论文标题

通过人工智能提高社区的弹性和紧急响应

Improving Community Resiliency and Emergency Response With Artificial Intelligence

论文作者

Ortiz, Ben, Kahn, Laura, Bosch, Marc, Bogden, Philip, Pavon-Harr, Viveca, Savas, Onur, McCulloh, Ian

论文摘要

在应急准备和响应的所有阶段,包括规划,响应,恢复和评估阶段,新的危机响应和管理方法都至关重要。准确,及时的信息与响应组织之间的快速和连贯的协调至关重要。我们正在努力为一个多收益的应急响应工具,该工具为利益相关者及时访问全面,相关和可靠的信息。较快的急救人员能够分析,传播和行动关键信息,其反应越有效和及时,对受影响人群的好处就越大。我们的工具包括编码开源地理空间数据的多层,包括洪水风险位置,道路网络强度,代理内陆洪水的淹没图和计算机视觉语义细分,以估算洪水泛滥区域和损坏的基础设施。这些数据层被合并并用作机器学习算法的输入数据,例如在紧急情况下,之中和之后找到最佳的撤离路线,或为第一个响应者提供了第一个响应者的可用住宿列表。即使我们的系统可以在许多用例中被迫从一个位置到另一个位置的用例中使用,但我们还是证明了我们系统对北卡罗来纳州卢伯顿飓风佛罗伦萨用例的可行性。

New crisis response and management approaches that incorporate the latest information technologies are essential in all phases of emergency preparedness and response, including the planning, response, recovery, and assessment phases. Accurate and timely information is as crucial as is rapid and coherent coordination among the responding organizations. We are working towards a multipronged emergency response tool that provide stakeholders timely access to comprehensive, relevant, and reliable information. The faster emergency personnel are able to analyze, disseminate and act on key information, the more effective and timelier their response will be and the greater the benefit to affected populations. Our tool consists of encoding multiple layers of open source geospatial data including flood risk location, road network strength, inundation maps that proxy inland flooding and computer vision semantic segmentation for estimating flooded areas and damaged infrastructure. These data layers are combined and used as input data for machine learning algorithms such as finding the best evacuation routes before, during and after an emergency or providing a list of available lodging for first responders in an impacted area for first. Even though our system could be used in a number of use cases where people are forced from one location to another, we demonstrate the feasibility of our system for the use case of Hurricane Florence in Lumberton, North Carolina.

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