向AI询问你的汽车:AI增强的车主手册支持超越传统文档的系统整体理解

Asking AI About Your Car: AI-Augmented Vehicle Owner’s Manuals Support Integrated System Understanding Beyond Traditional Documentation

Human Factors The Journal of the Human Factors and Ergonomics Society · 2026
被引 0
ABS 3

中文导读

研究对比了AI交互式车主手册与传统PDF手册对用户理解高级驾驶辅助系统(ADAS)的效果,发现两者在量化学习结果上无显著差异,但AI手册促进了更复杂的系统级推理模式。

Abstract

ObjectiveThis study investigates the effectiveness of an AI-powered interactive vehicle owner's manual compared to a traditional static manual in improving users' understanding of Advanced Driver Assistance Systems (ADAS) using a production vehicle's owner's manual.BackgroundAs vehicle automation becomes increasingly complex, drivers face challenges in understanding ADAS features. While traditional owner's manuals have demonstrated effectiveness when they are used, there remains potential to enhance driver engagement through AI and provide more interactive and accessible learning experiences.MethodsUsing a between-subjects design, 38 participants were randomly assigned to learn about four commercially available ADAS features using either a PDF manual or a Retrieval-Augmented Generation (RAG) AI manual. Mental model accuracy was assessed through multiple-choice questions, while participants' reasoning patterns were analyzed using structural topic modeling (STM) of open-ended responses.ResultsBoth training methods improved mental model accuracy from pre- to post-training, with no significant differences between PDF and RAG conditions in quantitative learning outcomes. However, STM analysis revealed distinct qualitative differences in the participants' reasoning patterns. RAG-trained participants demonstrated more sophisticated systems-level thinking, particularly in feature integration reasoning. Analysis through the lens of the Technology Acceptance Model revealed that both methods operate through similar psychological mechanisms, with perceived usefulness aiding user acceptance.ConclusionAI-augmented owner's manuals achieve comparable learning effectiveness to traditional documentation while enhancing feature integration reasoning. Interactive AI systems serve as effective enhancements rather than replacements for proven educational approaches, guiding users toward more sophisticated mental models of complex automated systems.ApplicationThis research provides insights for automotive manufacturers and documentation specialists on effective approaches for educating drivers about complex vehicle automation systems, potentially improving safety and user experience.

人机交互汽车自动化用户文档高级驾驶辅助系统人工智能教育