Agent-based modelling of high-speed railway interdependent critical infrastructures facing physical and cyber threats

Pattrapon Kongsap, S. Kaewunruen
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Abstract

Globally, high-speed rail systems serve nearly 2 billion passenger-km daily. By virtue, they are a critical infrastructure like telecommunication and power networks. Accordingly, they become a catalyst for societal and economic growth stemming from the mobility business. The highspeed rail operations are very complex and interdependent, owing to the escalated demands for long-distance interconnected transportation. In recent years, there have been unreasonable delays for passengers as a new norm due to unfortunate train cancellations and relaxation of mobility performance requirements. Therefore, accurate measurements, monitoring and prediction of disruptive impacts and service performance metrices are indispensable. Within the scope of high-speed rail services, this paper examines how agent-based and multi-agent-based models are utilized to address such the challenges. Our findings reveal that the current use of agents or multi-agent models has some limitations for practical applications. Previous studies showed that mathematical methods to assess the resilience of critical infrastructures, railway scheduling, and vehicle dispatching can yield more satisfactory outcomes, although the approaches can be relatively time-consuming. In contrast, agent-based and multi-agent-based models can shorten processing time and uncover disruptive events more promptly. The paper thus showcases several emerging concepts, including i) the utilization of big data for crisis management, ii) interconnectivity analysis of high-speed rail infrastructures, and iii) enhancement of transport resilience. In addition, our findings identify the most influential agents and their possible applications to enhance systems resilience of highspeed rail networks when dealing with unforeseen physical and cyber threats.
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对面临物理和网络威胁的高速铁路相互依存的关键基础设施进行基于代理的建模
在全球范围内,高速铁路系统每天服务近 20 亿乘客公里。它们与电信和电力网络一样,是重要的基础设施。因此,高速铁路也成为了移动业务所带来的社会和经济增长的催化剂。由于对长途互联交通的需求不断升级,高速铁路的运营非常复杂且相互依存。近年来,由于不幸的列车取消和流动性能要求的放宽,乘客不合理的延误已成为一种新常态。因此,对破坏性影响和服务性能指标进行精确测量、监测和预测是必不可少的。在高速铁路服务范围内,本文探讨了如何利用基于代理和多代理的模型来应对这些挑战。我们的研究结果表明,目前使用的代理或多代理模型在实际应用中存在一些局限性。以往的研究表明,用数学方法评估关键基础设施的复原力、铁路调度和车辆调度可以产生更令人满意的结果,尽管这些方法可能相对耗时。相比之下,基于代理和多代理的模型可以缩短处理时间,更迅速地发现破坏性事件。因此,本文展示了几个新兴概念,包括 i) 利用大数据进行危机管理;ii) 高速铁路基础设施的互联性分析;iii) 提高运输复原力。此外,我们的研究结果还确定了最具影响力的代理及其可能的应用,以便在应对不可预见的物理和网络威胁时增强高速铁路网络系统的复原力。
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