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A Novel Interacting T-S Fuzzy Multiple Model by Using UKF for Maneuvering Target Tracking

机译:一种新颖通过UKF进行机动目标跟踪来交互T-S模糊多模型

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Dynamic models of maneuvering targets in nonlinear systems are usually difficult to be modeled, and inaccurate dynamic model will lead to the poor performance of tracking algorithm. For these problems, in this paper, a novel interacting Takagi-Sugeno (T-S) fuzzy multiple model maneuvering target tracking algorithm by using UKF for parameter identification is proposed (ITS-UKF). The ITS-UKF algorithm uses multiple semantic fuzzy sets to represent the target feature information, and construct a general T-S fuzzy semantic multiple model framework. In the T-S fuzzy semantic multiple model framework, the intersection degree between fuzzy sets is used to estimate the transition probabilities between different fuzzy rules; fuzzy C-regression model clustering (FCRM) is used to adaptively identify the premise parameters. Moreover, the UKF is also used to identify the consequent parameters to improve the performance for nonlinear system. Simulation results show that the performance of ITS-UKF is superior to IMM-EKF (interacting multiple model extended Kalman filter), IMM-UKF (interacting multiple model unscented Kalman filter), particularly, when the target is maneuvered or the model of the target is inaccurate, the ITS-UKF algorithm has better performance.
机译:非线性系统中的机动目标的动态模型通常难以建模,并且不准确的动态模型将导致跟踪算法的性能差。对于这些问题,在本文中,提出了一种新颖的交互Takagi-sugeno(T-S)模糊多模型通过使用UKF进行参数识别的用于参数识别的新颖进行操作跟踪算法。 ITS-UKF算法使用多个语义模糊集来表示目标功能信息,并构建一般的T-S模糊语义多模型框架。在T-S模糊语义多模型框架中,模糊集之间的交叉点用于估计不同模糊规则之间的过渡概率;模糊C-回归模型聚类(FCRM)用于自适应识别前提参数。此外,UKF还用于确定改善非线性系统性能的结果参数。仿真结果表明,ITS-UKF的性能优于IMM - EKF(交互多模型扩展卡尔曼滤波器),IMM-UKF(互动多模型无编号的卡尔曼滤波器),特别是当目标被操纵或目标模型时ITS-UKF算法不准确,性能更好。

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