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State Estimation with Probability Constraints

机译:具有概率约束的状态估计

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This paper considers a state estimation problem for a discrete-time linear system driven by a Gaussian random process. The second order statistics of the input process and state initial condition are uncertain. However, the probability that the state and input satisfy linear constraints during the estimation interval is known. A minimax estimation problem is formulated to determine an estimator that minimizes the worst-case mean square error criterion, over the uncertain second order statistics, subject to the probability constraints. It is shown that a solution to this constrained state estimation problem is given by a Kalman filter for appropriately chosen input and initial condition models. These models are obtained from a finite dimensional convex optimization problem. The application of this estimator to an aircraft tracking problem quantifies the improvement in estimation accuracy obtained from the inclusion of probability constraints in the minimax formulation.
机译:本文考虑了由高斯随机过程驱动的离散时间线性系统的状态估计问题。输入过程的二阶统计量和状态初始条件是不确定的。但是,在估计间隔内状态和输入满足线性约束的概率是已知的。公式化了一个极大极小估计问题,以确定一个估计器,该估计器在不确定的二阶统计量上,根据概率约束,将最坏情况的均方误差标准最小化。结果表明,对于适当选择的输入模型和初始条件模型,通过卡尔曼滤波器可以解决此约束状态估计问题。这些模型是从有限维凸优化问题中获得的。该估计器在飞机跟踪问题上的应用量化了估计精度的提高,该估计精度是通过将概率约束包括在minimax公式中而获得的。

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