Spatiotemporal synchronous coupling algorithm for urban rail transit timetables design under dynamic passenger demand

APPLIED MATHEMATICAL MODELLING(2023)

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摘要
This paper focuses on the problem of designing the schedule of urban rail transit systems under dynamic passenger demand considering limited train capacity and congestion. From the point of view of operators, the goal of timetable optimization consists of using as few as possible service trains to transport the arriving passengers to their destinations securely and quickly. On the other hand, passengers want to spend the minimum time travelling to their destinations, including the time they wait on platforms until they board the first and successive trains in case of transferring between lines. Due to the variability of passenger flows and the difficulty in exactly solving full-day timetabling problems in short computa-tion times, it is difficult in practice to use the approaches proposed in the literature. More-over, when the capacity of trains is considered and oversaturation conditions emerge, the problem becomes even more complex, converting into a challenge the design of schedules from an operational point of view. By considering fixed train dwell times at stations and train running times between stations, we first propose a non-linear programming formu-lation to model the problem of determining the most convenient interdeparture times of services at the first station of a line, aiming at minimizing the waiting time of passengers. Since the dynamic behaviour of passenger demand and the maximum sectional passenger flow are approximately synchronous, an innovative method, the spatiotemporal synchro-nization coupling algorithm, based on working with the time-varying maximum sectional passenger flow instead of the demand patterns is proposed to quickly solve in an approxi-mate way the demand-driven timetabling problem. The proposed approach is applied to a real case of Chengdu Metro Line 1 in China. The results show the effectiveness of the al-gorithm, both in terms of computational effort and in terms of reducing the waiting time currently experienced by passengers.(c) 2023 Elsevier Inc. All rights reserved.
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关键词
Timetabling,Urban rail transit,Variable demand,Congestion,Capacity,Heuristic
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