首页> 外文期刊>Water Resources Management >A Hybrid Fuzzy-Based Multi-Objective PSO Algorithm for Conjunctive Water Use and Optimal Multi-Crop Pattern Planning
【24h】

A Hybrid Fuzzy-Based Multi-Objective PSO Algorithm for Conjunctive Water Use and Optimal Multi-Crop Pattern Planning

机译:基于混合模糊和多目标PSO优化规划的多目标PSO算法

获取原文
获取原文并翻译 | 示例
       

摘要

This paper focuses on extracting an optimal multi-crop pattern plan through multi-objective conjunctive surface-ground water use management. Minimizing shortages in meeting irrigation demands, maximizing groundwater resources sustainability and maximizing agricultural net benefits are the three main goals of the multi-objective optimization problem solved in this paper. A new robust fuzzy-based multi-objective PSO algorithm called f-MOPSO is adopted and modified to solve a three-objective real-world conjunctive use management problem presented in this paper after testing on standard test problems revealed f-MOPSO superiority as compared to the well-known multi-swarm vector evaluated PSO (VEPSO) algorithm. The f-MOPSO benefits from a well-organized Sugeno fuzzy inference system (SFIS) designed for handling multi-objective nature of the optimization problems. The unique performance of f-MOPSO is not only presenting the better final solutions, but also aggregating the capabilities for measurement of dominance and diversity of the solutions in one stage by one index named comprehensive dominance index, in contrast to a wide range of multi-objective algorithms that evaluate dominance and diversity in two separate stages resulting in excessive computational burden. The optimization model is carried out on a 10-year long-term simulation period, resulting in increasing irrigation efficiency i.e. decreasing water losses, decreasing water consumption per unit cultivated area and increasing water productivity compared to those similar criteria observed in actual operation in the study area. The wheat and rice crops were identified as the dominant crops, while the optimization model was the least interested to onion cultivation, assigning the least average cultivation area to this crop over the whole planning period.
机译:本文着重于通过多目标联合地表-地下水利用管理来提取最优的多作物模式计划。最小化满足灌溉需求的短缺,最大化地下水资源的可持续性和最大化农业净收益是本文解决的多目标优化问题的三个主要目标。通过对标准测试问题进行测试后显示出f-MOPSO的优越性,采用了一种新的鲁棒的基于模糊的多目标PSO算法f-MOPSO,以解决本文提出的三目标现实世界联合使用管理问题。著名的多群向量评估PSO(VEPSO)算法。 f-MOPSO受益于组织良好的Sugeno模糊推理系统(SFIS),该系统旨在处理优化问题的多目标性质。 f-MOPSO的独特性能不仅可以提供更好的最终解决方案,而且还可以通过一个称为综合优势指数的指标,在​​一个阶段中汇总衡量解决方案的优势和多样性的能力,而与此相反,在两个不同阶段评估优势和多样性的客观算法,会导致过多的计算负担。优化模型是在10年的长期模拟期内进行的,与研究中实际操作中观察到的类似标准相比,提高了灌溉效率,即减少了水的流失,减少了每单位耕地的耗水量并提高了水生产率。区域。小麦和水稻作物被确定为主要作物,而优化模型对洋葱栽培的兴趣最小,在整个计划期内,该作物的平均栽培面积最小。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号