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Water resource planning and management using motivated machine learning

机译:动机机器学习的水资源规划与管理

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Water resources planning and management require problem resolution and optimized use of resources. Since many objectives in water management are conflicting, it is hard to devise one optimum strategy. A simulation tool capable of optimized multi-objective analysis to satisfy a multiplicity of goals is needed to support water decision making. This paper suggests an integrated modelling framework to assist with time consuming and difficult tasks of decision making by water management practitioners and to harmonize economic uses of water resources. Motivated machine learning, presented in this paper, supports intelligent decision-making processes in dynamically changing environments and could be used to consider alternative water management policies. Motivated learning systems learn to properly control the environment with competing goals. They provide a natural support for multi-objective decision making in an active search for balance between conflicting situations and adverse environmental conditions. A case study of optimized machine learning water management decisions is presented.
机译:水资源规划和管理要求解决问题并优化资源利用。由于水管理的许多目标相互矛盾,因此很难设计出一种最佳策略。需要一种能够优化多目标分析以满足多个目标的仿真工具来支持水决策。本文提出了一个综合的建模框架,以协助耗时且困难的水资源管理从业人员进行决策,并协调水资源的经济利用。本文介绍的动机机器学习支持动态变化的环境中的智能决策过程,可用于考虑替代的水管理政策。积极进取的学习系统将学习如何以竞争目标正确控制环境。它们为积极寻求冲突情况和不利环境条件之间的平衡提供了多目标决策的自然支持。提出了优化机器学习水管理决策的案例研究。

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