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An expert system for predictive maintenance of mining excavators and its various forms in open cast mining

机译:露天矿采矿挖掘机及其各种形式的预测维护专家系统

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The purpose of this paper is to develop an expert system for predictive maintenance of mining excavators and its various forms. These excavators are finding increasing applications in mining operations. Although, extensive data base and knowledge pool are available regarding maintenance, its methodology and concerned feed back mechanism, but no suitable or custom built expert system is yet available for specific mining machinery including excavators. Research and Development of a custom built Expert System is the need of the day because of large capital, productivity and risk involved with the mining excavators in a high capital intensive industrial scenario with acute sensitivity in the performance of such machines. This paper discusses an expert system for Failure Detection and Predictive Maintenance (FDPM) of mine excavators. The FDPM includes an expert system engine, a knowledge base, mathematical and neural network model for various fault detection and maintenance of excavators and its component and various sub-components. The FDPM system identifies, detect and locate the faults by various historical maintenance database, statistical fault analysis method, Genetic Algorithm and Artificial Neural Network. If the source of the one of the components under observation by the FDPM system, it accesses the integrity of the system components and predicts maintenance needs.
机译:本文的目的是开发一种用于采矿挖掘机及其各种形式的预测性维护的专家系统。这些挖掘机正在采矿作业中发现越来越多的应用。尽管有大量有关维护,其方法论和相关反馈机制的数据库和知识库可供使用,但是尚无适用于或定制的专家系统适用于包括挖掘机在内的特定采矿机械。定制的专家系统的研究和开发已成为当今的需要,因为在高资本密集型工业场景中,挖掘挖掘机涉及大量资金,生产力和风险,并且对此类机器的性能极为敏感。本文讨论了矿山挖掘机故障检测和预测维护(FDPM)的专家系统。 FDPM包括一个专家系统引擎,一个知识库,数学和神经网络模型,用于挖掘机及其组件和各个子组件的各种故障检测和维护。 FDPM系统通过各种历史维护数据库,统计故障分析方法,遗传算法和人工神经网络来识别,检测和定位故障。如果FDPM系统正在观察其中一个组件的来源,则它会访问系统组件的完整性并预测维护需求。

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