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EEG-based driving fatigue prediction system using functional-link-based fuzzy neural network

机译:基于功能链接的模糊神经网络的基于脑电图的驾驶疲劳预测系统

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This study presents a fuzzy prediction system for the forecasting and estimation of driving fatigue, which utilizes a functional-link-based fuzzy neural network (FLFNN) to predict the drowsiness (DS) level in car driving task. The cognitive state in car driving task is one of key issue in cognitive neuroscience because fatigue driving usually causes enormous losses nowadays. The damage can be extremely decreased by the assistant of various artificial systems. Many Electroencephalography (EEG)-based interfaces have been widely developed recently due to its convenient measurement and real-time response. However, the improvement of recognition accuracy is still confined to some specific problems (e.g., individual difference). In order to solve this issue, the proposed methodology in this paper utilizes a nonlinear fuzzy neural network structure to increase the adaptability in the real-world environment. Therefore, this study is further to analysis the brain activities in car driving, which is constructed in a simulated three-dimensional virtual-reality (VR) environment. Finally, through the development of brain cognitive model in car driving task, this system can predict the cognitive state effectively before drivers' action and then provide correct feedback to users. This study also compared the result with the-state-of-art systems, including Linear Regression (LR), Multi-Layer Perceptron Neural Network (MLPNN) and Support Vector Regression (SVR). Results of this study demonstrate the effectiveness of the proposed FLFNN model.
机译:这项研究提出了一种用于驾驶疲劳预测和估计的模糊预测系统,该系统利用基于功能链接的模糊神经网络(FLFNN)来预测汽车驾驶任务中的睡意程度(DS)。汽车驾驶任务中的认知状态是认知神经科学的关键问题之一,因为如今疲劳驾驶通常会造成巨大的损失。借助各种人工系统,可以极大地减少损坏。最近,由于其便捷的测量和实时响应,许多基于脑电图(EEG)的界面已得到广泛开发。但是,识别精度的提高仍然局限于某些特定问题(例如,个体差异)。为了解决这个问题,本文提出的方法利用非线性模糊神经网络结构来增加在现实环境中的适应性。因此,本研究将进一步分析在模拟的三维虚拟现实(VR)环境中构建的汽车驾驶中的大脑活动。最终,通过开发汽车驾驶任务中的大脑认知模型,该系统可以在驾驶员行动之前有效地预测认知状态,然后向用户提供正确的反馈。这项研究还将结果与最新系统进行了比较,包括线性回归(LR),多层感知器神经网络(MLPNN)和支持向量回归(SVR)。这项研究的结果证明了所提出的FLFNN模型的有效性。

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