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A PARAMETRIC INVESTIGATION OF THE DIAGNOSTIC ABILITY OF PROBABILISTIC NEURAL NETWORKS ON TURBOFAN ENGINES

机译:探测性神经网络诊断能力的参数调查涡扇发动机

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Fault identification through the use of Artificial Neural Networks has become very popular recently. Probabilistic Neural Networks (PNN) is one of the architectures, which have mostly been investigated for gas turbine diagnostics. In this paper, the influence of parameters related to the structure and training on the diagnostic performance of a probabilistic Neural Network (PNN), is investigated. In particular, the parametric investigation examines the effect of the training set on the diagnostic performance of a PNN. The effect of noise level was also examined and found to be important. Another parameter examined is the severity of a fault, which was found to affect seriously the performance of the diagnostic PNN. Other parameters also examined are the effect of the operating conditions as well as the considered output parameters of the network. Guidelines useful for setting up this type of network, are derived.
机译:通过使用人工神经网络的故障识别最近变得非常流行。概率神经网络(PNN)是其中一个架构之一,主要针对燃气涡轮机诊断进行了研究。在本文中,研究了与结构和训练相关的参数对概率神经网络(PNN)的诊断性能的影响。特别是,参数调查审查了培训设定对PNN诊断性能的影响。还检查了噪声水平的效果,发现是重要的。检查另一个参数是故障的严重性,发现这是严重影响诊断PNN的性能。其他参数还检查了操作条件的影响以及所考虑的网络输出参数。导出了用于设置此类网络的指南。

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