An Industrial HMI Temporal Adaptation based on Operator-Machine Interaction Sequence Similarity

Daniel Reguera-Bakhache, Iñaki Garitano, Roberto Uribeetxeberria, C. Cernuda
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引用次数: 1

Abstract

The incorporation of Artificial Intelligence (AI) into Industrial Environments has brought about a Smart Industry revolution, improving efficiency and simplifying complex industrial processes. However, these technological advances remain primarily focused on the process, and pay little attention to industrial Human-Machine Interfaces (HMI), the bridge between the operator and the industrial process.Current industrial HMIs have a static design, and are focused exclusively on the control and visualization of process information. They fail to take into account user behaviour and skills, information key to understanding how the operator interacts with the production process. Thus, the potential beneficial outcomes of considering operator-machine interaction in terms of efficiency and productivity, make a compelling case for industrial HMIs that can adapt to different operators based on their skills and process knowledge.This paper proposes a Machine Learning (ML) based method-ology capable of analysing operator-machine interaction and detecting the variability of interaction patterns for repetitive similar sequences in monitoring and control tasks. The method-ology generates a set of adaptation rules that improve Usability and User Experience, and hence operator working performance. To validate the proposed methodology, an experiment with real operators was conducted.
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基于人机交互序列相似度的工业人机界面时序自适应
人工智能(AI)与工业环境的结合带来了一场智能工业革命,提高了效率,简化了复杂的工业流程。然而,这些技术进步仍然主要集中在过程上,而很少关注工业人机界面(HMI),即操作员和工业过程之间的桥梁。当前的工业人机界面采用静态设计,专注于过程信息的控制和可视化。他们没有考虑到用户的行为和技能,这是了解操作员如何与生产过程交互的关键信息。因此,在效率和生产力方面考虑人机交互的潜在有益结果,为工业hmi提供了一个令人信服的案例,可以根据不同的操作员的技能和工艺知识来适应不同的操作员。本文提出了一种基于机器学习(ML)的方法,该方法能够分析操作员-机器交互并检测监视和控制任务中重复相似序列的交互模式的可变性。该方法生成一组自适应规则,以提高可用性和用户体验,从而提高操作员的工作性能。为了验证所提出的方法,进行了真实操作员的实验。
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