基于离散粒子群优化算法和RBF神经网络的飞机后续备件需求预测方法

Dongdong Li, B. Xiao, Haiping Huang, Aoqing Wang
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引用次数: 2

摘要

传统的飞机后续备件需求预测方法存在对噪声数据适应能力不足等问题。它容易导致局部最优,预测精度低。为此,提出了一种基于离散粒子群优化和RBF神经网络的飞机后续备件需求预测方法。首先,采用离散粒子群算法对飞机后续备件数据进行约简,得到影响备件需求的关键因素;然后基于关键因素建立RBF神经网络进行备用需求预测。实验结果表明,该方法能够保证输入参数的合理性,为神经网络预测飞机后续备件需求提供了一种新的方法。
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A method of predicting demand for aircraft follow-up spare based on discrete particle swarm optimization algorithm and RBF neural network
The traditional method to predict the demand of aircraft follow-up spare has some problems including being short of adapting to the noise data. It leads to local optimum easily and low accuracy of prediction. So a method based on discrete particle swarm optimization and RBF neural network to predict demand for aircraft follow-up spare is put forward. Firstly, the data of the aircraft follow-up spare is reduced by discrete particle swarm optimization algorithm to get the key factors affecting the demand of spare. Then the RBF neural network is built on the key factors to predict the demand of spare. The experimental results show that this method can ensure the rationality of the input parameters and provide a new way of the neural network to predict the demand of the aircraft follow-up spare.
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