Study on Perceptive Fuzzy Petri Net-based Autoloader Fault Analysis

Yingshun Li, S. Sheng, Yintu Zhang, X. Yi
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Abstract

To address the problems of high incidence of faults in tank autoloaders, long diagnosis cycle and low accuracy of diagnosis, this paper proposed a perceptive fuzzy Petri net-based fault diagnosis method on the basis of relevant expertise. The corresponding NFPN failure model was established according to the specific structure of the autoloader, fuzzy Petri net was used to present the process of fault propagation, the perceptron error back propagation method was adopted to learn the limited expertise, and the values of arc weights of trigger accidents in the Petri net were determined. An accurate judgment on autoloader faults was achieved by way of forwarding reasoning. At the time of backward reasoning, the minimal cut set method was also adopted to narrow the troubleshooting scope, thus improving the reasoning efficiency. By taking an autoloader with a rotary failure as an example, this paper established the corresponding PFPN fault model and made a comparison with the fault tree seasoning method and the historical statistic data. The comparison results reveal that this method can realize a quick and high-efficiency fault diagnosis of autoloaders thanks to its higher reliability and accuracy compared with the traditional fault tree diagnosis method.
基于感知模糊Petri网的自动装弹机故障分析研究
针对坦克自动装弹机故障发生率高、诊断周期长、诊断准确率低等问题,在相关专业知识的基础上,提出了一种基于感知模糊Petri网的故障诊断方法。根据自动装弹机的具体结构,建立相应的NFPN故障模型,采用模糊Petri网表示故障传播过程,采用感知机误差反向传播法学习有限经验,确定触发事故在Petri网中的弧权值。采用转发推理的方法对自动装弹机的故障进行了准确的判断。在进行逆向推理时,还采用了最小割集方法来缩小故障排除范围,从而提高了推理效率。以某自动装弹机发生旋转故障为例,建立了相应的PFPN故障模型,并与故障树调味法和历史统计数据进行了比较。对比结果表明,与传统的故障树诊断方法相比,该方法具有更高的可靠性和准确性,能够实现快速高效的自动装弹机故障诊断。
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