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Real-Time Outlier Detection and Bayesian Classification using Incremental Computations for Efficient and Scalable Stream Analytics for IoT for Manufacturing

机译:使用增量计算的实时异常检测和贝叶斯分类,以便于制造的IOT有效和可伸缩的流分析

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As the manufacturing industry progresses towards the Internet of Things (IoT) and Cyber-Physical Systems (CPS), current methods of historical data analytics face difficulties in addressing the new challenges which follow Industry 4.0. Industry 4.0 and IoT technologies facilitate the acquisition of ubiquitous data from machine tools and processes. However, these technologies also lead to the generation of a large number of data that are complex to be analyzed. Due to the streaming nature of the IoT systems, however, stream analytics could be used to extract features as the data are generated and published, which can prevent the need to store the data and perform advanced analytics that require high performance computing. This manuscript aims at demonstrating how traditional historical methods can be modified to be used as stream analytics tools for IoT data streams. Since data analytics is a wide domain, this paper has only focused on the two light-weighted methods that have been popular in the industry: Statistical Process Control Chart (SPCC), and Bayesian classification. This paper has defined, tested, and evaluated the accuracy and latency of the novel variation of these methods. It is concluded that by modifying the traditional methods and defining incremental solutions, methods such as Real-Time Dynamic Statistical Process Control Chart (RTDSPCC) and Incremental Gaussian Naive Bayes (IGNB) can be formed that are highly beneficial for IoT applications as they are highly scalable, require minimal storage, and can update the models in real-time.
机译:随着制造业进入物联网(物联网)和网络物理系统(CPS),目前的历史数据分析方法面临困难,以解决行业4.0的新挑战。行业4.0和IOT技术有助于从机床和流程获取无处不在的数据。然而,这些技术还导致生成要分析复杂的大量数据。然而,由于IOT系统的流性质,流分析可用于提取数据,因为生成和发布数据,这可以防止需要存储数据并执行需要高性能计算的高级分析。此稿件旨在展示如何修改传统的历史方法,以用作IOT数据流的流分析工具。由于数据分析是一个宽域,因此本文仅重点关注行业中受欢迎的两种光加权方法:统计过程控制图(SPCC)和贝叶斯分类。本文已定义,测试和评估这些方法的新改变的准确性和延迟。得出结论,通过修改传统方法和定义增量解决方案,可以形成实时动态统计过程控制图(RTDSPCC)和增量高斯天真贝叶斯(IGNB)等方法,这对IOT应用非常有益,因为它们很高兴可扩展,需要最小的存储,并可以实时更新模型。

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