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Application of Artificial Neural Network Supported by BP and Particle Swarm Optimization Algorithm for Evaluating the Criticality Class of Spare Parts

机译:BP人工神经网络与粒子群优化算法在备件关键等级评估中的应用。

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This paper presents artificial neural networks (ANNs) for the criticality class evaluating of spare parts in a power plant. Two learning methods are utilized in the ANNs, namely back propagation (BP) and BP-particle swarm optimization (BP-PSO). The reliability of the models is tested by comparing their classification ability with a hold-out sample and an external data set. The results show that both ANN models have high predictive accuracy. The results also indicate that the BP-PSO algorithm has better recognition rate than the BP algorithm. The proposed ANNs are successful in decreasing inventories holding costs significantly by modifying the unreasonable target service level setting which is confirmed by the corresponding criticality class of a spare part.
机译:本文提出了一种人工神经网络(ANN),用于评估电厂备件的关键等级。在人工神经网络中使用了两种学习方法,即反向传播(BP)和BP粒子群优化(BP-PSO)。通过将模型的分类能力与保留样本和外部数据集进行比较,来测试模型的可靠性。结果表明,两种神经网络模型均具有较高的预测精度。结果还表明,BP-PSO算法比BP算法具有更好的识别率。拟议的人工神经网络通过修改不合理的目标服务水平设置而成功地显着降低了库存持有成本,这一点已通过备件的相应关键等级得到了确认。

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