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Accelerated testing for automated vehicles safety evaluation in cut-in scenarios based on importance sampling, genetic algorithm and simulation applications

机译:基于重要性采样,遗传算法和仿真应用的插电场景中的自动车辆安全评估加速测试

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PurposeIt would take billions of miles’ field road testing to demonstrate that the safety of automated vehicle is statistically significantly higher than the safety of human driving because that the accident of vehicle is rare event.Design/methodology/approachThis paper proposes an accelerated testing method for automated vehicles safety evaluation based on improved importance sampling (IS) techniques. Taking the typical cut-in scenario as example, the proposed method extracts the critical variables of the scenario. Then, the distributions of critical variables are statistically fitted. The genetic algorithm is used to calculate the optimal IS parameters by solving an optimization problem. Considering the error of distribution fitting, the result is modified so that it can accurately reveal the safety benefits of automated vehicles in the real world.FindingsBased on the naturalistic driving data in Shanghai, the proposed method is validated by simulation. The result shows that compared with the existing methods, the proposed method improves the test efficiency by 35 per cent, and the accuracy of accelerated test result is increased by 23 per cent.Originality/valueThis paper has three contributions. First, the genetic algorithm is used to calculate IS parameters, which improves the efficiency of test. Second, the result of test is modified by the error correction parameter, which improves the accuracy of test result. Third, typical high-risk cut-in scenarios in China are analyzed, and the proposed method is validated by simulation.
机译:目的需要进行数十亿英里的现场道路测试,以证明自动驾驶汽车的安全性在统计上显着高于人类驾驶的安全性,因为汽车事故是罕见的事件。设计/方法/方法本文提出了一种针对汽车的加速测试方法基于改进的重要性抽样(IS)技术的自动车辆安全评估。以典型插入场景为例,该方法提取了场景的关键变量。然后,对关键变量的分布进行统计拟合。遗传算法用于通过解决优化问题来计算最佳IS参数。考虑到分布拟合的误差,对结果进行修正,从而可以准确地揭示现实世界中自动驾驶汽车的安全性。发现基于上海的自然驾驶数据,通过仿真验证了该方法的有效性。结果表明,与现有方法相比,该方法将测试效率提高了35%,加速测试结果的准确性提高了23%。原文/价值本文有三点贡献。首先,使用遗传算法来计算IS参数,从而提高了测试效率。其次,通过纠错参数修改测试结果,提高了测试结果的准确性。第三,分析了中国典型的高风险切入场景,并通过仿真对提出的方法进行了验证。

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