November 22, 2024
Rahman Dashti

Rahman Dashti

Academic Rank: Associate professor
Address:
Degree: Ph.D in electrical engineering
Phone: +98-7731222752
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title Optimal energy management of energy hub: A reinforcement learning approach
Type Article
Keywords
Microgrid Energy hub Energy management system Reinforcement learning Optimization
Journal Sustainable Cities and Society
DOI https://doi.org/10.1016/j.scs.2024.105179
Researchers zahra yadolahi (First researcher) , Reza Gharibi (Second researcher) , Rahman Dashti (Third researcher) , Amin Torabi Jahromi (Fourth researcher)

Abstract

Increasing energy demand in today’s world emphasizes the importance of optimal scheduling for distributed energy resources to minimize energy costs and greenhouse gas (GHG) emissions. The efficiency of this decision-making process relies on accurate modeling. In this paper, reinforcement learning (RL), an artificial intelligence-based approach, is proposed to optimize the energy management system (EMS) of an energy hub (EH). This EH contains renewable energy resources (RER), a combined heat and power (CHP), and a gas furnace. In order to meet electrical and thermal energy demand, available options such as day-ahead and real-time purchases from the main grid, RERs, and natural gas consumption are managed, with the preference of RERs to minimize GHG emissions and energy costs. With the adaptable RL method, a non-linear model of the CHP operation is constructed, considering the operational costs of the CHP. Furthermore, the natural gas tariff is varied according to the consumption level of the microgrid. Finally, this paper presents an RL-based method for EMS optimization of an EH with day-ahead and real-time scheduling, applied to a 24-hour case study with linear and nonlinear modeling of the problem and sensitivity analysis of the parameters. Corresponding simulation results show the efficiency of the presented approach.