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Forecasting Transport Mode Sharing in Beijing

机译:预测北京运输模式共享

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摘要

Unreasonable traffic structure is proven to be a great contributor to environmental problems in Beijing. In order to make suggestions for traffic structure optimization, a two-step numerical research combining the regression analysis and the BP neural network has been made in this study. The first step is to establish the regression analysis model for the transport mode shares and, more importantly, to identify the relevant factors influencing the share rates of transport modes. The other step is to build a forecasting model based on a BP neural network, taking the identified relevant variables into account. The data of the involved variables are collected from Beijing Transport Annual Reports. We use the data from 2000 to 2011 to build the models, and use the data of 2012 to validate the models. The prediction results are shown to be accurately consistent with the real-gained data, and therefore the models are validated.
机译:被证明是北京环境问题的伟大贡献者的不合理的交通结构。为了对交通结构优化提出建议,本研究已经在结合回归分析和BP神经网络的两步数值研究。第一步是为运输模式共享建立回归分析模型,更重要的是,确定影响运输模式份额的相关因素。另一个步骤是基于BP神经网络构建预测模型,以识别的相关变量考虑。从北京运输年度报告中收集所杂志的数据。我们使用2000年至2011年的数据来构建模型,并使用2012年的数据来验证模型。预测结果显示与实际数据准确一致,因此验证模型。

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