2021
DOI: 10.1002/2050-7038.13124
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Application of chaotic quasi‐oppositional whale optimization algorithm on CHPED problem integrated with wind‐solar‐EVs

Abstract: Summary In this article, a newly developed chaotic quasi‐oppositional whale optimization algorithm (CQOWOA) is employed to analyze the combined heat and power economic dispatch (CHPED) problem for the first time. In the suggested algorithm, chaotic quasi‐oppositional learning is imposed with a whale optimization algorithm (WOA) to enhance its convergence rate and reduce the generation cost. In this work, wind energy, solar energy, and electric vehicles (EVs) are scheduled with CHPED and developed in the propos… Show more

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Cited by 9 publications
(1 citation statement)
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“…Paul et al 36 had proposed scheduling CHPED with wind and solar renewable energy sources for fuel cost minimization and in order to address the nonlinearity of solar radiation, wind speed, and valve point loading of thermal units, they evaluated the issue using a novel optimization technique called quasi oppositional‐based WOA (QOWOA). In order to reduce the amount of thermal generation used during load demand, Paul et al 37 improved their study with additional nonlinearities by combining EVs with wind solar based CHPED. To cope up with these uncertainties, the chaotic based learning was integrated in chaotic QOWOA (CQOWOA) for optimal solution while satisfying all the constraints of the different test systems.…”
Section: Introductionmentioning
confidence: 99%
“…Paul et al 36 had proposed scheduling CHPED with wind and solar renewable energy sources for fuel cost minimization and in order to address the nonlinearity of solar radiation, wind speed, and valve point loading of thermal units, they evaluated the issue using a novel optimization technique called quasi oppositional‐based WOA (QOWOA). In order to reduce the amount of thermal generation used during load demand, Paul et al 37 improved their study with additional nonlinearities by combining EVs with wind solar based CHPED. To cope up with these uncertainties, the chaotic based learning was integrated in chaotic QOWOA (CQOWOA) for optimal solution while satisfying all the constraints of the different test systems.…”
Section: Introductionmentioning
confidence: 99%