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模擬工業控制環境的HCPS系統中操作者腦力負荷識別建模研究

Research on modeling of operator mental workload recognition in HCPS under simulated industrial control situation

  • 摘要: 新一次工業革命的關鍵特征是集數字世界和物理世界于一體的信息物理系統,但受多領域發展制約,短期內具有完全自主水平的系統無法實現. 操作者與工業信息物理系統的協同共生成為亟待解決的重要難題. 工作負荷作為衡量系統整體性能和人機協作關系的關鍵指標,本文以此作為切入點,在深入剖析工業信息物理系統構成要素、人機交互系統特征及運行模式的基礎上,提取了工業信息物理系統主要的三類場景及人機交互任務,構建了面向工業場景的腦力負荷研究實驗范式;提出了針對監控核查、控制運行和通訊三類任務的關鍵腦電敏感性參數,實現了基于單一腦電模態的分任務腦力負荷建模. 實驗表明,在監控核查、控制運行和通訊場景下,基于腦電絕對功率特征的隨機森林模型均展現出卓越的識別準確率,平均識別準確率可達到97.85%、96.95%和89.88%,識別準確率最高能夠達到100%. 為進一步理解操作者生理和系統工作負荷之間的關系,提高工業信息物理系統生產力和操作者積極性提供了理論依據,為推動基于透明接口的人在環控制、自然人機交互、自適應軟件和腦機接口技術的應用等領域的研究提供了新的視角.

     

    Abstract: The industrial field has entered the era of industrial intelligence, following the developmental stages of mechanization and informatization. The hallmark of the new industrial revolution is cyber-physical systems (CPS), which merge the digital and physical worlds. However, owing to advancements in various fields, a fully autonomous system is not achievable in the near future. In the process of deepening industrial intelligence, leveraging their respective advantages to achieve safe and efficient cooperation remains a significant issue. Many studies have shown that accidents caused by human error constitute a significant portion of safety-centric complex systems, with mental workload being the primary factor leading to such errors. As human-in-the-loop research based on transparent interfaces, such as the brain–computer interface, advances, passively and naturally integrating human cognitive models into human–machine systems has become a trend, thereby participating in the decision-making and control of the future. Mental workload is the key cognitive component related to human cognition in safety-centered complex systems research. As an important factor reflecting system performance, it is crucial to evaluate mental workload scientifically and quantitatively in future industrial human-cyber-physical systems research. Utilizing this as the starting point, this paper comprehensively reviews the development of the theoretical basis of mental workload, research progress of theoretical framework, development of mental load assessment, existing experimental paradigms, and induction methods. By visiting related factories and communicating with automation experts and job operators, the components and characteristics of industrial CPSs are analyzed, and the characteristics and core operation mode of the human-computer interaction (HCI) system of industrial CPSs are proposed. Three primary task types in the industrial context have been identified, and an experimental paradigm for mental workload research, tailored to the industrial environment, has been established. Thus far, a simulated task load paradigm has been applied in the field of industrial systems. In the modeling phase, the key electroencephalogram (EEG) sensitivity parameters for three tasks must first be extracted. Among the features that showed significant performance under different mental workload levels, the characteristics of absolute EEG power exhibit the best performance in distinguishing mental workload. Subsequently, multitype task recognition models based on EEG signals are established. Results show that in monitoring and verification, control operation, and communication scenarios, the test accuracy rates of the algorithm model were 88.14%, 94.72%, and 82.42%, respectively. Through five-fold cross-validation and mesh parameter optimization, the optimal parameters for the model are obtained. To assess the model's generalization ability, a subject-wise method is employed. Upon examination, the average recognition accuracy of the random forest model based on absolute EEG power features reached 97.85%, 96.95%, and 89.88%, and the highest recognition accuracy can reach 100%. The nonlinear entropy features in the frequency domain showed crossover, while the fusion features did not show an obvious trend beyond the absolute EEG power features. This study provides a theoretical basis for the elucidation of the relationship between operator physiology and system workload, improving the productivity of industrial CPS and operator enthusiasm and providing a new perspective for promoting the research on human-in-the-loop based on transparent interfaces, natural human-computer interactions, adaptive software, and brain–computer interfaces.

     

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