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The Graduation Fault Diagnosis Algorithm's Study and Simulation Based on Immune neural network and Fuzzy Logic Applied in Complex Industrial System

机译:基于免疫神经网络和复杂工业系统应用模糊逻辑的毕业故障诊断算法研究

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Industrial system has the characteristics of large scale and high complexity and much variable. Fault diagnosis with single theory or method is insufficient accurate. This paper presented a kind of graduation fault diagnosis algorithm based on immune neural network and fuzzy logic. As an example of the cooling system in nitric acid production process, the cooling system is divided into loop level and component level, using immune neural network to identify loop level faults, using fuzzy logic to identify component level faults. The simulation results show that the graduation fault diagnosis algorithm based on immune neural network and fuzzy logic has faster training speed and better generalization ability, and it can distinguish multi-routes faults. This algorithm can be used fault diagnosis for other complex system.
机译:工业系统具有大规模和高复杂性和变量的特点。单一理论或方法的故障诊断不足准确。本文介绍了一种基于免疫神经网络和模糊逻辑的毕业故障诊断算法。作为硝酸生产过程中冷却系统的一个例子,冷却系统被分成环路电平和元件水平,使用免疫神经网络来识别循环级别故障,使用模糊逻辑来识别组件级别故障。仿真结果表明,基于免疫神经网络和模糊逻辑的毕业故障诊断算法具有更快的培训速度和更好的泛化能力,可以区分多路线故障。该算法可以使用其他复杂系统的故障诊断。

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