计算机与现代化Issue(12):59-65,7.DOI:10.3969/j.issn.1006-2475.2024.12.009
多尺度时间编码的工业园区短期负荷预测
Short-term Load Forecasting in Industrial Parks with Multi-scale Time Coding
摘要
Abstract
To enhance the accuracy of short-term load prediction in industrial parks,a model based on complete ensemble em-pirical mode decomposition with adaptive noise with auto-encoder and convolutional neural network-Transformer is proposed.The model addresses the issues of coupling,nonlinearity,and stochasticity of short-term loads.Given that sudden events and emergencies in real scenarios can cause abnormal fluctuations in load data,the sliding time window method is used to firstly de-tect and correct any anomaly data.Secondly,the frequency domain decomposition algorithm is utilized to resolve the coupling of the load data by dividing the historical load data into multi-scale frequency domain components.Thirdly exogenous features with high correlation to be selected load fluctuations are generated using auto-encoder and feature engineering methods and used as inputs along with the components.Then a convolutional neural network is used to analyze latent features and fuse them with the inputs.The results are fed into the Transformer network,which combines its coding capability and multi-attention mechanism to capture the characteristics of the time series.The final prediction result is obtained by super-imposing the final output of each sub-module.Using the real load dataset as an example,the results demonstrate that the proposed model significantly enhances short-term load forecasting accuracy.关键词
工业园区短期负荷预测/自适应噪声完备集合经验模态分解/自编码器/特征融合/TransformerKey words
short-term load forecasting in industrial parks/complete ensemble empirical mode decomposition with adaptive noise/auto-encoder/feature fusion/Transformer分类
信息技术与安全科学引用本文复制引用
王海洋,弓同鑫,杨锦涛,陈再龙..多尺度时间编码的工业园区短期负荷预测[J].计算机与现代化,2024,(12):59-65,7.基金项目
陕西省自然科学基础研究计划项目(2023-JC-YB-558) (2023-JC-YB-558)
陕西省教育厅科研计划项目(23JS028) (23JS028)