Scopus İndeksli Yayınlar Koleksiyonu
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Browsing Scopus İndeksli Yayınlar Koleksiyonu by Author "A. Mirzazadeh"
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Article Citation - WoS: 32Citation - Scopus: 31A multi-objective model for multi-production and multi-echelon closed-loop pharmaceutical supply chain considering quality concepts: NSGAII approach(Springer, 2017) Shiva H. Moslemi; Mohammad Hossein Zavvar Sabegh; A. Mirzazadeh; Yucel Yilmaz Ozturkoglu; Eric Maass; Sabegh, Mohammad Hossein Zavvar; Maass, Eric; Mirzazadeh, Abolfazl; Moslemi, Shiva; Ozturkoglu, Yucel; Zavvar Sabegh, Mohammad HosseinQuality of medical and pharmaceutical products has a key role in healthcare systems such as hospitals for better services to patients. This study proposes a comprehensive multi-objective mathematical model in healthcare supply chain considering quality and green concepts. The proposed model includes three objective functions. The first minimizes total manufacturing costs including transportation, purchasing maintenance deterioration setup recycling collecting and disposal costs. The second maximizes quality level of production. The third minimizes environmental effects of the products and transportations. The proposed model is complicated because of its nature and listed in the NP-hard. Hence we use NSGAII approach for solving this model. The numerical example illustrates steps of the solution method. The solution representation for 4 suppliers 2 recycling centers and 3 productions shows for supplier 1 (1100 600 1000) and supplier 2 (1000 900 400) recycling center 2 has a good performance and for supplier 3 (700 500 800) and supplier 4 (400 950 0) recycling center 1 has a good performance. Then we need to improve the performance of the rest recycling centers per supplier. To measure the capabilities of multi-objective meta-heuristics we used Number of Pareto solutions spacing metric and quality metric criteria. Finally the results show that the proposed algorithm has high quality to solve the model. © 2022 Elsevier B.V. All rights reserved.

