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Development of Machine Learning-based Predictive Models for Wireless Indoor Localization Application with Feature Ranking via Recursive Feature Elimination Algorithm

机译:基于递归特征消除算法的基于机器学习的无线室内定位应用预测模型的特征排序

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The cutting-edge wireless technologies offer huge array of services, from ultra-high-speed data communications to internet of things. But the current existing infrastructure cannot handle these use cases. Consequently, it is becoming a trend to apply computational intelligence algorithms such as machine learning (ML), deep learning (DL), reinforcement learning (RL) and artificial intelligence (AI) to wireless network infrastructures. And one of these applications is on wireless indoor localization. Wireless indoor localization takes advantage of wireless access points (WAPs) received signal strength indicators (RSSI) values to pinpoint the location of a user, similar to concept of GPS but indoors. The goal of this paper is to develop predictive models that can be used to predict the location of a user using RSSI readings that his smartphone receives. In this study, four ML algorithms are used which are support vector machines, random forest, Naïve-Bayes classifier and neural networks. The accuracy of each model are 97.83%, 97.67%, 98.50% and 97.33% respectively. Also, a recursive feature elimination algorithm is also used to determine the predictor that has the least impact amongst all other features and it is found out in the study that WAP2 is contributes the least influence when the predictive models are developed.
机译:尖端的无线技术提供了从超高速数据通信到物联网的大量服务。但是当前的现有基础结构无法处理这些用例。因此,将诸如机器学习(ML),深度学习(DL),强化学习(RL)和人工智能(AI)之类的计算智能算法应用于无线网络基础设施已成为一种趋势。这些应用之一是在无线室内定位上。室内无线定位利用无线接入点(WAP)接收到的信号强度指示器(RSSI)值来查明用户的位置,类似于GPS的概念,但在室内。本文的目的是开发可用于使用智能手机接收到的RSSI读数来预测用户位置的预测模型。在这项研究中,使用了四种ML算法,分别是支持向量机,随机森林,朴素贝叶斯分类器和神经网络。每个模型的准确度分别为97.83%,97.67%,98.50%和97.33%。此外,还使用递归特征消除算法来确定在所有其他特征中影响最小的预测变量,并且在研究中发现,当开发预测模型时,WAP2的影响最小。

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