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Survey on the Performance of Source Localization Algorithms

机译:源定位算法性能研究综述

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The localization of emitters using an array of sensors or antennas is a prevalent issue approached in several applications. There exist different techniques for source localization, which can be classified into multilateration, received signal strength (RSS) and proximity methods. The performance of multilateration techniques relies on measured time variables: the time of flight (ToF) of the emission from the emitter to the sensor, the time differences of arrival (TDoA) of the emission between sensors and the pseudo-time of flight (pToF) of the emission to the sensors. The multilateration algorithms presented and compared in this paper can be classified as iterative and non-iterative methods. Both standard least squares (SLS) and hyperbolic least squares (HLS) are iterative and based on the Newton-Raphson technique to solve the non-linear equation system. The metaheuristic technique particle swarm optimization (PSO) used for source localisation is also studied. This optimization technique estimates the source position as the optimum of an objective function based on HLS and is also iterative in nature. Three non-iterative algorithms, namely the hyperbolic positioning algorithms (HPA), the maximum likelihood estimator (MLE) and Bancroft algorithm, are also presented. A non-iterative combined algorithm, MLE-HLS, based on MLE and HLS, is further proposed in this paper. The performance of all algorithms is analysed and compared in terms of accuracy in the localization of the position of the emitter and in terms of computational time. The analysis is also undertaken with three different sensor layouts since the positions of the sensors affect the localization; several source positions are also evaluated to make the comparison more robust. The analysis is carried out using theoretical time differences, as well as including errors due to the effect of digital sampling of the time variables. It is shown that the most balanced algorithm, yielding better results than the other algorithms in terms of accuracy and short computational time, is the combined MLE-HLS algorithm.
机译:使用传感器或天线阵列对发射器进行定位是一些应用中普遍存在的问题。存在不同的源定位技术,可分为多点测量、接收信号强度(RSS)和邻近方法。多点测量技术的性能依赖于测量的时间变量:从发射器到传感器的发射飞行时间(ToF),传感器之间发射的到达时间差(TDoA)以及发射到传感器的伪飞行时间(pToF)。本文提出并比较的多点测量算法可分为迭代方法和非迭代方法。标准最小二乘法 (SLS) 和双曲最小二乘法 (HLS) 都是迭代的,并且基于 Newton-Raphson 技术来求解非线性方程组。此外,还研究了用于源定位的元启发式技术粒子群优化(PSO)。这种优化技术将源位置估计为基于 HLS 的目标函数的最优位置,并且本质上也是迭代的。此外,还提出了3种非迭代算法,即双曲定位算法(HPA)、最大似然估计器(MLE)和Bancroft算法。该文进一步提出了一种基于MLE和HLS的非迭代组合算法MLE-HLS。根据精度、发射器位置定位和计算时间,对所有算法的性能进行了分析和比较。由于传感器的位置会影响定位,因此还使用三种不同的传感器布局进行分析;此外,还评估了多个源位置,以使比较更加稳健。该分析是使用理论时间差进行的,并包括由于时间变量的数字采样影响而导致的误差。结果表明,MLE-HLS组合算法是最平衡的算法,在精度和计算时间方面比其他算法产生更好的结果。

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