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Fault diagnosis for rotating machinery based on artificial immune algorithm and evidence theory

机译:基于人工免疫算法和证据理论的旋转机械故障诊断

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Along with the continuous development of science and technology, the structures of rotating machinery become to be larger scale and more complicated, which results in higher probability of concurrent fault under actual working conditions. In order to achieve concurrent fault diagnosis for rotating machinery, an integrated method using artificial immune algorithm and evidence theory is proposed in this research work. The self-nonself recognition mechanism of artificial immune system for data analysis and processing has been derived from the negative selection algorithm. Five kinds of dimensionless immune detectors are generated based on negative selection algorithm, then the local diagnosis result of dimensionless immune detector is gotten. Combining with evidence theory fusion rules, the final diagnosis can be obtained. Experimental result demonstrates that the method can realize effectively concurrent fault diagnosis for rotating machinery.
机译:随着科学技术的不断发展,旋转机械的结构越来越大,越来越复杂,在实际工作条件下发生并发故障的可能性更高。为了实现旋转机械同时故障诊断,本文提出了一种基于人工免疫算法和证据理论的集成方法。从否定选择算法推导了人工免疫系统用于数据分析和处理的自我识别机制。基于负选择算法生成了五种无量纲免疫检测器,得到了无量纲免疫检测器的局部诊断结果。结合证据理论融合规则,可以进行最终诊断。实验结果表明,该方法可以有效地实现旋转机械同时故障诊断。

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