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A genetic algorithm for solving a multi-floor layout design model of a cellular manufacturing system with alternative process routings and flexible configuration

机译:一种遗传算法,用于求解具有替代工艺路线和灵活配置的蜂窝制造系统的多层布局设计模型

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This paper presents a novel integer linear programming model for designing multi-floor layout of cellular manufacturing systems (CMS). Three major and interrelated decisions are involved in the design of a CMS; namely cell formation (CF), group layout (GL), and group scheduling (GS). A novel aspect of this model is concurrently making the CF and GL decisions to achieve an optimal design solution in a multi-floor factory. Other compromising aspects are: multi-floor layout to form cells in different floors is considered, multi-rows layout of equal area facilities in each cell is allowed, cells in flexible shapes are configured, and material handling cost based on the distance between the locations assigned to machines are calculated. Such an integrated CMS model with an extensive coverage of important manufacturing features has not been proposed before and this model incorporates several design features including alternative process routings, operation sequence, processing time, production volume of parts, duplicate machines, machine capacity, new machine purchasing, lot splitting, material flow between machines, intra-cell layout, inter-cell layout, multi-floor layout and flexible configuration. The objective is to minimize the total costs of intra-cell, inter-cell, and inter-floor material handling, new machines purchasing and machine processing. Two numerical examples are solved by the Lingo software to verify the performance of the proposed model and illustrate the model features. Sensitive analysis is also implemented on some model parameters. An improved genetic algorithm (GA) is proposed to derive near-optimal solutions for the integrated model because of its NP hardness. It is then tested using several problems with different sizes and settings to verify the computational efficiency of the developed algorithm in comparison to a classic simulated annealing algorithm and the Lingo software. The obtained results show the efficiency of proposed GA in terms of objective function value and computational time.
机译:本文提出了一种新颖的整数线性规划模型,用于设计蜂窝制造系统(CMS)的多层布局。 CMS的设计涉及三个主要且相互关联的决策。即小区形成(CF),组布局(GL)和组调度(GS)。该模型的一个新颖方面是同时做出CF和GL决策,以在多层工厂中实现最佳设计解决方案。其他折衷的方面是:考虑在不同楼层中形成单元的多层布局,允许在每个单元中等面积设施的多行布局,配置灵活形状的单元,以及基于位置之间距离的材料处理成本计算分配给机器的数量。以前从未提出过这种具有广泛的重要制造特征的集成CMS模型,并且该模型结合了多种设计特征,包括替代工艺路线,操作顺序,处理时间,零件的生产量,重复机器,机器产能,新机器购买,批次拆分,机器之间的物料流,单元内布局,单元间布局,多层布局和灵活的配置。目的是使单元内,单元间和层间物料搬运,新机器购买和机器加工的总成本最小化。 Lingo软件解决了两个数值示例,以验证所提出模型的性能并说明模型特征。还对某些模型参数进行了敏感性分析。由于其NP硬度,提出了一种改进的遗传算法(GA)来为集成模型导出近似最优解。然后使用具有不同大小和设置的几个问题进行测试,以验证与经典的模拟退火算法和Lingo软件相比,所开发算法的计算效率。获得的结果表明,在目标函数值和计算时间方面,提出的遗传算法是有效的。

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