Rancang Bangun Sistem Deteksi Posisi Objek dalam Rumah dengan Metode Support Vector Machine Berdasar Kekuatan Sinyal Wi-Fi

Damar Buana Murti, Danang Lelono, Roghib Muhammad Hujja
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Abstract

 Indoor Positioning System (IPS) is an object tracking technology that utilizes networks such as Wireless Fidelity (Wi-Fi) to determine the location of an object. IPS is closely related to the implementation of the Internet of Things (IoT) to carry out an order in a smart home. However, the weakness of IPS is the attenuation of the signal received when the tag or target moves to a room that borders another room, causing errors in tracking. The IPS implementation will be carried out based on the 2.4 GHz Wi-Fi signal emitted from the ESP32.The research will use the trilateration method which requires three sink nodes to receive signal strength, then a machine learning algorithm, namely Support Vector Machine (SVM), to classify rooms in three different scenarios, namely when the target is stationary, moving between rooms, and is on the edge room adjacent to another room.The results of the test show that the three scenarios provide different levels of accuracy. The accuracy of the system on the target scenario while still in the room reaches 100%, on the target moving room scenario reaches 86.15%, and on the target scenario that is at the edge of the room adjacent to another room reaches 80%.
设计一个系统,用基于Wi-Fi信号的支持机检测系统
室内定位系统(IPS)是一种利用无线保真(Wi-Fi)等网络来确定物体位置的物体跟踪技术。IPS与物联网(IoT)的实施密切相关,在智能家居中执行订单。然而,IPS的弱点是当标签或目标移动到与另一个房间相邻的房间时,接收到的信号会衰减,导致跟踪错误。IPS的实现将基于ESP32发出的2.4 GHz Wi-Fi信号进行。本研究将使用三边测量法,该方法需要三个sink节点接收信号强度,然后使用机器学习算法,即支持向量机(SVM),对三种不同场景下的房间进行分类,即目标静止时,在房间之间移动时,以及在与另一个房间相邻的边缘房间。测试结果表明,三种场景提供了不同程度的准确性。系统对目标场景在室内时的准确率达到100%,对目标移动房间场景的准确率达到86.15%,对房间边缘与另一个房间相邻的目标场景的准确率达到80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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