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首页> 外文期刊>IEEE Transactions on Industry Applications >Design of Optimal UKF State Observer–Controller for Stochastic Dynamical Systems
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Design of Optimal UKF State Observer–Controller for Stochastic Dynamical Systems

机译:用于随机动力系统的最佳UKF状态观测器控制器的设计

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摘要

''Stochastic noise processes" passed through highly nonlinear systems, always pose a significant threat to the industrial plant's stability. A novel generalized optimal "unscented Kalman filter state observer-controller" (UKFOC) algorithm is presented to control these plants effectively and efficiently. The proposed optimal UKFOC provides state "estimation and control" simultaneously, omitting the system's need for a separate controller. The "trajectory exit probability" from the desired boundaries is minimized based on the large deviation principle with the bounded instantaneous "trajectory tracking error" and the "state tracking error." These boundaries are rationally computed from the error statistics. The convergence and robustness are realized in terms of the error energy under the influence of the noise and the small parametric uncertainties, respectively. The algorithm's superior performance is demonstrated with respect to Lyapunov control and adaptive Lyapunov control based techniques. Finally, the UKFOC is implemented and tested for the commercially available Phantom Omni robot to demonstrate the potential application on a real-time basis.
机译:“随机噪声过程”通过高度非线性系统,始终对工业设备的稳定构成重大威胁。提出了一种新的广义最佳的“Unscented Kalman滤波器状态观察者 - 控制器”(UKFOC)算法以有效且有效地控制这些植物。所提出的最佳UKFOC同时提供状态“估计和控制”,省略系统对单独的控制器的需求。基于具有界限瞬时“轨迹跟踪误差”的大偏差原理,最小化来自所需边界的“轨迹出口概率”。 “状态跟踪错误”。这些边界是从错误统计数据合理计算的。在噪声和小的参数不确定的影响下,在误差能量方面实现了收敛和鲁棒性。算法的卓越性能是展示的尊重Lyapunov控制和自适应Lyapunov控制的TEC hniques。最后,为市售的Phantom Omni机器人实施和测试了UKFOC,以实时展示潜在的应用。

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