一种基于混合蚁群的系统,用于协助预防和减轻森林野火

P. Cañizares, A. Núñez, Mercedes G. Merayo, M. Núñez
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引用次数: 1

摘要

野火的控制和规划是一项具有挑战性的研究任务。野火对林地和森林等自然生态系统造成的深刻影响,使得开发新的方法和技术来减轻野火的蔓延至关重要。在本文中,我们提出了一个框架来帮助确定由多个火场组成的动态野火的最佳计划。该框架包括一种基于蚁群优化和动态规划的群体智能算法。该算法的主要目标是分析和找到林地不同区域之间的最短路径,并优先考虑不同活跃火区的灭绝任务。该框架基于一个理论模型,该模型使我们能够表示火灾蔓延环境的主要元素。野火的蔓延用基于元胞自动机的模型来表示。实现的工具提供了一个可视化的功能来详细地建模景观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid ant colony based system for assist the prevention and mitigation of wildfires in forests
The control and planning of wildfires is a challenging research task. The deep impact caused by the wildfire in natural ecosystems, such as woodlands and forests, makes essential the development of new methodologies and techniques to mitigate the wildfire expansion. In this paper we propose a framework for aiding to determine the best plan to attack dynamic wildfires composed of several seats of fire. This framework includes an algorithm inspired by swarm intelligence that is based on Ant Colony Optimization (ACO) and Dynamic Programming. The main goal of this algorithm is to analyse and find the shortest paths between the diverse regions of a woodland, and prioritize the extinction tasks over the diverse active seats of fire. The framework is based on a theoretical model that allows us to represent the main elements of the environment in which fire spreads. The spread of the wildfire is represented by a model based on cellular automata. The implemented tool provides a visual functionality to model landscapes in detail.
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