Zhao Wen-Bin, Hu Jun-Han, Tang Zi-Qiao
College of Mechanical Engineering, Zhejiang University of Technology, Hangzhou 310023, China.
School of Electronic Information and Electrical Engineering, Chengdu University, Chengdu 610100, China.
Biomimetics (Basel). 2024 Sep 21;9(9):571. doi: 10.3390/biomimetics9090571.
As industrial informatization progresses, virtual simulation technologies are increasingly demonstrating their potential in industrial applications. These systems utilize various sensors to capture real-time factory data, which are then transmitted to servers via communication interfaces to construct corresponding digital models. This integration facilitates tasks such as monitoring and prediction, enabling more accurate and convenient production scheduling and forecasting. This is particularly significant for flexible or mixed-flow production modes. Bionic optimization algorithms have demonstrated strong performance in factory scheduling and operations. Centered around these algorithms, researchers have explored various strategies to enhance efficiency and optimize processes within manufacturing environments.This study introduces an efficient migratory bird optimization algorithm designed to address production scheduling challenges in an assembly shop with mold quantity constraints. The research aims to minimize the maximum completion time in a batch flow mixed assembly flow shop scheduling problem, incorporating variable batch partitioning strategies. A tailored virtual simulation framework supports this objective. The algorithm employs a two-stage encoding mechanism for batch partitioning and sequencing, adapted to the unique constraints of each production stage. To enhance the search performance of the neighborhood structure, the study identifies and analyzes optimization strategies for batch partitioning and sequencing, and incorporates an adaptive neighborhood structure adjustment strategy. A competition mechanism is also designed to enhance the algorithm's optimization efficiency. Simulation experiments of varying scales demonstrate the effectiveness of the variable batch partitioning strategy, showing a 5-6% improvement over equal batch strategies. Results across different scales and parameters confirm the robustness of the algorithm.
随着工业信息化的发展,虚拟仿真技术在工业应用中的潜力日益凸显。这些系统利用各种传感器捕获实时工厂数据,然后通过通信接口将数据传输到服务器,以构建相应的数字模型。这种集成有助于实现监测和预测等任务,从而实现更准确、便捷的生产调度和预测。这对于灵活或混流生产模式尤为重要。仿生优化算法在工厂调度和运营中表现出强大的性能。围绕这些算法,研究人员探索了各种策略,以提高制造环境中的效率并优化流程。本研究介绍了一种高效的候鸟优化算法,旨在解决具有模具数量限制的装配车间中的生产调度挑战。该研究旨在将批处理流混合装配流水车间调度问题中的最大完工时间最小化,并纳入可变批量划分策略。一个量身定制的虚拟仿真框架支持这一目标。该算法采用两阶段编码机制进行批量划分和排序,以适应每个生产阶段的独特约束。为了提高邻域结构的搜索性能,该研究识别并分析了批量划分和排序的优化策略,并纳入了自适应邻域结构调整策略。还设计了一种竞争机制来提高算法的优化效率。不同规模的仿真实验证明了可变批量划分策略的有效性,与等额批量策略相比,改进了5%-6%。不同规模和参数的结果证实了该算法的鲁棒性。