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Extreme Learning Machine with Dead Zone and Its Application to WiFi Based Indoor Positioning

机译:具有死区的极端学习机及其在基于WiFi的室内定位的应用

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Extreme learning machine (ELM) as an emergent technology has shown its good performance in regression applications as well as in large dataset classification applications. It has been broadly embedded in many applications due to its fast speed of computation and accuracy. How to make good use of machine learning techniques in Indoor Positioning System (IPS) is a hot research topic in recent years. Some existing IPSs have already adopted ELM, but it suffers from signal variation and environmental dynamics in indoor settings. In this paper, extreme learning machine with dead zone (DZ-ELM) is proposed to address this problem. The consistency of this approach should be applied is studied. Simulations are also conducted to compare the performance of DZ-ELM and ELM. Lastly, real-world experimental results show that the proposed algorithm can not only provide higher accuracy but also improve the repeatability of IPSs.
机译:Extreme Learning Machine(ELM)作为紧急技术在回归应用以及大型数据集分类应用中表现出其良好的性能。 由于其快速的计算和准确性,它已广泛嵌入许多应用中。 如何利用机器学习技术在室内定位系统(IPS)是近年来的热门研究课题。 一些现有的IPS已经采用ELM,但它遭受了室内环境中的信号变化和环境动态。 在本文中,提出了具有死区(DZ-ELM)的极端学习机来解决这个问题。 研究了这种方法的一致性。 还进行了模拟以比较DZ-ELM和ELM的性能。 最后,现实世界的实验结果表明,该算法不仅可以提供更高的准确性,还可以提高IPS的可重复性。

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