
doi: 10.1002/asjc.926
ABSTRACTThis paper investigates the cubature Kalman filtering (CKF) for nonlinear dynamic systems. This third‐degree rule based filter employs a spherical‐radial cubature rule to numerically compute the integrals encountered in nonlinear filtering problems, thereby removing the requirements of explicitly computing the Jacobians. The cubature rule, however, requires computing the intractable integrals over a high‐dimensional spherical region for multidimensional applications. Moreover, the cubature formula that has been used to construct the spherical cubature formula has some demerits, most notably its inconvenient properties in computation and low estimation accuracy. Aimed at these issues, a general class of CKFs that uses only cubature rules is derived in this paper. It can be shown that the conventional CKF is a special case of the proposed algorithm. The paper also includes higher‐degree CKFs, especially two representative types of the fifth‐degree CKFs. Performance of the proposed algorithms is demonstrated via two target tracking problems. The experimental results, presented herein, illustrate the superior performance of higher‐degree CKFs to conventional nonlinear filters.
Estimation and detection in stochastic control theory, nonlinear filtering, cubature Kalman filter, Nonlinear systems in control theory, high-degree cubature rule, state estimation, orbit, Filtering in stochastic control theory
Estimation and detection in stochastic control theory, nonlinear filtering, cubature Kalman filter, Nonlinear systems in control theory, high-degree cubature rule, state estimation, orbit, Filtering in stochastic control theory
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