考虑天车约束的铝合金铸造用内导式液压缸生产调度研究

    Research on Production Scheduling of Inner-Guided Hydraulic Cylinders for Aluminum Alloy Casting Considering Crane Constraints

    • 摘要: 内导式液压缸是铝合金铸造机的关键部件,天车在该类液压缸生产过程中的作用不容忽视,为此建立了加工、搬运与装卸协同的柔性作业车间调度模型,并提出一种改进灰狼算法来求解包含完工时间、设备能耗以及天车工作量差异在内的多目标优化问题。该算法在解码阶段着重考虑了天车调度规则,利用佳点集理论和混合策略生成多样性与质量并重的初始种群;设计了自适应的狩猎权重系数和非线性变化的收敛因子,引入速度辅助项,提高算法的寻优能力,并通过外部存档保留优质解;提出4种邻域搜索结构以加强局部搜索。采用多种评价指标与其他算法对比,证明改进灰狼算法能有效求解该考虑天车运行约束的协同调度问题。

       

      Abstract: The inner-guided hydraulic cylinder is a key component of the aluminum alloy casting machine, and the crane plays a vital role in the production process of this hydraulic cylinder. Therefore, a flexible job shop scheduling model for the coordination of material processing, handling and loading/unloading is established, and an improved grey wolf optimizer is proposed to solve the multi-objective optimization problem including completion time, equipment energy consumption and workload variance of cranes. The algorithm focuses on crane scheduling rules in the decoding stage, and utilizes the theory of good point sets along with a hybrid strategy to generate an initial population that balances diversity and quality. Additionally, an adaptive hunting weight coefficient and a nonlinear convergence factor are designed, and a velocity-assisted term is introduced to enhance the algorithm's optimization capability, while high-quality solutions are preserved through external archive. Four neighborhood search structures are proposed to strengthen local search. Compared with other algorithms by various evaluation indexes, the improved grey wolf optimizer demonstrates its effectiveness in solving the cooperative scheduling problem considering crane operation constraints.

       

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