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Air Material Demand Forecast Based on Combined Neural Network

机译:基于组合神经网络的航空物资需求预测

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Accurate forecast of air material demand can not only improve the refinement degree of air material support, but also increase the predictability of air material support, and lay the foundation for completing various flight missions. This paper makes full use of the self-adaptive, self-organizing and self-learning ability of the artificial neural network, and puts forward a combined forecasting model based on LVQ neural network, Elman neural network and SOM neural network. Using entropy theory, the weight coefficients of each forecast method are determined. The example proves that the method has good effect.
机译:准确预测航空物资需求,不仅可以提高航空物资保障的精细度,而且可以提高航空物资保障的可预测性,为完成各种飞行任务奠定基础。本文充分利用了人工神经网络的自适应,自组织和自学习能力,提出了基于LVQ神经网络,Elman神经网络和SOM神经网络的组合预测模型。使用熵理论,确定每种预测方法的权重系数。实例证明了该方法的有效性。

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