Direct Against Indirect Short-Term Net Load Forecasting Using Machine Learning Principles for Renewable Microgrids
Date
2023ISBN
9798350397758ISSN
2687-8860Publisher
IEEE XplorePlace of publication
BucharestSource
2023 IEEE International Smart Cities Conference (ISC2)Google Scholar check
Keyword(s):
Metadata
Show full item recordAbstract
Net load forecasting (NLF) is a key component for the efficient operation and management of microgrids at high shares of renewables. Depending on the forecasting strategy followed, NLF is classified as direct or indirect. In this paper, a performance comparison was conducted between indirect and direct short-term NLF (STNLF) strategies in renewable microgrids. A STNLF model was constructed by utilizing Bayesian neural network (BNN) principles applied to datasets obtained from the University of Cyprus microgrid and buildings. For the indirect STNLF, historical load and photovoltaic (PV) generation data, along with weather and categorical time-related data were used as inputs to develop the optimized BNN models for load and PV generation forecasting. The direct STNLF model achieved lower error (3.98% at the microgrid level) compared to the indirect one.
Collections
- Τμήμα Ηλεκτρολόγων Μηχανικών και Μηχανικών Υπολογιστών / Department of Electrical and Computer Engineering [2897]
- Κέντρο Aριστείας για Έρευνα και Καινοτομία σε Ευφυείς, Αποδοτικές και Βιώσιμες Ενεργειακές Λύσεις «ΦΑΕΘΩΝ» / PHAETHON Research and Innovation Centre of Excellence for Intelligent, Efficient and Sustainable Energy Solutions [32]