A two-level reasoning method based on SVM_RETE algorithm in industrial environments

Xue Lingling, Liu Yang, Tong Xing, Zhang Tianshi, Zeng Peng, Y. Haibin
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引用次数: 1

Abstract

In the industrial environments, the efficient automatic control of terminal devices depends on the changing of reception data and customized rules. As the development of Industrial Internet of Things (IIoT), more and more industrial data can be achieved to generate the big data of IIoT. Therefore, efficient matching and processing of dynamic IIoT big data and customized rules becomes increasingly important. This paper presents a two-level reasoning method in improving performance of rule engine. The first level uses a decision function trained by Support Vector Machine (SVM) to classify reported data from sensors based on the semantic data interface. In this stage, the useless data is filtered in order to reduce subsequent process. In the second level an improved RETE, in this paper is called SVM_RETE algorithm for matching rules and performing actions is presented to increase efficiency of reasoning processing. The proposed scheme is performed in a practical industrial environment. The experiment results show that the method can be performed efficiently and flexibly when massive data is involved.
工业环境下基于SVM_RETE算法的两级推理方法
在工业环境中,终端设备的高效自动控制依赖于接收数据的变化和自定义规则。随着工业物联网(IIoT)的发展,可以实现越来越多的工业数据,产生工业物联网的大数据。因此,动态IIoT大数据与定制规则的高效匹配和处理变得越来越重要。本文提出了一种两级推理方法来提高规则引擎的性能。第一层利用支持向量机(SVM)训练的决策函数,基于语义数据接口对传感器上报的数据进行分类。在这个阶段,无用的数据被过滤,以减少后续处理。第二层提出了一种改进的RETE算法,本文称之为SVM_RETE算法,用于匹配规则和执行动作,以提高推理处理的效率。该方案在实际工业环境中进行了验证。实验结果表明,该方法在处理海量数据时能够高效、灵活地完成任务。
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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