This application claims priority under 35 U.S.C. § 119 to patent application no. CN 2023 1130 5112.3, filed on Oct. 10, 2023 in China, the disclosure of which is incorporated herein by reference in its entirety.
This application relates to a method for real-time lateral interference detection for vehicles equipped with driver assistance systems. Specifically, this application involves a method for real-time lateral interference detection in vehicles equipped with Advanced Driver Assistance Systems (ADAS). The present disclosure also involves an apparatus for performing the method of real-time lateral interference detection in vehicles with driver assistance systems, as well as a vehicle comprising such an apparatus. Additionally, the present disclosure involves a computer-readable storage medium containing a computer program that implements the method of real-time lateral interference detection in vehicles with driver assistance systems.
With the advancement of science and technology, the driver assistance/autonomous driving functions of vehicles are becoming increasingly powerful. Currently, the automotive industry generally classifies autonomous driving functions into levels L1-L5. For the currently achievable levels L2, L3, and L4, the vehicle's autonomous driving system needs to control the vehicle's lateral dynamic motion. However, if the driving conditions are extremely adverse, the autonomous driving system may not be able to control the vehicle's lateral dynamic motion, and at this point, the driver needs to take over control of the vehicle.
Specifically, during the driver assistance/autonomous driving (DA/AD) period of the autonomous driving system, there may be significant lateral interference with the vehicle's lateral control, such as poor road conditions or strong crosswinds. In such cases, if the driver does not intervene, the vehicle may be significantly affected and deviate from the lane, posing potential dangers.
Currently, there are no means to detect the lateral interference experienced by the vehicle. Weather forecasts are considered the only method to detect crosswinds. However, this method is very crude and cannot guarantee accuracy and reliability. Moreover, crosswinds are just one of the factors that can cause lateral interference. Other factors, such as poor road conditions during rain or snow, can also cause lateral interference. These lateral interferences severely affect the usability of the autonomous driving system.
Although existing lane departure monitoring can somewhat prevent danger, once an alert is issued due to lane departure, it usually indicates a severe incident, and the vehicle will rapidly deviate from the lane. If the driver cannot take over control of the vehicle in time, it is highly likely that a dangerous situation will occur. Therefore, detecting the lateral interference experienced by the vehicle as early as possible before it deviates from the lane can better prevent danger.
Given the aforementioned issues, the present disclosure aims to provide a method and apparatus for lateral interference detection in a vehicle equipped with a driver assistance system. The present disclosure is intended to offer relatively accurate and reliable information regarding whether the vehicle is experiencing lateral interference to the autonomous driving system, thereby promptly alerting the driver to take over control of the vehicle, and thus better avoiding potential hazards.
According to one aspect of the present disclosure, a method for real-time lateral interference detection in a vehicle equipped with a driver assistance system is provided, the method comprising pre-calibrating a desired yaw rate induced by a steering torque applied by the vehicle's Electric Power Steering (EPS) at different vehicle speeds to obtain the relationship between the desired yaw rate and the vehicle speed and the steering torque applied by the EPS, and the method at least comprising the following steps:
According to another aspect of the present disclosure, a method for real-time lateral interference detection in a vehicle equipped with a driver assistance system is provided, the method comprising pre-calibrating a desired yaw rate induced by a steering torque applied by the vehicle's Electric Power Steering (EPS) at different vehicle speeds to obtain the relationship between the desired yaw rate and the vehicle speed and the steering torque applied by the EPS, and the method at least comprising the following steps:
According to another aspect of the present disclosure, an apparatus for real-time lateral interference detection in a vehicle equipped with a driver assistance system is provided, comprising:
According to another aspect of the present disclosure, an apparatus for real-time lateral interference detection in a vehicle equipped with a driver assistance system is provided, comprising:
According to another aspect of the present disclosure, a computer-readable storage medium is provided, on which a computer program is stored. When the computer program is executed by a processor, it implements a method for real-time lateral interference detection for a vehicle equipped with a driver assistance system according to the present disclosure.
According to another aspect of the present disclosure, a vehicle is provided, which includes an apparatus for real-time lateral interference detection for a vehicle equipped with a driver assistance system according to the present disclosure.
The lateral interference detection method and apparatus of the present disclosure can provide relatively accurate and reliable information regarding whether the vehicle is experiencing lateral interference to an autonomous driving system. Furthermore, the technical solution of the present disclosure is based on existing sensors in the ADAS system and generally does not require the additional installation of other components. Therefore, the present disclosure can achieve lateral interference detection for an autonomous driving system at a relatively low cost.
In the following, examples of the present disclosure will be described in more detail with reference to the accompanying drawings, wherein:
Other objectives and features of the examples herein will become apparent from the detailed description provided below in conjunction with the accompanying drawings. However, it should be understood that the drawings are designed merely for illustrative purposes and are not intended to limit the scope of the present disclosure.
The vehicle in the present disclosure is equipped with a driver assistance system, particularly an Advanced Driver Assistance System (ADAS). The vehicle is at least equipped with a yaw rate sensor, a steering torque sensor, and a vehicle speed sensor, and these sensors can be located at any suitable position within the vehicle. Although not mentioned herein, other sensors besides the aforementioned ones may also be possible if needed.
The principles of the real-time lateral interference detection method of the present disclosure are described in detail below.
where WEPS represents the yaw rate induced by the EPS;
Therefore, if the vehicle speed remains constant, the vehicle's yaw rate is solely related to the steering torque of the EPS.
In such a case, in the prior art, the EPS is only activated to apply active steering torque to the vehicle when the vehicle deviates from the lane and the ADAS system attempts to control the vehicle to return it to the lane.
The real-time lateral interference detection scheme of the present disclosure is described in detail below.
where W11 represents the desired yaw rate when the vehicle speed is V1 and the torque applied by the EPS is T1. Similarly, Wmn is the desired yaw rate when the vehicle speed is Vn and the torque applied by the EPS is Tm. Of course, it is also possible to calibrate the desired yaw rate induced by the EPS at different vehicle speeds after the vehicle is manufactured.
The estimated yaw rate WEPS is calculated based on the torque TEPS detected by the torque sensor of the EPS, the vehicle speed v obtained by the vehicle speed sensor, and Table 1. Preferably, the estimated yaw rate WEPS is calculated by interpolation, although other methods such as fitting methods are also possible.
where the threshold Wth can be set based on experience and the level of vehicle autonomous driving safety.
where t represents time;
In other words, if the absolute value of the estimated yaw rate WEPS calculated from the torque TEPS detected by the torque sensor of the EPS at time t and the vehicle speed v obtained by the vehicle speed sensor at time t minus the actual yaw rate Ws detected by the yaw rate sensor at time t+Δt is greater than the threshold, it can be considered that the lateral interference experienced by the vehicle has reached a level requiring the driver to take over vehicle control.
As mentioned above, when making the above comparison, considering the time delay (Δt) between the steering torque TEPS applied by the EPS and the vehicle's yaw rate, the above formula (4) is expressed as the following formula:
where t represents time;
In other words, if the absolute value of the estimated torque TEXP calculated from the vehicle speed v obtained by the vehicle speed sensor at time t and the actual yaw rate Ws detected by the yaw rate sensor at time t minus the actual torque TEPS detected by the torque sensor of the EPS at time t−Δt is greater than the threshold, it can be considered that the lateral interference experienced by the vehicle has reached a level requiring the driver to take over vehicle control.
Of course, in cases where the vehicle speed is relatively high and does not change significantly, the effect of the time delay (Δt) can be ignored. For example, when the vehicle speed is higher than a predetermined value and the acceleration/deceleration is lower than a preset value, the effect of the time delay (Δt) can be ignored. That is, the above formula (5) can be replaced by the following formula.
The steps of the method according to the present disclosure are illustratively described below with reference to the accompanying drawings.
In step S100, lateral interference detection begins.
In step S110, the actual steering torque TEPS applied by the Electric Power Steering (EPS) at time t is detected by the vehicle's torque sensor, and the vehicle speed v at time t is obtained by the vehicle's speed sensor.
In step S120, the estimated yaw rate WEPS is calculated using the actual steering torque TEPS at time t, the vehicle speed v at time t, and Table 1 through interpolation.
In step S130, the actual yaw rate Ws at time t+Δt is detected by the yaw rate sensor.
In step S140, the estimated yaw rate WEPS calculated in step S120 is compared with the actual yaw rate Ws detected in step S130. If the absolute value of the difference between the estimated yaw rate WEPS and the actual yaw rate Ws is less than the threshold Wth, the process returns to step S100. If the absolute value of the difference between the estimated yaw rate WEPS and the actual yaw rate Ws is greater than the threshold Wth, the process advances to step S150.
In step S150, it is determined that the lateral interference experienced by the vehicle has reached a level requiring the driver to take over vehicle control, and preferably, a warning signal is issued. Preferably, the warning signal includes voice signals, steering wheel vibrations, cursor flashing on the display, etc. Optionally, if the driver does not take over vehicle control after a certain period of alerting, the vehicle may take measures such as automatic deceleration or automatic braking to minimize the risk of an accident.
Below, a flowchart of a real-time lateral interference detection method according to another example of the disclosure is illustratively described in conjunction with
In step S200, lateral interference detection begins.
In step S210, the actual steering torque TEPS applied by the EPS at time t is detected by the torque sensor.
In step S220, the vehicle speed v at time t+Δt is obtained by the vehicle's speed sensor, and the actual yaw rate Ws at time t+Δt is detected by the yaw rate sensor.
In step S230, the estimated steering torque TEXP at time t applied by the EPS is calculated through interpolation using the vehicle speed v at time t+Δt and the actual yaw rate Ws at time t+Δt. The reason for calculating the estimated steering torque TEXP at time t using the vehicle speed v at time t+Δt and the actual yaw rate Ws at time t+Δt through interpolation is to account for the time delay Δt between the steering torque applied by the EPS and the vehicle's yaw rate.
In step S240, the estimated steering torque TEXP at time t calculated in step S230 is compared with the actual steering torque TEPS at time t detected in step S210. If the absolute value of the difference between the actual steering torque TEPS and the estimated steering torque TEXP is less than the threshold Tth, the process returns to step S200. If the absolute value of the difference between the actual steering torque TEPS and the estimated steering torque TEXP is greater than the threshold Tth, the process advances to step S250.
In step S250, it is determined that the lateral interference experienced by the vehicle has reached a level requiring the driver to take over vehicle control, and preferably, a warning signal is issued. Preferably, the warning signal includes voice signals, steering wheel vibrations, cursor flashing on the display, etc. Optionally, if the driver does not take over vehicle control after a certain period of alerting, the vehicle may take measures such as automatic deceleration or automatic braking to minimize the risk of an accident.
In the above examples, when the vehicle speed is higher than a predetermined value and the acceleration or deceleration is lower than a preset value, the effect of the time delay Δt can be ignored, i.e., Δt can be considered equal to 0.
Furthermore, the steps of the above method are not necessarily in chronological order. For example, in the first example, step S130 can be performed in parallel with step S110, and when ignoring the effect of the time delay Δt, i.e., assuming Δt equals 0, step S130 can be performed simultaneously with step S110. Similarly, steps S210 and S220 in the second example can also be performed in parallel.
Therefore, although the features of the examples have been shown and described herein, it is understood that those skilled in the art can make various omissions, substitutions, and changes in the form and details of the methods shown and their operations, and the sequence of the steps of the above methods is merely exemplary. Adjustments to the steps of the method of the disclosure are possible as long as the functions of the disclosure can be achieved. For example, all combinations of method steps that perform substantially the same function in substantially the same way to achieve the same result are equivalent.
Number | Date | Country | Kind |
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2023 1130 5112.3 | Oct 2023 | CN | national |