Generally, control systems in modern vehicles consist of a communication bus system consisting of one or more communication buses for interconnecting a number of electronic control units (ECUs), or controllers, and various components located on the vehicle. Such a control system may comprise a large number of control units, and the responsibility for a specific function may be divided into more than one control unit. Vehicles of the type shown thus often comprise considerably more control units than what is shown in figure 4, which is the choice for the person skilled in the art.
In the embodiment shown, the dangerous invention is implemented in the control unit 400. However, the invention can also be implemented in whole or in part in one or more other control units already existing at the vehicle or in the control unit dedicated to the dangerous invention.
According to one aspect of the present invention, there is provided a system for estimating parameters which affect a vascular resistance of the vehicle. The system includes a model unit and a fixing unit. The model unit Or is arranged to define the above-mentioned longitudinal vehicle model, which comprises representations of forces with horizontal action on the vehicle in the above-mentioned valid vessel case. The determining unit is arranged to determine an estimated weight test for the vehicle and to determine a representation of an estimated rolling resistance force which acts on the vehicle. The fixing unit Or, as described above, is arranged to base the determination of the weight most and the representation of the rolling resistance force FM on the 38 longitudinal vehicle model in combination with the known value of the representations of the forces having horizontal effect on the vehicle.
Those skilled in the art will also appreciate that the above system may be modified according to the various embodiments of the method of the invention. In addition, the invention relates to a motor vehicle, for example a truck or a bus, comprising at least one system for estimating parameters which affect a driving resistance driving force for the vehicle.
The present invention is not limited to the above-described embodiments of the invention but relates to and includes all embodiments within the scope of the appended independent claims.
权利要求:
Claims (21)
[1]
1. propulsion by propulsion provided by a combustion engine;
[2]
2. propulsion provided by an electric machine;
[3]
3. exhaust braking; 4. retarder braking; and - braking by means of the use of an electric machine.
[4]
A method according to any one of claims 1-3, wherein said known values for said representations of forces are measured or determined by a model.
[5]
A method according to any one of claims 1-4, wherein said determining said representation of said estimated rolling resistance force Fgh comprises determining an estimated rolling resistance coefficient Cfst.
[6]
A method according to any one of claims 1-5, wherein said longitudinal vehicle model is described by the equation: a + g • sina - 1, F - Fair) + Crest • g = 0, master trades 1. a is a vehicle acceleration; est 2. mar a total vehicle weight, which is to be estimated; the gravitational constant; crest is a coefficient of rolling resistance, which is to be estimated; Fair is an air resistance force; 4. a is a current gradient; 5. Ftrac is a traction force.
[7]
A method according to any one of claims 1-4, wherein said determining comprises determining an estimated weight, said representation of said rolling resistance force Fgh and a representation of an estimated air resistance force P acting on said vehicle.
[8]
A method according to claim 7, wherein said determining said representation of said estimated air resistance force Fa comprises determining an estimated air resistance coefficient C. 41
[9]
A method according to any one of claims 7-8, wherein said longitudinal vehicle model is described by the equation: a + g • sina - ce.Ft F ± air v2 + ceSt = 0 most trac most ddr - a is a vehicle acceleration; 1. most is a total vehicle weight, which is to be estimated; the gravitational constant; 2. residual is a rolling resistance coefficient, which is to be estimated; 3. Cce, '; is an air resistance parameter, which is to be estimated; - a dr en aktuell vdglutning; Ftrac is a traction force.
[10]
A method according to any one of claims 1-4, wherein said determining comprises a determination of said estimated weight next, said representation of said estimated rolling resistance FM and an estimated road gradient experienced by said vehicle.
[11]
The method of claim 10, wherein said longitudinal vehicle model is described by the equation: a + g • sinaest - 1 mesttrac Fair) + cpt = 0 dar - a is a vehicle acceleration; _ most is a total vehicle weight, which is to be estimated; the gravitational constant; 42 - crest is a coefficient of rolling resistance, which is to be estimated; Fair is an air resistance force; 2. aest is a current vagal slope, which is to be estimated; Ftrac is a traction force.
[12]
A method according to any one of claims 1-4, wherein said determining comprises a determining of said estimated weight nest, said representation of said estimated rolling resistance p.m, an estimated air resistance coefficient CJ and an estimated vagal slope experienced by said vehicle.
[13]
A method according to claim 12, wherein said longitudinal vehicle model is described by the equation: cv 2 a + g • sinaest - most v + qst • g = 0 Ftrac dar 1. a is a vehicle acceleration; _ most is a total vehicle weight, which is to be estimated; the gravitational constant; rest r is a coefficient of rolling resistance, which is to be estimated; 2. Cair is an air resistance parameter, which is to be estimated; _ aest is a current vagal slope, which is to be estimated; Ftrac is a traction force. 43
[14]
A method according to any one of claims 1-13, wherein said longitudinal vehicle model is based on Newton's second law.
[15]
A method according to any one of claims 1-14, wherein said known values comprise calculated values for said representation of said forces, wherein said calculated values have been calculated based on measured parameters and / or assumptions of parameters which are related to said representations of said forces. .
[16]
A method according to any one of claims 1-15, wherein the minimization of said model errors is performed by using a recursive method for identifying estimated values which gives a least quadratic error for said longitudinal vehicle model with said estimated values introduced and with said known values. representations of forces convene.
[17]
A method according to any one of claims 1-16, wherein the minimization of said model error is performed by utilizing any of the methods in the group of: - a least mean square method; 1. a normalized least-mean square method; 2. a method utilizing Kalman filtration; 3. a recursive least-squares method; 4. a least squares method with a glow factor; - a recursive least-squares method with glow factor; and 5. a maximum likelihood method,.
[18]
A method according to any one of claims 16-17, wherein a description of said longitudinal vehicle model is adapted so that said method can be used to minimize said model error. 44
[19]
A computer program comprising program code, which when said program code is executed in a computer ensures that said computer executes the method according to any one of claims 1-18.
[20]
A computer program product comprising a computer readable medium and a computer program according to claim 19, wherein said computer program is included in said computer readable medium.
[21]
21. System for estimating parameters which affect a vessel resistance Fdrivingres father a vehicle, characterized by - a model unit arranged to define a longitudinal vehicle model, which comprises representations of forces with horizontal action on said vehicle in a valid vessel fall; a determining unit arranged to determine an estimated weight test for said vehicle and a representation of an estimated rolling resistance force acting on said vehicle, said longitudinal vehicle model being used in conjunction with the said value representations of said forces to minimize a model error of said longitudinal model. . PLI) - 4S; CX) - / TTn3 1PS 1400 ..:; TA puqqus ucqqAuqn [HT] * 49uop3o; 3P4 Pul - 74sqou1TTn3 qoa;) [TA. AP 3P.BUTU44U) irS .7uz Oi. TTepowsuop.7og TTeuTpn; TbuoT p.-IeTuTgeo _TOT_ t7 / 1 2/4
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引用文献:
公开号 | 申请日 | 公开日 | 申请人 | 专利标题
CN112477877A|2019-09-11|2021-03-12|北汽福田汽车股份有限公司|Method and device for acquiring vehicle load, storage medium and vehicle|DE19728867A1|1997-07-05|1999-01-07|Bosch Gmbh Robert|Method of weighing motor vehicle, especially commercial vehicle|
DE10235969A1|2002-08-06|2004-02-19|Zf Friedrichshafen Ag|Motor vehicle gearbox and gear-change control method, wherein actual vehicle rolling resistance and mass are accurately determined to improve planning of automatic gear changes|
JP4635530B2|2004-09-14|2011-02-23|トヨタ自動車株式会社|Control device for vehicle drive device|
DE102009026687A1|2009-06-03|2010-12-09|Zf Friedrichshafen Ag|Method for determining rolling friction of lorry, involves computing rolling friction factor from driving resistances, vehicle mass and acceleration due to gravity, where driving resistances are stored for determination of rolling friction|
SE534038C2|2009-06-10|2011-04-12|Scania Cv Ab|Method and module for controlling the speed of a vehicle|
US10207719B2|2010-07-19|2019-02-19|Nxp Usa, Inc.|Use of multiple internal sensors for measurements validation|
DE102011013022B3|2011-03-04|2012-08-30|Audi Ag|Method for determining the running resistance of a vehicle|
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CN107643117B|2016-07-22|2021-05-18|Zf 腓德烈斯哈芬股份公司|Loading profile|
CN107139929B|2017-05-15|2019-04-02|北理慧动(常熟)车辆科技有限公司|A kind of estimation of heavy type fluid drive vehicle broad sense resistance coefficient and modification method|
FR3081808A1|2018-06-05|2019-12-06|Psa Automobiles Sa|VEHICLE CLAMPING PROCESS|
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法律状态:
优先权:
申请号 | 申请日 | 专利标题
SE1350172A|SE537429C2|2013-02-14|2013-02-14|Simultaneous estimation of at least mass and rolling resistance of vehicles|SE1350172A| SE537429C2|2013-02-14|2013-02-14|Simultaneous estimation of at least mass and rolling resistance of vehicles|
EP14751664.5A| EP2956343B1|2013-02-14|2014-01-31|Simultaneous estimation of at least mass and rolling resistance|
PCT/SE2014/050125| WO2014126523A1|2013-02-14|2014-01-31|Simultaneous estimation of at least mass and rolling resistance|
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