State estimation of nonlinear systems using novel adaptive unscented Kalman filter

Lotfollah Jargani, M. Shahbazian, K. Salahshoor, V. Fathabadi
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引用次数: 7

Abstract

This paper investigates the application of multisensor data fusion (MSDF) technique to enhance the state estimation of a nonlinear plant. The proposed method is based on Kalman filters approach to improve the state estimation obtained by the novel adaptive unscented Kalman filter (AUKF). The common trend for the KF implementation assumes pre-specified fixed distribution matrices for both process and measurement noises. Here, however, the variance matrices for both process and measurement noise signals are assumed unknown a priori and thus incrementally estimated and updated using a sliding time window paradigm within which an estimation of the noise variance is calculated and adaptively updated each time the window is shifted forward. The proposed methodology is tested on a simulated continuous stirred tank reactor (CSTR) problem to estimate 4 states of this nonlinear plant. The simulation results demonstrate the superiority of the suggested method in state estimation compared with a previously reported approach.
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非线性系统状态估计的自适应无嗅卡尔曼滤波
研究了多传感器数据融合(MSDF)技术在非线性对象状态估计中的应用。该方法基于卡尔曼滤波方法,改进了自适应无气味卡尔曼滤波(AUKF)的状态估计。KF实现的共同趋势是假设过程和测量噪声都预先指定了固定的分布矩阵。然而,在这里,假设过程和测量噪声信号的方差矩阵先验未知,因此使用滑动时间窗范式增量估计和更新,其中计算噪声方差的估计,并在每次窗口向前移动时自适应更新。通过一个模拟连续搅拌槽式反应器(CSTR)问题,对该非线性装置的4种状态进行了估计。仿真结果表明,与已有的状态估计方法相比,该方法在状态估计方面具有优越性。
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