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A production inventory model with fuzzy production and demand using fuzzy differential equation: An interval compared genetic algorithm approach'

机译:使用模糊微分方程的具有模糊生产和需求的生产库存模型:区间比较遗传算法

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摘要

In this paper, a production inventory model, specially for a newly launched product, is developed incorporating fuzzy production rate in an imperfect production process. Produced defective units are repaired and are sold as fresh units. It is assumed that demand coefficients and lifetime of the product are also fuzzy in nature. To boost the demand, manufacturer offers a fixed price discount period at the beginning of each cycle. Demand also depends on unit selling price. As production rate and demand are fuzzy, the model is formulated using fuzzy differential equation and the corresponding inventory costs and components are calculated using fuzzy Riemann-integration. a-cut of total profit from the planning horizon is obtained. A modified Genetic Algorithm (GA) with varying population size is used to optimize the profit function. Fuzzy preference ordering (FPO) on intervals is used to compare the intervals in determining fitness of a solution. This algorithm is named as Interval Compared Genetic Algorithm (ICGA). The present model is also solved using real coded GA (RCGA) and Multi-objective GA (MOGA). Another approach of interval comparison-order relations of intervals (ORI) for maximization problems is also used with all the above heuristics to solve the model and results are compared with those are obtained using FPO on intervals. Numerical examples are used to illustrate the model as well as to compare the efficiency of different approaches for solving the model.
机译:在本文中,开发了专门针对新产品的生产库存模型,该模型在不完善的生产过程中结合了模糊的生产率。生产的有缺陷的单元将被修理并作为新单元出售。假设产品的需求系数和寿命本质上也是模糊的。为了提高需求,制造商在每个周期的开始提供了固定的价格折扣期。需求还取决于单位售价。由于生产率和需求是模糊的,因此使用模糊微分方程建立模型,并使用模糊Riemann积分计算相应的库存成本和组件。从计划的角度获得了总利润的一部分。使用具有不同种群规模的改进遗传算法(GA)来优化利润函数。区间上的模糊偏好排序(FPO)用于比较区间,以确定解决方案的适用性。该算法称为间隔比较遗传算法(ICGA)。本模型还使用实数编码GA(RCGA)和多目标GA(MOGA)求解。对于上述所有启发式方法,还使用了另一种用于最大化问题的区间比较顺序关系(ORI)的方法来求解模型,并将结果与​​使用FPO区间获得的结果进行比较。数值示例用于说明模型以及比较解决模型的不同方法的效率。

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