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Kalman Filtering Framework-Based Real Time Target Tracking in Wireless Sensor Networks Using Generalized Regression Neural Networks

机译:基于广义回归神经网络的无线传感器网络中基于卡尔曼滤波框架的实时目标跟踪

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Traditional received signal strength indicators (RSSI’s)-based moving target localization and tracking using wireless sensor networks (WSN’s) generally employs lateration/angulation techniques. Although this method is a very simple technique but it creates significant errors in localization estimations due to nonlinear relationship between RSSI and distance. The generalized regression neural network (GRNN) being a one-pass learning algorithm is well known for its ability to train quickly on sparse data sets. This paper proposes an implementation of GRNN as an alternative to this traditional RSSI-based approach, to obtain first location estimates of single target moving in 2-D in WSN, which are then further refined using Kalman filtering (KF) framework. Two algorithms namely, GRNN + KF and GRNN + unscented KF (UKF) are proposed in this paper. The GRNN is trained with the simulated RSSI values received at moving target from beacon nodes and the corresponding actual target 2-D locations. The precision of the proposed algorithms are compared against traditional RSSI-based, GRNN-based approach as well as other models in the literature such as traditional RSSI + KF and traditional RSSI + UKF algorithms. The proposed algorithms demonstrate superior tracking performance (tracking accuracy in the scale of few centimeters) irrespective of nonlinear system dynamics as well as environmental dynamicity.
机译:使用无线传感器网络(WSN's)的基于传统接收信号强度指示器(RSSI)的移动目标定位和跟踪通常采用定位/成角度技术。尽管此方法是一种非常简单的技术,但由于RSSI与距离之间存在非线性关系,因此在定位估计中会产生很大的误差。作为一种一次性学习算法的广义回归神经网络(GRNN)以其在稀疏数据集上快速训练的能力而闻名。本文提出了GRNN的实现方式,以替代这种传统的基于RSSI的方法,以获得WSN中二维移动的单个目标的第一位置估计,然后使用卡尔曼滤波(KF)框架对其进行进一步完善。本文提出了两种算法,即GRNN + KF和GRNN +无味KF(UKF)。使用在信标节点和相应的实际目标2-D位置从移动目标接收到的模拟RSSI值来训练GRNN。将所提算法的精度与传统的基于RSSI,基于GRNN的方法以及文献中的其他模型(例如传统RSSI + KF和传统RSSI + UKF算法)进行了比较。所提出的算法证明了优异的跟踪性能(跟踪精度在几厘米的范围内),而与非线性系统动力学以及环境动力学无关。

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