Long-Term and Short-Term Traffic Forecasting Using Holt-Winters Method: A Comparability Approach with Comparable Data in Multiple Seasons

A. R. Raikwar, Rahul R. Sadawarte, Rishikesh G. More, Rutuja S. Gunjal, P. Mahalle, P. Railkar
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引用次数: 11

Abstract

The need of faster life has caused the exponential growth in No. of vehicles on streets. The adverse effects include frequent traffic congestion, less time efficiency, unnecessary fuel consumption, pollution, accidents, etc. One of most important solution for resolving these problems is efficient transportation management system. Data science introduces different techniques and tools for overcoming these problems and to improve the data quality and forecasting inferences. The proposed long-term forecasting model can predict numerical values of effective attributes for a particular day on half-hourly basis, at least 24 hours prior to the time of prediction. The proposed forecasting model for short-term analysis will be having access to data as close as 30-minute difference from the time of prediction. Our proposed solution has integrated use of Holt-Winters (HW) method along with comparability schemes for seasonal approach. Long-Term and Short-Term Traffic Forecasting Using Holt-Winters Method: A Comparability Approach With Comparable Data in Multiple Seasons
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基于冬至法的长期和短期交通预测:多季节可比数据的可比性方法
对快节奏生活的需求导致了人口的指数级增长。街道上的车辆。其负面影响包括频繁的交通拥堵、时间效率降低、不必要的燃料消耗、污染、事故等。解决这些问题的最重要的方法之一是建立高效的运输管理系统。数据科学引入了不同的技术和工具来克服这些问题,并提高数据质量和预测推断。提出的长期预报模型可以在预测时间至少24小时之前,以半小时为单位预测某一天的有效属性数值。拟议的用于短期分析的预测模型将能够获得与预测时间相差30分钟的数据。我们提出的解决方案综合使用了霍尔特-温特斯(HW)方法以及季节性方法的可比性方案。利用冬令法进行长期和短期交通预测:多季节可比较数据的可比性方法
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