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k- Nearest Neighbor Algorithm for Improving Accuracy in Clutter Based Location Estimation of Wireless Nodes

机译:k-最近邻算法在基于杂波的无线节点位置估计中提高精度

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This research is focusing on the precise location estimation of mobile node by using k - nearest neighbor algorithm (k-NN). It is based on our previous research findings in which we divided the geographical area into thirteen clutters/terrains based on the behavior of radio waves. We calculated the point-to-point distance from the antennas to mobile node by using receive signal strength and available signal strength information. A C# prototype was developed by using WiFi (IEEE 802.11 b/g standard) to record data points in different clutters at every 2 meter distance. We derived Clutter based Enhanced Error Rate Table (CERT) for precision. Although CERT minimizes errors due to the atmospheric considerations but in highly attenuated clutters the error rate was still high. The k-NN algorithm is used to minimize the error ranging from 1-3 meters to 0.4- 1.2 meter only, depending on the clutter we are dealing with. Current research is divided into three steps. First we calculate the P2P distance in all different clutters by using available signal strength and receive signal strength at five different time intervals (t0 – t4). In step 2 we construct three triangles at random by using the data gathered in step 1 and calculate mean value of predicted locations. Finally based on locations calculated in step 2 we apply the k-NN algorithm to minimize error in the estimated location. Results show that the k-NN can produce from 217% - 289% better results compare to the famous triangulation method. The purpose of this research is to reduce errors in order to achieve estimated position near to accurate.
机译:这项研究的重点是通过使用k-最近邻算法(k-NN)精确地估计移动节点的位置。这是基于我们先前的研究发现,在该发现中,我们根据无线电波的行为将地理区域划分为13个杂波/地形。我们通过使用接收信号强度和可用信号强度信息来计算从天线到移动节点的点对点距离。通过使用WiFi(IEEE 802.11 b / g标准)开发了C#原型,以每2米的距离记录不同杂波中的数据点。我们推导了基于杂波的增强错误率表(CERT),以提高准确性。尽管CERT由于考虑到大气因素而使误差最小化,但是在高度衰减的杂波中,误差率仍然很高。根据我们要处理的杂波,使用k-NN算法将误差范围从1-3米减小到0.4-1.2米,这是最小的。当前的研究分为三个步骤。首先,我们使用可用的信号强度来计算所有不同杂波中的P2P距离,并在五个不同的时间间隔(t0 – t4)内接收信号强度。在步骤2中,我们使用步骤1中收集的数据随机构造三个三角形,并计算预测位置的平均值。最后,根据在步骤2中计算出的位置,我们应用k-NN算法将估算位置中的误差降至最低。结果表明,与著名的三角剖分方法相比,k-NN可以产生217%-289%的更好结果。这项研究的目的是减少误差,以便获得接近准确的估计位置。

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