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基于源荷不确定性虚拟电厂电-碳-绿协同调度

Research on Electricity-Carbon-Green Collaborative Scheduling of Virtual Power Plants with Source-Load Uncertainty Based on HSO Algorithm

  • 摘要:
    目的 为应对新型电力系统绿色低碳转型中,虚拟电厂(Virtual Power Plants,VPP)面临源荷双侧强不确定性与“电-碳-绿”多目标协同难的挑战,文章构建了一种融合碳交易与绿证交易机制的虚拟电厂协同调度模型。
    方法 首先,针对电源侧风光出力的随机性与负荷侧需求的动态性,分别采用场景随机优化法与场景削减聚类法,构建其不确定性表征模型。进而,在调度模型中集成碳交易与绿证交易成本,并计及储能、抽水蓄能等灵活资源,形成以总运行成本最小化为目标的“电-碳-绿”协同优化框架。为高效求解此复杂模型,提出一种基于无隐喻优化思想的整体群优化(Holistic Swarm Optimization,HSO)算法,有效提升了求解的稳健性与效率。
    结果 研究发现:文章提出的源荷不确定方法对比目前同类处理方法,在多数据集验证下更具参考价值;较参与电-绿证市场与参与电-碳市场的情况下,收益分别提升51.2%与37.8%,验证了多市场协同调度模型在收益提升上的有效性,参与电力市场、碳市场与绿证交易市场,能够实现多收益源的叠加。
    结论 算例分析表明,相较于传统方法,所提模型与算法能在保障经济性的同时,显著提升碳减排效益与绿证收益,实现多目标协同优化。

     

    Abstract:
    Objective To address the challenges of strong uncertainties on both the supply and demand sides, as well as the difficulty in "electricity-carbon-green certificate" multi-objective coordination, faced by virtual power plants (VPP) during the green and low-carbon transition of new-type power systems, this paper constructs a VPP collaborative scheduling model integrating carbon trading and green certificate trading mechanisms.
    Method First, targeting the randomness of wind and solar output on the supply side and the dynamics of load demand on the demand side, scenario-based stochastic optimization and scenario reduction clustering methods were adopted respectively to establish their uncertainty characterization models. Furthermore, carbon trading and green certificate trading costs were integrated into the scheduling model, with flexible resources such as energy storage and pumped storage taken into account, forming an "electricity-carbon-green certificate" collaborative optimization framework aimed at minimizing the total operating cost. To efficiently solve this complex model, a holistic swarm optimization (HSO) algorithm based on the metaphor-free optimization concept was proposed, which effectively enhanced the robustness and efficiency of the solution.
    Result The study finds that: compared with existing similar uncertainty processing methods, the proposed supply-demand uncertainty modeling method proves more valuable for reference through verification on multiple datasets; the revenue is increased by 51.2% and 37.8% respectively compared with the scenarios of participating only in the electricity-green certificate market and the electricity-carbon market, verifying the effectiveness of the multi-market collaborative scheduling model in revenue enhancement. Participating in the electricity market, carbon market, and green certificate trading market can realize the superposition of multiple revenue sources.
    Conclusion Case study analysis shows that, compared with traditional methods, the proposed model and algorithm can significantly improve carbon emission reduction benefits and green certificate revenue while ensuring economic efficiency, achieving multi-objective collaborative optimization.

     

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