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Application research of urban subway traffic mode based on behavior entropy in the background of big data

机译:城市地铁交通模式基于行为熵在大数据背景中的应用研究

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With the development of society and the Internet and the advent of the cloud era, people began to pay attention to big data. The background of big data brings opportunities and challenges to the research of urban intelligent transportation networks. Urban transportation system is one of the important foundations for maintaining urban operation. The rapid development of the city has brought tremendous pressure on the traffic, and the congestion of urban traffic has restricted the healthy development of the city. Therefore, how to improve the urban transportation network model and improve transportation and transportation has become an urgent problem to be solved in urban development. Specific patterns hidden in large-scale crowd movements can be studied through transportation networks such as subway networks to explore urban subway transportation modes to support corresponding decisions in urban planning, transportation planning, public health, social networks, and so on. Research on urban subway traffic patterns is crucial. At the same time, a correct understanding of the behavior patterns and laws of residents' travel is a key factor in solving urban traffic problems. Therefore, this paper takes the metro operation big data as the background, takes the passenger travel behavior in the urban subway transportation system as the research object, uses the behavior entropy to measure the human behavior, and actively explores the urban subway traffic mode based on the metro passenger behavior entropy in the context of big data. At the same time, the congestion degree of the subway station is analyzed, and the redundancy time optimization model of the subway train stop is established to improve the efficiency of the subway operation, so as to provide important and objective data and theoretical support for the traveler, planner and decision maker. Compared to the operation graph without redundant time, the total travel time optimization effect of passengers is 7.74%, and the waiting time optimization effect of passengers is 6.583%.
机译:随着社会的发展和互联网和云时代的出现,人们开始关注大数据。大数据的背景为城市智能交通网络的研究带来了机遇和挑战。城市交通系统是维护城市运营的重要基础之一。该市的快速发展为交通带来了巨大的压力,城市交通拥堵限制了该市的健康发展。因此,如何改善城市交通网络模型,改善运输和运输已成为城市发展中的迫切问题。通过地铁网络等交通网络研究隐藏在大规模人群运动中的特定模式,以探索城市地铁运输方式,以支持城市规划,交通规划,公共卫生,社交网络等相应决策。城市地铁交通模式研究至关重要。与此同时,对居民行为模式和法律的正确理解是解决城市交通问题的关键因素。因此,本文采用地铁运行大数据作为背景,将城市地铁运输系统中的乘客旅行行为作为研究对象,使用行为熵来衡量人类行为,并积极探索城市地铁交通模式大数据背景下的地铁乘客行为熵。同时,分析了地铁站的拥塞程度,建立了地铁列车停止的冗余时间优化模型,以提高地铁运行的效率,以提供重要的和客观的数据和理论支持旅行者,计划者和决策者。与没有冗余时间的操作图相比,乘客的总旅行时间优化效果为7.74%,乘客的等待时间优化效果为6.583%。

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