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首页> 外文期刊>IEEE Transactions on Signal Processing >Modeling and State Estimation for Dynamic Systems With Linear Equality Constraints
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Modeling and State Estimation for Dynamic Systems With Linear Equality Constraints

机译:具有线性等式约束的动态系统的建模和状态估计

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摘要

The problem of modeling and estimation for linear equality constrained (LEC) systems is considered. The exact constrained dynamic model usually is not readily available or is too complicated, and hence in many studies an auxiliary dynamic model is employed in which the state does not necessarily obey the constraint strictly. Based on the understanding that the constraints, as prior information about the state, should be incorporated into the dynamics modeling, an LEC dynamic model (LECDM) is constructed first. The model optimally fuses the linear equality constraint (LEC) and the auxiliary dynamics. Some of its superior properties are presented. Next, the linear minimum mean squared error (LMMSE) estimate of the LEC state is proved to satisfy the constraint. The LMMSE estimator for linear systems, called the LEC Kalman filter (LECKF), and two approximate LMMSE estimators for nonlinear systems are presented. The LECKF is compared with other constrained estimators, and a sufficient condition is also provided under which the estimate projection method mathematically equals the LECKF. Furthermore, extensions of the LECDM for the LEC systems with uncertain or unknown constraint parameters are discussed. Finally, illustrative examples are provided to show the effectiveness and efficiency of the LECKF and to verify the theoretical results given in the paper.
机译:考虑了线性等式约束(LEC)系统的建模和估计问题。确切的受约束动态模型通常不容易获得或过于复杂,因此在许多研究中都采用了一种辅助动态模型,其中状态不一定严格遵守约束。基于这样的理解,即应该​​将约束作为关于状态的先验信息,纳入动力学建模中,首先构建LEC动态模型(LECDM)。该模型将线性等式约束(LEC)和辅助动力学最优地融合在一起。介绍了其一些优越的性能。接下来,证明了LEC状态的线性最小均方误差(LMMSE)估计满足约束条件。提出了用于线性系统的LMMSE估计器,称为LEC卡尔曼滤波器(LECKF),以及两个用于非线性系统的近似LMMSE估计器。将LECKF与其他约束估计器进行比较,并且还提供了一个充分条件,在这种条件下,估计投影方法在数学上等于LECKF。此外,讨论了具有不确定或未知约束参数的LEC系统的LECDM扩展。最后,提供了说明性例子来说明LECKF的有效性和效率,并验证本文给出的理论结果。

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