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Neural fault diagnosis and fuzzy fault control for a complex linear dynamic system

机译:复杂线性动力系统的神经故障诊断和模糊故障控制

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Fault diagnosis has become an issue of primary importance in modern process automation as it provides the prerequisites for the task of fault detection. The ability to detect the faults is essential to improve reliability and security of a complex control system. In this paper, the authors describe a completed feasibility study demonstrating the merit of employing pattern recognition and an artificial neural network for fault diagnosis through a backpropagation learning algorithm and making use of fuzzy approximate reasoning for fault control via parameter changes in a dynamic system. As a test case, a complex magnetic levitation vehicle (MLV) system is studied. Analytical fault symptoms are obtained by system dynamics measurements and the classification is carried out through a multilayer feedforward network. The neural network is first taught the different fault situations through training patterns. After the network is trained, it achieves an overall classification accuracy of 99.78% for a disturbance-free MLV model and 91.4% for a model with track disturbance irregularities. Proper actions are performed based on fuzzy reasoning of knowledge base results in a normal process operation recovered.
机译:故障诊断已成为现代过程自动化中最重要的问题,因为它为故障检测任务提供了前提条件。检测故障的能力对于提高复杂控制系统的可靠性和安全性至关重要。在本文中,作者描述了一项完整的可行性研究,该研究证明了通过反向传播学习算法使用模式识别和人工神经网络进行故障诊断的优点,并利用模糊近似推理通过动态系统中的参数更改进行故障控制。作为测试案例,研究了复杂的磁悬浮车(MLV)系统。通过系统动力学测量获得故障分析症状,并通过多层前馈网络进行分类。首先通过训练模式向神经网络教授不同的故障情况。训练网络后,对于无干扰的MLV模型,其总体分类精度达到99.78%,对于具有轨道干扰不规则性的模型,其总体分类精度达到91.4%。基于知识库结果的模糊推理,可以执行适当的操作,从而恢复正常的过程操作。

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