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A Heterogeneous IoT Data Analysis Framework with Collaboration of Edge-Cloud Computing: Focusing on Indoor PM10 and PM2.5 Status Prediction

机译:结合边缘云计算的异构IoT数据分析框架:专注于室内PM10和PM2.5状态预测

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摘要

The edge platform has evolved to become a part of a distributed computing environment. While typical edges do not have enough processing power to train machine learning models in real time, it is common to generate models in the cloud for use on the edge. The pattern of heterogeneous Internet of Things (IoT) data is dependent on individual circumstances. It is not easy to guarantee prediction performance when a monolithic model is used without considering the spatial characteristics of the space generating those data. In this paper, we propose a collaborative framework using a new method to select the best model for the edge from candidate models of cloud based on sample data correlation. This method lets the edge use the most suitable model without any training tasks on the edge side, and it also minimizes privacy issues. We apply the proposed method to predict future fine particulate matter concentration in an individual space. The results suggest that our method can provide better performance than the previous method.
机译:边缘平台已发展成为分布式计算环境的一部分。尽管典型的边缘没有足够的处理能力来实时训练机器学习模型,但通常会在云中生成模型以供边缘使用。异构物联网(IoT)数据的模式取决于具体情况。当使用整体模型而不考虑生成那些数据的空间的空间特征时,要保证预测性能并不容易。在本文中,我们提出了一种使用新方法的协作框架,以基于样本数据相关性从云的候选模型中选择最佳边缘模型。这种方法可以使边缘使用最合适的模型,而无需在边缘侧进行任何培训任务,而且还可以最大程度地减少隐私问题。我们应用提出的方法来预测单个空间中未来的细颗粒物浓度。结果表明我们的方法可以提供比以前的方法更好的性能。

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