风力和水需求不确定情况下的可再生能源供电海水淡化和处理网络:可能性机会约束程序设计

IF 7.9 2区 工程技术 Q1 ENERGY & FUELS
Fateme Alipoor , Hani Gilani , Hadi Sahebi , Seyed Farid Ghannadpour
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引用次数: 0

摘要

鉴于淡水资源匮乏,海水淡化的重要性日益凸显,这是不容置疑的。它拥有巨大的潜力,尤其是在严重缺水的地区。然而,海水淡化的致命弱点在于它对能源的贪婪,所需的能源大约是废水处理的十倍。此外,海水淡化厂普遍使用化石燃料,带来了环境污染、化石燃料枯竭和成本上升等令人担忧的问题。本研究设计了一个综合海水淡化和处理网络,其中包括一些海水淡化设施、储存中心、风力发电场和废水处理设施。考虑到风能和水需求的不确定性,海水淡化和水处理网络采用了混合指数线性规划(MILP)模型。该模型采用机会约束概率编程方法,确保稳健性,并在保守性与投资吸引力之间取得平衡。该模型旨在提高水和能源供应链网络对风能和水需求波动的适应能力。研究应用该模型对海水淡化厂、处理中心和储存设施的位置进行了优化。这种综合模型可确保自主性,无需外部水源和能源,同时可靠地满足区域需求。在马克兰沿岸案例研究中,我们的综合数学模型显示出最优分配,其中固定成本占 96.67%,可变成本仅占 3.33%。此外,该模型还精确地优化了两个海水淡化中心、两个储水设施和十个水处理中心的位置,有效地管理了对外部水资源的需求。最后,通过严格的敏感性分析,我们揭示了机会约束参数对可变成本的重要影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Renewable energy-powered water desalination and treatment network under wind power and water demand uncertainty: A possibilistic chance-constrained programming

Given the scarcity of freshwater resources, the growing significance of desalination is undeniable. It holds immense potential, particularly in regions grappling with severe water shortages. However, desalination's Achilles heel lies in its voracious energy appetite, requiring roughly ten times more energy than wastewater treatment. Moreover, the prevalent use of fossil fuels in desalination plants poses concerning issues like environmental pollution, fossil fuel depletion, and rising costs. The present study has designed an integrated Water desalination and treatment Network that includes a number of desalination facilities, storage centers, wind farms, and wastewater treatment facilities. The water desalination and treatment network has been structured using a Mixed-Integer Linear Programming (MILP) model, considering uncertainties in wind power and water demand. Employing a chance constraint probabilistic programming approach, this model ensures robustness and balances conservatism with investment attractiveness. It aims to enhance resilience against fluctuations in wind energy and water demand within the water and energy supply chain network. The study applied this model to optimize the locations of desalination plants, treatment centers, and storage facilities. This integrated model ensures autonomy, eliminating the need for external water and energy sources while reliably meeting regional demands. In the context of the Makran coasts case study, our comprehensive mathematical model demonstrates an optimal allocation with 96.67 % attributed to fixed costs and only 3.33 % to variable costs. Moreover, this model precisely optimizes the locations of two desalination centers, two storage facilities, and ten water treatment centers, effectively managing the need for external water resources. Ultimately, through a rigorous sensitivity analysis, we unveiled that the chance constraint parameters have a significant impact on the variable costs.

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来源期刊
Energy Strategy Reviews
Energy Strategy Reviews Energy-Energy (miscellaneous)
CiteScore
12.80
自引率
4.90%
发文量
167
审稿时长
40 weeks
期刊介绍: Energy Strategy Reviews is a gold open access journal that provides authoritative content on strategic decision-making and vision-sharing related to society''s energy needs. Energy Strategy Reviews publishes: • Analyses • Methodologies • Case Studies • Reviews And by invitation: • Report Reviews • Viewpoints
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