Graduate School of Robotics and Design, Osaka Institute of Technology, Chayamachi 1-45, Osaka 530-0013, Japan.
Research and Development Center, Yanmar Holdings Co., Ltd., Umegahara 2481, Maibara 521-8511, Japan.
Sensors (Basel). 2024 Oct 7;24(19):6465. doi: 10.3390/s24196465.
The construction industry is actively developing remote-controlled excavators to address labor shortages and improve work safety. However, visually induced motion sickness (VIMS) remains a concern in the remote operation of construction machinery. To predict the occurrence and severity of VIMS, we developed a prototype system that acquires multiple physiological signals with different mechanisms under a low burden and detects VIMS from the collected data. Signals during VIMS were recorded from nine healthy adult males operating excavator simulators equipped with multiple displays and a head-mounted display. Light gradient-boosting machine-based VIMS detection binary classification models were constructed using approximately 30,000 s of time-series data, comprising 23 features derived from the physiological signals. These models were validated using leave-one-out cross-validation on seven participants who experienced severe VIMS and evaluated through area under the curve (AUC) scores. The mean receiver operating characteristic curve AUC score was 0.84, and the mean precision-recall curve AUC score was 0.71. All features were incorporated into the models, with saccade frequency and skin conductance response identified as particularly important. These trends aligned with subjective assessments of VIMS severity. This study contributes to advancing the use of remote-controlled machinery by addressing a critical challenge to operator performance and safety.
建筑行业正在积极开发遥控挖掘机,以解决劳动力短缺和提高工作安全性的问题。然而,在建筑机械的远程操作中,视觉诱发运动病(VIMS)仍然是一个令人关注的问题。为了预测 VIMS 的发生和严重程度,我们开发了一个原型系统,该系统在低负担下获取具有不同机制的多种生理信号,并从收集的数据中检测 VIMS。从九名健康成年男性操作配备多个显示器和头戴式显示器的挖掘机模拟器中记录了 VIMS 期间的信号。使用大约 30000 秒的时间序列数据构建了基于轻梯度提升机的 VIMS 检测二进制分类模型,其中包含来自生理信号的 23 个特征。这些模型在经历严重 VIMS 的七名参与者中使用留一法交叉验证进行验证,并通过曲线下面积(AUC)评分进行评估。平均接收者操作特性曲线 AUC 评分 0.84,平均精度召回曲线 AUC 评分 0.71。所有特征都被纳入模型,其中眼跳频率和皮肤电反应被确定为特别重要的特征。这些趋势与 VIMS 严重程度的主观评估一致。这项研究通过解决操作员性能和安全的关键挑战,为推进遥控机械的使用做出了贡献。