BSOM: A Two-Level Clustering Method Based on the Efficient Self-Organizing Maps

Dylan Molinié, K. Madani
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Abstract

At the very beginning of the Industry 4.0 era, automated systems and automatic knowledge conceptualization are becoming more and more essential. The ever faster, ever more resource-demanding processes are raising a pressing need for highly efficient handling of the systems. While the industries produce ever more, there is less and less time for back-up and quality assessment; a piece of solution may come along a real-time and automated monitoring, based on sensors’ data so as to assess products’ validity: this is the areas of Behavior Identification and Anomaly Detection. In this paper, we propose to use Machine Learning and data-driven clustering to automatically identify the real behaviors of a system, and therefore its possible anomalies. More than the methodology, we mostly propose a more stable clustering method based on the Self-Organizing Maps to achieve that purpose. We apply both methodology and that improved clustering method to real industrial data, and we show that it is more efficient, more stable and more relevant to dynamic systems.
基于高效自组织映射的两级聚类方法
在工业4.0时代伊始,自动化系统和自动化知识概念化变得越来越重要。越来越快,越来越多的资源需求的过程提出了一个迫切需要,高效地处理系统。在工业生产越来越多的同时,用于备份和质量评估的时间越来越少;一个解决方案可能伴随着实时和自动化的监控,基于传感器的数据,以评估产品的有效性:这是行为识别和异常检测的领域。在本文中,我们建议使用机器学习和数据驱动的聚类来自动识别系统的真实行为,从而识别其可能的异常。除了方法之外,我们主要提出一种基于自组织映射的更稳定的聚类方法来实现这一目的。将该方法和改进的聚类方法应用于实际工业数据,结果表明,该方法更有效、更稳定,与动态系统更相关。
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