Multi Objective Slime Mould Algorithm Based Energy Management in Hybrid Micro Grid System
DOI:
https://doi.org/10.24906/isc/2023/v37/i4/43717Keywords:
Micro grid, Renewable Energy Sources, Multi-objective slime Mould Algorithm (MOSMA).Abstract
The effective operation of Micro-grid systems involves reconciling multiple conflicting objectives, including cost minimization, renewable energy utilization maximization and emissions reduction. This study proposes the application of recently developed Multi- objective slime mould algorithm (MOSMA) to address the challenges for minimizing cost and emission of a hybrid micro-grid system connected with utility grid. Further, the results are compared with another optimization algorithm to show its efficiency, economic viability, and environmental impact for green micro-grids.
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