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Localization in Wireless Sensor Networks via Support Vector Regression

机译:通过支持向量回归在无线传感器网络中的本地化

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For the problems of traditional RSSI localization inaccurate and modeling difficult in WSN, this paper puts forward a support vector regression (SVR) learning algorithm based on RSSI and LQI. By training the samples with RSSI and LQI values as input while coordinates as output, we get the localization model. It differs from other RF-based algorithm in that it can estimate node locations directly according to the RF signals, more importantly it needs only one anchor node at least. Benefited from the good generalization ability of SVR, the algorithm can reach about 1-m location accuracy in a complex environment, especially suitable for indoor localization. Our paper aims at providing a low-cost, high-accuracy RF-based localization technique.
机译:对于WSN的传统RSSI本地化的问题,难以在WSN中困难,本文提出了基于RSSI和LQI的支持向量回归(SVR)学习算法。通过将样本与RSSI和LQI值训练为输入,而在坐标作为输出时,我们得到本地化模型。它与其他基于RF的算法不同,因为它可以根据RF信号直接估计节点位置,更重要的是它至少需要一个锚节点。受益于SVR的良好泛化能力,该算法可以在复杂的环境中达到大约1米的位置精度,特别适用于室内定位。我们的论文旨在提供低成本,高精度的基于RF的定位技术。

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