基于Conv-Seq2Seq模型的含弹性资源电力系统日前调度方法
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TM721

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国家自然科学基金项目(62273130);安徽省自然科学基金项目(2108085UD01);安徽省高校协同创新项目(GXXT-2023-032).


Day-ahead scheduling method of power system with flexible resources based on Conv-Seq2Seq model
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    摘要:

    针对新能源大规模并网带来的消纳问题, 提出一种考虑源荷双侧弹性资源的日前调度方法. 首先, 对深度调峰机组、可平移负荷和可削减负荷的弹性调节能力进行分析, 建立含弹性资源的电力系统调度模型; 然后, 提出一种基于Conv-Seq2Seq (convolutional sequence to sequence)模型的日前调度方法, 使用多层卷积神经网络作为编码器对负荷预测数据等信息进行提取, 改进深度学习网络信息提取的能力和速度, 并使用门控循环单元作为解码器对编码器提取的信息进行解码, 以输出调度计划; 最后, 通过辅助决策修正来确保调度计划的安全性. 基于改进的IEEE39节点算例验证所提出方法的有效性和正确性.

    Abstract:

    To solve the challenges of accommodating large-scale renewable energy integration into the power grid, a day-ahead dispatching strategy utilizing flexible resources on both source-side and load-side is proposed. Firstly, the flexible regulation capabilities of deep peak regulation, shiftable loads and reducible loads are analyzed, and a power system dispatching model includes these flexible resources is established. Subsequently, a day-ahead scheduling method based on the convolutional sequence to sequence(Conv-Seq2Seq) model is proposed. Load forecasting data and other relevant information are extracted through the encoder using multi-layer convolutional neural networks, which enhances the capability and speed of information extraction in deep learning networks. The decoder employing a gated recurrent unit decodes the information extracted by the encoder and outputs the scheduling plan. Finally, auxiliary decision correction is applied to refine the outputted dispatching plan to ensure security. The effectiveness and correctness of the proposed method are verified using an improved IEEE 39-bus system.

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谭琦,孙晨皓,唐昊,等.基于Conv-Seq2Seq模型的含弹性资源电力系统日前调度方法[J].控制与决策,2025,40(5):1651-1659

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  • 收稿日期:2024-08-09
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  • 在线发布日期: 2025-04-15
  • 出版日期: 2025-05-20
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