基于中国特色场景的L3智能汽车测试与评价方法研究

Zhibin Du, Lu Zhang, Shuai Zhao, Quanshan Hou, Yang Zhai
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引用次数: 1

摘要

随着自动驾驶技术的发展,L3级智能网联汽车逐渐进入矢量量产阶段,测试验证是衡量其功能的重要环节。目前尚无相关的指导方法。本文以中国汽车技术研究中心的自然驾驶场景数据库为基础,采用LGBM决策树模型提取场景的典型特征,并根据每棵树的权重输出最终的高复杂度场景。同时,结合CIDAS事故现场和参数重组场景,提出了一种L3智能汽车功能测试的场景设计方法和评估方法。最后,在智能网联汽车VIL测试平台上进行验证。结果表明,该方法与实际车辆试验结果有较好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Test and Evaluation Method of L3 Intelligent Vehicle Based on Chinese Characteristics Scene
With the development of autonomous driving technology, the L3 intelligent and connected vehicle gradually takes the vector production stage, and test verification is an essential part to measure its functionality. There is no relevant guidance method at present. Based on the natural driving scene database of China Automotive Technology and Research Center, this paper uses LGBM decision tree model to extract the typical features of the scene, and outputs the final high complexity scene according to the weight of each tree. At the same time, combined with CIDAS accident scene and parameter recombination scenario, this paper proposes a kind of scene design method and evaluation method for L3 intelligent vehicle function test. Finally, the verification is carried out on the intelligent and connected vehicle VIL test platform. The results show that the method has good consistency with the actual vehicle test results.
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