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Predicting Burned Areas of Forest Fires: an Artificial Intelligence Approach

机译:预测森林火灾的燃烧面积:一种人工智能方法

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Forest fires importantly influence our environment and lives. The ability of accurately predicting the area that may be involved in a forest fire event may help in optimizing fire management efforts. Given the complexity of the task, powerful computational tools are needed for predicting the amount of area that will be burned during a forest fire. The purpose of this study was to develop an intelligent system based on genetic programming for the prediction of burned areas, using only data related to the forest under analysis and meteorological data. We used geometric semantic genetic programming based on recently defined geometric semantic genetic operators for genetic programming. Experimental results, achieved using a database of 517 forest fire events between 2000 and 2003, showed the appropriateness of the proposed system for the prediction of the burned areas. In particular, results obtained with geometric semantic genetic programming were significantly better than those produced by standard genetic programming and other state of the art machine learning methods on both training and out-of-sample data. This study suggests that deeper investigation of genetic programming in the field of forest fires prediction may be productive.
机译:森林火灾对我们的环境和生活产生重要影响。准确预测森林火灾事件可能涉及的区域的能力可能有助于优化火灾管理工作。考虑到任务的复杂性,需要强大的计算工具来预测森林火灾期间将要燃烧的面积。这项研究的目的是开发一种基于遗传程序的智能系统,用于仅使用与分析中的森林有关的数据和气象数据来预测烧毁面积。我们使用基于最近定义的几何语义遗传算子的几何语义遗传编程进行遗传编程。使用2000年至2003年之间517起森林火灾事件的数据库获得的实验结果表明,所提出的系统可用于预测烧毁面积。特别是,在训练和样本外数据上,通过几何语义遗传编程获得的结果明显优于通过标准遗传编程和其他先进的机器学习方法获得的结果。这项研究表明,对森林火灾预测领域中的基因程序进行更深入的研究可能会富有成效。

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