In this paper, we introduce and study the problem of facility location along with the notion of \emph{`social distancing'}. The input to the problem is the road network of a city where the nodes are the residential zones, edges are the road segments connecting the zones along with their respective distance. We also have the information about the population at each zone, different types of facilities to be opened and in which number, and their respective demands in each zone. The goal of the problem is to locate the facilities such that the people can be served and at the same time the total social distancing is maximized. We formally call this problem as the \textsc{Social Distancing-Based Facility Location Problem}. We mathematically quantify social distancing for a given allocation of facilities and proposed an optimization model. As the problem is \textsf{NP-Hard}, we propose a simulation-based and heuristic approach for solving this problem. A detailed analysis of both methods has been done. We perform an extensive set of experiments with synthetic datasets. From the results, we observe that the proposed heuristic approach leads to a better allocation compared to the simulation-based approach.
翻译:在本文中,我们介绍并研究设施地点问题以及社会失常的概念。对问题的投入是节点为居住区的城市的道路网络,边缘是连接各区及其各自距离的道路段。我们还掌握了每个区的人口、不同类型设施的信息,每个区将开放的各类设施及其数量和各自需求。问题的目的是找到能够为人们服务的设施,同时最大限度地实现社会失常。我们正式将这一问题称为“社会失常设施位置问题”。我们从数学角度量化社会失常以给定设施的分配,并提出一个优化模式。由于问题在于要打开何种类型的设施,因此我们提出了一种基于模拟和超自然的方法来解决这一问题。对这两种方法都进行了详细分析。我们用合成数据集进行了一系列广泛的实验。我们从结果来看,我们观察到了拟议的超自然方法可以导致更好的分配。我们从模拟到比对模型进行更好的分配。