论文标题
工业互联网中的机器学习4.0
Machine Learning in the Internet of Things for Industry 4.0
论文作者
论文摘要
物联网设备的数量不断增加,这会导致计算和高数据速度的更复杂性。处理传感器数据的方法之一是数据流编程。它可以通过短暂的处理和快速响应时间开发反应性软件,尤其是在移至网络边缘时。这在利用在线机器学习算法来分析正在进行的过程的系统中尤其重要,例如行业4.0中观察到的过程。在本文中,我们表明,此类系统的组织取决于整个处理堆栈,从硬件层一直到软件层以及IoT系统的所需响应时间。我们为此类系统提出了一个流程处理堆栈以及组织机器学习体系结构模式,从而有可能在边缘和云上传播学习和推断。在本文中,我们分析了物联网中用于云连接性的通信技术引入的延迟,以及它们如何影响系统的响应时间。最后,我们提供建议,根据应用程序类型,在物联网系统中应使用哪些机器学习模式。
Number of IoT devices is constantly increasing which results in greater complexity of computations and high data velocity. One of the approach to process sensor data is dataflow programming. It enables the development of reactive software with short processing and rapid response times, especially when moved to the edge of the network. This is especially important in systems that utilize online machine learning algorithms to analyze ongoing processes such as those observed in Industry 4.0. In this paper, we show that organization of such systems depends on the entire processing stack, from the hardware layer all the way to the software layer, as well as on the required response times of the IoT system. We propose a flow processing stack for such systems along with the organizational machine learning architectural patterns that enable the possibility to spread the learning and inferencing on the edge and the cloud. In the paper, we analyse what latency is introduced by communication technologies used in the IoT for cloud connectivity and how they influence the response times of the system. Finally, we are providing recommendations which machine learning patterns should be used in the IoT systems depending on the application type.