Science and Technology on Underwater Vehicle Laboratory, Harbin Engineering University, Harbin 150001, China.
Sensors (Basel). 2018 Dec 8;18(12):4339. doi: 10.3390/s18124339.
In the single-beacon underwater tracking system, vehicles rely on slant range measurements from an acoustic beacon to bound errors accumulated by dead reckoning. Ranges are usually obtained based on a presumed known effective sound velocity (ESV). Since the ESV is difficult to determine accurately, traditional methods suffer from large positioning error. By treating the unknown ESV as a state variable, a novel single-beacon tracking model (the so called "5-sv" model) and an extended Kalman filter (EKF)-based solution method have been discussed to solve the problem of ESV estimation. However, due to the uncertainty of underwater acoustic propagation, the probabilistic characteristics of the ESV uncertainty and acoustic measurement noise are unknown and varying both with time and location. EKF, which runs with presupposed noise parameters, cannot describe the practical noise specifications. To overcome the divergence issue of EKF-based single-beacon tracking methods, this paper proposes an adaptive Kalman filter-based single-beacon tracking algorithm which employs the "5-sv" model as the baseline model. Through numerical examples using simulated and field data, both the filter and smoother results show that while implementing the proposed algorithm, the tracking accuracy can be significantly improved, and the estimated noise parameter agrees well with its true value.
在单信标水下跟踪系统中,车辆依靠来自声信标的斜距测量值来限制推算积累的误差。范围通常基于假定的已知有效声速(ESV)来获得。由于 ESV 很难准确确定,传统方法的定位误差较大。通过将未知的 ESV 视为状态变量,讨论了一种新的单信标跟踪模型(所谓的“5-sv”模型)和基于扩展卡尔曼滤波(EKF)的解决方案方法,以解决 ESV 估计问题。然而,由于水下声传播的不确定性,ESV 不确定性和水声测量噪声的概率特征是未知的,并且随时间和位置而变化。EKF 是根据预设的噪声参数运行的,无法描述实际的噪声规格。为了克服基于 EKF 的单信标跟踪方法的发散问题,本文提出了一种基于自适应卡尔曼滤波的单信标跟踪算法,该算法采用“5-sv”模型作为基准模型。通过使用模拟和现场数据的数值示例,滤波器和平滑器的结果均表明,在实施所提出的算法时,可以显著提高跟踪精度,并且估计的噪声参数与真实值吻合良好。