The rapid development in the field of System of Chip (SoC) technology, Internet of Things (IoT), cloud computing, and artificial intelligence has brought more possibilities of improving and solving the current problems. With data analytics and the use of machine learning/deep learning, it is made possible to learn the underlying patterns and make decisions based on what was learned from massive data generated from IoT sensors. When combined with cloud computing, the whole pipeline can be automated, and free of manual controls and operations. In this paper, an implementation of an automated data engineering pipeline for anomaly detection of IoT sensor data is studied and proposed. The process involves the use of IoT sensors, Raspberry Pis, Amazon Web Services (AWS) and multiple machine learning techniques with the intent to identify anomalous cases for the smart home security system.
翻译:芯片系统技术、物联网、云计算和人工智能领域的快速发展为改进和解决当前问题带来了更多的可能性,随着数据分析以及机器学习/深层学习的使用,可以了解基本模式,并根据从IoT传感器产生的大量数据所学的知识作出决定;如果与云计算相结合,整个管道可以自动化,不受人工控制和运作;本文研究和提出了实施自动数据工程管道以探测IoT传感器数据异常现象的问题;这一过程涉及使用IoT传感器、Raspberry Pis、Amazon Web Services和多机学习技术,目的是为智能家庭安全系统确定异常案例。