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Forecast-Triggered Fault-Tolerant Model Predictive Control of Nonlinear Processes

机译:预测触发的非线性过程的容错模型预测控制

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In this work, we consider the problem of fault-tolerant stabilization of constrained nonlinear processes controlled over resource-constrained sensor-controller communication networks and subject to control actuator faults. A methodology for the design of resource-aware Lyapuonv-based model predictive control (MPC) systems that achieve the fault-tolerant stabilization objective with reduced sensor-controller communication is presented. In this approach, the control action is computed by solving on-line a finite-horizon optimal control problem based on an uncertain model of the plant subject to appropriate Lyapuonv-based stability constraints. The stability constraints are designed to ensure the desired closed-loop stability and performance properties in the presence of faults, and an explicit characterization of the state space region where fault-tolerant stabilization is guaranteed is obtained in terms of the fault size, the choice of the controller design parameters and the size of the plant-model mismatch. To keep sensor-controller communication to a minimum, a forecast-triggered communication strategy is used to determine when communication should be suspended or restored over the network. In this strategy, an update of the model state in the predictive controller using the sensor measurements at a given sampling time is triggered only when the Lyapunov function is forecasted to breach a certain threshold over the next sampling interval. The update-triggering threshold is derived using Lyapunov techniques and is explicitly parameterized in terms of the fault and a suitable fault accommodation parameter. Based on this characterization, fault accommodation strategies that guarantee closed-loop stability while simultaneously optimizing control and communication system resources are devised. Finally, the developed MPC formulation is illustrated using a chemical process example.
机译:在这项工作中,我们考虑对受限的非线性过程的容错稳定的问题控制在资源受限的传感器控制器通信网络上控制并进行控制执行器故障。呈现了实现具有减少传感器控制器通信实现容错稳定目标的基于资源感知Lyapuonv的模型预测控制(MPC)系统的方法。在这种方法中,通过基于工厂的不确定模型在线基于基于Lyapuonv的稳定性约束来求解有限地平线最佳控制问题来计算控制动作。稳定性约束旨在确保在存在故障存在下所需的闭环稳定性和性能特性,并在故障大小方面获得了保证容错稳定的状态空间区域的明确表征控制器设计参数和植物模型不匹配的大小。为了将传感器控制器通信保持最小,预测触发的通信策略用于确定应暂停或恢复通信何时通过网络恢复。在该策略中,仅在预测Lyapunov函数以通过下一个采样间隔内突破某个阈值时,才触发使用在给定采样时间的传感器测量的预测控制器中的模型状态的更新。使用Lyapunov技术导出更新触发阈值,并在故障和合适的故障容纳参数方面明确参数化。基于此表征,设计了保证闭环稳定性的故障住宿策略,同时优化控制和通信系统资源。最后,使用化学过程示例说明了发育的MPC制剂。

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