计及历史数据缺失与负荷时间异质的超短期负荷预测OA
Ultra-Short-Term Load Forecasting Considering Historical Data Missing and Load Temporal Heterogeneity
[目的]受限于实际运行条件,负荷预测往往面临数据质量低下与负荷分布变化的双重挑战.为此,提出一种计及历史数据缺失与负荷时间异质的超短期负荷预测方法.[方法]首先,为重建负荷等缺失时序数据,将卷积-双向长短期记忆神经网络(convolutional neural network-bidirectional long short-term memory,CNN-BiLSTM)嵌入生成对抗插补网络(generative adversarial imputation network,GAIN),捕捉时空依赖关系.训练过程中,为避免模型仅关注可观测值的插补误差,引入随机噪声替代部分可观测值,显式度量上述噪声的生成偏差.其次,为揭示更小时间尺度上的负荷异质性,对训练集预测模型的负荷输入样本进行聚类,识别不同负荷分布模式.最后,结合不同模式样本微调统一预测模型,构建个性化子模型.在线预测时,根据当下负荷输入样本与各模式中心的相似性动态选择子模型,避免对日历、天气等外部信息的依赖.[结果]算例表明,所提缺失数据重建方法较传统方法具有更低重建误差,在此基础上建立的负荷预测模型误差更低.引入个性化预测子模型构建及选取策略,可进一步降低预测误差.[结论]实验结果充分验证了所提方法在实际运行场景下的应用价值.
[Objective]Constrained by practical operating conditions,load forecasting often faces the dual challenges of low data quality and variable load distribution.To address this,an ultra-short-term load forecasting method considering historical data missing and load temporal heterogeneity is proposed in this paper.[Methods]First,to reconstruct missing time-series data such as load,a Convolutional Neural Network-Bidirectional Long Short-Term Memory(CNN-BiLSTM)neural network is embedded within the Generative Adversarial Imputation Network(GAIN)to capture the spatiotemporal dependencies.During training,to prevent the model from focusing solely on the imputation error of observable values,random noise is introduced to replace partial observable values,enabling explicit measurement of the generation bias corresponding to the aforementioned noise.Second,to reveal load heterogeneity at finer temporal scales,clustering is applied to load input samples for the forecasting model in the training set to identify different load distribution patterns.Finally,a unified forecasting model is fine-tuned according to different pattern-specific samples,constructing personalized sub-models.During online forecasting,the most suitable sub-model is dynamically selected based on the similarity between the current load input sample and the centers of each pattern,eliminating reliance on external information such as calendar and weather data.[Results]Case studies demonstrate that the proposed missing data reconstruction method achieves lower reconstruction errors compared with traditional methods.Based on this,the constructed forecasting model yields higher prediction accuracy.Incorporating the construction and selection strategy for personalized forecasting sub-models further decreases forecasting errors.[Conclusions]Experimental results confirm the practical engineering value of the proposed method in real-world operational scenarios.
史瑞研;赵永宁;付坤明;刘静文
中国农业大学信息与电气工程学院,北京市 100083中国农业大学信息与电气工程学院,北京市 100083中国农业大学信息与电气工程学院,北京市 100083中国农业大学信息与电气工程学院,北京市 100083
信息技术与安全科学
负荷预测历史数据缺失负荷时间异质生成对抗迁移学习
load forecastingmissing historical dataload temporal heterogeneitygenerative adversarialtransfer learning
《电力建设》 2026 (6)
123-136,14
国家自然科学基金项目(52207144) This work is supported by the National Natural Science Foundation of China(No.52207144).
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