Artificial Intelligence Enabling Water Desalination Sustainability Optimization

Shadi Alzu'bi, M. Alsmirat, M. Al-Ayyoub, Y. Jararweh
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引用次数: 11

Abstract

Recently, water desalination has been developing increasingly worldwide. Many new plants are contracted constantly. Strategic planning and many other technical decisions are significant to these strategic systems. The proposed Artificial Intelligent (AI) methods provide decision makers with different choices for investment, where each is comprised of different desalination combinations regarding to locations, capacities, and energy sources in terms of several performance metrics. The intelligent decisions determine the optimal stations location and the water desalination system capacity for future expectations. Other smart decisions select the optimal desalination technologies for available existing and suggested desalination planting. In addition, AI methods provide decision makers to configure the pipeline network and transport water among the planting locations. The proposed work is a method to upkeep strategic decision making for the best water desalination facility. Our methodology offers a set of AI alternatives for several desalination plans. Decision support systems and tools are imperfect to deliver a set of alternatives. Therefore, the proposed work provides a systematic decision process to validate several water desalination alternatives, considering intelligent water pumping to the locations through the pumping network and water storage at every location. The proposed approach is validated for a case study in Jordan, which is a beginner country in desalination. The results show where economic and environmental benefits occurs. It shows how the AI methods can introduce an optimal settings of the desalination process to the peopole who makes decisions.
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人工智能助力海水淡化可持续性优化
近年来,海水淡化在世界范围内得到了越来越多的发展。许多新工厂不断承包。战略规划和许多其他技术决策对这些战略系统至关重要。拟议的人工智能(AI)方法为决策者提供了不同的投资选择,其中每种方法都由不同的脱盐组合组成,涉及位置、容量和能源的几个性能指标。智能决策确定了最优的站位和未来预期的海水淡化系统容量。其他明智的决定是为现有的和建议的海水淡化种植选择最佳的海水淡化技术。此外,人工智能方法为决策者提供了配置管网和在种植地点之间输送水的方法。所提出的工作是维持最佳海水淡化设施战略决策的一种方法。我们的方法为几种海水淡化计划提供了一套人工智能替代方案。决策支持系统和工具在提供一组备选方案方面并不完美。因此,提出的工作提供了一个系统的决策过程来验证几种海水淡化方案,考虑通过抽水网络智能抽水到各个地点和每个地点的储水。提议的方法在约旦的一个案例研究中得到了验证,约旦是一个脱盐的初级国家。结果显示了经济效益和环境效益。它展示了人工智能方法如何向决策者介绍脱盐过程的最佳设置。
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