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汽车制动力曲线异常检测

宁航 南春丽 杨澜 赵祥模 刘浩学 周丹

宁航, 南春丽, 杨澜, 赵祥模, 刘浩学, 周丹. 汽车制动力曲线异常检测[J]. 交通运输工程学报, 2018, 18(6): 82-92. doi: 10.19818/j.cnki.1671-1637.2018.06.009
引用本文: 宁航, 南春丽, 杨澜, 赵祥模, 刘浩学, 周丹. 汽车制动力曲线异常检测[J]. 交通运输工程学报, 2018, 18(6): 82-92. doi: 10.19818/j.cnki.1671-1637.2018.06.009
NING Hang, NAN Chun-li, YANG Lan, ZHAO Xiang-mo, LIU Hao-xue, ZHOU Dan. Anomaly detection of automobile braking curves[J]. Journal of Traffic and Transportation Engineering, 2018, 18(6): 82-92. doi: 10.19818/j.cnki.1671-1637.2018.06.009
Citation: NING Hang, NAN Chun-li, YANG Lan, ZHAO Xiang-mo, LIU Hao-xue, ZHOU Dan. Anomaly detection of automobile braking curves[J]. Journal of Traffic and Transportation Engineering, 2018, 18(6): 82-92. doi: 10.19818/j.cnki.1671-1637.2018.06.009

汽车制动力曲线异常检测

doi: 10.19818/j.cnki.1671-1637.2018.06.009
基金项目: 

高等学校学科创新引智计划项目 B14043

国家重点研发计划项目 2017YFC0804806

国家自然科学基金项目 61703053

详细信息
    作者简介:

    宁航(1975-), 男, 辽宁沈阳人, 长安大学讲师, 工学博士研究生, 从事汽车检测研究

    赵祥模(1966-), 男, 重庆大足人, 长安大学教授, 工学博士

  • 中图分类号: U461.3

Anomaly detection of automobile braking curves

More Information
  • 摘要: 研究了制动力曲线异常检测方法, 分析了回踩异常特性, 考虑了制动力检测工况和制动力曲线变化趋势, 基于余弦相似度与相对误差, 对制动力数据进行聚类, 建立了制动力曲线分段算法; 将制动力曲线分为阻滞段、上升段、持续段和释放段, 提取出相应的数据子集; 对3家检验机构的9 120条制动力曲线进行人工筛选和分析, 归纳了制动超前、回踩、增长滞后3种异常特征, 给出了相应异常检测算法; 对于较难识别的回踩异常, 根据动态规划思想, 找出上升段最长连续趋势下降子序列, 计算了该子序列占制动力曲线上升段的行程比, 并结合经验值来判定该子序列是否异常。研究结果表明: 对于维度不大于32的低维制动力数据, 通过余弦相似度可聚类制动力曲线的阻滞段、上升段、持续段和释放段; 对于维度大于32的高维数据, 因为维数较高, 行程比较小, 分界点对整个序列相似度影响较小, 在这种情况下, 必须在考虑相似度的情况下, 通过分界点的相对误差进一步约束聚类结果, 可以确定制动力曲线的阻滞段、上升段、持续段和释放段; 由于采集的回踩子序列占制动力曲线的行程比为9.8%, 大于行程比的经验阈值8.2%, 因此, 该制动力曲线具有回踩异常, 判断结果正确, 方法可靠。

     

  • 图  1  制动检验台结构

    Figure  1.  Brake tester structure

    图  2  测控系统

    Figure  2.  Measurement and control system

    图  3  制动力理论曲线

    Figure  3.  Theoretical curves of braking force

    图  4  超前制动异常检测算法流程

    Figure  4.  Detection algorithm flow of advance braking anomaly

    图  5  超前制动异常

    Figure  5.  Advance braking anomaly

    图  6  异常示例

    Figure  6.  Anomaly illustrations

    图  7  回踩判断结果

    Figure  7.  Judgement results of backstep

    图  8  制动力曲线异常检测算法

    Figure  8.  Anomaly detection algorithm of braking force curve

    图  9  制动力增长滞后异常

    Figure  9.  Braking force growth lag anomalies

    图  10  制动力曲线

    Figure  10.  Braking force curve

    图  11  相似度和相对误差曲线

    Figure  11.  Curves of similarity and relative error

    表  1  阻滞段聚类过程中的相似度和相对误差

    Table  1.   Similarities and relative errors of blocking data in clustering process

    下载: 导出CSV
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  • 收稿日期:  2018-09-26
  • 刊出日期:  2018-12-25

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