Residential probabilistic load forecasting: A method using Gaussian process designed for electric load data

2018 ◽  
Vol 218 ◽  
pp. 159-172 ◽  
Author(s):  
Mahmoud Shepero ◽  
Dennis van der Meer ◽  
Joakim Munkhammar ◽  
Joakim Widén
2019 ◽  
Vol 477 ◽  
pp. 386-398 ◽  
Author(s):  
Ling-Ling Li ◽  
Jin Sun ◽  
Ching-Hsin Wang ◽  
Ya-Tong Zhou ◽  
Kuo-Ping Lin

2019 ◽  
Vol 118 ◽  
pp. 01040
Author(s):  
Manying Zhang ◽  
Lei Wang ◽  
Weimin Zheng ◽  
Hongqiao Peng ◽  
Yue Zhu ◽  
...  

In smart grid era, electric load is becoming more stochastic and less predictable in short horizons with more intermittent energy and competitive electricity market transactions. As a result, short-term probabilistic load forecasting (STPLF) is becoming essential for energy utilities because it helps quantify the risks of decision-making for power systems operation. Currently, probabilistic load forecasts (PLF) are commonly produced from three single components, namely input, model and output. Nevertheless, whether integrating two components to represent dual uncertainties of electric load is practical and able to improve STPLF attracts little regards. To address this issue, this paper proposes three integrated methods by pairwise combination of single representative component, i.e. uniform-biased temperature scenarios (UBTS), quantile regression (QR) and logarithmic residual empirical simulation (LRES). Case study on real utility data demonstrates the superiority of the integrated methods and excavates the relationship between predictive model class and specific integrated method.


2021 ◽  
Vol 297 ◽  
pp. 117173
Author(s):  
Xavier Serrano-Guerrero ◽  
Marco Briceño-León ◽  
Jean-Michel Clairand ◽  
Guillermo Escrivá-Escrivá

Sensors ◽  
2021 ◽  
Vol 21 (9) ◽  
pp. 3299
Author(s):  
Eva Lucas Segarra ◽  
Germán Ramos Ruiz ◽  
Carlos Fernández Bandera

Accurate load forecasting in buildings plays an important role for grid operators, demand response aggregators, building energy managers, owners, customers, etc. Probabilistic load forecasting (PLF) becomes essential to understand and manage the building’s energy-saving potential. This research explains a methodology to optimize the results of a PLF using a daily characterization of the load forecast. The load forecast provided by a calibrated white-box model and a real weather forecast was classified and hierarchically selected to perform a kernel density estimation (KDE) using only similar days from the database characterized quantitatively and qualitatively. A real case study is presented to show the methodology using an office building located in Pamplona, Spain. The building monitoring, both inside—thermal sensors—and outside—weather station—is key when implementing this PLF optimization technique. The results showed that thanks to this daily characterization, it is possible to optimize the accuracy of the probabilistic load forecasting, reaching values close to 100% in some cases. In addition, the methodology explained is scalable and can be used in the initial stages of its implementation, improving the values obtained daily as the database increases with the information of each new day.


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