Parsing and Extracting Features from OPC Unified Architecture in Industrial Environments

Ricardo Hormann, Sebastian Nikelski, Sinisa Dukanovic, Eric Fischer
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引用次数: 2

Abstract

OPC Unified Architecture (OPC UA) is considered as a significant part of future industrial networks to provide a modular and well-structured access to machine data. In this paper, we proposed a method for parsing OPC UA binary content and a novel two-phase approach for extracting features from OPC UA. The developed method is able to parse OPC UA content sequentially and to transfer data in a structured way. For extracting features from the payload based on a new string representation, an algorithm extracts all numbers from strings and processes them separately to the letters in the first phase. The used regular expression replaces all integers and floating-point numbers with a special character. In case of not identical strings, the representation is done by an ASCII-distribution as well as an edit-distance in the second phase. On the one hand this approach documented how OPC UA data is parsed and how to use the data in subsequent steps to run analyses. On the other hand the extracted string representations are more accurate than any existing approaches and thus, are usable for machine learning algorithms.
工业环境下OPC统一体系结构特征的解析与提取
OPC统一架构(OPC UA)被认为是未来工业网络的重要组成部分,为机器数据提供模块化和结构良好的访问。本文提出了一种解析OPC UA二进制内容的方法,并提出了一种新的两阶段OPC UA特征提取方法。所开发的方法能够按顺序解析OPC UA内容,并以结构化的方式传输数据。对于基于新的字符串表示从负载中提取特征,算法从字符串中提取所有数字,并在第一阶段将它们单独处理为字母。使用的正则表达式用一个特殊字符替换所有整数和浮点数。在不相同字符串的情况下,在第二阶段,表示由一个ascii分布和一个编辑距离完成。一方面,这种方法记录了如何解析OPC UA数据以及如何在后续步骤中使用数据来运行分析。另一方面,提取的字符串表示比任何现有方法都更准确,因此可用于机器学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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