一种新的基于连接设备的故障模式和影响分析模型

Jinfeng Li, Chen Xuan, B. Shao, Hao Ji, Changrui Ren
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引用次数: 1

摘要

失效模式和影响分析(FMEA)是一种众所周知的设计工具,用于分析部件失效并确定其结果影响。传统的FMEA模型需要工程师对零件失效的技术检测难度进行估算。此外,故障发生只能根据历史维护数据进行计算。然而,在基于物联网的环境下,安装在被连接设备上的传感器可以连续传输设备状态信号,这极大地有助于使设备故障分析工作更高效、更客观、更准确。本文提出了一种新的基于连接设备数据的FMEA模型。提出了一种新的故障难度生成器来客观地计算检测难度。故障发生级别由新的事件创建者智能地生成。设计了一种屋状破坏关联创建器,用于挖掘破坏关联。最后,采用一种新的风险RPN估计方法对故障风险进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new connected device-based Failure Mode and Effects Analysis model
Failure Mode and Effects Analysis (FMEA) is a well-known design tool used to analyze component failures and identify the resultant effects. Traditional FMEA model requires engineers' input on estimating technical detection difficulty of part failure. Moreover, failure occurrence can only be computed based on historical maintenance data. However, under the IoT based environment, sensors installed on connected devices can transmit continuous signals of device status, which is greatly helpful to make the device failure analytical work more efficient, more objective and more accurate. In this paper, we propose a new FMEA model based on connected device data. A new failure a difficulty creator is proposed to objectively compute detection difficulty. Failure occurrence level is intelligently generated by a new occurrence creator. A house-roof shaped failure correlation creator is designed to mine the correlation of failures. Finally, a new risk RPN estimation method is used to rank the risk of failure.
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