METHOD FOR OPERATING A VEHICLE CONFIGURED FOR AUTOMATED, IN PARTICULAR HIGHLY AUTOMATED OR AUTONOMOUS DRIVING
20220194425 · 2022-06-23
Inventors
Cpc classification
B60W2554/408
PERFORMING OPERATIONS; TRANSPORTING
B60W2554/4046
PERFORMING OPERATIONS; TRANSPORTING
B60W30/16
PERFORMING OPERATIONS; TRANSPORTING
B60W2555/20
PERFORMING OPERATIONS; TRANSPORTING
B60W2554/804
PERFORMING OPERATIONS; TRANSPORTING
B60W60/0015
PERFORMING OPERATIONS; TRANSPORTING
International classification
Abstract
A method for operating a vehicle configured for highly automated or autonomous driving involves adapting control of the driving mode to the weather conditions of a vehicle's environment. Moreover, control of the driving mode is adapted by reference control parameters if the weather conditions deviate from a specified criterion. For generating the reference control parameters, driving behaviors of a plurality of vehicles in the vehicle's environment, adjacent to the vehicle, are determined. From the determined driving behaviors, an average speed, an average distance, an average acceleration, and an average deceleration are determined and are taken into account when generating the reference control parameters.
Claims
1-10. (canceled)
11. A method, comprising: operating a vehicle in an autonomous driving mode; determining weather conditions of surroundings of the vehicle; determining whether the determined weather conditions are deviate from a specified criterion; and adapting the operation of the vehicle in the autonomous driving mode, responsive to determining that the determined weather conditions deviate from the specified criterion, based on reference control parameters, wherein the reference control parameters are generated based on determined driving behaviors of a plurality of vehicles in an environment of the vehicle, which are adjacent to the vehicle, and wherein an average speed, an average distance, an average acceleration, and an average deceleration are determined based on the determined driving behaviors and are used to generate the reference control parameters
12. The method of claim 11, wherein the determination of the driving behaviors of the plurality of vehicles accounts for vehicles that are, at various time points, located in the environment of the vehicle adjacent to the vehicle.
13. The method of claim 11, wherein a distance threshold value, an acceleration threshold value, and a deceleration threshold value are determined as a function of the average speed.
14. The method of claim 13, wherein the operation of the vehicle is adapted based on the reference control parameters when the average distance deviates from the distance threshold value, the average acceleration deviates from the acceleration threshold value, or the average deceleration deviates from the deceleration threshold value.
15. The method of claim 11, wherein the average speed, the average distance, the average acceleration, or the average deceleration is adjusted by a correction factor.
16. The method of claim 11, further comprising: classifying the plurality of vehicles as a function of a vehicle type.
17. The method of claim 16, wherein the determination of the driving behaviors exclusively accounts for vehicles: having a vehicle type corresponding to a vehicle type of the vehicle being operated in the autonomous driving mode, that are in a same lane as the vehicle being operated in the autonomous driving mode, and that are in an adjacent lane, a course of which is parallel to the lane of the vehicle being operated in the autonomous driving mode for a pre-set distance.
18. The method of claim 17, wherein the course and a state of the adjacent lane are determined with a digital map stored in the vehicle, with a digital maps stored in a data processing unit outside the vehicle, information from a traffic information center, or with optical detection of the environment of the vehicle.
19. The method of claim 11, wherein the weather conditions are determined based on: a determined coefficient of friction of a road surface, a determined precipitation rate, a detected ambient temperature, environmental data detected by at least one camera, a radar, or lidar sensor, or information from a weather service outside the vehicle or a traffic management center.
20. The method of claim 11, the weather conditions are determined continuously.
Description
BRIEF DESCRIPTION OF THE DRAWING FIGURES
[0017] These show:
[0018]
[0019]
[0020] Parts that are equivalent to one another are given the same reference symbol in all the figures.
DETAILED DESCRIPTION
[0021]
[0022] The surroundings of a vehicle U comprise a roadway FB with three lanes FS1 to FS3, wherein a plurality of vehicles F.sub.Ego, F1 to F8 are located on the lanes FS1 to FS3, which move in a direction of travel x along the roadway FB. On a middle lane FS2 there are two vehicles F2, F6 and an “ego vehicle” F.sub.Ego, which is designated hereinafter as the subject vehicle F.sub.Ego. The subject vehicle F.sub.Ego is located between the vehicles F2, F6. On the other lanes FS1, FS3 there are in each case three further vehicles F1, F3 to F5, F7, F8.
[0023] The subject vehicle F.sub.Ego is configured for an automated, in particular highly automated or autonomous driving mode. Controllable parameters, for example such as a maximum speed, a maximum acceleration and/or deceleration and a minimum distance, are usually configured in such a way that the subject vehicle F.sub.Ego can safely manage traffic situations in normal weather conditions W, e.g., with a non-skidding roadway FB and absence of precipitation significantly impairing visibility. In unfavorable weather conditions W, in which, for example, a slippery road surface and/or impairment of visibility due to precipitation prevail, in manual driving mode drivers usually adapt their driving behavior to the prevailing weather conditions W. For example, they reduce their driving speed, maintain a greater distance from road users ahead, and generally decrease driving dynamics. In other words: In unfavorable weather conditions W, drivers drive more defensively than in normal or good weather conditions W.
[0024] If in these unfavorable weather conditions W the subject vehicle F.sub.Ego is controlled in the highly automated driving mode with the parameters configured for normal weather conditions W, this may possibly be perceived as unreasonable driving behavior by the occupants of the subject vehicle F.sub.Ego and/or by other road users. Therefore, a method is proposed, by means of which control of the highly automated driving mode of the subject vehicle F.sub.Ego in unfavorable weather conditions W is adapted to the driving behavior of the other vehicles F1 to F8.
[0025] In the method described in more detail hereunder, local weather conditions W are determined at the beginning (see
[0026] It is therefore possible to establish, based on the parameters described above, whether normal weather conditions W are present, which excludes a slippery road surface and/or impaired visibility e.g., due to precipitation, or whether unfavorable weather conditions W are present, which includes a slippery road surface and/or impaired visibility, e.g., due to precipitation. In normal weather conditions W, a highly automated driving mode of the subject vehicle F.sub.Ego can be regulated and/or controlled independently of the driving behavior of the other vehicles F1 to F8.
[0027] In unfavorable weather conditions W, the control of the highly automated driving mode of the subject vehicle F.sub.Ego is adapted to the driving behavior of the other vehicles F1 to F8. The control of the highly automated driving mode relates, in particular, to setting of a driving speed, driving dynamics, vehicle acceleration and/or deceleration, and a safety distance.
[0028] As the present embodiment example shows, vehicles F1 to F8 adjacent to the subject vehicle F.sub.Ego, which are detected by a sensor system (not shown) of the subject vehicle F.sub.Ego, are taken into account. The vehicles F1 to F8 may be detected by means of cameras, lidar, and/or radar sensors mounted in and/or on the vehicle F.sub.Ego. Moreover, vehicles (not shown) that were detected within a specified period in the past are also taken into account. In other words: The vehicles F1 to F8 are detected that are currently located in the vehicle's environment U, and vehicles that were located in the vehicle's environment U within a specified period in the past. Therefore, vehicles are also taken into account that were detected in the immediate past, but currently are outside of the sensing range of the subject vehicle F.sub.Ego, because the subject vehicle F.sub.Ego has for example overtaken the other vehicle.
[0029] For determining and analyzing driving behavior of the detected vehicles F1 to F8, distances d18, d20, d34, d87, d06, d45 between the vehicles F.sub.Ego, F1 to F8 are determined. Moreover, in each case a speed, an acceleration, and a deceleration of the vehicles F1 to F8 are determined. In a fourth step, an average speed is determined from the speeds found. An average acceleration a.sub.M (see
[0030] A distance threshold value d.sub.S, an acceleration threshold value a.sub.S, and a deceleration threshold value −a.sub.S are determined as a function of the average speed determined (see
[0031] Moreover, it may be provided that the average speed, the average distance d.sub.M, the average acceleration a.sub.M, and/or the average deceleration −a.sub.M is or are provided with a correction factor. The correction factor comprises, for example, regional and/or cultural factors, so that a need for safety and comfort can be taken into account as a function of the region. For example, road users in northern latitudes and/or mountainous regions are used to snow-covered and ice-covered roadways FB and therefore have safer driving behavior in wintry weather conditions W compared to road users in southern latitudes and/or lowland regions. The road users with safer driving behavior will therefore drive less defensively than other, in particular unpracticed road users. The driving behavior of road users therefore shows regional differences, and the method described here takes these differences into account.
[0032] The threshold values described above thus form a reliable criterion for adapting the control of the highly automated driving mode of the subject vehicle F.sub.Ego. If the average distance d.sub.M deviates from the distance threshold value d.sub.S, if the average acceleration a.sub.M deviates from the acceleration threshold value a.sub.S, and/or if the average deceleration −a.sub.M deviates from the deceleration threshold value −a.sub.S, it may be concluded that the other vehicles F1 to F8 are on average driving more defensively than in normal weather conditions W. In other words: The drivers of the vehicles F1 to F8 have adapted their driving behavior to the weather conditions W. If this is so, the control of the highly automated driving mode of the subject vehicle F.sub.Ego is also adapted to the weather conditions W. If this is not so, no adaptation takes place.
[0033] The adaptation of the control of the highly automated driving mode of the subject vehicle F.sub.Ego to the weather conditions W takes place by means of reference control parameters R (see
[0034] For determining and analyzing the driving behavior of the other vehicles F1 to F8, optionally a classification of the vehicles F1 to F8 is undertaken as a function of a vehicle type. It is thus possible that only vehicles F1 to F8 are taken into account that are of the same vehicle type as the subject vehicle F.sub.Ego. If, for example, the subject vehicle F.sub.Ego is a passenger car, only vehicle types are taken into account that are also passenger cars. All other vehicle types, e.g., lorries, buses, special vehicles, cyclists, and other road users, e.g., pedestrians, are left out of consideration when determining and analyzing the driving behavior. It is thus possible to prevent, for example, an acceleration behavior of the subject vehicle F.sub.Ego in the form of a passenger car being adapted to an acceleration behavior of a lorry or bus, as this could be perceived as disturbing by other passenger cars.
[0035] Moreover, when determining driving behavior, exclusively vehicles are taken into account that are in the same lane FS2 as the subject vehicle F.sub.Ego and that are in an adjacent lane FS1, FS3, the course of which is parallel to the subject lane FS2 for a preset distance, in particular a distance ahead. In this case it is verified, for example, whether the adjacent lane FS1, FS3 branches off or is blocked within a distance ahead of the subject vehicle F.sub.Ego, for example of two kilometers. If this is the case and this does not apply to the subject lane FS2, the vehicles F1, F3 to F5, F7, F8 in this adjacent lane FS1, FS3 are not taken into account when determining and analyzing the driving behavior. In a built-up area, in this case for example a distance from a block of buildings may be specified as the distance ahead, provided they are not exclusive turning lanes.
[0036] The course and a state of the adjacent lane FS1, FS3 may, for example, be determined with a map stored in the subject vehicle F.sub.Ego or in a data processing unit outside the vehicle, information from a traffic information center, and/or with optical detection of the vehicle's environment U. The data processing unit outside the vehicle is, for example, a backend server, which has knowledge of the course and/or state of the adjacent lane FS1, FS3 by means of vehicle-to-X communication.
[0037]
[0038] In a first step S1, the weather conditions W are determined in accordance with the description from
[0039] In a second step S2, it is verified whether the weather conditions W are favorable. If they are favorable, the method is brought back to the first step S1. If the weather conditions W are unfavorable, a third step S3 follows, in which the driving behaviors of the detected vehicles F1 to F8 are determined in accordance with the description from
[0040] In a fourth step S4 it is verified whether the mean values a.sub.M, −a.sub.M, d.sub.M deviate from the threshold values a.sub.S, −a.sub.S, d.sub.S. If the average distance d.sub.M deviates from the distance threshold value d.sub.S, the average acceleration a.sub.M deviates from the acceleration threshold value a.sub.S, and/or if the average deceleration −a.sub.M deviates from the deceleration threshold value −a.sub.S, a fifth step S5 follows. If the mean values a.sub.M, −a.sub.M, d.sub.M do not deviate from the threshold values a.sub.S, −a.sub.S, d.sub.S, the method is brought back to the third step S3 or optionally to the first step S1.
[0041] Adaptation of the control of the driving mode of the subject vehicle F.sub.Ego by means of the reference control parameters R takes place in the fifth step S5. Furthermore, conformity of the reference control parameters R with the weather conditions W is verified continuously. In particular, it is verified continually whether the weather conditions W have changed and whether in consequence further adaptation of the control of the driving mode by means of the reference control parameters R is required.
[0042] Although the invention has been illustrated and described in detail by way of preferred embodiments, the invention is not limited by the examples disclosed, and other variations can be derived from these by the person skilled in the art without leaving the scope of the invention. It is therefore clear that there is a plurality of possible variations. It is also clear that embodiments stated by way of example are only really examples that are not to be seen as limiting the scope, application possibilities or configuration of the invention in any way. In fact, the preceding description and the description of the figures enable the person skilled in the art to implement the exemplary embodiments in concrete manner, wherein, with the knowledge of the disclosed inventive concept, the person skilled in the art is able to undertake various changes, for example, with regard to the functioning or arrangement of individual elements stated in an exemplary embodiment without leaving the scope of the invention, which is defined by the claims and their legal equivalents, such as further explanations in the description.