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Congestion Prediction Based on Dissipative Structure Theory: A Case Study of Chengdu, China

机译:基于耗散结构理论的拥塞预测 - 以中国成都为例

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With the continuous growth of traffic demand and the mismatch of urban transportation facilities, urban traffic congestion has been caused, leading to various related problems, such as environmental pollution, traffic accidents, and slow economic development. Many cities have implemented relevant measures to improve traffic congestion, but fewer are ideal. This study used the hidden Markov model combined with the dissipative structure theory and entropy theory to predict the congestion more accurately. The temporal and spatial distributions of the online ride-hailing Didi data in Chengdu were analyzed. There are morning peaks, noon peaks, and evening peaks during workdays. During the noon peak and evening peak, travel demand in the city’s central area is relatively stable. It is found that the prediction model has a higher accuracy after combining the dissipative structure theory and entropy theory, which could be used to propose methods to prevent congestion.
机译:随着交通需求的持续增长和城市运输设施不匹配,城市交通拥堵已经造成,导致各种相关问题,如环保污染,交通事故,经济缓慢发展。 许多城市实施了相关措施,以改善交通拥堵,但较少的是理想的。 本研究使用隐马尔可夫模型与耗散结构理论和熵理论相结合,更准确地预测拥堵。 分析了成都在线乘坐了在线骑行迪迪数据的时间和空间分布。 在工作日期间有早晨的峰值,中午峰和晚上山峰。 在中午峰顶峰值期间,城市中央地区的旅行需求相对稳定。 结果发现,在组合耗散结构理论和熵理论之后,预测模型具有更高的精度,这可以用于提出防止拥塞的方法。

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