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基于霜冰优化组合模态分解及Informer的空间负荷预测

肖白 李森 焦明曦 杜彬斌 徐炜彬 葛玉林 高健

电力建设2026,Vol.47Issue(4):108-121,14.
电力建设2026,Vol.47Issue(4):108-121,14.DOI:10.12204/j.issn.1000-7229.2026.04.009

基于霜冰优化组合模态分解及Informer的空间负荷预测

Spatial Load Forecasting Based on RIME-Optimized Combination Modal Decomposition and Informer

肖白 1李森 1焦明曦 2杜彬斌 2徐炜彬 2葛玉林 2高健2

作者信息

  • 1. 现代电力系统仿真控制与绿色电能新技术教育部重点实验室(东北电力大学),吉林省 吉林市 132012
  • 2. 国网吉林省电力有限公司长春供电公司,长春市 130021
  • 折叠

摘要

Abstract

[Objective]This paper proposes a spatial load forecasting method based on RIME-optimized combination modal decomposition and Informer to provide accurate load data for power system planning.[Methods]First,a power geographic information system for the target area is constructed.Subsequently,the connectivity-based outlier factor method was used to detect the historical load data of the cell,and the moving average method was used to rectify the historical load data.Next,symplectic geometry mode decomposition is employed to decompose the corrected cell load time series into components with different frequencies and amplitudes.These components are reconstructed into a high-frequency component,an oscillatory component,and a trend component based on calculated permutation entropy.Then,the rime optimization algorithm optimizes key parameters of variational mode decomposition.This optimized variational mode decomposition was used to perform a secondary decomposition on the high-frequency components of the cell load,yielding high-frequency subcomponents with enhanced regularity.Finally,individual Informer forecasting models are established for each component obtained from the primary modal decomposition reconstruction and the secondary modal decomposition.The prediction results of each component are then reconstructed to obtain the load forecast values for the target year of the corresponding cell.[Results]The spatial load forecasting is completed once the load forecast values for all cells at different spatial locations within the planning area have been calculated.The results of the case analysis indicate that the method proposed in this paper significantly reduces prediction errors compared to the comparative methods,improving prediction accuracy.[Conclusions]The proposed method effectively extracts load regularities through a progressive load regularity analysis technology and achieves spatial load forecasting by establishing Informer models for individual components,obtaining improved prediction results.

关键词

空间负荷预测/电力地理信息系统/辛几何模态分解/霜冰优化算法/Informer

Key words

spatial load forecasting/power geographic information system/symplectic geometry mode decomposition/RIME optimization algorithm/Informer

分类

信息技术与安全科学

引用本文复制引用

肖白,李森,焦明曦,杜彬斌,徐炜彬,葛玉林,高健..基于霜冰优化组合模态分解及Informer的空间负荷预测[J].电力建设,2026,47(4):108-121,14.

基金项目

国家重点研发计划项目(2017YFB0902205) (2017YFB0902205)

吉林省产业创新专项基金资助项目(2019C058-7) This work is supported by the National Key R&D Program of China(No.2017YFB0902205)and the Industrial Innovation Foundation of Jilin Province(No.2019C058-7). (2019C058-7)

电力建设

1000-7229

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