Shengwei Pei , Lan Hoang , Guangtao Fu , David Butler
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引用次数: 0
Abstract
Pump scheduling in water distribution networks (WDNs) influences energy efficiency and supply reliability. Recently, machine-learning technologies showed promise in real-time control. However, methods sorely focused on minimizing operational costs often limit decision-makers choices. This study introduces a real-time multi-objective optimization method for pump scheduling in WDNs employing neuro-evolution, with neural networks trained by NSGA-II. The approach explores neural network-based control policies to balance system resilience and operational cost, comparing their performance against two baseline methods using NSGA-II, i.e., scenario-specific optimization (SSO) and robust optimization (RO). Simulation results of the Anytown network show that neuro-evolution performs between SSO and RO in Pareto front hypervolume, with improved outcomes using a smaller-scale neural network and a larger population. Although neuro-evolution is inferior to RO in Pareto front sparsity, it performs better than SSO and RO in pipe failure scenarios. Under default water demand scenarios, over 99 % neuro-evolution policies effectively prevent water pressure deficiencies, surpassing SSO's 83 %. Across all testing scenarios, the least-cost neuro-evolution control policy shows a 2.7 % reduction in mean operational cost and achieves an approximately an 8 % higher minimum water supply ratio compared to RO. Neuro-evolution shows promise for multi-objective real-time scheduling but needs improved performance in Pareto front sparsity.
期刊介绍:
The Journal of Water Process Engineering aims to publish refereed, high-quality research papers with significant novelty and impact in all areas of the engineering of water and wastewater processing . Papers on advanced and novel treatment processes and technologies are particularly welcome. The Journal considers papers in areas such as nanotechnology and biotechnology applications in water, novel oxidation and separation processes, membrane processes (except those for desalination) , catalytic processes for the removal of water contaminants, sustainable processes, water reuse and recycling, water use and wastewater minimization, integrated/hybrid technology, process modeling of water treatment and novel treatment processes. Submissions on the subject of adsorbents, including standard measurements of adsorption kinetics and equilibrium will only be considered if there is a genuine case for novelty and contribution, for example highly novel, sustainable adsorbents and their use: papers on activated carbon-type materials derived from natural matter, or surfactant-modified clays and related minerals, would not fulfil this criterion. The Journal particularly welcomes contributions involving environmentally, economically and socially sustainable technology for water treatment, including those which are energy-efficient, with minimal or no chemical consumption, and capable of water recycling and reuse that minimizes the direct disposal of wastewater to the aquatic environment. Papers that describe novel ideas for solving issues related to water quality and availability are also welcome, as are those that show the transfer of techniques from other disciplines. The Journal will consider papers dealing with processes for various water matrices including drinking water (except desalination), domestic, urban and industrial wastewaters, in addition to their residues. It is expected that the journal will be of particular relevance to chemical and process engineers working in the field. The Journal welcomes Full Text papers, Short Communications, State-of-the-Art Reviews and Letters to Editors and Case Studies