Neuro-Fuzzy Model-Based CUSUM Method Application in Fault Detection on an Autonomous Vehicle

Jun Xie, Gaowei Yan, Keming Xie, T. Y. Lin
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引用次数: 11

Abstract

One of the most important properties of autonomous vehicle is the reliability which means to detect the fault by itself and then isolate the fault. This paper combined the neural-fuzzy model with the fault hypothesis test, and put forward a neuro-fuzzy model-based Cumulative-Sum (NFCUSUM) algorithm. It gave the assumptions aiming at the faults and set the alarm when the probability of the fault case was greater than the probability of the normal case. Under the fault case the system is called to have a fault, otherwise it is normal. The core of the NFCUSUM algorithm is to find a logic fault detector (decision function) which expresses whether the fault occurs at one sample time. The design idea of the decision function is that the system is suffered a fault and gives alarm when the value of the decision function is over the preset threshold; otherwise the system is in normal mode. The simulation results in Matlab show that the logic fault detector designed by the NFCUSUM algorithm in this paper is practical, efficient and robust.
基于神经模糊模型的CUSUM方法在自动驾驶汽车故障检测中的应用
自动驾驶汽车最重要的特性之一是可靠性,即自动检测故障并隔离故障的能力。本文将神经模糊模型与故障假设检验相结合,提出了一种基于神经模糊模型的累积和(NFCUSUM)算法。针对故障给出假设,并在故障情况发生的概率大于正常情况发生的概率时设置报警。在这种情况下,系统被称为有故障,否则是正常的。NFCUSUM算法的核心是寻找一个逻辑故障检测器(决策函数),它表示在一个采样时间是否发生故障。决策函数的设计思想是,当决策函数的值超过预设阈值时,系统发生故障并报警;否则系统进入正常模式。Matlab仿真结果表明,本文采用NFCUSUM算法设计的逻辑故障检测器实用、高效、鲁棒性好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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