基于深度学习的灾害监测关键基础设施仿真模型

Parashuram Shourya Rajulapati, N. Nukavarapu, S. Durbha
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引用次数: 2

摘要

在本文中,我们描述了一种基于深度学习的方法,用于洪水事件场景下的实时关键基础设施保护。这将有助于我们了解各种关键基础设施之间的依赖关系和当前形势的严重性。我们提出了一种多智能体深度强化学习技术来设计智能体必须遵循的策略和奖励函数。此外,将强化学习与GIS相结合有助于将模型置于空间背景和多层可视化中,从而增强对情况的认识。这也有助于理解它们之间的时空关系。每个地理空间代理都有自己的状态和需要采取的一组操作。代理商将根据其对其他相关基础设施的依赖采取行动,并在灾难展开时采取尽可能最佳的行动,以便立即作出反应,减少损害的严重程度。实时信息模拟将帮助灾害响应人员在模拟环境中开发各种场景,并了解随着洪水严重程度的增加,关键基础设施如何随着时间的推移做出反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-based Critical Infrastructure Simulation Model for Disaster Monitoring
In this paper, we describe a Deep learning-based approach for Real-time Critical Infrastructure Protection in the scenario of a Flood event. This would help us understand the dependencies among various Critical Infrastructures and the severity of the current situation. We propose a Multiagent Deep Reinforcement Learning technique to design the policy and reward functions, which the agent must follow. Further, integrating Reinforcement Learning with GIS aids in putting the model in a spatial context and multiple-layer visualization leading to enhanced awareness of the situation. It also helps in the understanding of the spatiotemporal relationships among them. Each of the Geospatial agents will have its state and a set of actions that it needs to take. The agents will act with respect to their dependence on other related Infrastructures and take the best possible action as the disaster unfolds so that immediate response can reduce the severity of the damage. Real-time information simulation would help disaster response personnel to develop various scenarios in the simulation environment and see how the set of critical infrastructures are responding over time as the severity of the flood increases.
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