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    智能算法在给水厂水泵节能减碳中的研究进展

    Advances in Intelligent Algorithms in Energy Saving and Carbon Reduction of Water Pumps in Water Treatment Plants

    • 摘要: 在“双碳”目标深入推进背景下,水泵作为城镇给水厂的核心高能耗设备,运行所用电量占总能耗90%以上,其节能减碳已成为行业绿色转型的关键。然而目前相关研究存在一些不足:基于理论特性的静态模型难以精准映射实际动态工况,智能算法与日渐复杂的水泵优化问题耦合程度不足,评估多集中于运行阶段且结果未能充分反馈至优化过程,影响了节能效果的进一步提升。本文围绕智能算法在水泵节能领域的研究进展进行了系统梳理,明确了水泵节能模型构建的核心要素,为算法优化提供了基础框架;针对传统智能算法、数据驱动型智能算法及混合智能算法分别归纳应用场景与技术特征,发现混合智能算法相较传统智能算法可额外降低5%~10%的能耗;总结了传统节能减碳评估体系的关键指标,并提出了全生命周期碳足迹评估的拓展方向。结果表明,智能算法与评估体系的协同迭代是提升节能减碳成效的关键驱动力。基于此,提出构建“模型−算法−评估”三位一体技术框架,重点聚焦解决模型失真问题、提升算法适配性和全面校验优化策略,推动城镇给水厂智能化节能减碳技术的有效落地。

       

      Abstract: Energy conservation and carbon reduction in pumping systems at urban water supply plants are pivotal for achieving carbon peak and carbon neutrality goals. Over 90% of the electricity consumption in such plants is attributed to pump operation. However, current research faces three interconnected problems. First, static models based on theoretical characteristics fail to represent actual dynamic operating conditions accurately, leading to biased optimization baselines. Second, the coupling between intelligent algorithms and increasingly complex pump-optimization problems remains insufficient, often resulting in suboptimal solutions. Third, the evaluation system is fragmented, and assessment results are not effectively fed back into the optimization process to enable iterative improvement. These disconnections among the Model–Algorithm–Assessment components represent a core scientific challenge that hinders precise and effective decarbonization of water-supply systems. This review systematically examines recent advances in the application of intelligent algorithms to pump energy optimization. It first outlines the key elements of pump energy modeling, including operating-point derivation via curve fitting, objective function formulation, and constraint setting, which together provide a foundation for subsequent algorithmic optimization. It then categorizes and analyzes the application scenarios and technical features of traditional heuristics, data-driven methods, and hybrid algorithms. Literature analysis reveals that traditional heuristics remain the most widely applied algorithms but are prone to premature convergence under dynamic conditions, limiting their practical effectiveness. In contrast, emerging hybrid algorithms that integrate mechanistic models with data-driven techniques have demonstrated additional energy-saving potential: specifically, they can reduce energy consumption by 5% to 10% compared to traditional algorithms. A life-cycle perspective indicates that operational-phase carbon emissions account for 70% to 85% of the total footprint, while the manufacturing and disposal stages contribute 15% to 30%. This finding suggests that life-cycle assessment (LCA) could complement existing evaluation systems and underscores the need for a holistic assessment beyond mere operational energy use. Operational-phase metrics are also detailed, as they are essential for quantifying optimization effects and providing feedback to algorithms. The results indicate that the iterative synergy between intelligent algorithms and assessment systems is central to enhancing performance. To address the identified gaps, we propose a Model–Algorithm–Assessment tripartite framework that focuses on three interrelated aspects: (1) a sufficiently accurate and generalizable mathematical model; (2) intelligent algorithms that overcome algorithm–problem mismatch and achieve efficient optimization under complex, time-varying conditions; and (3) a life-cycle assessment system that provides comprehensive validation and broader evaluation dimensions for optimization strategies. This framework promotes the implementation of intelligent energy-saving and carbon-reduction technologies in urban water-supply plants.

       

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