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Combining Individual and Joint Networking Behavior for Intelligent IoT Analytics

机译:结合智能物联网分析的个人和联合网络行为

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The IoT vision of a trillion connected devices over the next decade requires reliable end-to-end connectivity and automated device management platforms. While we have seen successful efforts for maintaining small IoT testbeds, there are multiple challenges for the efficient management of large-scale device deployments. With Industrial IoT, incorporating millions of devices, traditional management methods do not scale well. In this work, we address these challenges by designing a set of novel machine learning techniques, which form a foundation of a new tool, IoTelligent, for IoT device management, using traffic characteristics obtained at the network level. The design of our tool is driven by the analysis of 1-year long networking data, collected from 350 companies with IoT deployments. The exploratory analysis of this data reveals that IoT environments follow the famous Pareto principle, such as: (ⅰ) 10% of the companies in the dataset contribute to 90% of the entire traffic; (ⅱ) 7% of all the companies in the set own 90% of all the devices. We designed and evaluated CNN, LSTM, and Convolutional LSTM models for demand forecasting, with a conclusion of the Convolutional LSTM model being the best. However, maintaining and updating individual company models is expensive. In this work, we design a novel, scalable approach, where a general demand forecasting model is built using the combined data of all the companies with a normalization factor. Moreover, we introduce a novel technique for device management, based on autoencoders. They automatically extract relevant device features to identify device groups with similar behavior to flag anomalous devices.
机译:在未来十年内亿万连接设备的物联网视野需要可靠的端到端连接和自动化设备管理平台。虽然我们已经看到了维护小型物联网测试床的成功努力,但大规模设备部署的有效管理有多种挑战。使用工业物联网,融合了数百万设备,传统管理方法不符合速度。在这项工作中,我们通过设计一组新颖的机器学习技术来解决这些挑战,它使用网络级别获得的流量特性来构成新的机器学习技术,这是一种新的机器学习技术,该技术是一种新的工具,iotelligent对IoT设备管理。我们工具的设计是由1年长期网络数据的分析驱动的,从350家具有IOT部署的公司收集。对此数据的探索性分析表明,物联网环境遵循着名的帕累托原则,例如:(Ⅰ)该数据集中的10%的公司占整个流量的90%; (Ⅱ)该集中的所有公司的7%拥有所有设备的90%。我们设计和评估了CNN,LSTM和卷积的LSTM模型,可用于需求预测,得出卷积LSTM模型是最好的。但是,维护和更新个别公司模型昂贵。在这项工作中,我们设计了一种新颖,可扩展的方法,其中,使用所有具有归一化因子的所有公司的组合数据建立了一般需求预测模型。此外,我们基于AutoEncoders介绍了一种用于设备管理的新技术。它们自动提取相关的设备功能以识别具有与标记异常设备类似行为的设备组。

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