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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Dual-Model Reverse CKF Algorithm in Cooperative Navigation for USV
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Dual-Model Reverse CKF Algorithm in Cooperative Navigation for USV

机译:USV协同导航中的双模型逆CKF算法

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As one of the most promising research directions, cooperative location with high precision and low-cost IMU is becoming an emerging research topic in many positioning fields. Low-cost MEMS/DVL is a preferred solution for dead-reckoning in multi-USV cooperative network. However, large misalignment angles and large gyro drift coexist in low-cost MEMS that leads to the poor observability. Based on cubature Kalman filter (CKF) algorithm that has access to high accuracy and relative small computation, dual-model filtering scheme is proposed. It divides the whole process into two subsections that cut off the coupling relations and improve the observability of MEMS errors: it first estimates large misalignment angle and then estimates the gyro drift. Furthermore, to improve the convergence speed of large misalignment angle estimated in the first subsection, “time reversion” concept is introduced. It uses a short period time to forward and backward several times to improve convergence speed effectively. Finally, simulation analysis and experimental verification is conducted. Simulation and experimental results show that the algorithm can effectively improve the cooperative navigation performance.
机译:作为最有前途的研究方向之一,高精度和低成本IMU的协同定位正成为许多定位领域中一个新兴的研究课题。低成本MEMS / DVL是在多USV协作网络中进行死区重击的首选解决方案。但是,低成本的MEMS中同时存在大的未对准角和大的陀螺仪漂移,导致可观察性差。基于能获得较高精度且计算量相对较小的库尔曼卡尔曼滤波算法,提出了双模型滤波方案。它将整个过程分为两个部分,这两个部分切断了耦合关系并提高了MEMS错误的可观察性:首先估计大的未对准角度,然后估计陀螺仪漂移。此外,为了提高在第一小节中估计的大偏心角的收敛速度,引入了“时间反转”概念。它使用短时间向前和向后几次以有效地提高收敛速度。最后进行了仿真分析和实验验证。仿真和实验结果表明,该算法可以有效提高协同导航性能。

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