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Machine Loading Optimization in Flexible Manufacturing System Using a Hybrid of Bio-inspired and Musical-Composition Approach

机译:使用生物启发和音乐 - 成分方法的杂种机器加载柔性制造系统中的优化

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Manufacturing industries are facing mere challenges in handling product competitiveness, shorter product cycle time and product varieties. The situation poses a need to improve the effectiveness and efficiency of capacity planning and resource optimization while still maintaining their flexibilities. Machine loading - one of the important components of capacity planning is known for its complexity that encompasses various types of flexibilities pertaining to part selection, machine and operation assignment along with constraints. Various studies are done to balance the productivity and flexibility in flexible manufacturing system (FMS). From the literature, the researchers have developed many approaches to reach a suitable balance of exploration (global improvement) and exploitation (local improvement). We adopt hybrid of population approaches, Hybrid Genetic Algorithm and Harmony Search algorithm (H-GaHs), to solve this problem that aims on mapping the feasible solution to the domain problem. The objectives are to minimize the system unbalance as well as increase throughput while satisfying the technological constraints such as machine time availability and tool slots. The proposed algorithm is tested for its performance on 10 sample problems available in FMS literature and compared with existing solution approaches.
机译:制造业在处理产品竞争力,更短的产品周期时间和产品品种方面面临挑战。情况构成了需要提高能力规划和资源优化的有效性和效率,同时保持其灵活性。机器加载 - 由于其复杂性而闻名能力规划的重要组成部分之一,其包括与零件选择,机器和操作分配相关的各种类型的灵活性以及约束。进行各种研究以平衡柔性制造系统(FMS)的生产力和灵活性。从文献中,研究人员已经开发出许多方法,以达到适当的探索平衡(全球改进)和剥削(当地改进)。我们采用人口方法的混合,混合遗传算法和和谐搜索算法(H-GAH)来解决这个问题,旨在映射到域问题的可行解决方案。目标是最小化系统不平衡以及提高吞吐量,同时满足机器时间可用性和工具插槽等技术限制。该算法在FMS文献中的10个样本问题上进行了测试,并与现有的解决方案方法相比。

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