特种车辆的数智模拟座舱注意力管控体系模型

申正义, 陈国强, 解全娜, 侯剑帆, 韩宇豪, 徐丽

包装工程(设计栏目) ›› 2025, Vol. 46 ›› Issue (24) : 24-38.

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包装工程(设计栏目) ›› 2025, Vol. 46 ›› Issue (24) : 24-38. DOI: 10.19554/j.cnki.1001-3563.2025.24.003
专题:国防装备设计

特种车辆的数智模拟座舱注意力管控体系模型

  • 申正义1,2,3, 陈国强1,2,3,*, 解全娜1, 侯剑帆1, 韩宇豪1, 徐丽1
作者信息 +

Attention Control System Model of Digital and Intelligent Simulation Cockpits for Special Vehicles

  • SHEN Zhengyi1,2,3, CHEN Guoqiang1,2,3,*, XIE Quanna1, HOU Jianfan1, HAN Yuhao1, XU Li1
Author information +
文章历史 +

摘要

目的 特种车辆数智模拟座舱的注意力管控发展在未来具有重要意义,针对数智模拟座舱注意力管控研究不足的现状,构建以实现座舱内“人-机-环境”深度协同模型、提升驾驶安全性为目标的注意力管控体系。方法 对比各数据库内置分析工具、GAI和CiteSpace等进行可视化分析的适配性,选取CiteSpace分别对CNKI和WOS数据库中的相关文献进行可视化分析,包括空间分布、关键词共现、时间演进等多维度研究。结果 通过可视化分析结果输出注意力管控的研究热点与发展趋势,提出推动数智模拟座舱发展的3个驱动因素。结合多学科理论,从生理、心理、视觉和环境4个维度构建数智模拟座舱注意力管控体系模型,明确各维度的管控机制与技术实现路径及应用场景。结论 特种车辆数智模拟座舱注意力管控需要强化多学科交叉融合,未来应结合具体实践场景进一步优化体系结构,推动“人-机-环境”深度协同向更高水平发展,为智能驾驶的应用提供理论支撑与实践指导。

Abstract

The development of attention control in digital and intelligent simulation cockpits of special vehicles is of great significance in the future. In the view of current situation of insufficient research on attention control of digital and intelligent simulation cockpits, the work aims to construct an attention control system to achieve a deep synergy model of "human-machine-environment" in the cockpit and improve driving safety. The applicability of database-embedded analysis tools, generative AI, and CiteSpace was compared, and CiteSpace was selected to conduct visual analyses of relevant literature from CNKI and Web of Science, covering spatial distribution, key word co-occurrence, temporal evolution, and other multidimensional characteristics. The visualization results revealed research hotspots and development trends of attention control, leading to the identification of three key driving factors that promoted the advancement of digital and intelligent simulation cockpits. Combined with multidisciplinary theories, a four-dimensional attention control framework was constructed, encompassing physiological, psychological, visual, and environmental perspectives, and further clarifying the control mechanisms, technical implementation pathways, and application contexts associated with each dimension. The attention control of digital and intelligent simulation cockpits for special vehicles needs to strengthen the cross-disciplinary integration. In the future, the architecture should be further optimized in combination with specific practical scenarios to promote the in-depth collaboration of "human-machine-environment" to a higher level, providing theoretical support and practical guidance for the application of intelligent driving.

关键词

特种车辆 / 数智模拟座舱 / 注意力管控

Key words

special vehicles / digital and intelligent simulation cockpit / attention control

引用本文

导出引用1
申正义, 陈国强, 解全娜, 侯剑帆, 韩宇豪, 徐丽. 特种车辆的数智模拟座舱注意力管控体系模型[J]. 包装工程. 2025, 46(24): 24-38 https://doi.org/10.19554/j.cnki.1001-3563.2025.24.003
SHEN Zhengyi, CHEN Guoqiang, XIE Quanna, HOU Jianfan, HAN Yuhao, XU Li. Attention Control System Model of Digital and Intelligent Simulation Cockpits for Special Vehicles[J]. Packaging Engineering. 2025, 46(24): 24-38 https://doi.org/10.19554/j.cnki.1001-3563.2025.24.003
中图分类号: TB472   

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河北省社会科学基金项目(HB25YS029)

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