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Combination of Pseudo Linear Estimator and modified gain bearings-only extended Kalman filter for passive target tracking in abnormal conditions

机译:伪线性估计器和改进的仅增益轴承扩展卡尔曼滤波器的组合,用于在异常情况下进行被动目标跟踪

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In underwater, the bearings-only passive target tracking can be done with many available estimators by supplying the noisy bearing measurements from a passive sonar as inputs. The problem here is, all the estimators fail to work in the abnormal conditions which includes the situation of missed bearings, the situation of spurious bearings and the situation in which the noise is non-Gaussian. The algorithm developed in this paper will take care of the above mentioned problems. The main step involved in the algorithm includes preprocessing of the noisy bearing measurements and then supply the preprocessed data along with the variance as input to the advanced nonlinear filter like Modified Gain Bearings-Only Extended Kalman Filter (MGBEKF) to find the target motion parameters. Preprocessing stage involves reducing the amplitude of the noise in the measurements, converting the nongaussian noise to Gaussian and generating the substitute for the missed and spurious bearings using Pseudo Linear Estimator (PLE).
机译:在水下,只能通过将被动声纳作为输入供应嘈杂的轴承测量来完成轴承的无源目标跟踪。这里的问题是,所有估算都不能在异常情况下工作,包括错过轴承的情况,虚假轴承的情况以及噪音是非高斯的情况。本文开发的算法将负责上述问题。算法中涉及的主要步骤包括噪声轴承测量的预处理,然后提供预处理的数据以及作为输入到的高级非线性滤波器的输入,如修改的增益轴承的延伸卡尔曼滤波器(MGBEKF),以找到目标运动参数。预处理阶段涉及降低测量中的噪声的幅度,将Nongaussian噪声转换为高斯和使用伪线性估计(PLE)的错过和虚假轴承的替代品。

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