Academic Journal

A Robust Segmented Mixed Effect Regression Model for Baseline Electricity Consumption Forecasting

Λεπτομέρειες βιβλιογραφικής εγγραφής
Τίτλος: A Robust Segmented Mixed Effect Regression Model for Baseline Electricity Consumption Forecasting
Συγγραφείς: Yuanqi Gao, Weixin Yao, Nanpeng Yu, Xiaoyang Zhou
Πηγή: Journal of Modern Power Systems and Clean Energy, Vol 10, Iss 1, Pp 71-80 (2022)
Στοιχεία εκδότη: Journal of Modern Power Systems and Clean Energy, 2022.
Έτος έκδοσης: 2022
Θεματικοί όροι: TK1001-1841, Segmented regression model, Production of electric energy or power. Powerplants. Central stations, demand response, mixed effects, TJ807-830, trimmed maximum likelihood, 0101 mathematics, 01 natural sciences, 7. Clean energy, Renewable energy sources, electric load
Περιγραφή: Renewable energy production has been surging around the world in recent years. To mitigate the increasing uncertainty and intermittency of the renewable generation, proactive demand response algorithms and programs are proposed and developed to further improve the utilization of load flexibility and increase the efficiency of power system operation. One of the biggest challenges to efficient control and operation of demand response resources is how to forecast the baseline electricity consumption and estimate the load impact from demand response resources accurately. In this paper, we propose a mixed effect segmented regression model and a new robust estimate for forecasting the baseline electricity consumption in Southern California, USA, by combining the ideas of random effect regression model, segmented regression model, and the least trimmed squares estimate. Since the log-likelihood of the considered model is not differentiable at breakpoints, we propose a new backfitting algorithm to estimate the unknown parameters. The estimation performance of the new estimation procedure has been demonstrated with both simulation studies and the real data application for the electric load baseline forecasting in Southern California.
Τύπος εγγράφου: Article
Γλώσσα: English
ISSN: 2196-5625
DOI: 10.35833/mpce.2020.000023
Σύνδεσμος πρόσβασης: https://ieeexplore.ieee.org/ielx7/8685265/9694556/09248496.pdf
https://doaj.org/article/32aa0924e7ea4f53b7f1d467e1c6d410
https://ieeexplore.ieee.org/abstract/document/9248496/
Αριθμός Καταχώρησης: edsair.doi.dedup.....d561a3ef56654ca7c72b6a2ede407d68
Βάση Δεδομένων: OpenAIRE
Περιγραφή
ISSN:21965625
DOI:10.35833/mpce.2020.000023