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Adaptive Residual Weighted K-Nearest Neighbor Fingerprint Positioning Algorithm Based on Visible Light Communication

机译:基于可见光通信的自适应残余加权k最近邻指纹定位算法

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摘要

The weighted K-nearest neighbor (WKNN) algorithm is a commonly used fingerprint positioning, the difficulty of which lies in how to optimize the value of K to obtain the minimum positioning error. In this paper, we propose an adaptive residual weighted K-nearest neighbor (ARWKNN) fingerprint positioning algorithm based on visible light communication. Firstly, the target matches the fingerprints according to the received signal strength indication (RSSI) vector. Secondly, K is a dynamic value according to the matched RSSI residual. Simulation results show the ARWKNN algorithm presents a reduced average positioning error when compared with random forest (81.82%), extreme learning machine (83.93%), artificial neural network (86.06%), grid-independent least square (60.15%), self-adaptive WKNN (43.84%), WKNN (47.81%), and KNN (73.36%). These results were obtained when the signal-to-noise ratio was set to 20 dB, and Manhattan distance was used in a two-dimensional (2-D) space. The ARWKNN algorithm based on Clark distance and minimum maximum distance metrics produces the minimum average positioning error in 2-D and 3-D, respectively. Compared with self-adaptive WKNN (SAWKNN), WKNN and KNN algorithms, the ARWKNN algorithm achieves a significant reduction in the average positioning error while maintaining similar algorithm complexity.
机译:加权K-最近邻(WKNN)算法是一种常用的指纹定位,其难以在如何优化K的值以获得最小定位误差。在本文中,我们提出了一种基于可见光通信的自适应残余加权k最近邻(ARWKNN)指纹定位算法。首先,根据接收的信号强度指示(RSSI)向量,目标匹配指纹。其次,K是根据匹配的RSSI残差的动态值。仿真结果表明,与随机森林(81.82%),极端学习机(83.93%),人工神经网络(86.06%),独立于独立的最小二乘(60.15%),自我 - 自我的平均定位误差减少了平均定位误差自适应WKNN(43.84%),WKNN(47.81%)和KNN(73.36%)。当信噪比设定为20dB时获得这些结果,并且在二维(2-D)空间中使用曼哈顿距离。基于克拉克距离和最小最大距离度量的ARWKNN算法分别在2-D和3-D中产生最小平均定位误差。与自适应WKNN(Sawknn),WKNN和KNN算法相比,ARWKNN算法在保持类似的算法复杂性的同时实现了平均定位误差的显着降低。

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