Simulation-based optimization of control policy on multi-echelon inventory system for fresh agricultural products
Abstract
Keywords: multi-echelon inventory system, simulation-based optimization, fresh agricultural products, control policy, Flexsim simulation software
DOI: 10.25165/j.ijabe.20191202.2834
Citation: Xu G Y, Feng J H, Chen F L, Wang H, Wang Z F. Simulation-based optimization of control policy on multi-echelon inventory system for fresh agricultural products. Int J Agric & Biol Eng, 2019; 12(2): 184–194.
Keywords
Full Text:
PDFReferences
Mo J T, Chen G M, Fan T, Mao H. Optimal ordering policies for perishable multi-item under stock-dependent demand and two-level trade credit. Applied Mathematical Modelling, 2014; 38(9-10): 2522–2532.
Qiu Y Z, Qiao J, Pardalos P M. Optimal production, replenishment, delivery, routing and inventory management policies for products with perishable inventory. Omega-International Journal of Management Science, 2019; 82: 193–204.
Savadkoohi, E, Mousazadeh M, Torabi S A. A possibilistic location-inventory model for multi-period perishable pharmaceutical supply chain network design. Chemical Engineering Research & Design, 2018; 138: 490–505.
Janssen L, Diabat A, Sauer J. A stochastic micro-periodic age-based inventory replenishment policy for perishable goods. Transportation Research Part E-Logistics and Transportation Review, 2018; 118: 445–465.
Liu H Y, Zhang J L, Zhou C. Optimal purchase and inventory retrieval policies for perishable seasonal agricultural products. Omega-International Journal of Management Science, 2018; 79: 133–145.
Kaya O, Ghahroodi S R. Inventory control and pricing for perishable products under age and price dependent stochastic demand. Mathematical Methods of Operations Research, 2018; 88(1): 1–35.
Köchel P, Nieländer U. Simulation-based optimisation of multi-echelon inventory systems. International Journal of Production Economics, 2005; 93-94: 505–513.
Jiang C H, Hu Y H. Simulation and optimization of Stochastic (s, S) Inventory System Based on Genetic Algorithm. Journal of East China Normal University: Natural Science, 2006; 3: 71–76. (in Chinese)
Carson Y, Maria A. Simulation optimization: methods and application. Proceedings of 1997 Winter Simulation Conference, 1997: pp.118–126.
Salimi S, Mawlana M, Hammad A. Performance analysis of simulation-based optimization of construction projects using high performance computing. Automation in Construction, 2018; 87: 158–172.
Delgarm N, Sajadi B, Delgarm S. A novel approach for the simulation-based optimization of the buildings energy consumption using NSGA-II: Case study in Iran. Energy and Buildings, 2016; 127: 552–560.
Shamshiri R R, Hameed I A, Pitonakova L, Weltzien C, Balasundram S K, Yule I J, et al. Simulation software and virtual environments for acceleration of agricultural robotics: Features highlights and performance comparison. Int J Agric & Biol Eng, 2018; 11(4): 15–31.
Heidary M H, Aghaie A, Jalalimanesh A. A simulation-optimization approach for a multi-period, multi-objective supply chain with demand uncertainty and an option contract. Transactions of the Society for Modeling and Simulation International, 2018; 94(7): 649–662.
Zhao W D, Wang D W. Simulation-based optimization on control strategies of three-echelon inventory in hybrid supply chain with order uncertainty. IEEE Access, 2018; 6: 54215–54223.
Avci M G, Selim H. A multi-objective simulation-based optimization approach for inventory replenishment problem with premium freights in convergent supply chains. Omega-International Journal of Management Science, 2018; 80: 153–165.
Güller M, Uygun Y, Noche B. Simulation-based optimization for a capacitated multi-echelon production-inventory system. Journal of Simulation, 2015; 9(4): 325–336.
He J, Huang Y, Chang D. Simulation-based heuristic method for container supply chain network optimization. Advanced Engineering Informatics, 2015; 29(3): 339–354.
Thammatadatrakul P, Chiadamrong N. Optimal inventory control policy of a hybrid manufacturing - remanufacturing system using a hybrid simulation optimisation algorithm. JOURNAL OF SIMULATION, 2019; 13(1): 14–27.
Saif A, Elhedhli S. Cold supply chain design with environmental considerations: A simulation-optimization approach. European Journal of Operational Research, 2016; 251(1): 274–287.
Attar A, Raissi S, Khalili-Damghani K .Simulation-optimization approach for a continuous-review, base-stock inventory model with general compound demands, random lead times, and lost sales. Transactions of the Society for Modeling and Simulation International, 2016; 92(6): 547–564.
Rowshon M K, Iqbal M, Mojid M A, Amin M S M, Lai S H. Optimization of equitable irrigation water delivery for a large-scale rice irrigation scheme. Int J Agric & Biol Eng, 2018; 11(5): 160–166.
Attar A, Raissi S, Khalili-Damghani K. A simulation-based optimization approach for free distributed repairable multi-state availability-redundancy allocation problems. Reliability Engineering & System Safety, 2017; 157: 177–191.
Jia H L, Chen Y L, Zhao J L, Guo M Z, Huang D Y, Zhuang J. Design and key parameter optimization of an agitated soybean seed metering device with horizontal seed filling. Int J Agric & Biol Eng, 2018; 11(2): 76–87.
Nedělková Z, Lindroth P, Patriksson M. Efficient solution of many instances of a simulation-based optimization problem utilizing a partition of the decision space. Annals of Operations Research, 2018; 265(1): 93–118.
Cui L F, Mao H P, Xue X Y, Ding S M, Qiao B Y. Optimized design and test for a pendulum suspension of the crop spray boom in dynamic conditions based on a six DOF motion simulator. Int J Agric & Biol Eng, 2018; 11(3): 76–85.
Bardzinski P J; Walker P, Krol R. Simulation of random tagged ore fow through the bunker in a belt convering system. International Journal of Simulation Modelling, 2018; 17(4): 597–608.
Jiao Y L, Xing X C, Zhang P. Multi-objective storage location allocation optimization and simulation analysis of automated warehouse based on multi-population genetic algorithm. Concurrent Engineering-Research and Applications, 2018; 26: 367–377.
Grzybowska K, Kovacs G. The modelling and design process of coordination mechanisms in the supply chain. Journal of Applied Logic, 2017; 24: 25–38.
Kierzkowski A, Kisiel, T. Simulation model of security control system functioning: A case study of the Wroclaw Airport terminal. Journal of Air Transport Management, 2017; 64: 173–185.
Flexsim 3D Simulation Software User Manual (Version Flexsim 7.3.0), 2014. Flexsim Software Products Inc.
Chen Y N, Xie B, Du Y F, Mao E R. Powertrain parameter matching and optimal design of dual-motor driven electric tractor. Int J Agric & Biol Eng, 2019; 12(1): 33–41.
Chen G M, Jia J Y, Han Q. Study on the Strategy of Decreasing Inertia Weight in Particle Swarm Optimization Algorithm. Journal of Xi'an Jiaotong University, 2006; 40(1): 53–56, 61. (in Chinese)
Clerc M. The swarm and the queen: towards a deterministic and adaptive particle swarm optimization. Piscataway, NJ: IEEE Service Center, 1999; 1951–1957.
Eberhart R C, Shi Y. Particle swarm optimization: development, applications and resources. Proceedings of the IEEE Congress on Evolutionary Compution. Piscatawy, NJ: IEEE Service center, 2001; pp.81–86.
Yang W, Li Q Q. Survey of panicle swarm optimization algorithm. Engineering Science, 2004; 6(5): 87–94. (in Chinese)
Copyright (c) 2019