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Real-time genetic spatial optimization to improve forest fire spread forecasting in high-performance computing environments

机译:实时遗传空间优化,以改善高性能计算环境中的森林火灾蔓延预测

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Forest fires are a kind of natural hazard with a high number of occurrences in southern European countries. To avoid major damages and to improve forest fire management, one can use forest fire spread simulators to predict fire behavior. When providing forest fire predictions, there are two main considerations: accuracy and computation time. In the context of natural hazards simulation, it is well known that part of the final forecast error comes from uncertainty in the input data. These data typically consist of a set of GIS files, which should be appropriately conflated. For this reason, several input data calibration methods have been developed by the scientific community. In this work, the Two-Stage calibration methodology, which has been shown to provide good results, is used. This calibration strategy is computationally intensive and time-consuming because it uses a Genetic Algorithm as a solution. Taking into account the aspect of urgency in forest fire spread prediction, it is necessary to maintain a balance between accuracy and the time needed to calibrate the input parameters. In order to take advantage of this technique, one must deal with the problem that some of the obtained solutions are impractical, since they involve simulation times that are too long, preventing the prediction system from being deployed at an operational level. A new method which finds the minimum resolution reduction for such long simulations, keeping accuracy loss to a known interval, is proposed. The proposed improvement is based on a time-aware core allocation policy that enables real-time forest fire spread forecasting. The final prediction system is a cyberinfrastructure, which enables forest fire spread prediction at realtime.
机译:森林火灾是一种自然灾害,在南欧国家中经常发生。为了避免重大损失并改善森林火灾管理,可以使用森林火灾蔓延模拟器来预测火灾行为。提供森林火灾预测时,有两个主要考虑因素:准确性和计算时间。在自然灾害模拟的背景下,众所周知,最终预测误差的一部分来自输入数据的不确定性。这些数据通常由一组GIS文件组成,应该适当地合并它们。因此,科学界已经开发了几种输入数据校准方法。在这项工作中,使用了两阶段校准方法,该方法已被证明可以提供良好的结果。该校准策略需要大量的计算和时间,因为它使用遗传算法作为解决方案。考虑到森林火灾蔓延预测的紧迫性,有必要在准确性和校准输入参数所需的时间之间保持平衡。为了利用这一技术,必须解决以下问题:某些获得的解决方案不切实际,因为它们涉及的仿真时间过长,从而导致无法在操作级别部署预测系统。提出了一种新的方法,该方法可以在如此长的仿真中找到最小的分辨率降低,同时将精度损失保持在已知的间隔内。提议的改进基于可实时森林火灾蔓延预测的时间感知核心分配策略。最终的预测系统是网络基础设施,可以实时预测森林火灾的蔓延。

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