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:: Search published articles ::
Showing 2 results for Baroughi

Dr. Fahimeh Baroughi, Mrs. Akram Soltani, Dr. Behrooz Alizadeh,
Volume 10, Issue 2 (9-2019)
Abstract

Here, we investigate the classical p-median location problem on a network in which the vertex weights and the distances between vertices are uncertain. We propose a programming model for the uncertain p-median location problem with tail value at risk objective. Then, we show that it is NP-hard. Therefore, a novel hybrid modified binary particle swarm optimization algorithm is presented to obtain the approximate optimal solution of the proposed model. The algorithm contains the tail value at risk simulation and the expected value simulation. Finally, by computational experiments, the algorithm is illustrated to be efficient.
Dr. Akram Soltanpour, Professor Behrooz Alizadeh, Assoc. Professor Fahimeh Baroughi,
Volume 14, Issue 1 (6-2023)
Abstract

In an uncapacitated facility location problem, the aim is to find the best locations for facilities on a specific network in order to service the existing clients at the maximum total profit or minimum cost. In this paper, we investigate the uncapacitated facility location problem where the profits of the demands and the opening costs of the facilities are uncertain values. We first present the belief degree-constrained, expected value and tail value at risk programming models of the problem under investigation. Then, we apply the concepts of the uncertainty theory to transform these uncertain programs into the corresponding deterministic optimization models. The efficient algorithms
are provided for deriving the optimal solutions the problem under investigation.

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مجله انجمن ایرانی تحقیق در عملیات Iranian Journal of Operations Research
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