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Performance Limit Evaluation Strategy for Automated Driving Systems

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摘要 Efficient detection of performance limits is critical to autonomous driving.As autonomous driving is difficult to be realized under complicated scenarios,an improved genetic algorithm-based evolution test is proposed to accelerate the evaluation of performance limits.It conducts crossover operation at all positions and mutation several times to make the high-quality chromosome exist in candidate offspring easily.Then the normal offspring is selected statistically based on the scenario com-plexity,which is designed to measure the difficulty of realizing autonomous driving through the Analytic Hierarchy Process.The benefits of modified cross/mutation operators on the improvement of scenario complexity are analyzed theoretically.Finally,the effectiveness of improved genetic algorithm-based evolution test is validated after being applied to evaluate the collision avoidance performance of an automatic parallel parking system.
出处 《Automotive Innovation》 EI CSCD 2022年第1期79-90,共12页 汽车创新工程(英文)
基金 This work is supported by the Open Fund of State Key Laboratory of Vehicle NVH and Safety Technology under Grant NVHSKL-202009 the Technological Plans of Chongqing under grant cstc2019jcyj-zdxm0022.
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