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A comparative study on application of time series analysis for traffic forecasting in India: prospects and limitations

机译:时间序列分析在印度交通预测中的应用比较研究:前景与局限

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摘要

Modelling of growth trend and improvement in forecasting techniques for vehicular population has always been and will continue to be of paramount importance for any major infrastructure development initiatives in the transportation engineering sector. Although many traditional as well as some advanced methods are in vogue for this process of estimation, there has been a continuous quest for improving on the accuracy of different methods. Time-series (TS) analysis technique has been in use for short-term forecasting in the fields of finance and economics, and has been investigated here for its prospective use in traffic engineering. Towards this end, results obtained from two other traditional approaches, namely trend line analysis and econometric analysis, have also been collated, underlining the better results obtained from TS analysis. A regression model has been developed for predicting fatality rate and its results have been compared with those from TS analysis. Based on the incentive provided by reduced errors obtained from using increasing number of data points for model-building, forecasting has been done for the year 2021 using time-series modelling. With most of the datasets used and locations analysed for forecasting, the TS analysis technique has been found to be a useful tool for prediction, resulting in lower estimation errors for almost all the cases considered. It has also been inferred that the proximity of the forecasting window to the sample dataset has a noticeable effect on the accuracy of time-series forecasting, in addition to the amount of data used for analysis.
机译:增长趋势的建模和车辆人口预测技术的改进一直是并且将继续对运输工程领域的任何主要基础设施发展计划至关重要。尽管许多传统的以及一些先进的方法都在这种估算过程中流行,但人们一直在不断寻求提高不同方法的准确性。时间序列(TS)分析技术已用于金融和经济领域的短期预测,并已在此进行了研究,以用于交通工程领域。为此,还对从其他两种传统方法(趋势线分析和计量经济分析)获得的结果进行了整理,强调了从TS分析获得的更好结果。已经开发了用于预测死亡率的回归模型,并将其结果与TS分析的结果进行了比较。基于减少使用大量数据点进行模型构建而获得的误差所提供的激励,已使用时间序列建模对2021年进行了预测。由于使用了大多数数据集并分析了用于预测的位置,因此发现TS分析技术是一种有用的预测工具,对于几乎所有考虑的情况,其估计误差均较小。还可以推断,除了用于分析的数据量之外,预测窗口与样本数据集的接近度对时间序列预测的准确性也有显着影响。

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