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Aero engine gas path fault prediction based on multi-sensor information fusion

机译:基于多传感器信息融合的航空发动机气体路径故障预测

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For the problem of aero engine gas path fault diagnosis, the diagnosis results of RBF neural network, BP neural network and support vector machine (SVM) are fused at decision level with the D-S evidence theory, the results show that D-S evidence theory can achieve better diagnosis efficiency than the other three theories in separation, and it can reduce the misdiagnosis rate and improve the diagnostic performance. The fault prediction method based on information fusion can avoid the disadvantage of a single method. This method provides a determination to improve the reliability of aero engine, and the best maintenance decision reference and prolongs service life.
机译:对于Aero发动机气体路径故障诊断的问题,RBF神经网络,BP神经网络和支持向量机(SVM)的诊断结果与DS证据理论的决策水平融合,结果表明DS证据理论可以更好地实现 诊断效率比其他三个理论分离,它可以降低误诊率,提高诊断性能。 基于信息融合的故障预测方法可以避免单个方法的缺点。 该方法提供了提高Aero发动机可靠性的决定,以及最佳的维护决策参考和延长使用寿命。

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