Towards context classification and reasoning in IoT

Abayomi Otebolaku, G. Lee
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引用次数: 12

Abstract

Internet of Things (IoT) is the future of ubiquitous and personalized intelligent service delivery. It consists of interconnected, addressable and communicating everyday objects. To realize the full potentials of this new generation of ubiquitous systems, IoT's ‘smart’ objects should be supported with intelligent platforms for data acquisition, pre-processing, classification, modeling, reasoning and inference including distribution. However, some current IoT systems lack these capabilities: they provide mainly the functionality for raw sensor data acquisition. In this paper, we propose a framework towards deriving high-level context information from streams of raw IoT sensor data, using artificial neural network (ANN) as context recognition model. Before building the model, raw sensor data were pre-processed using weighted average low-pass filtering and a sliding window algorithm. From the resulting windows, statistical features were extracted to train ANN models. Analysis and evaluation of the proposed system show that it achieved between 87.3% and 98.1% accuracies.
物联网中的语境分类与推理
物联网(IoT)是无处不在和个性化智能服务交付的未来。它由相互连接、可寻址和交流的日常物品组成。为了充分发挥新一代无处不在的系统的潜力,物联网的“智能”对象应该得到数据采集、预处理、分类、建模、推理和推理(包括分布)的智能平台的支持。然而,目前的一些物联网系统缺乏这些功能:它们主要提供原始传感器数据采集的功能。在本文中,我们提出了一个框架,用于从原始物联网传感器数据流中获取高级上下文信息,使用人工神经网络(ANN)作为上下文识别模型。在建立模型之前,使用加权平均低通滤波和滑动窗口算法对原始传感器数据进行预处理。从得到的窗口中提取统计特征来训练人工神经网络模型。分析和评价表明,该系统的准确率在87.3% ~ 98.1%之间。
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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