论文标题

通过模型预测路径分配和贪婪路径在离散制造工厂中的层次路由控制之后

Hierarchical routing control in discrete manufacturing plants via model predictive path allocation and greedy path following

论文作者

Fagiano, Lorenzo, Tanaskovic, Marko, Mallitasig, Lenin Cucas, Cataldo, Andrea, Scattolini, Riccardo

论文摘要

考虑到不同物品必须经历一系列工作的离散制造工厂中组件路由的实时控制和优化的问题。此问题具有大量的离散控制输入和时间逻辑约束的存在。提出了一种新的方法,从追踪植物节点状态的欧拉系统模型到跟踪正在处理的每个部分的状态的Lagrangian模型,采用了先前贡献的观点转变。该方法具有分层结构。在较高级别上,预测性退化的地平线策略将整个植物的路径分配到每个部分,以最大程度地减少所选的成本标准。在较低的层次上,逻辑之后的路径计算控件输入以遵循分配的路径,同时满足所有约束。该方法在模拟中进行了测试,报告了通过闭环成本函数值和计算效率衡量的非常好的性能,并且具有非常大的预测范围值。这些特征铺平了许多随后的研究步骤,这将以试验工厂的实验测试达到顶峰。

The problem of real-time control and optimization of components' routing in discrete manufacturing plants, where distinct items must undergo a sequence of jobs, is considered. This problem features a large number of discrete control inputs and the presence of temporal-logic constraints. A new approach is proposed, adopting a shift of perspective with respect to previous contributions, from a Eulerian system model that tracks the state of plant nodes, to a Lagrangian model that tracks the state of each part being processed. The approach features a hierarchical structure. At a higher level, a predictive receding horizon strategy allocates a path across the plant to each part in order to minimize a chosen cost criterion. At a lower level, a path following logic computes the control inputs in order to follow the assigned path, while satisfying all constraints. The approach is tested here in simulations, reporting extremely good performance as measured by closed-loop cost function values and computational efficiency, also with very large prediction horizon values. These features pave the way to a number of subsequent research steps, which will culminate with the experimental testing on a pilot plant.

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