基于帕累托进化算法的多目标作物规划

Multi-objective crop planning using pareto-based evolutionary algorithms

Agricultural Economics · 2011
被引 52
人大 A-

中文导读

针对水资源短缺问题,提出用两种帕累托多目标进化算法优化作物规划,在最大化经济效益和节约用水之间寻找平衡,对缺水地区的农业决策有参考价值。

Abstract

The scarcity of water is a growing problem worldwide. The increasing use of water in industrial, urban, and agricultural applications together with the continuous increase in population require the proposal of efficient solutions. In the case of agricultural use, it is necessary to not only maximize the economic benefits, but also to establish optimal water-saving crop planning, especially for water-deficient regions. Due to the multi-objective nature of these problems, the decision-making process is complex. Fortunately, the increase in computational resources available in recent years has allowed researchers to develop efficient computational algorithms to deal with real and complex optimization problems, including agricultural ones. In particular, multi-objective evolutionary algorithms (MOEAs) are known for their ability to optimize several objective functions simultaneously to provide a representative set of the Pareto front, which is a set of problem solutions representing a trade-off between the best values of each of the objectives. This article proposes solving a multi-objective crop planning problem using two Pareto-based MOEAs. Results obtained when solving this problem using real data collected from a large number of greenhouses in Spain to show the advantages of using these multi-objective approaches.

多目标作物规划帕累托前沿多目标进化算法农业水资源优化