首页> 外文会议>Intelligent Transportation Systems, 2005. Proceedings. 2005 IEEE >Large-scale conveyor belt system maintenance decision-making by using fuzzy causal modeling
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Large-scale conveyor belt system maintenance decision-making by using fuzzy causal modeling

机译:基于模糊因果模型的大型输送带系统维修决策

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Conveyor belt systems have been significantly developed for decades and are playing a critical role in todays large-scale continuous transport systems. Traditional conveyor belt monitoring focuses on catastrophic failure. Failure alarms and maintenance decisions are submitted separately without revealing relationships of monitored events. Causal modeling such like Bayesian methodology provides intuitive and mathematically sound tools to understand complex relations between uncertain variables and failure causes. However to derive inference knowledge for validating causal modeling is difficult. This paper introduces a causal modeling methodology based on Bayesian inference to diagnose failure situation and decide relative maintenance operations for large-scale conveyor belt systems. Fuzzy logic is applied to estimate the likelihood density function which is usually hard to be obtained for causal inferences. This methodology is applied as a maintenance decision-making process in intelligent conveyor belt monitoring system. An application of indicating the main failure cause and suggesting maintenance operation for conveyor belt emergency braking system is presented.
机译:输送带系统已经发展了数十年,并且在当今的大型连续运输系统中发挥着至关重要的作用。传统的传送带监控着重于灾难性故障。故障警报和维护决策是分别提交的,而不会揭示受监视事件的关系。贝叶斯方法之类的因果模型提供了直观且数学上合理的工具,以了解不确定变量与故障原因之间的复杂关系。但是,很难推导出用于验证因果模型的推理知识。本文介绍了一种基于贝叶斯推理的因果建模方法,用于诊断故障情况并确定大型输送带系统的相关维护操作。应用模糊逻辑来估计似因密度函数,对于因果推论通常很难获得这种似然密度函数。该方法被用作智能输送带监控系统中的维护决策过程。提出了一种在传送带紧急制动系统中指示主要故障原因并建议维护操作的应用。

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