The present invention relates to a device and a method for triggering passenger protection means according to the definition of the species of the independent patent claims.
DE 102 004 042 467 A1 has already described a method and a device for generating a deployment signal for a pedestrian protection device. In this method, a deployment check and a plausibility check of the sensor data are performed, an extraction of features and/or an offset recognition being performed in the deployment check to recognize a pedestrian using the sensor data, thus determining a point of impact of the object, the deployment signal for the pedestrian protection device being generated when a collision with a pedestrian is recognized in the deployment check and the plausibility check of the sensor data is positive.
The device and method according to the present invention for triggering passenger protection means having the features of the independent patent claims have the advantage over the related art in that by determining a frequency of a signal derived from the accident signal, a very accurate and robust differentiation between a pedestrian impact and other objects is possible. This is due to the fact that different objects have a different stiffness and therefore result in a different excitation frequency. According to the present invention, the frequency is determined by the length of a signal characteristic, the added-up signal characteristic, i.e., the integrated signal characteristic, also being used. Better protection of pedestrians is then possible when this is used with a pedestrian protection system.
In the present case, the second signal may be the first signal, a filtered first signal, an averaged first signal or an integrated, i.e., added-up, first signal.
If the device and method according to the present invention are used for other types of impact, e.g., between vehicles, a better differentiation between a deployment case and a nondeployment case is possible according to the present invention. In particular, misuse objects may be identified better through the analysis of frequency according to the present invention. A higher safety potential is thus achieved and the risk of unintentional faulty deployment is reduced.
With regard to pedestrian protection, it should be noted that people differ from a great many objects for which deployment of pedestrian protection means is not desired mainly through their mass and hardness, i.e., their stiffness. This is illustrated in
Deployment crashes often differ from nondeployment crashes and misuse objects in the frequency characteristic of the acceleration signals. The frequency characteristic of the acceleration signals is determined by the sequence of breakage processes in the impact zone. Nondeployment crashes usually have lower-frequency acceleration signals than deployment crashes because of the lower crash speed and therefore the slow breakage processes. Misuse objects often have frequency characteristics that differ significantly from crash signals. First of all, they may have a lower frequency than crash signals, e.g., a pile of gravel, but they may also have a higher frequency, e.g., hammer blows. The goal is to detect these frequency differences in the acceleration signal. The acceleration sensor which detects acceleration in the longitudinal direction of the vehicle, e.g., in a centrally situated airbag control unit, is therefore most suitable for front crashes. However, it is also conceivable for the frequencies of a transverse acceleration sensor or the so-called upfront sensors to be analyzed. The upfront sensors are installed in the front of the vehicle. The resulting frequency information may then be used to influence the main algorithm, which continues to operate on the basis of acceleration signals and their first and second integral by adapting the deployment thresholds. The intervention in the main algorithm may in principle take place in the same way as with other additional algorithms, e.g., the upfront algorithm influences the main algorithm.
For a side crash, the frequency analysis is most suitably performed on the basis of the peripheral transverse acceleration sensors. The peripheral transverse acceleration sensors are installed in the side of the vehicle. The resulting information may be used to influence the main algorithm by adapting the deployment threshold. To do so, essentially the method of frequency determination according to the present invention is used.
The method described here involves performing a frequency analysis based on measurement of the length of the signal as well as the integrated signal, the signal itself optionally also being modified by signal processing.
Through the measures and refinements identified in the dependent claims, advantageous improvements on the device for triggering passenger protection means identified in the independent patent claims and the method for triggering passenger protection means as identified in the independent patent claims are possible.
It is advantageous in particular that the length of the signal characteristic is determined by using a difference between successive values of the signal and of the added-up signal. These differences may preferably be added up as absolute values to determine the length of the signal. The length of the signal or of the signal characteristic is a measure of the movement in the signal. Accordingly the length, e.g., of the first integral, is a measure of the movement in the first integral. High-frequency vibrations are characterized in that they build up relatively little integral, i.e., a given movement results in relatively little movement in the integral. The signal is therefore compared with the added-up or integrated signal. The term “added up” is thus understood to refer to a computational option of integration. It is therefore self-evident to use the ratio of the lengths. This yields an improved frequency estimate.
The quotient between the length of the signal and the length of the added-up signal is preferably used for this. The distance between the values of a signal to form the differences is determined by the cycling of the algorithm. This is independent of whether the vibration begins with a positive or negative half-wave. The plus or minus sign is not taken into account.
The frequency determination may be performed continuously, i.e., it may begin again at the start of the algorithm or at certain intervals.
If more than one accident sensor is used, e.g., more than one acceleration sensor or a structure-borne noise or a knock sensor, the analyzer circuit, usually the microcontroller, weights the frequencies which are ascertained for the individual accident sensors and then averages these weighted values.
The weighting is advantageously performed as a function of the length of the added-up second signal. The weighting is performed according to the length of the first integral of the signal or the added-up signal. This means that the sensor having the greatest length of the first integral is weighted the most. This ensures that the closest sensor in a pedestrian impact, which will typically see the strongest signal, also enters into the frequency estimate to a greater extent than the other sensors.
As indicated above, the accident sensor system may also be designed as an acceleration sensor system but other sensors may additionally be present. In addition to acceleration sensors, rotational rate sensors, knock sensors or structure-borne noise sensors may also be used.
Exemplary embodiments of the present invention are depicted in the drawings and are explained in greater detail in the following description.
a and 2b each show a signal characteristic diagram to illustrate the method according to the present invention,
To identify collision objects, frequency analysis is a great advantage for pedestrian protection as well as for other types of collisions. It is possible here to determine the frequency via the minimums of the acceleration signal and via the first integral and also via the second integral. This is apparent from
1. The frequency may be calculated from the minimum of the acceleration and the minimum of the first integral of the acceleration. The frequency is then obtained by division.
2. The frequency may be calculated from the minimum of the first integral and the minimum of the second integral. Here again, division may be used.
This method has potential for improvement with regard to the following points:
A. If the signal does not end after one period as described above, but instead the vibration is maintained for a longer period of time, no new maximums are reached by the acceleration and the first integral. The first calculation procedure thus continues to yield a correct estimate of frequency. However, the second integral continues to decline constantly and reaches new minimum values. The second calculation procedure is therefore no longer valid and the estimated frequencies are increasingly too low.
B. Only the first half-wave, i.e., the first full period, is detected. The remaining course in a real signal, which is not usually harmonic, is detected only when new minimums of the signal or the first and second integral are associated with this. If that is not the case, the frequency estimate no longer changes even if the signal itself should change its frequency. Such an example is shown in
It is therefore proposed according to the present invention that one should consider the length of the signal and/or signal characteristic, not the minimums of the signal of the first and/or second integral. The difference in successive values may preferably be added up as absolute values.
This is represented by curve 82 in
The invention is explained in greater detail below on the basis of the acceleration signals. However, it is also possible to use other accident signals.
Equation (3b) makes use of the fact that the difference between two successive integrator values is equal to the acceleration value assigned to this cycle. Accordingly in equation (3c) the difference between two successive values of the second integral is equal to the value of the first integral in this cycle.
Instead of the amplitude ratio (1), it is therefore advisable to use the ratio of the lengths. This yields as an improved frequency estimate
Index i runs over all computation cycles from the start of the algorithm. The frequency is thus obtained as the quotient of the length of the acceleration signal and the absolute integral of the acceleration signal.
As may easily be seen, equation (4) is independent of whether the vibration begins with a positive or negative half-wave (plus or minus sign of a).
It is likewise easy to understand that during the first half-wave of sinusoidal vibration indicated above O<t<π/ω, it holds that
length(a)=2ā and length(v)=
and thus the result of (1) is reproduced. The bar here stands for the minimum achieved in a and v, respectively.
Although second half-wave π/ω<t<2π/ω no longer contributes to (1) because the minimums of signal and integral were achieved during the first half-wave and in the second half-wave only the reverse integration to v=0 takes place, the second half-wave does indeed contribute to (4). If the vibration remains harmonic, the following holds at the end of entire period
length(a)=4ā and length(v)=2
i.e., the ratio and thus the ascertained frequency do not change. However, if the vibration should change its frequency in the second half-wave, it is detected with method (4) in contrast to method (1) and results in an accordingly corrected frequency estimate. This is illustrated in
Using the same method, equation (2) is replaceable by
The frequency is thus obtained as the quotient of the absolute integral of the acceleration signal and the absolute integral of the first integral.
In contrast to equation (2), this frequency estimate yields correct results even when the vibration does not change after a period but instead is still maintained. Then although the second integral and its length continue to increase, this is compensated by the further increase in the length of the first integral in the numerator—the ratio and thus the frequency remain constant.
Both methods (4) and (5) represent a ratio of two variables. In the control unit code, it is now self-evident to print out a threshold query of the frequency thereby ascertained, e.g.,
omega=nominator/denominator<threshold
in the form
nominator<denominator*threshold. (6).
This avoids division, which is a time-intensive computation.
For use in the area of pedestrian protection, typically two or three acceleration sensors are used. The problem arises here of how the frequencies of the individual sensor signals are to be combined while taking into account their signal intensity. If possible, division should be avoided for the individual frequencies in (4) and (5).
These requirements are met as follows. The frequency estimate (4) applied to three independent sensors in this example (left, center, right) initially yields the three individual frequencies
A weighted averaging of these three individual frequencies is now to be performed by weighting the individual sensor signals according to the length of the first integral. This means that the sensor having the greatest length of the first integral is weighted the most. This ensures that the nearest sensor in a pedestrian impact, typically seeing the strongest signal, will also be applied to the frequency estimate with an accordingly greater weight than other sensors. Using weight factors
where indices i and j stand for the individual sensors, yields the total frequency as follows:
In the numerator the length of the acceleration signals is added up over all sensors, while in the denominator the length of the first integrals (which are identical to the absolute integral of acceleration according to (3b)) are added up over all sensors. Since (7) is in turn a simple quotient, a threshold query may again be displayed in the form of (6) while avoiding division.
The frequency estimate (5) for the three individual sensors similarly yields the results
A weighted averaging is advantageously performed here in such a way that the individual sensors are weighted according to the length of their second integral. Using weighting factors
the total frequency is then obtained as
A threshold query in the form of (6) may also be represented using this result.
For application in the area of pedestrian protection, it is most suitable to perform the threshold query (6) based on equations (4), (5), (7) or (8) using a threshold, which may be selected as a function of the CAN speed and/or the recognized point of impact and/or the prevailing ambient temperature.
The comparison of the form (6) may take place in a certain time window using a constant or time-dependent threshold.
Depending on the signals of acceleration sensors B1 through B4, airbag control unit ABSG performs the frequency analysis described above. On the basis thereof, an impact object may be identified to thereby decide whether or not passenger protection means PS should be triggered. Passenger protection means PS include interior airbags, seat belt tighteners and pedestrian protection means, such as a raisable front hood and/or exterior airbags.
a illustrates the method according to the present invention in a first signal characteristic diagram. However, only two acceleration sensors B1 and B2 are considered here as examples. Acceleration sensors B1 and B2 in block 20 and 204, respectively, deliver their signals. This signal of acceleration sensor B1 is then added up in absolute values in block 21 with respect to successive values and their differences. At the same time, the acceleration signal of sensor B1 is integrated in block 23, i.e., weighted averaging or other equivalent types of integration may also be performed. Here again, in block 24 the differences between successive values are added up in absolute values. In block 22, a quotient is then formed based on these signal lengths to determine the frequency in block 25. In block 201, as explained above, weighting for the frequency from block 24 may be ascertained from the values of the first integral. However, it is also possible for other weightings that are fixedly preset or performed adaptively to be performed. This weighted frequency goes to block 203, which performs averaging. The result is then the frequency.
In the lower half of the signal path, this also takes place in parallel for signal B2. Successive values are subtracted from one another and the differences are added up in absolute values in block 26. The signal of acceleration sensor B2 is integrated in block 27, and here again, the differences between successive values are then added up in block 28. In block 29, a quotient is then formed from these values to determine the frequency in block 200. Likewise, the weighting is formed from the values of the first integral as an example in block 29 as described above to make these values available in block 202. Here again, any other weighting is also possible to amplify or diminish the signals of the individual sensors in averaging for the frequency determination accordingly. The weighting and from the frequency then result in the weighted frequency, which is also applied to averaging 203. The weighted average is then ascertained from this value. If there is only one sensor, the method according to the present invention is already terminated in block 25, for example. Weighting and averaging are then no longer necessary. If more signals from more sensors are available, these signal paths are repeated.
b illustrates an alternative signal characteristic. In block 205, the acceleration signal of sensor B1 is made available. This signal may already be low-pass filtered, for example. This signal is added up in absolute values in block 206 with respect to successive values and their differences. At the same time, the signal in block 208 is integrated and then added up in absolute values in block 209 with respect to successive values and their differences. In block 207 the sums of the accelerations that are added up in absolute values as described above are counted together, and in block 214 the sums of the integrated accelerations added up in absolute values as described above are counted together. It is thus possible according to equation (7) to form a quotient from these two sums in block 215 and then to determine the frequency in block 216. It is thus no longer necessary to form an individual quotient or to perform averaging.
Number | Date | Country | Kind |
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10 2006 044 444.2 | Sep 2006 | DE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/EP2007/057995 | 8/2/2007 | WO | 00 | 9/15/2010 |