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Unknown input estimation by applying extended Kalman filter based on unknown but bounded uncertainties

机译:通过基于未知但有界不确定性的扩展卡尔曼滤波器应用扩展卡尔曼滤波器来估计未知的输入估计

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In this paper a new unknown input estimation method is proposed for a class of nonlinear stochastic systems in the presence of time dependent unknown inputs, when the system states and process noises are unknown but bounded. In this study, a new augmented state vector is constructed by augmenting unknown inputs as a new state to the original state vector. Then a recursive algorithm based on unknown but bounded (UBB) uncertainty is developed, that unlike the Bayesian models which consider the state estimate as a single vector, produces a time-varying set of state estimates that contains the system's true state. The particular sets to be discussed, are ellipsoids. The proposed method doesn't need any unknown input detection stage procedure and covariance resetting that are necessary in previous works. At last, efficiency of the proposed method is shown in a numerical simulation for a nonlinear system.
机译:本文在存在依赖于未知输入的情况下,提出了一种新的未知输入估计方法,当系统状态和过程噪声未知但有界时,在存在时间依赖性未知输入中的一类非线性随机系统。在本研究中,通过将未知输入增强为原始状态向量的新状态来构建新的增强状态向量。然后开发了一种基于未知但有界(UBB)不确定性的递归算法,这与考虑状态估计作为单个向量的贝叶斯模型不同,产生包含系统真实状态的时变的状态估计集。要讨论的特定集合是椭圆形。所提出的方法不需要任何未知的输入检测阶段过程和在上一个工作中所需的协方差重置。最后,在非线性系统的数值模拟中示出了所提出的方法的效率。

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