Brainwaves in the Cloud: Cognitive Workload Monitoring Using Deep Gated Neural Network and Industrial Internet of Things
Journal article, 2024

Monitoring and classifying cognitive workload in real time is vital for optimizing human–machine interactions and enhancing performance while ensuring safety, particularly in industrial scenarios. Considering this significance, the authors aim to formulate a cognitive workload monitoring system (CWMS) by leveraging the deep gated neural network (DGNN), a hybrid model integrating bi-directional long short-term memory (Bi-LSTM) and gated recurrent unit (GRU) networks. In our experimental setup, each of the four virtual users is equipped with a Raspberry Pi Zero W module to ensure efficient data transmission, thereby enhancing the reliability and efficacy of the monitoring process. This seamless monitoring framework utilizes the constrained application protocol (CoAP) and the Things Board platform to evaluate cognitive workload in real time. The most popular EEG benchmark dataset, the STEW is utilized for workload classification in this study. We employ the short-time Fourier transformation (STFT) to extract frequency bands corresponding to users in both high and low cognitive workload modes. The proposed DGNN models achieve a perfect accuracy of 99.45%, outperforming every previous state-of-the-art model. We meticulously monitored critical parameters, including latency, classification processing time, and cognitive workload levels. This research demonstrates the importance of continuous monitoring for increasing productivity and safety in industries by introducing a novel method of real-time cognitive workload monitoring. The implementation codes for each experiment are documented and made available for reproducibility.

deep gated neural network

human–machine interface

mental workload

brain–computer interface applications

cognitive workload monitoring system

electroencephalogram

Author

Muhammad Abrar Afzal

Shanghai Jiao Tong University

Zhenyu Gu

Shanghai Jiao Tong University

Syed Umer Bukhari

University of Gothenburg

Chalmers, Computer Science and Engineering (Chalmers)

Bilal Afzal

School of Management and Economics of UESTC

Applied Sciences

20763417 (eISSN)

Vol. 14 13 5830

Subject Categories (SSIF 2025)

Production Engineering, Human Work Science and Ergonomics

Computer Systems

Driving Forces

Sustainable development

DOI

10.3390/app14135830

Related datasets

STEW: Simultaneous Task EEG Workload Dataset [dataset]

URI: https://ieee-dataport.org/open-access/stew-simultaneous-task-eeg-workload-dataset

More information

Latest update

5/19/2025