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首页> 外文期刊>IEEE Transactions on Neural Networks >Indoor Location System Based on Discriminant-Adaptive Neural Network in IEEE 802.11 Environments
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Indoor Location System Based on Discriminant-Adaptive Neural Network in IEEE 802.11 Environments

机译:IEEE 802.11环境中基于判别自适应神经网络的室内定位系统

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摘要

This brief paper presents a novel localization algorithm, named discriminant-adaptive neural network (DANN), which takes the received signal strength (RSS) from the access points (APs) as inputs to infer the client position in the wireless local area network (LAN) environment. We extract the useful information into discriminative components (DCs) for network learning. The nonlinear relationship between RSS and the position is then accurately constructed by incrementally inserting the DCs and recursively updating the weightings in the network until no further improvement is required. Our localization system is developed in a real-world wireless LAN WLAN environment, where the realistic RSS measurement is collected. We implement the traditional approaches on the same test bed, including weighted $k$ -nearest neighbor (WKNN), maximum likelihood (ML), and multilayer perceptron (MLP), and compare the results. The experimental results indicate that the proposed algorithm is much higher in accuracy compared with other examined techniques. The improvement can be attributed to that only the useful information is efficiently extracted for positioning while the redundant information is regarded as noise and discarded. Finally, the analysis shows that our network intelligently accomplishes learning while the inserted DCs provide sufficient information.
机译:这篇简短的论文提出了一种新颖的定位算法,称为判别自适应神经网络(DANN),该算法将来自接入点(AP)的接收信号强度(RSS)作为输入,以推断客户端在无线局域网(LAN)中的位置) 环境。我们将有用的信息提取到判别组件(DC)中以进行网络学习。然后,通过增量插入DC并递归更新网络中的权重,直到不需要进一步改进,即可准确构建RSS与位置之间的非线性关系。我们的本地化系统是在现实的无线LAN WLAN环境中开发的,该环境收集了实际的RSS测量。我们在同一测试台上实施传统方法,包括加权近邻(WKNN),最大似然(ML)和多层感知器(MLP),并比较结果。实验结果表明,与其他技术相比,该算法具有更高的精度。可以将这种改进归因于,仅有效信息被有效地提取用于定位,而冗余信息被视为噪声并被丢弃。最后,分析表明,在插入的DC提供足够的信息的同时,我们的网络可以智能地完成学习。

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