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Modelling and Forecasting Bus Passenger Demand using Time Series Method

机译:使用时间序列方法建模和预测公共汽车客运需求

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Public bus transport demand modelling and forecasting is important for decision-making, transport policy formulation, urban public transport planning and allocation of buses into the network. It is the key to the solutions for major transportation problems. In this paper, a univariate time series ARIMA model is used to forecast the inter-district public transport travel demand from Trivandrum to five other districts of Kerala. The data used in the study is a part of the transaction on ticket sales by Kerala State Road Transport Corporation (KSRTC) maintained at the Trivandrum central depot for the period between 2010 and 2013. ARIMA model is developed to predict the travel demand between the five district pairs and the demand is forecasted for future. The accuracy of the developed ARIMA model is demonstrated in the study by comparing the forecasted values with the actual demand observed in 2013. The results show that time series ARIMA model, which uses only historical data of passenger demand is accurate for zones which are dependent on each other and for short-term demand forecasting.
机译:公共巴士运输需求建模和预测对于决策,运输政策制定,城市公共交通规划以及将公交车分配到网络非常重要。这是解决重大运输问题的关键。在本文中,使用单变量时间序列ARIMA模型来预测从特里凡得琅到喀拉拉邦其他五个区的区域间公共交通出行需求。该研究中使用的数据是喀拉拉邦公路运输公司(KSRTC)于2010年至2013年期间在Trivandrum中央仓库维护的机票销售交易的一部分。ARIMA模型用于预测五者之间的旅行需求地区对,并预测未来需求。通过将预测值与2013年观察到的实际需求进行比较,该研究证明了所开发ARIMA模型的准确性。结果表明,仅使用乘客需求历史数据的时间序列ARIMA模型对于取决于相互之间以及用于短期需求预测。

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