Analyzing Factors Influencing Driver Willingness to Accept Advanced Driver Assistance Systems
This research addresses the problem of low ADAS adoption for automakers and policymakers by identifying key influencing factors, though it is incremental as it applies existing methods to new survey data.
This study analyzed factors influencing driver willingness to accept Advanced Driver Assistance Systems (ADAS) using a nationwide survey and machine learning models, finding that higher trust levels correlate with increased ADAS usage while reliability concerns remain a barrier, with specific features like Forward Collision Warning significantly affecting adoption.
Advanced Driver Assistance Systems (ADAS) enhance highway safety by improving environmental perception and reducing human errors. However, misconceptions, trust issues, and knowledge gaps hinder widespread adoption. This study examines driver perceptions, knowledge sources, and usage patterns of ADAS in passenger vehicles. A nationwide survey collected data from a diverse sample of U.S. drivers. Machine learning models predicted ADAS adoption, with SHAP (SHapley Additive Explanations) identifying key influencing factors. Findings indicate that higher trust levels correlate with increased ADAS usage, while concerns about reliability remain a barrier. Specific features, such as Forward Collision Warning and Driver Monitoring Systems, significantly influence adoption likelihood. Demographic factors (age, gender) and driving habits (experience, frequency) also shape ADAS acceptance. Findings emphasize the influence of socioeconomic, demographic, and behavioral factors on ADAS adoption, offering guidance for automakers, policymakers, and safety advocates to improve awareness, trust, and usability.