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Comparison between Neural Network and Weibull Models for Failure of Boeing 737 Engines

机译:神经网络和Weibull模型对波音737发动机故障的比较

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摘要

Two models for forecasting the failure of Boeing-737 engines were made suing an artificial neural network. The first model was mad for the failure of the engine in general and due to all technical reasons. The second Model was made for engine failure particularly related to erosion. Weibull models were also made to compare With the neural model for validation purposes. It was demonstrated in the results that the neural network models Were in closer agreement with real data than the Weibull models in predicting the failure of the engines for both General and erosion cases.
机译:利用人工神经网络,建立了两个预测波音737发动机故障的模型。最初的模型由于引擎故障以及所有技术原因而发疯。第二个模型是针对发动机故障特别是与腐蚀有关的。为了进行验证,还制作了Weibull模型与神经模型进行比较。结果表明,在预测一般和腐蚀情况下的发动机故障时,神经网络模型与实际数据比魏布尔模型更接近实际数据。

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