Search Results - Modified multi-objective articles swart optimization algorithm
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Authors: et al.
Source: Applied Sciences (2076-3417); Apr2025, Vol. 15 Issue 7, p4005, 28p
Subject Terms: ARC furnaces, ELECTRIC furnaces, OPTIMIZATION algorithms, CURVE fitting, MATHEMATICAL models, ELECTRIC arc
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Source: ACM Transactions on the Web; May2025, Vol. 19 Issue 2, p1-34, 34p
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Authors: et al.
Source: Materials (1996-1944); Feb2023, Vol. 16 Issue 3, p1050, 11p
Subject Terms: MATHEMATICAL optimization, GAUSSIAN processes, HARDNESS, POROSITY, POWDERS
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Authors: et al.
Resource Type: eBook.
Categories: COMPUTERS / Artificial Intelligence / General, COMPUTERS / Programming / Algorithms, TECHNOLOGY & ENGINEERING / Engineering (General), MATHEMATICS / Optimization
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Authors: et al.
Source: Tecnura; Vol. 26 No. 74 (2022): October - December ; 87-129 ; Tecnura; Vol. 26 Núm. 74 (2022): Octubre - Diciembre ; 2248-7638 ; 0123-921X
Subject Terms: Optimal power flow problem, metaheuristic optimization, second-order cone programming, convex optimization, distributed generation, branch power flow, flujo de potencia óptimo, optimización metaheurística, programación cónica de segundo orden, optimización convexa, generación distribuida, flujo de potencia
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