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Geographical patterns of traffic congestion in growing megacities: Big data analytics from Beijing

机译:特大城市中交通拥挤的地理模式:北京的大数据分析

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Traffic congestion is one of the key issues relating to sustainability and livability in many large cities. In particular, the situation in the growing megacities of developing countries has been worsening and is now attracting considerable attention from researchers and politicians. An understanding of the spatio-temporal patterns of this congestion is necessary in order to formulate effective policies to relieve it. Much of the research to date has focused on single districts for relatively short periods (days or weeks) using GPS, while long-term analysis of spatial and temporal patterns of traffic congestion at the city level has been rare. The aim of this paper is to help fill this gap in the literature by applying a big data analytic approach to a sample of 10.16 million records of traffic congestion indexes for 233 roads in the Beijing area over a six-month period. This analysis revealed four typical traffic congestion patterns in Beijing, which can be described as the weekend mode, holiday mode, weekday mode A, and weekday mode B. Each of these patterns possesses unique spatial and temporal characteristics. Compared with working days, on which congestion is regular and agglomerated, weekends and holidays are characterized by long-lasting congestion peaks throughout the day. Non-commuting travel on weekends and holidays, including trips for tourism, shopping, entertainment, and children's after-school activities, are major contributors to traffic congestion of the weekend and holiday mode. Owing to poor jobs-housing balance, the suburban new towns and job centres had relatively higher congestion than other areas. These findings shed significant light on geographical patterns of traffic congestion in growing megacities.
机译:交通拥堵是许多大城市中与可持续性和宜居性相关的关键问题之一。特别是,发展中的特大城市中的局势一直在恶化,现在正引起研究人员和政治家的相当大的关注。为了制定有效的缓解措施,有必要了解这种拥塞的时空格局。迄今为止,许多研究都使用GPS在相对较短的时间段(几天或几周)内对单个地区进行了研究,而在城市一级对交通拥堵的时空格局进行长期分析的情况却很少。本文旨在通过应用大数据分析方法,对六个月内北京地区233条道路的1016万条交通拥堵指数记录进行抽样,以填补这一空白。该分析揭示了北京的四种典型交通拥堵模式,可以描述为周末模式,假日模式,工作日模式A和工作日模式B。这些模式均具有独特的时空特征。与经常出现拥堵的工作日相比,周末和节假日的特点是全天持续的拥挤高峰。周末和节假日的非通勤旅行,包括旅游,购物,娱乐和儿童课后活动的旅行,是导致周末和节假日交通拥堵的主要原因。由于就业与住房的平衡差,郊区的新市镇和就业中心的交通拥堵程度高于其他地区。这些发现为日益增长的特大城市交通拥堵的地理格局提供了重要启示。

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