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Receding-Horizon Nonlinear Kalman (RNK) Filter for State Estimation

机译:用于状态估计的后视非线性非线性卡尔曼(RNK)滤波器

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摘要

This technical note presents a new Receding-horizon Nonlinear Kalman (RNK) filter for state estimation in nonlinear systems with state constraints. Such problems appear in almost all engineering disciplines. Unlike the Moving Horizon Estimation (MHE) approach, the RNK Filter formulation follows the Kalman Filter (KF) predictor-corrector framework. The corrector step is solved as an optimization problem that handles constraints effectively. The performance improvement and robustness of the proposed estimator vis-a-vis the extended Kalman filter (EKF) are demonstrated through nonlinear examples. These examples also demonstrate the computational advantages of the proposed approach over the MHE formulation. The computational gain is due to the fact that the proposed RNK formulation avoids the repeated integration within an optimization loop that is required in an MHE formulation. Further, the proposed formulation results in a quadratic program (QP) problem for the corrector step when the measurement model is linear, irrespective of the state propagation model. In contrast, a nonlinear programming problem (NLP) needs to be solved when an MHE formulation is used for such problems. Also, the proposed filter for unconstrained linear systems results in a KF estimate for the current instant and smoothed estimates for the other instants of the receding horizon.
机译:本技术说明提出了一种新的水平向后非线性卡尔曼(RNK)滤波器,用于在具有状态约束的非线性系统中进行状态估计。这些问题几乎出现在所有工程学科中。与移动视域估计(MHE)方法不同,RNK滤波器公式遵循卡尔曼滤波器(KF)预测器-校正器框架。校正器步骤作为有效处理约束的优化问题而解决。通过非线性示例证明了相对于扩展卡尔曼滤波器(EKF)提出的估计器的性能改进和鲁棒性。这些示例还证明了所提出方法相对于MHE公式的计算优势。计算增益归因于以下事实:建议的RNK公式避免了MHE公式所需的优化循环内的重复积分。此外,当测量模型为线性时,无论状态传播模型如何,提出的公式都会导致校正器步骤出现二次程序(QP)问题。相反,当将MHE公式用于此类问题时,需要解决非线性规划问题(NLP)。同样,所提出的用于无约束线性系统的滤波器会导致当前时刻的KF估计和后退地平线的其他时刻的平滑估计。

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