1. Field of the Invention
The present invention relates to a method and a device for determining the delivery volume of an injection pump.
2. Description of Related Art
In principle, it is quite simple to determine the delivery volume of a pump within a test system. However, it is not desirable to uninstall it from the injection system and to insert it in a test system for the purpose of determining or checking the working capacity of an injection pump.
A current, no non-invasive methods or devices for determining the delivery volume of an injection pump installed in an injection system are offered on the market.
From published European patent application EP 1 226 355 B1, only a diagnosis method is known by which merely references to different errors or malfunctions of an injection pump can be determined without “invasive” intervention in the injection system. In this known method, the time characteristic of the pressure on the pressure side of the injection pump is detected essentially with the aid of a pressure sensor operating as component of the injection system for its control in the adaptation to different loading or operating states of the engine, and the time characteristic is subsequently converted into a frequency spectrum with the help of a computer, the frequency spectrum exhibiting clear maximums in the base or fundamental frequency of the pump, and also in its multiple, as a function of the engine speed in an intact injection pump. In the case of a three-piston pump provided according to published European patent application EP 1 226 355 B1, the maximums lie at the fundamental frequency f1 as well as twice or triple the fundamental frequency, i.e., at f2=2f1, and f2=3f1. By subsequently comparing the frequency spectrum of the pump to be checked with a standard frequency spectrum of a fault-free injection pump, it is possible to derive empirically verifiable references to different faults of the injection pump as a function of the individually determined differences. However, no information whatsoever about the actual delivery volume of the injection pump to be checked or its relative output capacity in comparison with a theoretical delivery volume are determined in this manner. Thus, the parameter that is decisive for the output capacity of an injection pump, i.e., the delivery volume or an equivalent parameter, is not determined.
Therefore, it is the object of the present invention to provide a method and a device for determining the delivery rate of an injection pump without any intervention in the injection system.
The present invention is based on the recognition that it is definitely possible with corresponding information processing, to determine references to the measure of the delivery rate or the relation with the delivery rate in comparison to a standard delivery rate by the basically known detection of the frequency spectrum of the pressure on the pressure side of an injection pump. In the present invention, the particular fact is utilized that uneven outputs of the pump, i.e., uneven delivery rates of the pump pistons, have a considerable effect on the frequency spectrum, and that the deviations from a normal output of the pump that accompany uneven outputs are easily able to be determined using the information processing of the present invention.
Because of the scaling of the detected amplitudes of fundamental frequency f1 according to the invention and the additional characteristic frequencies f2 through fn of the frequency spectrum, random influences on the measure of the amplitude are eliminated. The number n of the characteristic frequencies is defined by the number of pistons of the injection pump. Typical injection pumps have three pistons, so that characteristic frequencies f1 through f3 occur. Finally, the present invention utilizes the fact that it is possible to assign different truth values or membership degrees for linguistically specifiable quality grades or quality values (e.g., “good”, “good/marginal”, “average”, “poor” or “defective”) to the values of different quotients formed from differently scaled amplitudes. A specifiable logic (in particular fuzzy logic) is used for this purpose.
It is then possible to assign empirically backed delivery volumes to the determined combinations of quality grades.
The delivery volumes determined in this manner then need only be compared with a limit delivery volume in order to decide whether the individual injection pump to be checked is defective or whether it needs to be exchanged.
Since it is sufficient in the method according to the present invention to detect the signals from a pressure sensor routinely available in the vehicle on the pressure side of the injection pump, there is the advantageous possibility of placing the data processing means and memory necessary for implementing the present method in the vehicle and possibly storing references to a reduced delivery volume of the injection pump in a memory able to be read out when the vehicle is inspected, or making a display available to the driver, which suggests a visit to the service facility to the driver before further operation of the vehicle becomes impossible as a result of a defect of the injection pump. However, the method according to the present invention is not restricted to vehicles having a pressure sensor installed in the vehicle. Instead, in injection systems without their own pressure sensor it is also possible to detect the pressure signals “off-board” using an additional sensor, e.g., a gripping pressure sensor, which has to be affixed separately in a non-invasive manner. As a result, the method of the present invention may also be used for old vehicles.
With regard to preferred features of the present invention, reference is made to the claims and the following elucidation of the drawing, with the aid of which the method according to the present invention and the device suitable for implementing the method are described in greater detail.
Protection is sought not only for expressly mentioned or illustrated feature combinations, but basically also for any individual features or any combinations of the individual features of the mentioned or illustrated feature combinations.
The additional figures show details of the present invention or the associated technological background.
To simplify the illustration, hereinafter it is assumed that the injection pump has three pistons.
In illustration A of
Illustration B clarifies the advantages of the present invention, once again in the form of a “black box”. In the present invention, the values of pressure p on the pressure side of the injection pump are recorded again on the input side. In an evaluation according to the present invention, it is therefore possible to indicate a dimension number for delivery volume FV or a dimension number range of the delivery volume. If desired, the delivery volume determined in this manner may then be automatically compared with a defined, minimally allowed delivery volume. If the determined delivery volume is smaller than the minimally allowed delivery volume, then a display “exchange injection pump” will be generated. If the determined delivery volume is sufficiently close to the defined, minimally allowed delivery volume, then a reference to a reduced (but sufficient) delivery rate may be stored in a diagnosis memory or similar device. If the delivery rate is sufficient, then such a display will be dispensed with, and no entry will be made the diagnosis memory.
According to position 104, quality classes Q(mj), such as the classes “good”, “good/marginal”, “average”, “poor” or “defective” may be assigned to the values of scaled amplitudes mj, based on expert knowledge stored in a memory. The number of classes may be specified according to the desired precision, i.e., the range of possible values of m1 and m2 is subdivided into basically freely selectable classes.
Based on empirical findings, value ranges of m1 may, for example, be assigned five classes, i.e., five linguistic values (e.g., “good”, “good/marginal”, “average”, “poor” or “defective”). In the following text, these linguistic values for m1 are denoted by LV1,1 through LV1,5. In a similar manner, the value ranges of m2 are assigned to three linguistic values LV2,1 through LV2,3, e.g., “good”, “average” or “defective”. This is illustrated in
A fuzzy logic is used, which allows a fuzzy class description. This method has two essential advantages in comparison with other classification methods:
This makes it possible to incorporate verbal expert knowledge from the pump development or of skilled service station personnel in the class description. Such a rule may read:
IF m1=good AND m2=good, THEN the pump delivery rate ratio (PFV)=100%.
Furthermore, since the classes are not subdivided based on sharply defined boundaries, the classification results are less affected by interference (e.g., by temperature and pressure fluctuations or measuring noise).
The truth value or membership degree μ to a class may assume values between 0 and 1 according to the above statements, and describes the strength of the membership of a feature in a particular class or linguistic variable. According to the above statements, the classes are selected in such a way that the sum of the membership degrees always results in the value 1 for all values of m1 and m2, i.e.,
The peak values of the membership functions of
In position 105 of
Based on the measurements and statements from the pump development and calculations of the mass balance, a control basis for the pump assessment with the aid of features m1 and m2 is able to be set up. The following table provides an example for such a control basis, in which the expert knowledge is linked to the features. It helps in estimating the pump's delivery rate-ratio for each linguistic value as a function of the class membership of the feature.
The rules in this table are able to be read as follows:
IF m1=good AND m2=average, THEN PFV=90%.
The aforementioned rules are linked to one another and processed according to the fuzzy logic theory, in the steps of fuzzification, aggregation, implication, accumulation and defuzzification, for instance.
The AND operation (aggregation) from the rules is implemented with the aid of a minimum operator, for example:
μres,i=min{μLV1,κ(m1),μLV2,j(m2)}
where
μres,i=the result of the fuzzy membership function for rule i,
μLV1,κ=membership degree m1 to class k,
μLV2j=membership degree m2 to class j.
This is followed by the implication, which implements the IF-THEN linkage. If, as shown in
In a next step, the implication result of all rules must be linked. A maximum operator, for example, is used for this purpose:
μakk(PFV)=max{μres,i(m1,m2,PFV), . . . , μres,i(m1,m2,PFV)}
One possible result of the accumulation is shown in
A final statement regarding the pump's delivery rate-ratio is obtained in position 106 of
The result is the estimated pump delivery rate-ratio in percent (P {circumflex over (F)} V). The ratio formation and percentage representation has been selected to better estimate the delivery rate, but it is also possible to work with direct pump delivery rates.
PFVi denotes the delivery rate ratio in percent at location i following the aggregation. μagg,i is the resulting membership function following the accumulation of all rules at location i.
Number | Date | Country | Kind |
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10 2008 001 182 | Apr 2008 | DE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/EP2009/053641 | 3/27/2009 | WO | 00 | 1/21/2011 |
Publishing Document | Publishing Date | Country | Kind |
---|---|---|---|
WO2009/127510 | 10/22/2009 | WO | A |
Number | Name | Date | Kind |
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5578752 | Schlecht et al. | Nov 1996 | A |
7013223 | Zhang et al. | Mar 2006 | B1 |
Number | Date | Country |
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196 25 947 | Sep 1997 | DE |
103 34 817 | Mar 2005 | DE |
1 226 355 | Aug 2005 | EP |
1 674 365 | Jun 2006 | EP |
Entry |
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S.H.Gawande, Cylinder Imbalance Detection of Six Cylinder Dl Diesel Engine Using Pressure Variation, S. H. Gawande et al/ International Journal of Engineering Science and Technology, vol. 2(3), 2010, 433-441. |
Number | Date | Country | |
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20110106463 A1 | May 2011 | US |