Joint source localization and sensor position refinement for sensor networks

Ming Sun, Zhenhua Ma, K. C. Ho
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引用次数: 2

Abstract

Modern localization systems/platforms such as sensor networks often experience uncertainty in the sensor positions. Improving the sensor positions is necessary in order to achieve better localization performance. This paper proposes a joint estimator for locating multiple unknown sources and refining the sensor positions using TOA measurements. Rather than resorting to the traditional iterative nonlinear least-squares approach that requires careful initializations, the proposed estimator is algebraic and computationally attractive. The small noise analysis shows that the proposed estimator is able to attain the CRLB performance for both the unknown sources and the sensor positions. Simulations support the efficiency of the proposed estimator.
传感器网络联合源定位与传感器位置优化
现代定位系统/平台,如传感器网络,在传感器位置上经常遇到不确定性。为了获得更好的定位性能,改进传感器位置是必要的。本文提出了一种联合估计器,用于定位多个未知源,并利用TOA测量来改进传感器位置。而不是诉诸于传统的迭代非线性最小二乘方法,需要仔细的初始化,所提出的估计是代数的和计算上有吸引力的。小噪声分析表明,该估计器在未知源和传感器位置下均能达到CRLB性能。仿真验证了该估计器的有效性。
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