Design of Wetland-Ecological Corridor Using Multi-Scale Remote Sensing Image Segmentation Method

B. Kong, W. Deng, H. Tao, Hua Yu
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引用次数: 1

Abstract

Differential evolution (DE), a population-based multi-objective evolutionary algorithm, steers optimization search through swarm intelligence produced by co-operation and competition among individuals within the swarm. With its unique memory ability, DE can track the dynamics of the current search, adjust its search strategy accordingly, and achieve good global convergence and robustness without resorting to any information characteristic of the problem in question. DE proves exceptionally useful in solving complex optimization problems which cannot be solved by conventional mathematical programming methods. This paper applies DE to the multi-objective optimal allocation of water resources, treats the optimal allocation of water resources as a simulated biological evolution process, and conducts an optimal computation in a case study, which shows that the result of DE is both reasonable and efficient.
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基于多尺度遥感图像分割方法的湿地生态廊道设计
差分进化(DE)是一种基于群体的多目标进化算法,它通过群体中个体之间的合作和竞争产生的群体智能来指导优化搜索。DE算法具有独特的记忆能力,可以跟踪当前搜索的动态,并相应地调整搜索策略,在不依赖于问题的任何信息特征的情况下,达到良好的全局收敛性和鲁棒性。在解决传统数学规划方法无法解决的复杂优化问题时,DE被证明是非常有用的。本文将DE应用于水资源的多目标优化配置,将水资源的优化配置作为一个模拟的生物进化过程,并通过实例进行优化计算,结果表明DE的结果既合理又高效。
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