In this paper, we present a distributed model predictive control (DMPC) scheme for dynamically decoupled systems which are subject to state constraints, coupling state constraints and input constraints. In the proposed control scheme, neighbor-to-neighbor communication suffices and all subsystems solve their local optimization problem in parallel. The approach relies on consistency constraints which define a neighborhood around each subsystem's reference trajectory where the state of the respective subsystem is guaranteed to stay in. Reference trajectories and consistency constraints are known to neighboring subsystems. Contrary to other relevant approaches, the reference trajectories are improved iteratively. Besides, the presented approach allows the formulation of convex optimization problems even in the presence of non-convex state constraints. The algorithm's effectiveness is demonstrated with a simulation.
翻译:在本文中,我们提出了一个分布式模型预测控制(DMPC)计划,用于动态分离的系统,这些系统受到国家制约、国家制约和投入制约的制约。在拟议的控制计划中,邻里通信和所有子系统都足以同时解决本地优化问题。这种方法依赖于一致性限制,它界定了每个子系统的参考轨迹周围的邻里,保证各子系统的状态能够留在其中。相邻子系统的参考轨迹和一致性制约是众所周知的。与其他相关方法相反,参考轨迹是迭接式改进的。此外,所提出的方法允许即使在非康韦克斯国家受制约的情况下也提出方对方优化问题。算法的有效性通过模拟得到证明。