SDN框架下基于用户的室内定位随机森林分类器

Rahul Gomes, M. Ahsan, A. Denton
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引用次数: 37

摘要

无线室内定位在过去几年中变得越来越重要。它的应用范围从我们走进房间时打开娱乐设备到补充生物识别安全系统。虽然目前的室内定位技术采用射频技术,但部署这些系统可能很昂贵,而且消耗大量电力。随着智能系统进入我们的日常生活,我们需要开发一种无需专门硬件就能与现有技术集成的模型。我们提出了一种使用软件定义网络(SDN)框架进行室内定位的随机森林方法。该模型使用基于随机森林的交叉验证进行自我训练并进行室内定位。SDN框架负责协调物联网设备和监控安全威胁。该系统使用来自7个不同路由器的Wi-Fi信号进行测试。使用k-fold交叉验证3和m = 2,达到98.3%的最高准确率。为了验证其适用性,该模型与其他算法(如kNN、支持向量机和神经网络)进行了测试。随机森林在这种情况下表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random Forest Classifier in SDN Framework for User-Based Indoor Localization
Wireless indoor localization has gained importance over the past few years. Its application ranges from turning on entertainment devices when we walk in a room to complementing biometric security systems. While present technology employing radio-frequency exists for indoor positioning, deploying these systems can be expensive and consume a lot of power. As smart systems make their way in our daily life, there is a need to develop models that can integrate with existing technology without the need of specialized hardware. We propose a random forest approach for indoor localization using a Software Defined Network (SDN) framework. This model uses random forest based cross validation to train itself and perform indoor localization. The SDN framework is responsible for coordinating the IoT devices and monitoring security threats. The system is tested using Wi-Fi signals obtained from seven different routers. The highest accuracy of 98.3% is achieved using k-fold cross validation of 3 and mtry = 2. To verify its applicability, the model was tested against other algorithms such as kNN, Support Vector Machines and Neural Networks. Random forest performs best in this scenario.
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