Scalable Randomized Patrolling for Securing Rapid Transit Networks

Pradeep Varakantham, H. Lau, Z. Yuan
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引用次数: 46

Abstract

Mass Rapid Transit using rail is a popular mode of transport employed by millions of people in many urban cities across the world. Typically, these networks are massive, used by many and thus, can be a soft target for criminals. In this paper, we consider the problem of scheduling randomised patrols for improving security of such rail networks. Similar to existing work in randomised patrols for protecting critical infrastructure, we also employ Stackelberg Games to represent the problem. In solving the Stackelberg games for massive rail networks, we make two key contributions. Firstly, we provide an approach called RaPtoR for computing randomized strategies in patrol teams, which guarantees (i) Strong Stackelberg equilibrium (SSE); and (ii) Optimality in terms of distance traveled by the patrol teams for specific constraints on schedules. Secondly, we demonstrate RaPtoR on a real world data set corresponding to the rail network in Singapore. Furthermore, we also show that the algorithm scales easily to large rail networks while providing SSE randomized strategies.
保障快速交通网络安全的可扩展随机巡逻
使用轨道的快速轨道交通是世界上许多城市中数百万人使用的一种流行的交通方式。通常,这些网络规模庞大,被许多人使用,因此可能成为犯罪分子的软目标。在本文中,我们考虑了调度随机巡逻的问题,以提高这类铁路网络的安全性。与现有的保护关键基础设施的随机巡逻工作类似,我们也使用Stackelberg Games来代表这个问题。在解决大型铁路网络的Stackelberg博弈时,我们做出了两个关键贡献。首先,我们提供了一种称为RaPtoR的方法来计算巡逻队的随机策略,它保证了(i)强Stackelberg均衡(SSE);(二)根据时间表的具体限制,尽量使巡逻队的行进距离达到最佳。其次,我们在与新加坡铁路网络相对应的真实世界数据集上演示了RaPtoR。此外,我们还表明该算法在提供SSE随机化策略的同时很容易扩展到大型铁路网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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