This application claims priority from German Patent Application No. DE 10 2006 004 602.1, which was filed on Feb. 1, 2006, and is incorporated herein by reference in its entirety.
The invention relates to a method for the approximation of a stored pilot control map of a pressure control valve of a common-rail pump to the effective pilot control map of the pressure control valve.
With common-rail systems, the system pressure in the rail is normally set by a pressure control valve. The pressure control valve guarantees a sufficiently accurate adjustability of the pressure during steady-state operation. During transient changes, a fast dynamic is required to enable a new operating state to be reached as quickly as possible and with the least possible deviations from the predetermined desired value.
With pressure control valves, the pressure in the rail can essentially be set by a magnetic force. For pressure regulation therefore, a PI controller with a pressure-dependent pilot control is used.
For reasons of stability, the speed at which a pressure regulation takes places is limited. A precise pilot control map is very important for achieving the minimum deviation from the desired pressure; the more exact this is the smaller the deviations of the desired pressure from the system pressure. The term “pilot control map” includes the term “pilot control characteristic curve”.
At present, the pilot control map is normally stored in a one-dimensional table. For adaptation it is first necessary to detect steady-first state operating conditions. If a steady-state operating condition lies in the vicinity of a support point of the table, it is used for adaptation of this point of the table.
Filtering non steady-state operating conditions and measurements that do not lie close to a support point results in a slow and inaccurate adaptation.
The object of this invention therefore is to enable an accelerated and improved adaptation of the pilot control map of a pressure control valve to be carried out.
This object can be achieved by 1 a method for approximating a stored pilot control map of a pressure control valve of a common-rail pump to the effective pilot control map of the pressure control valve, with the stored pilot control map mapping a desired pressure in the rail on a control current of the pressure control valve, the method comprising the steps of: a) Measurement of the pressure in the rail; b) Determination of the control current of the pressure control valve; and c) adaptation of the stored pilot control map by means of a regression process including the pressure measured in step a) and the control current measured in step b).
According to an embodiment, process steps a), b) and c) can be iterated. According to an embodiment, the stored pilot control map can be an analytical function, a sum of analytical functions, a polynomial, especially a third-grade polynomial, a sum of finite elements, a sum of b-spline functions, a sum of linear functions by sections or a table. According to an embodiment, method step b) and/or method step c) can be performed during a non steady-state condition of the common-rail pump. According to an embodiment, the regression process can be performed by an engine control unit. According to an embodiment, the regression process may use unfiltered measurements from step a) and step b).
The object can also be achieved by an engine control unit for performing the above method, comprising a first data storage area for a pilot control map that maps a desired pressure on a control current of the pressure control valve, a second data storage area for a measured point, especially a measured pressure, wherein the engine control unit includes a processor that is programmed in such a way that it adapts a pilot control map stored in the first data storage area by means of a regression process that includes a measured point stored in a second data storage area.
According to an embodiment, the engine control unit may comprise a processor that is programmed in such a way that the second data storage area is described by a new measured point and the regression process is iterated. According to an embodiment, the stored pilot control map can be an analytical function, a sum of analytical functions, a polynomial, especially a third-grade polynomial, a sum of finite elements, a sum of b-spline functions, a sum of linear functions by sections or a table. According to an embodiment, the engine control unit may comprise a processor that is programmed in such a way that step b) and/or step c) is/are carried out during a non steady-state condition of the common-rail pump. According to an embodiment, the engine control unit may comprise a processor that is programmed in such a way that the regression process uses unfiltered measurements from step a) and step b).
The invention is explained in more detail in the following by means of an example, with reference to drawings. The drawings are as follows:
The dynamic behavior of the system can be clearly improved. Furthermore, the manufacturing tolerances for pressure control valves can be increased.
The method as claimed in the invention can be used for the approximation of a stored pilot control map of a pressure control valve of a common-rail pump to the effective pilot control map of the pressure control valve. For this purpose, according to an embodiment, the stored pilot control map maps a desired pressure in the rail on a control current of the pressure control valve. The control current of the pressure control valve is determined in one method step. This can be read directly from the pilot control map or can be measured. In a further method step, according to an embodiment, the stored pilot control map is adapted by means of a regression process that includes this measured point.
According to an embodiment, by a repeated determination of measured points and iteration of the regression process, the stored pilot control map can be even more accurately approximated to the effective pilot control map.
According to an embodiment, if the pilot control map is stored as an analytical function, the regression process can be performed particularly quickly. According to an embodiment, the effective map can, for example, be approximated by polynomials. Third degree polynomials have the advantage that they require little storage space, can be quickly processed and enable particularly good approximations to the effective map. According to an embodiment, the pilot control map can also be stored as a sum of analytical functions, a sum of finite elements, a sum of b-spline functions or a sum of linear functions by sections. According to an embodiment, it is also possible to store the map as a table.
According to an embodiment, the use of a regression process enables the pilot control map to also be adapted during a non steady-state condition of the common-rail pump. Contrary to a conventional method, the measurements of the pressure do not have to be filtered. This means that the pilot control map is more exact and the pressure control valve can also be more precisely controlled in transient states.
According to an embodiment, for performing the method, an engine control unit is proposed that has a first data storage area, a second data storage area and a processor. A pilot control map that maps a desired pressure on a control current of the pressure control valve can be stored in the first data storage area, whereas a measured pressure can be stored in the second storage area. According to an embodiment, the processor can be programmed in such a way that it adapts a pilot control map stored in the first data storage area, by means of a regression process that includes a measured point stored in the second data storage area.
The approximation of a stored pilot control map to the effective pilot control map of a pressure control valve was first tested on a system test stand under reproducible conditions.
In this case,
I=I(p)=αo+α1p+α2p2+α3p3
An imprecise pilot control map as shown in
Measured data for the system pressure and the current through the pressure control valve can be gathered in any sequence. In contrast to the prior art, no filtering of data is necessary. In particular, data from non steady-state conditions can also be used and also data that is not close to a support point of the stored pilot control map.
To perform the regression process, the pilot control map can, for example, be represented by characteristic points. A third-grade polynomial, for example, requires four characteristic points. These points are advantageously selected by means of a d-optimum test plan. A measured value is then added to the characteristic points. The pilot control map is then re-determined using these points and again reduced to the characteristic points. The weight of the measured values can additionally be modified by a multiplication factor, which can increase the rate of convergence. For a third-grade polynomial, the regression process can be reduced by solving a linear 4×4 equation system. This is analytically possible and therefore can be realized without difficulty in an engine control system. Furthermore, the data memory has to be able to hold only four characteristic points and one measured value.
The original pilot control map from
The same procedure was used in this test as in the example in FIG. 2A/2B. But because the same pressure control valve was not used in the vehicle as for the example on the test stand, the final result of the iteration resulted in a somewhat different pilot control map characteristic.
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10 2006 004 602 | Feb 2006 | DE | national |
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