State-dependent multi-agent discrete event simulation for urban rail transit passenger flow

IF 2.8 3区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
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Abstract

Urban rail transit passenger flow modeling is the foundation of urban rail transit planning, design, and operation. The motivation of this paper is to accurately and efficiently simulate passenger flow dynamics in urban rail transit systems. To this end, we propose a State-dependent Multi-agent Discrete Event Simulation (SdMaDES). The state-dependence (or congestion-dependence) means that the service abilities (or travel times) of bottleneck facilities (e.g. platform screen doors and transfer corridors) are not constant and they interact with the congestion dynamics. Specifically, we first establish a modular Multi-agent Discrete Event Simulation (MaDES), which includes four types of modules (passenger, train, station, and network modules) and three types of agents (passenger, train, and station agents). The logical connections and event-triggering modes between the modules are analyzed and defined, and thirty types of events are designed. The state-dependence is then captured by an Improved Social Force Model (ISFM), which adds an autonomous obstacle avoidance mechanism. The ISFM reproduces passenger movement behavior within bottleneck facilities of urban rail transit systems at the microscopic level. These state-dependent functions or general rules are explicitly formulated by fitting the results of ISFM and are subsequently applied to the proposed MaDES model, resulting in the SdMaDES. This integration aims to enhance the accuracy of the simulation. We conducted a real case from the Chengdu Metro network. Some interesting results are found. (a) The maximum number of boarding passengers in a train carriage is a complex nonlinear function that is dependent on the state (density inside the train carriage). This challenges the linear function commonly utilized in most studies. (b) Compared to the actual data, the proposed SdMaDES model shows a cumulative error of 9.85% after data smoothing, while the conventional MaDES model exhibits a much higher cumulative error of 21.9% after data smoothing. (c) As the overall traffic demand level increases, the gap between the two simulation models’ results is getting wider and wider due to the amplified nonlinear impact of congestion.

城市轨道交通客流的状态依赖多代理离散事件模拟
城市轨道交通客流建模是城市轨道交通规划、设计和运营的基础。本文的动机是准确、高效地模拟城市轨道交通系统中的客流动态。为此,我们提出了一种状态依赖多代理离散事件模拟(SdMaDES)。状态依赖性(或拥堵依赖性)是指瓶颈设施(如站台屏蔽门和换乘通道)的服务能力(或旅行时间)不是恒定的,它们与拥堵动态相互影响。具体来说,我们首先建立了一个模块化的多代理离散事件模拟(MaDES),其中包括四类模块(乘客模块、列车模块、车站模块和网络模块)和三类代理(乘客代理、列车代理和车站代理)。分析和定义了模块之间的逻辑联系和事件触发模式,并设计了 30 种事件类型。然后,改进的社会力模型(ISFM)捕捉了状态依赖性,并增加了自主避障机制。ISFM 在微观层面上再现了城市轨道交通系统瓶颈设施内的乘客移动行为。通过拟合 ISFM 的结果,明确制定了这些与状态相关的函数或一般规则,随后将其应用于拟议的 MaDES 模型,从而形成 SdMaDES。这种整合旨在提高仿真精度。我们对成都地铁网络进行了实际案例分析。我们发现了一些有趣的结果(a) 一节车厢内的最大上车乘客数是一个复杂的非线性函数,取决于状态(车厢内的密度)。这对大多数研究中常用的线性函数提出了挑战。(b) 与实际数据相比,建议的 SdMaDES 模型在数据平滑化后的累积误差为 9.85%,而传统的 MaDES 模型在数据平滑化后的累积误差高达 21.9%。(c) 随着总体交通需求水平的提高,由于拥堵的非线性影响被放大,两种仿真模型结果之间的差距越来越大。
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来源期刊
CiteScore
7.20
自引率
9.10%
发文量
852
审稿时长
6.6 months
期刊介绍: Physica A: Statistical Mechanics and its Applications Recognized by the European Physical Society Physica A publishes research in the field of statistical mechanics and its applications. Statistical mechanics sets out to explain the behaviour of macroscopic systems by studying the statistical properties of their microscopic constituents. Applications of the techniques of statistical mechanics are widespread, and include: applications to physical systems such as solids, liquids and gases; applications to chemical and biological systems (colloids, interfaces, complex fluids, polymers and biopolymers, cell physics); and other interdisciplinary applications to for instance biological, economical and sociological systems.
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