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Nonlinear state estimation for three tank experimental setup: A comparative evaluation

机译:三个坦克实验设置的非线性状态估计:比较评估

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Nonlinear state estimation is a pre-requisite for advanced process control and fault diagnosis tasks. In literature, various recursive nonlinear filtering techniques have been proposed and used for state estimation of nonlinear systems. Over the last few years, Moving Horizon Estimation (MHE) is increasingly being used for state estimation of nonlinear systems. Moving horizon estimation works with a window of data and hence requires additional online computation compared to recursive nonlinear filters. However, MHE performs both smoothing and filtering and thus has the potential to obtain more accurate state estimates as compared to the recursive filters. Most of the available comparisons of MHE with recursive filters are based on simulation case studies where the true states and parameters, as well as noise processes are exactly known. In this work, we apply MHE to a three-tank experimental setup and compare its performance with various nonlinear filters available in literature such as Extended Kalman Filter (EKF), Unscented Kalman Filter (UKF) and Gaussian Sum EKF (GSEKF). We present some of the challenges in experimental implementation of state estimation approaches. These include presence of unknown disturbances, non-whiteness of noise signals as well as lack of accurate measurements. We then discuss the approach followed for obtaining model parameters and noise characterization to make the models amenable for filter implementation. It is found that EKF, GSEKF and UKF perform as well as MHE as far as accuracy is concerned, but require significantly lower computational efforts.
机译:非线性状态估计是高级过程控制和故障诊断任务的预先要求。在文献中,已经提出了各种递归非线性滤波技术并用于非线性系统的状态估计。在过去几年中,移动地平线估计(MHE)越来越多地用于非线性系统的状态估计。移动地平线估计与数据窗口有效,因此与递归非线性滤波器相比需要额外的在线计算。然而,MHE执行平滑和滤波,因此具有与递归滤波器相比获得更准确的状态估计的可能性。 MHE的大多数有可用的MHE与递归滤波器的比较基于模拟案例研究,其中真正的状态和参数以及噪声过程恰恰是已知的。在这项工作中,我们将MHE应用于一个三箱实验设置,并将其性能与文献中可用的各种非线性滤波器进行比较,例如扩展卡尔曼滤波器(EKF),Unscented Kalman滤波器(UKF)和高斯和高斯eKF(GSEKF)。我们在国家估算方法的实验实施中提出了一些挑战。这些包括存在未知的干扰,噪声信号的非白度以及缺乏准确测量。然后,我们讨论了获得模型参数和噪声表征的方法,以使模型适用于过滤器实现。目前据认为,就准确性而言,EKF,GSEKF和UKF和MHE均致力于,但需要显着降低计算努力。

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