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A Recurrent Neural Network Based Method for Predicting the State of Aircraft Air Conditioning System

机译:一种经常性的神经网络预测飞机空调系统状态的方法

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The reliability and safety of aircraft has always been the focus of research attention. As an important component of the aircraft, the air conditioning system has a direct impact on the safety of the flight process. In order to ensure the safety of the flight process, this paper proposes a recurrent neural network (RNN) based method for predicting the working state of the aircraft air conditioning system. Using the measured data collected from the Boeing 737NG aircraft, we train a RNN and experimental results on short-term prediction show that our proposed method can obtain a good prediction accuracy. In addition, we modify the network to make longer prediction using a bidirectional architecture. The experimental results on long-term prediction show that this network can solve the problem that the prediction results at first several seconds are much larger than the actual measured value and can learn a good representation for the time series.
机译:飞机的可靠性和安全性始终是研究关注的焦点。作为飞机的重要组成部分,空调系统对飞行过程的安全性直接影响。为了确保飞行过程的安全性,本文提出了一种基于经常性的神经网络(RNN)方法,用于预测飞机空调系统的工作状态。使用从波音737NG飞机收集的测量数据,我们在短期预测上培训RNN和实验结果表明我们所提出的方法可以获得良好的预测精度。此外,我们修改网络使用双向架构进行更长的预测。长期预测的实验结果表明,该网络可以解决最初几秒钟预测结果的问题远远大于实际测量值,并且可以学习时间序列的良好表示。

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