2024
DOI: 10.1016/j.renene.2024.119944
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Adaptive salp swarm algorithm for sustainable economic and environmental dispatch under renewable energy sources

Ijaz Ahmed,
Muhammad Rehan,
Abdul Basit
et al.
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Cited by 30 publications
(1 citation statement)
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“…The ISSAHF integrated four types of Harris hawk foraging mechanisms into the SSA update process to solve local optimum problems, showing balanced performance between exploration and exploitation. [40] Adaptive salp swarm algorithm (ASSA) ASSA optimized the energy production costs of hybrid power systems by integrating renewable energy sources (RES) into the traditional hydrothermal coordination problem, thereby reducing operational costs by 10% and emissions by 64%. [41] Enhanced SSA based on Gaussian random walk Enhanced SSA introduces a redistribution strategy that prevents getting stuck at local optimum points for multidimensional constrained global optimization problems, showing significant improvements over comparative algorithms.…”
Section: Sdssamentioning
confidence: 99%
“…The ISSAHF integrated four types of Harris hawk foraging mechanisms into the SSA update process to solve local optimum problems, showing balanced performance between exploration and exploitation. [40] Adaptive salp swarm algorithm (ASSA) ASSA optimized the energy production costs of hybrid power systems by integrating renewable energy sources (RES) into the traditional hydrothermal coordination problem, thereby reducing operational costs by 10% and emissions by 64%. [41] Enhanced SSA based on Gaussian random walk Enhanced SSA introduces a redistribution strategy that prevents getting stuck at local optimum points for multidimensional constrained global optimization problems, showing significant improvements over comparative algorithms.…”
Section: Sdssamentioning
confidence: 99%