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Generating Traffic Safety Test Scenarios for Automated Vehicles using a Big Data Technique

机译:使用大数据技术为自动化车辆生成交通安全测试场景

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This study proposes a Big Data technique-based crash scene re-construction method in order to provide a systematic and effective way of developing critical traffic safety test scenarios for automated vehicles. It is widely understood that crashes occur through conflicts between road users and unsafe traffic conditions. Crash data are thus a useful resource to capture unsafe traffic conditions. Nevertheless, in practice many of the automated vehicle traffic test scenarios have been developed based on engineer's judgment or aggregated crash statistics and studies, because crash data are too abundant to be comprehensively investigated. The proposed Big Data technique-based method provides the following innovations in developing automated vehicle test scenarios: abundant crash data can be investigated at once and in a short period of time using a text-weight analysis, which is one of the representative Big Data analytics; a comprehensive set of automated vehicle test scenarios can be developed by taking all significant words that frequently appear in crash descriptions into consideration; and the method can even be flexible in terms of capturing significant words by excluding or including specific words and setting a threshold of the word frequency. This proposed Big Data technique-based method is validated in comparison with the resulting test scenarios from a manual investigation of crash data, and it was found that 14 of a total of 18 scenarios correspond to the scenarios from manual investigation and the other four scenarios are additionally derived by the proposed approach. With these innovations in mind, the Big Data technique-based method proposed in this study is not only a systematic and practical approach but also leads to the development of a comprehensive set of automated vehicle test scenarios, by comprehensively taking into consideration significant words of crash descriptions, which should be carefully considered in developing automated vehicle test scenarios.
机译:本研究提出了一种基于数据技术的崩溃场景重新构建方法,以便为制定自动车辆的关键交通安全测试场景提供系统和有效的方法。众所周知,通过道路用户与不安全的交通状况之间的冲突发生崩溃。因此,崩溃数据是捕获不安全流量条件的有用资源。然而,在实践中,许多自动化车辆交通测试场景是基于工程师的判断或聚合的崩溃统计和研究开发的,因为崩溃数据太丰富了才能全面调查。所提出的基于数据技术的方法提供了以下开发自动化车辆测试场景的以下创新:可以使用文本重量分析在短时间内进行丰富的崩溃数据,这是其中一个代表性的大数据分析之一;通过考虑经常出现在碰撞描述中的所有重要词组,可以开发一套全面的自动化车辆测试场景;并且该方法甚至可以通过排除或包括特定单词来捕获重要词语并且设置字频率的阈值来灵活。这提出的基于数据技术的方法是与从手动调查崩溃数据的测试场景进行了验证的,并且发现总共18个方案的14个方案与手动调查的方案相对应,另外四种情况是另外通过所提出的方法来源。通过这些创新,本研究提出的基于大数据技术的方法不仅是一种系统和实用的方法,而且还通过全面考虑到崩溃的重要话语来导致一系列全面的自动化车辆测试场景。在开发自动化车辆测试场景时应仔细考虑的描述。

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