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Genetic Algorithm Characterization for the Quality Assessment of Forest Fire Spread Prediction

机译:森林火灾蔓延预测质量评估的遗传算法表征

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When an emergency occurs, hazard evolution simulators are a very helpful tool for the teams in charge of making decisions. These simulators need certain input data, which defines the characteristics of the environment where the emergency is taking place. This kind of data usually constitutes a big set of parameters, which have been previously recorded from observations, usually coming from remote sensors, pictures, etc. However, this data is frequently subject to a high degree of uncertainty, as well as the results produced by the corresponding simulators. Hence, it is also necessary to pay attention to the simulations’ quality and reliability. In this work we expose the way we deal with such uncertainty. Our research group has previously developed a two-stage prediction methodology that introduces an adjustment stage in order to deal with the uncertainty on the simulator input parameters. This method significantly improves predictions’ quality, however, in order to be useful, a good characterization of the adjustment techniques has to be carried out so that we are able to choose the best configuration of them, given certain restrictions regarding resources availability and time deadlines. In this work, we focus on forest fires spread prediction as a real study case, for which Genetic Algorithms (GA) have been demonstrated to be a suitable adjustment strategy. We describe the methodology used to characterize the GA and we also validate it when assessing in advance the quality of the fire spread prediction.
机译:当发生紧急情况时,危害演化模拟器对于负责决策的团队是非常有用的工具。这些模拟器需要某些输入数据,这些数据定义了发生紧急情况的环境的特征。这类数据通常构成一大套参数,这些参数以前是从观测中记录下来的,通常来自遥测传感器,图片等。但是,此数据经常会受到高度不确定性以及产生的结果的影响。通过相应的模拟器。因此,也有必要注意仿真的质量和可靠性。在这项工作中,我们揭露了应对这种不确定性的方式。我们的研究小组以前已经开发了一种两阶段预测方法,该方法引入了一个调整阶段,以便处理模拟器输入参数上的不确定性。这种方法显着提高了预测的质量,但是,为了有用,必须对调整技术进行良好的表征,以便在资源可用性和时间期限方面受到一定限制的情况下,我们能够选择最佳的配置。在这项工作中,我们将森林火灾的蔓延预测作为一个真实的研究案例,遗传算法(GA)已被证明是一种合适的调整策略。我们描述了用于表征GA的方法,并在预先评估火势蔓延预测的质量时对其进行了验证。

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