Development of an algorithm for tuning a suboptimal scaling factor in the SINS filtering problem

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Abstract

A modified strong tracking unscented Kalman filter for nonlinear dynamical systems is proposed. A matrix of the suboptimal scaling factor is introduced into the prediction covariance to ensure evaluation stability and smoothness at appearance of the process model uncertainty. It is shown that the use of a fuzzy algorithm to adjust the softening coefficient in real time allows to avoid the loss of accuracy in the segments in which the process model is defined. As a result of modeling the SINS correction task, it was found that the proposed fuzzy filter has good evaluation smoothness and high accuracy. Keywords SINS; suboptimal scaling factor; softening coefficient; fuzzy Takagi — Sugeno model
开发了一种调整捷联惯导滤波问题中次优比例因子的算法
针对非线性动态系统,提出了一种改进的强跟踪无嗅卡尔曼滤波器。在预测协方差中引入次优标度因子矩阵,以保证在过程模型不确定性出现时评估的稳定性和平滑性。结果表明,使用模糊算法实时调整软化系数可以避免在定义过程模型的段中精度的损失。通过对捷联惯导系统校正任务的建模,发现所提出的模糊滤波器具有较好的评价平滑性和较高的精度。关键词:捷联惯导系统;次优比例因子;软化系数;模糊Takagi - Sugeno模型
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