2018
DOI: 10.1007/978-3-030-05983-5_14
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Adaptation of Late Acceptance Hill Climbing Algorithm for Optimizing the Office-Space Allocation Problem

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Cited by 2 publications
(1 citation statement)
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“…As optimization problems continue to evolve, new techniques encompassing artificial intelligence, as well as the metaheuristic search-based optimization approaches were designed to tackle the D-OPF problem. Recent efforts focused on search-based optimization approaches, which include the genetic algorithm (GA) optimization method [10], particle swarm optimizer (PSO) method [11,12], differential evolution optimization method [13,14], enhanced genetic algorithms optimization method [15], gravitational searching algorithm (GSA) method [16,17], multi-phase searching optimization algorithm [18,19], improving colliding bodies method [20], improved PSO method [21], biogeography-based optimizing approach [22], fuzzy-based hybrid PSO method [23], blackhole optimization approach [24], imperialist competitive optimization algorithm [25], harmony search optimization algorithm [26], PSO hybrid with GSA method [27], grey wolf optimization technique [28], and bee colony optimization approach [29]. Additionally, many multi-objective functions have been introduced for the D-OPF in [30,31].…”
Section: Introductionmentioning
confidence: 99%
“…As optimization problems continue to evolve, new techniques encompassing artificial intelligence, as well as the metaheuristic search-based optimization approaches were designed to tackle the D-OPF problem. Recent efforts focused on search-based optimization approaches, which include the genetic algorithm (GA) optimization method [10], particle swarm optimizer (PSO) method [11,12], differential evolution optimization method [13,14], enhanced genetic algorithms optimization method [15], gravitational searching algorithm (GSA) method [16,17], multi-phase searching optimization algorithm [18,19], improving colliding bodies method [20], improved PSO method [21], biogeography-based optimizing approach [22], fuzzy-based hybrid PSO method [23], blackhole optimization approach [24], imperialist competitive optimization algorithm [25], harmony search optimization algorithm [26], PSO hybrid with GSA method [27], grey wolf optimization technique [28], and bee colony optimization approach [29]. Additionally, many multi-objective functions have been introduced for the D-OPF in [30,31].…”
Section: Introductionmentioning
confidence: 99%