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Constrained unscented recursive estimator for nonlinear dynamic systems

机译:非线性动力系统的约束无味递推估计

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摘要

Nonlinear constrained state estimation is an important task in performance monitoring, online optimization and control. There has been recent interest in developing estimators based on the idea of unscented transformation for constrained nonlinear systems. One of these approaches is the unscented recursive nonlinear dynamic data reconciliation (URNDDR) method. The URNDDR approach follows the traditional predictor-corrector framework. Constraints are handled in the prediction step through a projection algorithm and in the correction step through an optimization formulation. It has been shown that URNDDR produces very accurate estimates at the cost of computational expense. However, there are two issues that need to be addressed in the URNDDR framework: (i) URNDDR approach was primarily developed to handle bound constraints and needs to be enhanced to handle general nonlinear equality and inequality constraints, and (ii) computational concerns in the application of the URNDDR approach needs to be addressed. In this paper, a new estimation technique named constrained unscented recursive estimator (CURE) is proposed, which eliminates these disadvantages of URNDDR, while providing estimates with almost the same accuracy.
机译:非线性约束状态估计是性能监控,在线优化和控制中的重要任务。最近有兴趣开发基于约束非线性系统的无味变换思想的估计器。这些方法之一是无味递归非线性动态数据协调(URNDDR)方法。 URNDDR方法遵循传统的预测器-校正器框架。在预测步骤中通过投影算法处理约束,在校正步骤中通过优化公式处理约束。已经表明,URNDDR以计算费用为代价产生非常准确的估计。但是,URNDDR框架中需要解决两个问题:(i)URNDDR方法主要是为了处理约束条件而开发的,需要进行增强以处理一般的非线性等式和不等式约束,以及(ii) URNDDR方法的应用需要解决。本文提出了一种新的估计技术,称为约束无味递归估计器(CURE),它消除了URNDDR的这些缺点,同时提供了几乎相同的估计精度。

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