标题: | 台铁东部干线列车座位需求预测 Demand Forecasting for the Eastern Line of Taiwan Railways |
作者: | 胡咏芝 邱裕钧 Hu, Yung-Chih Chiou,Yu-Chiun 管理学院运输物流学程 |
关键字: | 旅运需求;倾斜式列车;多元回归模式;Travel Demand;Tilting Train;Multiple Regression Analysis |
公开日期: | 2016 |
摘要: | 台湾铁路列车整体运能不足一直是台铁营运上的重要课题之一,103年6月台铁花东铁路电气化通车后,倾斜式自强号列车成为东部干线主力车种,吸引大量观光旅客搭乘东部干线火车,导致东部干线民众返乡车票一票难求情形益加严重。且起迄站座位分配不均导致增加订票困难度。因此本研究目的为针对东部干线旅运需求,且依据时段、星期、月份及季节等波动性,提出运量预测方法。 本研究首先搜集民国103年7月至民国104年7月间台北-花莲及台北-台东区间之实际旅运料,并针对不同时段别、星期别、月份别等特性变数进行旅运需求趋势分析,利用时间变数进行多元回归方法建立旅运需求预测模式。 由实证结果发现此预测模式对于倾斜式自强号列车旅运量预测效果良好,总平均误差率结果均小于 20%;且和其他车型列车相较之下,本研究发现预测倾斜式自强号列车旅运量有较好之预测效果。从预测结果显示时段是影响旅运需求最大的因素,紧接着是星期和月份,有助呈现旅客因时间而异的喜好程度,本研究亦针对座配分配提出策略方法,为了强化此模型之预测正确性,未来可考量加入其他影响变数,例如:气候、人口、经济成长或大型活动等,做为未来研究之方向。 Insufficient transport capacity remains one of the major challenges of the Taiwan Railways Administration (TRA) recent years. Since the section between Hualien and Taitung was electrified in June 2014, the tilting express has become the major train type serving the East Link and a large number of travelers have been attracted to visit East Taiwan. As a result, the difficulty in reserving back-home train tickets for the residents living in the East Taiwan becomes more severe. Improper allocation of OD seat capacity will even worsen the difficulty. Therefore, this study aims to prospose a ridership forecast method for the East Link based on real travel demand may based upon time-of-day and day-of-week and month-of-year, and seasonal factors. To do so, this study firstly collected the actual ridership data of the section of Taiper-Hualien and Taipei-Taitung during July, 2014 and July, 2015. Afterwards, travel demand distribution patterns across time-of-day and day-of-week and month-of-year were analyzed. A multiple regression model was then estimated by regressing the ridership on time variables. According to the training and validation results, the prediction accuancy of the estimated multiple regression model for tilting express are lower and 20%, suggesting a good fit of the medel. Additionally, the prediction accuracy for titling express performs better than those of other types of trains. The estimation results also show that the time-of-day factor has the largest effect on travel demand, following by day-of-week and month-of-year, showing the time preference of travelers. At least, the seat allocation strategies are then proposed accordingly. To further enhace the prediction accuracy of the proposed model, more influential factors, such as wether, population, economy growth, and larges events an be further incorporated in future studies. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070363610 http://hdl.handle.net/11536/139561 |
显示于类别: | Thesis |