A Novel Integration Approach for Photovoltaic/Wind/Fuel Cell-Based Hybrid Renewable Energy Systems With Reliability Indices for Sustainable Electric Vehicle Charging
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引用次数: 0
Abstract
Hybrid energy systems that integrate renewable energy sources are driving the green energy revolution and playing an increasingly vital role in supporting sustainable transportation through electric vehicle charging infrastructure. This study involves the meticulous design of a reliable standalone multi-vector hybrid energy configuration comprising photovoltaic panels, wind turbines, and fuel cells (PV/WT/FC) for stochastic electric vehicle (EV) load. Significantly, the research presents a pioneering methodology that incorporates chaotic particle swarm optimization aligned with the Andean Condor algorithm (CPSO-ACA), providing a sophisticated optimization approach. The evaluation process is based on key measures like net present cost (NPC), levelized cost of energy (LCOE), and reliability indicators such as loss of load probability (LOLP), loss of load expectation (LOLE), and loss of energy expected (LOEE). With the proposed hybrid approach, a reliable hybrid energy system with the lowest renewable energy components and promising reliability (LOLP = 0.064) has been reported. From a financial perspective, the values of NPC, LCOE, and LOE ($4.06 M, $0.0636/kWh, and $0.7083 M) enable the hybrid system to be economically sound. Furthermore, the energy-oriented reliability indices, LOEE and LOLE, have significantly reduced to 5920 kWh and 564.144 h, respectively. The effectiveness of the proposed algorithm is compared with GA, GWO, MOPSO, and CPSO algorithms and is indicative of the strength achieved through proposed optimization in the evolving landscape of green energy technology.
期刊介绍:
This journal is only available online from 2011 onwards.
Fuel Cells — From Fundamentals to Systems publishes on all aspects of fuel cells, ranging from their molecular basis to their applications in systems such as power plants, road vehicles and power sources in portables.
Fuel Cells is a platform for scientific exchange in a diverse interdisciplinary field. All related work in
-chemistry-
materials science-
physics-
chemical engineering-
electrical engineering-
mechanical engineering-
is included.
Fuel Cells—From Fundamentals to Systems has an International Editorial Board and Editorial Advisory Board, with each Editor being a renowned expert representing a key discipline in the field from either a distinguished academic institution or one of the globally leading companies.
Fuel Cells—From Fundamentals to Systems is designed to meet the needs of scientists and engineers who are actively working in the field. Until now, information on materials, stack technology and system approaches has been dispersed over a number of traditional scientific journals dedicated to classical disciplines such as electrochemistry, materials science or power technology.
Fuel Cells—From Fundamentals to Systems concentrates on the publication of peer-reviewed original research papers and reviews.