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An MINLP model to support the movement and storage decisions of the Indian food grain supply chain

机译:MINLP模型可支持印度食品谷物供应链的运输和存储决策

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This paper addresses the novel three stage food grain distribution problem of Public Distribution System (PDS) in India which comprises of farmers, procurement centers, base silos and field silos. The Indian food grain supply chain consists of various activities such as procurement, storage, transportation and distribution of food grain. In order to curb transportation and storage losses of food grain, the Food Corporation of India (FCI) is moving towards the modernized bulk food grain supply chain system. This paper develops a Mixed Integer Non-Linear Programming (MINLP) model for planning the movement and storage of food grain from surplus states to deficit states considering the seasonal procurement, silo capacity, demand satisfaction and vehicle capacity constraints. The objective function of the model seeks to minimize the bulk food grain transportation, inventory holding, and operational cost. Therein, shipment cost contains the fixed and variable cost, inventory holding and operational cost considered at the procurement centers and base silos. The developed mathematical model is computationally complex in nature due to nonlinearity, the presence of numerous binary and integer variables along with a huge number of constraints, thus, it is very difficult to solve it using exact methods. Therefore, recently developed, Hybrid Particle-Chemical Reaction Optimization (HP-CRO) algorithm has been employed to solve the MINLP model. Different problem instances with growing complexities are solved using HP-CRO and the results are compared with basic Chemical Reaction Optimization (CRO) and Particle Swarm Optimization (PSO) algorithms. The results of computational experiments illustrate that the HP-CRO algorithm is competent enough to obtain the better quality solutions within reasonable computational time.
机译:本文讨论了印度公共分配系统(PDS)的新型三阶段粮食谷物分配问题,该问题包括农民,采购中心,基础粮仓和田间粮仓。印度粮食供应链包括各种活动,例如粮食的采购,储存,运输和分配。为了减少粮食的运输和储存损失,印度食品公司(FCI)正在朝着现代化的散装粮食供应链系统发展。本文开发了一种混合整数非线性规划(MINLP)模型,用于规划粮食谷物从盈余状态到赤字状态的移动和存储,其中考虑了季节性采购,筒仓容量,需求满意度和车辆容量约束。该模型的目标函数旨在最大程度地减少散装粮食的运输,库存持有和运营成本。其中,装运成本包含在采购中心和基础仓库考虑的固定成本和可变成本,库存持有和运营成本。由于非线性,存在大量二进制和整数变量以及大量约束,因此开发的数学模型本质上在计算上很复杂,因此使用精确方法很难求解。因此,最近开发的混合粒子化学反应优化(HP-CRO)算法已用于求解MINLP模型。使用HP-CRO解决了日益复杂的不同问题实例,并将结果与​​基本化学反应优化(CRO)和粒子群优化(PSO)算法进行了比较。计算实验结果表明,HP-CRO算法足以在合理的计算时间内获得更好的质量解决方案。

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