The present invention relates to a method and device for estimating the total mass of a motor vehicle.
Knowledge of the total mass of a motor vehicle is necessary to effective operation of numerous devices installed on board the vehicle, such as devices for control of braking or for control of an automatic gearbox. In such devices, the use of a nominal mass actually does not permit optimal control of the vehicle.
It is therefore desirable to obtain rapidly a reliable estimate of the vehicle mass, even when the vehicle is traveling on a slope. Devices for evaluating the mass of a motor vehicle exist.
U.S. Pat. No. 6,249,735 describes a method for estimating the state of a vehicle, comprising a step of estimating the mass of the vehicle from the engine torque and the vehicle acceleration during a gear shift. The acceleration is calculated by a discrete approximation of the derivative of the speed and by filtering, which entails problems of noise and influences the precision and robustness of the estimate.
U.S. Pat. No. 6,167,357 calculates the acceleration of the vehicle by integrating its speed, but it does not make any allowance for the inclination of the surface on which the vehicle is traveling.
International Patent WO 03/016837 relates to a method for estimating the mass of a vehicle being driven on a road having a variable gradient. The vehicle speed is measured to generate an input datum for a calculating device, and a variable comprising a longitudinal force acting on the vehicle is measured to generate an input datum for the calculating device.
The methods that do not use the vehicle acceleration are certainly less noisy, but they do not make allowance for the inclination of the surface on which the vehicle is traveling.
The object of the invention is to estimate the total mass of a motor vehicle by using the vehicle acceleration, in order to take into account the inclination of the surface on which the vehicle is traveling, while reducing the problems of noise of parameters measured by sensor or calculated.
The method according to one aspect of the invention makes it possible to estimate the total mass of a motor vehicle. The vehicle mass is estimated by a recursive least-squares algorithm, which comprises a calculation of the longitudinal acceleration of the vehicle on the basis of Newton's Second Law of Motion, by analysis of errors, by means of an acceleration variation due to errors. These errors comprise an error in the vehicle mass, an error in the inclination of the surface on which the vehicle is traveling, and errors of the model, the said inclination being supplied by a slope sensor or by inclination-estimating means.
The method makes it possible to estimate the total mass of the vehicle by taking into account the inclination of the surface on which it is traveling, without taking the derivative of the speed, which makes it possible to improve the precision of the estimate.
In a preferred embodiment, data comprising a reinitialization instruction, the vehicle speed, the rate of rotation of the engine, the torque transmitted by the engine, detection of actuation of the clutch, detection of actuation of the brakes and detection of cornering of the vehicle are processed in order to calculate the longitudinal acceleration of the vehicle, a resultant of the motive, aerodynamic and rolling forces, and an equivalent mass due to inertial forces of transmission.
In an advantageous embodiment, the said processing of the said data is enabled when they remain respectively in predetermined intervals of values that ensure validity of the model. The total mass of the vehicle is estimated by a recursive least-squares algorithm, and the estimate of the total mass of the vehicle is supervised by providing a predetermined mass such that the said algorithm has not converged, by fixing the estimated mass when a predetermined convergence criterion has been reached.
In a preferred embodiment, a loop of the estimated mass is additionally processed, and the said acceleration variation due to errors comprising an error in the variation of the vehicle mass relative to a reference mass, an error in the inclination of the surface on which the vehicle is traveling, and errors of the model during data processing is calculated. In addition, acceleration that a slope sensor would provide if such were present is estimated, used in the said recursive least-squares algorithm, the said slope-sensor estimate of acceleration using the said acceleration variation due to errors.
In addition, the inclination is estimated on the basis of the said acceleration variation due to errors, and the said recursive least-squares algorithm depends on the said inclination and has two modes, a flat mode when the inclination is situated in a predetermined interval of values corresponding to a plane surface, and a slope mode in the other cases.
In an advantageous embodiment, during data processing, an acceleration that a slope sensor would provide if such were present is estimated by means of the inclination of the surface on which the vehicle is traveling, the said inclination being provided by the inclination-estimating means and the said slope-sensor acceleration being used in the said recursive least-squares algorithm.
In a preferred embodiment, an acceleration provided by a slope sensor being used in the said recursive least-squares algorithm is processed.
In an advantageous embodiment, the inclination of the surface on which the vehicle is traveling is calculated from the said acceleration provided by the said slope sensor and from the said calculation of longitudinal acceleration of the vehicle. The said recursive least-squares algorithm depends on the said inclination and has two modes, a flat mode when the inclination is situated in a predetermined interval of values corresponding to a plane surface, and a slope mode in the other cases.
According to one aspect of the invention, there is also proposed a device for estimating the total mass of a motor vehicle, comprising wheel-speed sensors, an engine-torque sensor, a rate of rotation of the engine sensor, a clutch-pedal position sensor, a brake-pedal position sensor, means for detecting cornering of the vehicle, and an electronic control unit to which the said sensors are connected. The electronic control unit contains a reinitialization means and means for estimating the total mass of the vehicle by a recursive least-squares algorithm, comprising a calculation of the longitudinal acceleration of the vehicle on the basis of Newton's Second Law of Motion, by analysis of errors. The analysis of errors is performed by means of an acceleration variation due to errors comprising an error in variation of the mass of the vehicle relative to a reference mass, an error in the inclination of the surface on which the vehicle is traveling, and errors of the model. The electronic control unit additionally contains means for processing of data transmitted by the said sensors, means for enabling the said processing of the said data when they remain respectively in predetermined intervals of values that ensure validity of the model, and supervising means for providing a default mass as long as the said algorithm has not converged, by fixing the estimated mass when a predetermined convergence criterion has been reached.
In a preferred embodiment, the device additionally contains a slope sensor capable of transmitting a longitudinal acceleration of the vehicle to the processing means.
Other objectives, characteristics and advantages of the invention will become apparent upon reading the description hereinafter, provided solely by way of example in no way limitative, with reference to the attached drawings, wherein:
At its input, processing block 2 receives data comprising information on reinitialization via connection 6, the rate of rotation of the engine via a connection 7, the torque delivered by the engine via a connection 8, information on the state of actuation of the clutch via a connection 9, information on braking demanded by the operator via a connection 10, information on cornering of the vehicle via a connection 11 and the vehicle speed via a connection 12.
Blocks 2 and 3 communicate via a connection 13, and enabling block 3 communicates with blocks 4 and 5 via a connection 14.
Block 2 calculates a resultant F of the motive, aerodynamic and rolling forces, an equivalent mass Mj due to the inertial forces of transmission, and an acceleration γestimated of the vehicle, and transmits them to estimating block 4 via connections 15, 16 and 17 respectively. Block 2 additionally calculates an acceleration variation δestimated (ΔM, ε, α) due to parameters comprising a variation ΔM of the mass of the vehicle relative to a reference mass, errors ε of the model and the inclination α of the surface on which the vehicle is traveling, and transmits it to block 4 via a connection 18. The inclination is provided by inclination-estimating means, for example in the form of a slope sensor, or by equivalent inclination-estimating means.
Using a recursive least-squares algorithm, block 4 estimates a mass MMCR of the vehicle and transmits it to supervising block 5 via a connection 19. The supervising block then processes this input and delivers at the output the estimated total mass M via a connection 20, which is looped to the input of processing block 2, for calculation of the said acceleration variation δestimated (ΔM, ε, α).
The reinitialization information can originate, for example, from opening of a door, which is often synonymous with a change in the number of passengers, or from loading of objects, or else from unloading of objects. In these cases, the mass changes and the estimation of the vehicle mass must be reinitialized.
Block 2 calculates the resultant F via the following relations:
where:
F is the resultant of the motive forces Fengine, aerodynamic forces Faero and rolling forces Frolling in N;
θ1 and θ2 are predetermined parameters that depend on the vehicle and that make it possible to estimate Faero+Frolling in N and in kg/m respectively;
rbox is the ratio, for an engaged gear, of the rate of rotation of an output shaft and the rate of rotation of an input shaft of a clutch of the vehicle;
Cengine is the engine torque in Nm;
Rwheel is the radius of the vehicle wheels in m;
ωengine represents the rate of rotation of the engine in rad/s;
Jtrans represents the inertia of the assembly comprising the engine and transmission in kg m2/s, and
raxle is the gear-reduction ratio of the axle, nondimensional.
Block 2 additionally calculates an equivalent mass Mj due to the inertial forces of transmission between the engine and the wheels, by means of a predetermined function of the ratio rbox.
In addition, block 2 calculates the acceleration γestimated and the acceleration variation δestimated (ΔM, ε, α) on which a zero dynamic (derivative relative to zero time) is imposed by means of the following iterative system:
where M0 is a predetermined reference mass, such as the mass of the unladen vehicle.
There is obtained the following relation:
γestimated −δestimated(ΔM, ε, α)=γsensor−δ(ΔM, ε), which makes it possible to construct a signal provided by a slope sensor if such is present or by equivalent inclination-estimating means, to within the term δ(ΔM, ε), which represents an acceleration variation due to the variation of the mass of the vehicle, and to within errors of the model. Similarly, it is considered that δestimated(ΔM, ε, α) is an approximation of the acceleration gα due to the inclination, to within the term δ(ΔM, ε). This term δ(ΔM, ε) will be all the more negligible the more correct are the estimates of mass, of engine braking and of resistant forces, and for these purposes the mass estimate is reinjected at the input of block 2.
Block 4 estimates a mass MMCR of the vehicle by the recursive least-squares algorithm. It can operate in two modes, slope and flat, if the inclination is being estimated, or else solely in slope mode, if the inclination is not being estimated.
By the said algorithm the equation y=MMCR·r is solved with r=γsensor, when a single slope mode is used.
It is also possible to use two estimation modes, comprising a flat mode and a slope mode, chosen according to the estimated value of the inclination. If the estimated inclination is within a predetermined interval defining the flat mode, then the flat mode defined by
will be used, where V is the vehicle speed, otherwise the slope mode defined by r=γsensor will be used.
Block 2 estimates the acceleration 7 estimated of the vehicle by means of the following relations:
where:
With knowledge of a reliable estimate of the inclination at and of the acceleration γestimated, it is possible to construct a signal γsensor provided by a slope sensor if such a sensor is present by means of the following relation:
because g·sin(α)≅gα.
Block 4 estimates a mass MMCR of the vehicle via the recursive least-squares algorithm in the manner described in the foregoing. It can function in two modes, slope and flat, if the inclination is being estimated, or else solely in slope mode, if the inclination is not being estimated.
Block 4 estimates a mass MMCR of the vehicle via the recursive least-squares algorithm in the manner described in the foregoing, by means of a single mode, slope.
The invention makes it possible to obtain a reliable and precise estimate of the total mass of a vehicle, taking into account the inclination on which the vehicle is traveling.
The invention also makes it possible to limit the problems of noise in the measurements provided by sensors or in estimated measurements.
Number | Date | Country | Kind |
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03 08224 | Jul 2003 | FR | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/FR2004/001719 | 7/2/2004 | WO | 00 | 6/13/2006 |
Publishing Document | Publishing Date | Country | Kind |
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WO2005/012848 | 2/10/2005 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
5944763 | Iwasaki | Aug 1999 | A |
6249735 | Ishiguro et al. | Jun 2001 | B1 |
20040167705 | Lingman et al. | Aug 2004 | A1 |
Number | Date | Country |
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03016837 | Feb 2003 | WO |
Number | Date | Country | |
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20070038357 A1 | Feb 2007 | US |