2015
DOI: 10.12982/cmujns.2015.0093
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Metaheuristics for Warehouse Storage Location Assignment Problems

Abstract: This study addressed warehouse storage location assignment problems (SLAP) to minimize total travelling distances in an order-picking process. The problem was formulated and presented as a mixed integer programming model. The LINGO optimization solver was then used to find solutions for a set of generated problems. The results showed that the LINGO optimization solver easily attained optimal solutions for small-sized problems; however, as the problem size increased, computational time increased rapidly. Eventu… Show more

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Cited by 5 publications
(4 citation statements)
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“…In (12), the total amount of locations obtained is grouped, which are limited by equation (21). Constraints sets (13) to (20) guarantee the coverage of locations according to the ABC classification of the SKUs, reflected in the parameters α, β, γ. Expressions ( 22) and ( 23) consider that the number of double locations for each subfamily is divisible by 4.…”
Section: Subproblem P 11 : Locations To Dividementioning
confidence: 99%
“…In (12), the total amount of locations obtained is grouped, which are limited by equation (21). Constraints sets (13) to (20) guarantee the coverage of locations according to the ABC classification of the SKUs, reflected in the parameters α, β, γ. Expressions ( 22) and ( 23) consider that the number of double locations for each subfamily is divisible by 4.…”
Section: Subproblem P 11 : Locations To Dividementioning
confidence: 99%
“…(2015) iki farklı sezgi üstü algoritma sunmuştur. Birincisi differansiyel gelişim ve ikincisi ise global yerel ve en yakın komşu parçacık sürü optimizasyonudur [15]. Kim ve diğ.…”
Section: Kümeleme Yöntemi Birçokunclassified
“…And there is to date no research that has previously applied particle swarm optimization (PSO) to solve the GAP, which is the simple algorithm, observed to be performing optimization, so it became popular. For example, [13] and [14] applied PSO to solve their problems. Due to the attractive features of PSO, this research was focused on implementation of this methodology to solve the GAPTW with the expectation to minimize the total cost.…”
Section: Introductionmentioning
confidence: 99%