存在时频统误差条件下的联合时频差定位与观测站航迹优化方法

Joint Time Difference of Arrival and Frequency Difference of Arrival Based Localization and Sensor Trajectory Optimization in Presence of Time and Frequency Synchronization Errors

  • 摘要: 近年来,无源定位技术在认知通信、频谱管控、电子战等众多领域中得到了诸多应用,时频差联合定位以其测量精度高、所需观测站数量少、具有唯一解且不易出现模糊现象等优点,受到国内外的广泛关注与应用。时频差联合定位通常需要观测站之间精确时频同步,然而当观测站的授时服务无法使用或受到干扰时,观测站之间的时频同步无法得到保证,时延频偏的存在将会对定位性能造成严重影响。为了提高时频统误差存在条件下的定位精度,本文提出了一种联合时频差定位与观测站航迹优化的方法,该方法主要包括交替迭代定位和观测站航迹优化这两个部分。第一部分交替迭代定位中,通过对目标源位置和时频统误差的交替迭代估计,将参数的高维求解问题转化为了两个低维问题,大幅降低了计算复杂度,其中交替迭代法的迭代初始值通过差分法获得。第二部分观测站航迹优化在第一部分定位估计结果的基础上,构建了一种考虑目标源位置估计不确定性的观测站航迹优化代价函数,并基于粒子滤波方法进行了高效求解。通过仿真实验可知,定位求解参数的计算复杂度较低;当测量噪声较小时,本文所提算法位置估计的均方根误差能够逼近克拉美罗下界;与无观测航迹优化相比,定位精度和时频统误差的估计准确度得到了有效提高。

     

    Abstract: ‍ ‍In recent years, passive location technology has been widely applied in multiple fields such as cognitive communication, spectrum management, and electronic warfare. Joint time difference of arrival (TDOA) and frequency difference of arrival (FDOA)-based localization has attracted widespread attention and application in China and internationally owing to its high measurement accuracy, low number of sensors required, unique solutions, and less susceptibility to localization ambiguity problems. Joint TDOA/FDOA-based localization typically requires precise time and frequency synchronization between sensors. However, when the sensor timing service cannot be used or is interfered with, time and frequency synchronization between sensors cannot be guaranteed and time and frequency offsets critically affect localization performance. The effects of time and frequency offsets on system performance are reflected by multiple aspects, including a decrease in location estimation accuracy, an uncertainty increase in target tracking, and a decrease in overall system reliability. These issues make it difficult to achieve high precision location. Therefore, accurate estimation and compensation methods are crucial to mitigate the effects of time and frequency synchronization errors. To improve localization accuracy under the condition of time and frequency synchronization errors, this study proposes joint TDOA/FDOA-based localization and sensor trajectory optimization considering time and frequency synchronization errors. The proposed method primarily includes two parts: alternating iterative localization and sensor trajectory optimization. The sensor trajectory optimization is based on the location results of alternating iterations. First, for alternating iterative localization, the high-dimensional parameter solving problem was transformed into two low-dimensional problems by alternating the estimation of the source location and time-frequency synchronization errors, which significantly reduced computational complexity. The initial value of the alternating iteration method was obtained using the difference method to avoid the impact of time and frequency synchronization errors. The second part involved the optimization of sensor trajectories. Based on the localization estimation results obtained from the first part, a cost function for optimizing sensor trajectories considering the uncertainty of source location estimation was constructed and efficient solutions were obtained using the particle filter method. Each particle represented the possible location of a randomly generated source, and the uncertainty of source estimation results was considered to optimize the sensor’s trajectory. The simulation results demonstrated that the alternate iteration method reduced computational complexity. Furthermore, when the measurement noise was minimal, the root mean square error of the location estimation algorithm proposed herein can approximate the lower bound of the Cramer-Rao Lower Bound. Compared to the situation where there is no track optimization at the sensor, the accuracy of localization estimation and that of the time and frequency offsets were effectively improved.

     

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