引用本文: | 胡实,唐昊,吕凯,杨晨芳.考虑广义需求侧资源的深度置信网络短期负荷预测方法[J].控制理论与应用,2023,40(3):493~501.[点击复制] |
HU Shi,TANG Hao,LV Kai,YANG Chen-fang.Short-term load forecasting method of deep belief network by considering generalized demand-side resources[J].Control Theory and Technology,2023,40(3):493~501.[点击复制] |
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考虑广义需求侧资源的深度置信网络短期负荷预测方法 |
Short-term load forecasting method of deep belief network by considering generalized demand-side resources |
摘要点击 1340 全文点击 453 投稿时间:2021-03-13 修订日期:2022-08-10 |
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DOI编号 10.7641/CTA.2021.10209 |
2023,40(3):493-501 |
中文关键词 短期负荷预测 广义需求侧资源 深度置信网络 负荷聚合商 |
英文关键词 short-term load forecasting generalized demand side resources deep belief network load aggregator |
基金项目 国家电网有限公司总部科技项目“弹性环境下基于深度学习的智能调度技术”(SGTYHT/19–JS–215)资助. |
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中文摘要 |
随着智能电网信息化水平的不断提高以及可控负荷、分布式电源和储能等广义需求侧资源的大量接入, 将
产生海量负荷数据集并改变负荷特性. 为了提高负荷预测精度, 提出了一种考虑广义需求侧资源的深度置信网络
(DBN)负荷预测方法. 首先, 借助负荷聚合商确定了广义需求侧资源参与电力市场的机制, 构建了基于合同的广义
需求侧资源调度模型, 并利用该模型求解广义需求侧资源参与电力市场的最优调度计划. 其次, 引入DBN结构, 并
将广义需求侧资源的最优调度计划作为其输入量, 建立了短期负荷预测模型. 最后, 以实际数据进行仿真测试, 结果
表明, 本文所提方法具有更高的预测精度. |
英文摘要 |
With the continuous improvement of the informatization level of smart grid and the massive access of generalized
demand-side resources such as controllable load, distributed power sources and energy storage, massive load data
sets will be generated and load characteristics will be changed. In order to improve the load forecasting accuracy, a deep
belief network (DBN) load forecasting method considering generalized demand-side resources is proposed. Firstly, the
mechanism of the participation of generalized demand-side resources in the power market is determined with the help of
load aggregators, and a contract-based generalized demand-side resource scheduling model is constructed, which determines
the optimal scheduling plan of generalized demand-side resources participating in power market. Then, a short-term
load forecasting model is established by introducing the DBN structure and taking the optimal scheduling plan as its input.
Finally, a simulation test is conducted with the actual data, and the results show that the proposed method has higher
prediction accuracy. |
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