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An Adaptive General Type-2 Fuzzy Logic Approach for Psychophysiological State Modeling in Real-Time Human–Machine Interfaces

机译:实时人机界面心理生理状态建模的自适应普通型模糊逻辑方法

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In this article, a new type-2 fuzzy-based modeling approach is proposed to assess human operators’ psychophysiological states for both safety and reliability of human–machine interface systems. Such a new modeling technique combines type-2 fuzzy sets with state tracking to update the rule base through a Bayesian process. These new configurations successfully lead to an adaptive, robust, and transparent computational framework that can be utilized to identify dynamic (i.e., real time) features without prior training. The proposed framework is validated on mental arithmetic cognitive real-time experiments with ten participants. It is found that the proposed framework outperforms other paradigms (i.e., an adaptive neuro-fuzzy inference system and an adaptive general type-2 fuzzy c-means modeling approach) in terms of disturbance rejection and learning capabilities. The proposed framework achieved the best performance compared to other models that have been presented in the related literature. Therefore, the new framework can be a promising development in human–machine interface systems. It can be further utilized to develop advanced control mechanisms, investigate the origins of human compromised task performance, and identify and remedy psychophysiological breakdown in the early stages.
机译:在本文中,提出了一种新型的2型模糊的建模方法,以评估人工运营商的心理生理国家,以满足人机界面系统的安全性和可靠性。这种新的建模技术将Type-2模糊集合与状态跟踪相结合以通过贝叶斯进程更新规则库。这些新配置成功地导致了可用于识别无需事先培训的动态(即实时)功能的自适应,强大和透明的计算框架。拟议的框架在有十名参与者的心理算术认知实时实验上验证。结果发现,在干扰抑制和学习能力方面,所提出的框架优于其他范例(即自适应神经模糊推理系统和自适应通用类型-2模糊C型模糊C型模拟方法。拟议的框架与相关文献中呈现的其他模型相比,实现了最佳性能。因此,新框架可以是人机界面系统中有希望的开发。它可以进一步利用来开发先进的控制机制,研究人类受损的任务绩效的起源,并在早期阶段识别和补救心理生理分解。

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