基于神经网络的城市公共交通拥堵预测模型

S. Faridai, R. Juraeva, S. Darovskikh, S. Qodirov
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引用次数: 1

摘要

在城市中发展公共交通是减少路网“拥堵”,从而提高客运速度的有效途径。提高城市公交服务质量有助于吸引更多乘客。每条路线的公交间隔是根据车站乘客的平均拥堵情况单独计算一次的。反过来,大量乘客突然聚集在公交车站,导致并非所有乘客都能及时移动,这引起了乘客的担忧。这是降低客运服务质量的因素之一。本研究的目的是建立一个预测公交车站乘客拥堵的模型,以优化城市公共交通的交通管理。材料和方法。本文提出了一种预测公交车站乘客拥堵的神经网络模型。它考虑了公交交通的时空特征。结果。开发的预测公交车站乘客拥堵的模型在3号公交路线(塔吉克斯坦杜尚别)的真实数据上进行了测试。该模型使预测客流量(公交车站的乘客数量)成为可能,其准确性为公交车站实际乘客数量的72%至74.5%。结论。与其他方法相比,所提出的方法允许您自动调整预测模型以适应路线的变化情况。这种方法是通用的,可以用于其他路线(公交车站)。它不需要太多时间来重新配置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NEURAL NETWORK MODEL FOR PREDICTING PASSENGER CONGESTION TO OPTIMIZE TRAFFIC MANAGEMENT FOR URBAN PUBLIC TRANSPORT
The development of public transport in cities is an effective way to reduce “congestion” in the road network and, as a result, increase the speed of passenger transportation. Improving the qua¬lity of urban bus services helps attract more passengers. Bus intervals are calculated once for each route line individually, based on the average congestion of passengers at the stops. In turn, the sudden accumulation of a large number of passengers at bus stops causes that not all passengers can move in a timely manner, which causes concern for passengers. This is one of the factors that redu¬ces the quality of passenger transport services. The aim of the study is to develop a model for predicting the congestion of passengers at bus stops to optimize traffic management of urban public transport. Materials and methods. This article presents a neural network model for predicting passenger congestion at bus stops. It takes into account the spatio-temporal characteristics of bus traffic. Results. The developed model for predicting passenger congestion at bus stops was tested on real data from bus route 3 (Dushanbe, Tajikistan). The model made it possible to predict passenger traffic (the number of passengers at bus stops) with an accuracy of 72% to 74.5% of the actual number of passengers at bus stops. Conclusion. The proposed method, in contrast to other methods, allows you to automatically adapt the forecasting model to the changing conditions of the route line. This method is universal and can be used for other route lines (bus stops). It does not require much time to reconfigure.
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