2025 : 9 : 29

Jafar Tavoosi

Academic rank: Associate Professor
ORCID:
Education: PhD.
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HIndex:
Faculty: Engineering
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Research

Title
Soft-switching predictive Type-3 fuzzy control for microgrid energy management
Type
JournalPaper
Keywords
Economic Optimization, Soft Switching, Fuzzy Control, Machine Learning, Artificial Intelligence, SMC
Year
2025
Journal Energy Informatics
DOI
Researchers Walid Ayadi ، Jafar Tavoosi ، Amirhossein Khosravi Sarvenoee ، Ardashir Mohammadzadeh

Abstract

Because each mode has distinct optimization requirements, optimizing the economic performance of microgrids (MGs) in grid-connected and islanded modes presents unique issues. This research offers a novel methodology to overcome this difficulty and better use renewable resources while satisfying the growing needs of the energy market. To maximize the MG’s performance, this approach combines fuzzy control, machine learning, and artificial intelligence with soft switching technologies. Two predictive rules are used in the design of the control system to handle the particular requirements of either the grid-connected or islanded mode depending on the MG’s operational condition. The study’s findings demonstrate that, in addition to lowering energy expenses in large commercial buildings, the suggested strategy optimizes the use of renewable energy sources and storage capacity in a range of network scenarios. This method offers more flexibility in response to network changes and greatly improves energy efficiency.