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Application of Back Propagation Neural Network Algorithms on Modeling Failure of B-737 Bleed Air System Valves in Desert Conditions

机译:背传播神经网络算法在沙漠条件下B-737流血空气系统阀门建模故障的应用

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Accurate life prediction of aircraft engine components is very critical because it has a direct impact on aircraft safety and on operators' profits. The engine bleed air system valves have considerably high failure rates when the engines are operated in desert conditions because of sand particles erosion and blockage. In this work, an Artificial Neural Network (ANN) model for the prediction of failure rate of the most important of these valves in Boeing 737 engines is developed and validated. A previously developed feed-forward back-propagation algorithm is implemented to train the ANN. The effects of changing the number of neurons in the input layer, the number of neurons in the hidden layer, the rate of learning, and the momentum constant are investigated. The model results are validated using comparisons with actual valves failure data from a local operator in Saudi Arabia, as well as comparisons with classical Weibull model results.
机译:飞机发动机组件的准确寿命预测非常关键,因为它对飞机安全和运营商的利润直接影响。由于砂粒渗透和阻塞,发动机出血空气系统阀门在沙漠条件下在沙漠条件下运行时具有显着高的故障率。在这项工作中,开发并验证了用于预测用于预测最重要的波音737发动机中最重要的这些阀门的故障率的人工神经网络(ANN)模型。实施先前开发的前馈回传播算法以培训ANN。研究了改变输入层中神经元数的效果,研究了隐藏层中的神经元数,学习速度和动量常数。使用与沙特阿拉伯的本地运算符的实际阀门故障数据的比较进行验证模型结果,以及与古典威布尔模型结果的比较。

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