Перейти к основному содержанию
AkademIndex

Продукты

Для разработчиков

AkademBaseскороОткрытый API экосистемы
Латиница
Русский
Статья

Presenting a Model for Locating and Allocating Multi-Period Hubs and Comparing It With a Multi-Objective Imperialist Competitive Algorithm

Tzu-Chia ChenDepartment of Industrial Engineering and Management , Ming Chi University of Technology , New Taipei City , TaiwanIskandar MudaDepartment of Doctoral Program, Faculty Economic and Business , Universitas Sumatera Utara , Medan, Indonesia, 20222, Jl. Prof TM Hanafiah 12, USU Campus, Padang bulan, Medan , IndonesiaRabia SalmanPostdoctoral Fellow, School of Management , Universiti Sains Malaysia , Penang MalaysiaBaydaa Abed HusseinKhusniddin Fakhriddinovich UktamovSenior teacher at “Economic security” Department , Tashkent State University of Economics , 100066, Tashkent city, Islam Karimov street 49 , UzbekisktanMohammed Yousif Oudah Al-MuttarScientific Research Center , Al-Ayen University , Thi-Qar , Iraq
ABI

Аннотация

Abstract Recently, air pollution has received much attention as a result of reflections on environmental issues. Accordingly, the hub location problem (HLP) seeks to find the optimal location of hub facilities and allocate points for them to meet the demands between source-destination pairs. Thus, in this study, decisions related to location and allocation in a hub network are reviewed and a multi-objective model is proposed for locating and allocating capacity-building facilities at different time periods over a planning horizon. The objective functions of the model presented in this study are to minimize costs, reduce air pollution by diminishing fuel consumption, and maximize job opportunities. In order to solve the given model, the General Algebraic Modeling System (GAMS) along with innovative algorithms are utilized. The results presented a multi-objective sustainable model for full-covering HLP, and provided access to a hub network with minimum transport costs, fuel consumption, and GHG (greenhouse gas) emissions, and maximum job opportunities in each planning horizon utilizing MOICA (multi-objective imperialist competitive algorithm) and GAMS to solve the proposed model. The study also assessed the performance of the proposed algorithms with the aid of the QM, MID, SM, and NSP indicators, acquired from comparing the proposed meta-heuristic algorithm based on some indicators, proving the benefit and efficiency of MOICA in all cases.

Темы

Идентификаторы

Цитирования и источники

Показатели — AkademScholar · Скоро