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MAXIMUM CORRENTROPY CRITERION CONSTRAINED KALMAN FILTER

机译:最大校正标准约束Kalman滤波器

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Non-Gaussian noise may degrade the performance of the Kalman filter because the Kalman filter uses only second-order statistical information, so it is not optimal in non-Gaussian noise environments. Also, many systems include equality or inequality state constraints that are not directly included in the system model, and thus are not incorporated in the Kalman filter. To address these combined issues, we propose a robust Kalman-type filter in the presence of non-Gaussian noise that uses information from state constraints. The proposed filter, called the maximum correntropy criterion constrained Kalman filter (MCC-CKF), uses a correntropy metric to quantify not only second-order information but also higher-order moments of the non-Gaussian process and measurement noise, and also enforces constraints on the state estimates. We analytically prove that our newly derived MCC-CKF is an unbiased estimator and has a smaller error covariance than the standard Kalman filter under certain conditions. Simulation results show the superiority of the MCC-CKF compared with other estimators when the system measurement is disturbed by non-Gaussian noise and when the states are constrained.
机译:非高斯噪声可能会降低卡尔曼滤波器的性能,因为卡尔曼滤波器仅使用二阶统计信息,因此在非高斯噪声环境中不适。此外,许多系统包括不直接包括在系统模型中的平等或不等式状态约束,因此不包含在卡尔曼滤波器中。为了解决这些组合问题,我们在存在非高斯噪声的存在中提出了一种强大的卡尔曼型过滤器,该噪声使用来自状态约束的信息。所提出的滤波器,称为最大正控性标准约束Kalman滤波器(MCC-CKF),使用正轮堆度量来量化不仅是非高斯过程和测量噪声的二阶信息,而且也是更高阶的瞬间,并且还强制执行约束在国家估计数。我们分析证明我们的新派生的MCC-CKF是一个无偏的估计器,并且在某些条件下具有比标准卡尔曼滤波器更小的错误协方差。仿真结果显示了MCC-CKF的优越性与其他估计器相比,当系统测量受到非高斯噪声的干扰以及州被约束时,与其他估计器相比。

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