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Research on Railway Freight Volume Prediction Based on Neural Network

机译:基于神经网络的铁路货运量预测研究

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Railway freight volume is an important part of the total social freight volume and an important indicator of the national economy. Scientific prediction of railway freight volume can provide decision support for the formulation of China's railway policy and railway investment planning, and is of great significance for adjusting transportation structure and building an efficient transportation network. In order to improve the prediction accuracy, this paper constructs a combined prediction model based on GRA-GABP. The model uses grey correlation analysis to screen out the key influencing factors of railway freight volume, and optimizes the weight and threshold of BP neural network based on genetic algorithm to improve the prediction accuracy. This paper comprehensively considers the influencing factors of macroeconomics, market demand, logistics competition and railway supply. The historical data of railway freight transport from 1978 to 2018 is selected for case analysis. The results show that the prediction accuracy of the GRA-GA-BP based combination prediction model is significantly improved and can be used as an effective tool for railway freight volume forecasting.
机译:铁路货运量是社会货运总量的重要组成部分,是国民经济的重要指标。科学地预测铁路货运量可以为中国铁路政策的制定和铁路投资规划提供决策支持,对调整运输结构和建设高效的运输网络具有重要意义。为了提高预测精度,本文建立了基于GRA-GABP的组合预测模型。该模型采用灰色关联分析法筛选出铁路货运量的关键影响因素,并基于遗传算法优化了BP神经网络的权重和阈值,提高了预测精度。本文综合考虑了宏观经济,市场需求,物流竞争和铁路供应的影响因素。选取1978年至2018年的铁路货运历史数据进行案例分析。结果表明,基于GRA-GA-BP的组合预测模型的预测精度得到了显着提高,可作为铁路货运量预测的有效工具。

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