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Sensor Network Localization Using Least Squares Kernel Regression

机译:使用最小二乘核回归的传感器网络本地化

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This paper considers the sensor network localization problem using signal strength. Unlike range-based methods signal strength information is stored in a kernel matrix. Least squares regression methods are then used to get an estimate of the location of unknown sensors. Locations are represented as complex numbers with the estimate function consisting of a linear weighted sum of kernel entries. The regression estimates have similar performance to previous localization methods using kernel classification methods, but at reduced complexity. Simulations are conducted to test the performance of the least squares kernel regression algorithm. Finally, the paper discusses on-line implementations of the algorithm, methods to improve the performance of the regression algorithm, and using kernels to extract other information from distributed sensor networks.
机译:本文考虑了使用信号强度的传感器网络定位问题。与基于范围的方法不同,信号强度信息存储在内核矩阵中。然后,使用最小二乘回归方法来估算未知传感器的位置。位置用复数表示,估计函数由内核项的线性加权总和组成。回归估计的性能与使用内核分类方法的以前的定位方法相似,但是降低了复杂度。进行仿真以测试最小二乘核回归算法的性能。最后,本文讨论了该算法的在线实现,改进回归算法性能的方法以及使用内核从分布式传感器网络中提取其他信息的方法。

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