This application claims the benefit of and priority to German Patent Application No. 103 26 557.0, filed on Jun. 12, 2003 in Germany.
The present invention relates to a method and a device for monitoring systems in motor vehicles, such as fuel injection systems and electrical steering and braking systems.
Motor vehicle systems of this nature are composed of mechanical components and control devices that specify input variables, or manipulated variables, for the system and act as a functional unit. The system responds to these input variables with output variables that are usually determined using sensors. Characteristically, however, usually only a few output values are provided, for reasons of cost. Using the measured values provided by the sensors and the computing capacity provided in the control devices, these sensors and the control devices enable the system to be monitored during operation of the vehicle. As a result, a malfunction that could endanger the safety of the operation of the motor vehicle, e.g., in the case of a fault in an anti-lock braking system, or a malfunction that results in impermissible environmental impacts, such as a fault in a fuel injection system, is recognized, and a suitable notification is provided to the driver. If the type of fault can also be determined, it is possible, using an emergency program, to maintain limited operability, for example with reduced engine output or a deactivated anti-lock braking system.
In terms of monitoring motor vehicle systems of this nature, measured signals or output variables may be checked for adherence to signal limiting values and to subject them to a plausibility check based on manipulated variable signals or input variables. If a limiting value is exceeded, an alarm message is triggered, and a standalone diagnostic device or a diagnostic device that is integrated in the control device can detect faults and distinguish between types of fault, if applicable. If more than two signals are to be evaluated jointly, model-based methods in which the model reproduces the input-output behavior of the system offer advantages. A check is run to determine whether output signals measured at the motor vehicle system match the values to be expected based on specified input signals according to the model, or if they exceed or fall below stated limiting values.
When, in addition to a model of the expected correct behavior of the motor vehicle system, models of the behavior to be expected under certain fault conditions are also provided, certain faults can be detected and localized.
The disadvantage of the foregoing approaches is that the computing complexity required to process the given quantitative signals may be considerable. Accomplishing this in real time is therefore a very complex procedure.
A method for onboard diagnosis is referred to in the publication entitled “Fault detection of a diesel injection system by qualitative modelling,” D. Foerstner, J.-Lunze, 3rd IFAC Workshop Advances in Automotive Control, pp. 273-279, Karlsruhe, 2001, this method combining a model-based diagnostic method with a qualitative modeling strategy.
Quantitative input and output signals of a dynamic system are converted to qualitative values. For this purpose, a series of threshold values up to a maximum value for the quantitative signal is specified. Each of the intervals that result is assigned to a qualitative value. If a qualitative value changes, and, therefore, the quantitative value on which it is based exceeds one of the threshold values, an event is triggered. The events are used to form an event sequence. These event sequences are compared with a complete model of event sequences. A complete model includes all possible event sequences. The state of the dynamic system can be evaluated by referring to the model.
The disadvantage of the diagnostic method made referred to in the publication is that many models of possible fault responses are incomplete and therefore cannot be used. High-frequency signal components and noise in the vicinity of threshold values can cause events to occur in rapid succession. Unnecessary computing capacity is therefore utilized without the possibility of obtaining any information as a result.
In contrast, the exemplary method according to the present invention, and the exemplary monitoring device, which utilizes the method, have the advantage that an incomplete model may also be utilized. Since many methods of obtaining models result in incomplete models, the complexity involved in creating the model is simplified. It is sufficient to develop a complete model for the normal case that corresponds to proper operation. The fault models may be incomplete, however.
Advantageously, a comparison with fault models is carried out or performed in the comparison step, the event sequences of the fault models being distinguishable from the event sequences of all other fault models and the normal model, and, if there is a match, the presence of a particular fault is recognized. For fault models that may be designed to be unambiguous in this manner, the type of fault may therefore be determined.
Advantageously, the presence of an unknown fault is recognized when at least two fault models or the normal model and at least one further fault model apply simultaneously. In this case, in which the fault models do not rule each other out correctly (this may result due to the type of model generation), an indeterminate fault message for a result that is due partly to random events may be preferred.
Advantageously, at least two consecutive results of the comparison are compared with each other once more and this comparison is taken into consideration in the determination as to whether a fault or a normal case is present. As a result, for example, for the case in which two different faults in immediate succession are determined to be the result, only one indeterminate fault is output as the result. When the case in which a change to the recognized fault is less likely than that of an incorrect fault determination, it may be more beneficial to obtain an undefined fault as the result. When the normal case follows a recognized fault, the normal case cannot be recognized using a comparison of this nature until it occurs a second time at the least.
Advantageously, the time that has elapsed since an event occurred is recorded as a further quantitative output signal. As a result, faults that come to light as a result of a deviating time response may also be recognized without additional expenditure, since no changes to diagnostic algorithms are required.
After the step of assigning the discrete qualitative values, a plurality of qualitative values may be combined to form one qualitative value that is capable of being assigned unambiguously to the original values, the qualitative values being combined in particular as a weighted sum. Since the qualitative values do not lose any information content as a result of this if the combined values are still capable of being assigned unambiguously, the subsequent formation of event sequences and the evaluation are simplified.
According to another exemplary method according to the present invention, for which protection is requested separately, in the assignment step, the threshold values of the value interval in which the quantitative value was previously located are reduced by a lower hysteresis value and increased by an upper hysteresis value. As a result of this measure, undesired rapid switching of the qualitative value is prevented when the quantitative value is close to a threshold value. This may occur due to high-frequency components or noise in the quantitative signal.
Advantageously, the method is utilized in a motor vehicle system that is a fuel injection device for internal combustion engines. The method may also be used advantageously with a braking system or a by-wire system. By-wire systems, in particular, such as a steering system without mechanical transfer of the steering commands or a braking system that includes no direct hydraulic connection between the brake pedal and wheel brakes, require reliable self-diagnostic capability.
After quantizers 5, the signals are present as qualitative signals. One or more models 7 for the behavior of dynamic system 2 are stored in control device 6. In the simplest case, at least one model 7 for the normal case is present when dynamic system 2 functions as expected. The values and changes to the qualitative input signals and output signals are compared by control device 6 with the values predicted by model 7, and they are output after an evaluation as result 8.
If a fault 9 acts on dynamic system 2, output signals 4 change, and the qualitative output signals forwarded to control device 6 no longer correspond to the values and changes predicted by model 7 for the normal case.
In the two easily recognizable plateau regions of pressure curve 10, the pressure curve fluctuates, so that without lower threshold values 12, that have been shifted by the hysteresis, and upper threshold values 11, the assigned qualitative value would change many times.
A further adaptation may be provided when another lower and/or upper hysteresis value is assigned to each of the threshold values.
In a subsequent query 305, counter z is compared with a value ALT_VALUE that has been increased by one. If the values to be compared match, the current threshold value is increased by one hysteresis value in a step 306. As a result, for the case in which the value to be quantized was previously located below the current threshold and now could be located above this threshold, a hysteresis of the upper threshold value is reached. A hysteresis value that is a function of counter z must be added in step 306 if other hysteresis values are to be used for each threshold value.
In a subsequent query 307, a check is carried out to determine whether the input is less than current threshold value CUR_THRESHOLD, or whether counter z corresponds to a maximum value. If not, the process returns to step 302. In a further query 308, another check is carried out to determine whether the input is less than variable CUR_THRESHOLD. If not, a maximum value of the qualitative values is assigned to the output in step 309. This corresponds to the case in which the input is greater than the maximum quantitative value. In the other case, the value z−1 is assigned to the output as the qualitative value in step 310. Finally, in a step 311, variable ALT_VALUE is assigned the qualitative value that is now current.
The three qualitative input signals v1, v2, v3 are combined to form a single qualitative input signal V in a concentrator block 501 in which an algorithm according to
In the present example, events are detected by an event detector 502 as a change in a qualitative value in the case of qualitative output signal W. Event detector 502 recognizes an event as a change in qualitative value W. If an event occurs, qualitative value W, its previous value W (k−1), and the previous qualitative value V (k−1) are forwarded to a further concentrator block 501. The previous values W (k−1), V (k−1) are stored in shift registers 503.
All of the blocks shown in
In the present example, the method therefore has three fault models. Since it is only necessary here to test for conformance using a scalar variable Q and not tuples, the possible values in the models may be sorted, and a search may be carried out logarithmically to determine whether Q is contained in the particular model.
The result is evaluated in an evaluation block 504. A fault status is then output. In the present example this is a vector, in the case of which a bit is set by each test block whose model contains Q. In evaluation block 504, for example, if a fault model applied previously, and even if the normal case model now applies to value Q, a fault may continue to be signaled, until the normal case model applies up to at least two times in a row.
If none of the test blocks signals a match, an indeterminate fault is output as the fault status. By utilizing the chronologically sequential results of the comparison step for the evaluation and fault determination, an undefined fault may still also be recognized, for example, when a fault A is first obtained as the result of the comparison, followed immediately by a fault B. Adapted rules for fault recognition may therefore be created, according to which, for example, after an indeterminate fault, the normal state may be returned to directly, but, after a certain fault, the normal model must result from the comparison at least a second time before the presence of the normal state is recognized.
The further processing is simplified considerably using the method described, which uses a two-fold combination. Events that occur with unnecessary frequency are avoided using the hysteresis in quantizers 5. Faults that occur briefly may be dealt with by considering the sequence of results of the comparison in evaluation block 504.
A block diagram is shown in
The method uses input signals u1, u2, u3 and output signals y1, y2. Input signals u1, u2, u3 are converted in quantizers 5 to qualitative signals v1, v2, v3. Likewise, output signals y1, y2 are converted in quantizers 5 to qualitative signals w1, w2.
In addition, a further output signal yt is present; it is converted to qualitative output signal wt. Qualitative input signals v1, v2, v3 are combined in a concentrator block 501, in which an algorithm takes place in accordance with
As a result, cases in which a time has been exceeded or not met may also be recognized as faults. In particular, the method for detecting time faults of this nature need not be substantially changed, since the further processing of output signal yt takes place analogously to the processing of all other input or output signals. The further processing of weighting variable Q corresponds to that of the exemplary embodiment according to
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