期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
National Electricity Generation,Electricity Consumption and Peak Load by Grid (March 2006)
1
《Electricity》 2006年第2期49-49,共1页
关键词 National Electricity Generation Electricity Consumption and peak load by Grid March 2006 OVER
下载PDF
National Electricity Generation,Electricity Consumption and Peak Load by Grid (April 2006)
2
《Electricity》 2006年第2期49-49,共1页
关键词 National Electricity Generation Electricity Consumption and peak load by Grid April 2006 OVER
下载PDF
High-resolution peak demand estimation using generalized additive models and deep neural networks
3
作者 Jonathan Berrisch Michal Narajewski Florian Ziel 《Energy and AI》 2023年第3期3-13,共11页
This paper covers predicting high-resolution electricity peak demand features given lower-resolution data.This is a relevant setup as it answers whether limited higher-resolution monitoring helps to estimate future hi... This paper covers predicting high-resolution electricity peak demand features given lower-resolution data.This is a relevant setup as it answers whether limited higher-resolution monitoring helps to estimate future high-resolution peak loads when the high-resolution data is no longer available.That question is particularly interesting for network operators considering replacing high-resolution monitoring by predictive models due to economic considerations.We propose models to predict half-hourly minima and maxima of high-resolution(every minute)electricity load data while model inputs are of a lower resolution(30 min).We combine predictions of generalized additive models(GAM)and deep artificial neural networks(DNN),which are popular in load forecasting.We extensively analyze the prediction models,including the input parameters’importance,focusing on load,weather,and seasonal effects.The proposed method won a data competition organized by Western Power Distribution,a British distribution network operator.In addition,we provide a rigorous evaluation study that goes beyond the competition frame to analyze the models’robustness.The results show that the proposed methods are superior to the competition benchmark concerning the out-of-sample root mean squared error(RMSE).This holds regarding the competition month and the supplementary evaluation study,which covers an additional eleven months.Overall,our proposed model combination reduces the out-of-sample RMSE by 57.4%compared to the benchmark. 展开更多
关键词 Electricity peak load Generalized additive models Artificial neural networks Prediction Combination Weather effects Seasonality
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部