Natural disasters always have several effects on human lives. It is challenging for governments to tackle these incidents and to rebuild the economic, social and physical infrastructures and facilities with the available resources (mainly budget and time). Governments always define plans and policies according to the law and political strategies that should maximise social benefits. The severity of damage and the vast resources needed to bring life back to normality make such reconstruction a challenge. This article is the extension of our previously published work by conducting comprehensive comparative analysis by integrating additional deep learning models plus random agent which is used as a baseline. Our prior research introduced a decision support system by using the Deep Reinforcement Learning technique for the planning of post-disaster city reconstruction, maximizing the social benefit of the reconstruction process, considering available resources, meeting the needs of the broad community stakeholders (like citizens' social benefits and politicians' priorities) and keeping in consideration city's structural constraints (like dependencies among roads and buildings). The proposed approach, named post disaster REbuilding plAn ProvIdeR (REPAIR) is generic. It can determine a set of alternative plans for local administrators who select the ideal one to implement, and it can be applied to areas of any extension. We show the application of REPAIR in a real use case, i.e., to the L'Aquila reconstruction process, damaged in 2009 by a major earthquake.
翻译:自然灾害始终对人类生活产生多重影响。政府如何利用现有资源(主要是预算和时间)应对此类事件并重建经济、社会与物质基础设施,是一项艰巨挑战。政府通常依据法律和政治策略制定旨在最大化社会效益的规划与政策。然而,灾害破坏的严重性以及恢复正常生活所需的大量资源,使得重建工作尤为困难。本文是我们先前发表工作的延伸,通过整合额外的深度学习模型及作为基线的随机智能体,进行了全面的对比分析。我们前期的研究提出了一种基于深度强化学习技术的决策支持系统,用于灾后城市重建规划。该系统在考虑可用资源的前提下,最大化重建过程的社会效益,满足广泛社区利益相关者(如公民的社会福利与政治家的优先事项)的需求,并兼顾城市的结构约束(如道路与建筑间的依存关系)。所提出的方法命名为灾后重建规划生成器(REPAIR),具有通用性。它能为地方管理者提供一系列备选规划方案以供选择实施,并可应用于任意规模区域。我们以2009年受大地震破坏的拉奎拉市重建过程为实际案例,展示了REPAIR方法的应用。