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基于 NSGA-III 优化 RNN-GRU-LSTM 的驾驶员应激和困倦的扩展范围预测模型。

Extended-Range Prediction Model Using NSGA-III Optimized RNN-GRU-LSTM for Driver Stress and Drowsiness.

机构信息

Department of Technology, School of Science and Technology, Hong Kong Metropolitan University, Hong Kong, China.

Department of Computer Engineering, National Institute of Technology Kurukshetra, Kurukshetra 136119, India.

出版信息

Sensors (Basel). 2021 Sep 25;21(19):6412. doi: 10.3390/s21196412.

Abstract

Road traffic accidents have been listed in the top 10 global causes of death for many decades. Traditional measures such as education and legislation have contributed to limited improvements in terms of reducing accidents due to people driving in undesirable statuses, such as when suffering from stress or drowsiness. Attention is drawn to predicting drivers' future status so that precautions can be taken in advance as effective preventative measures. Common prediction algorithms include recurrent neural networks (RNNs), gated recurrent units (GRUs), and long short-term memory (LSTM) networks. To benefit from the advantages of each algorithm, nondominated sorting genetic algorithm-III (NSGA-III) can be applied to merge the three algorithms. This is named NSGA-III-optimized RNN-GRU-LSTM. An analysis can be made to compare the proposed prediction algorithm with the individual RNN, GRU, and LSTM algorithms. Our proposed model improves the overall accuracy by 11.2-13.6% and 10.2-12.2% in driver stress prediction and driver drowsiness prediction, respectively. Likewise, it improves the overall accuracy by 6.9-12.7% and 6.9-8.9%, respectively, compared with boosting learning with multiple RNNs, multiple GRUs, and multiple LSTMs algorithms. Compared with existing works, this proposal offers to enhance performance by taking some key factors into account-namely, using a real-world driving dataset, a greater sample size, hybrid algorithms, and cross-validation. Future research directions have been suggested for further exploration and performance enhancement.

摘要

道路交通伤害在过去几十年中一直位列全球十大死因之列。传统的措施,如教育和立法,对于减少因人们在不良状态下驾驶(如在压力或困倦时)而导致的事故,仅取得了有限的改善。人们开始关注预测驾驶员未来的状态,以便提前采取预防措施作为有效的预防措施。常见的预测算法包括递归神经网络(RNN)、门控循环单元(GRU)和长短时记忆网络(LSTM)。为了受益于每种算法的优势,可以应用非支配排序遗传算法-III(NSGA-III)来合并这三种算法。这被命名为 NSGA-III-optimized RNN-GRU-LSTM。可以进行分析以比较所提出的预测算法与单个 RNN、GRU 和 LSTM 算法。我们提出的模型在驾驶员压力预测和驾驶员困倦预测方面分别将整体准确性提高了 11.2-13.6%和 10.2-12.2%。同样,与使用多个 RNN、多个 GRU 和多个 LSTM 算法的提升学习相比,它在这两个方面的整体准确性分别提高了 6.9-12.7%和 6.9-8.9%。与现有工作相比,本提案通过考虑一些关键因素来提高性能,即使用真实世界的驾驶数据集、更大的样本量、混合算法和交叉验证。提出了未来的研究方向,以进一步探索和提高性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fb31/8512694/6b9e47abda1e/sensors-21-06412-g001.jpg

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