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Passenger Flow Prediction for Urban Rail Transit Stations Considering Weather Conditions

机译:考虑天气条件的城市轨道交通站的客流预测

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Precise prediction of urban rail transit passenger flow is essential for the development of organizing plans by the rail transit management and operation department, and also is the fundament to achieving passenger transport guarantees. This study collected Ningbo rail transit Route 2 passenger flow data and candidates of key driving factors including station type, population and employment position density, transfer facilities, main land area within an 800 m radius, particularly considering weather conditions, and then Random Forest was applied for passenger flow prediction. The prediction results show that the models considering the weather factors is superior to the models without consideration, mean absolute deviation (MAD) and mean absolute percentage deviation (MAPD) are reduced by 14.40 and 57.55%, respectively. The model involved weather factors is more accurate under hot and heavy rain weather conditions. Employment position, population density and commercial service facilities land area within an 800 m radius of the station, are the most important factors influencing the passenger flow, while average temperature is more likely to affect the passenger flow than precipitation. These results suggest that the passenger flow forecasting model based on random forest can achieve rapid calculation under different weather conditions, and provide important data basis for urban rail transit passenger flow density warning, passenger flow guidance and operation scheduling.
机译:城市轨道交通客运的精确预测对于轨道交通管理部门组织计划的发展至关重要,也是实现客运担保的基础。本研究收集了宁波轨道交通号码2路线2乘客流量数据和关键驾驶因子的候选者,包括站类型,人口和就业位置密度,转移设施,800米半径内的主要土地面积,特别是考虑到天气条件,然后应用随机森林对于客流预测。预测结果表明,考虑天气因子的模型优于模型而不考虑,平均绝对偏差(MAD)和平均绝对百分比偏差(MAPD)分别减少14.40%和57.55%。该模型在炎热和大雨天气条件下更准确。就业职位,人口密度和商业服务设施的土地面积在车站的800米半径范围内,是影响客流的最重要因素,而平均温度比降水量更容易影响客流。这些结果表明,基于随机森林的客流预测模型可以在不同天气条件下实现快速计算,为城市轨道交通客流密度警告,客运引导和操作调度提供重要数据基础。

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