Measuring Risky Driving Behavior Using an mHealth Smartphone App: Development and Evaluation of gForce

Background Naturalistic driving studies, designed to objectively assess driving behavior and outcomes, are conducted by equipping vehicles with dedicated instrumentation (eg, accelerometers, gyroscopes, Global Positioning System, and cameras) that provide continuous recording of acceleration, location, videos, and still images for eventual retrieval and analyses. However, this research is limited by several factors: the cost of equipment installation; management and storage of the large amounts of data collected; and data reduction, coding, and analyses. Modern smartphone technology includes accelerometers built into phones, and the vast, global proliferation of smartphones could provide a possible low-cost alternative for assessing kinematic risky driving. Objective We evaluated an in-house developed iPhone app (gForce) for detecting elevated g-force events by comparing the iPhone linear acceleration measurements with corresponding acceleration measurements obtained with both a custom Android app and the in-vehicle miniDAS data acquisition system (DAS; Virginia Tech Transportation Institute). Methods The iPhone and Android devices were dashboard-mounted in a vehicle equipped with the DAS instrumentation. The experimental protocol consisted of driving maneuvers on a test track, such as cornering, braking, and turning that were performed at different acceleration levels (ie, mild, moderate, or hard). The iPhone gForce app recorded linear acceleration (ie, gravity-corrected). The Android app recorded gravity-corrected and uncorrected acceleration measurements, and the DAS device recorded gravity-uncorrected acceleration measurements. Lateral and longitudinal acceleration measures were compared. Results The correlation coefficients between the iPhone and DAS acceleration measurements were slightly lower compared to the correlation coefficients between the Android and DAS, possibly due to the gravity correction on the iPhone. Averaging the correlation coefficients for all maneuvers, the longitudinal and lateral acceleration measurements between iPhone and DAS were rlng=0.71 and rlat=0.83, respectively, while the corresponding acceleration measurements between Android and DAS were rlng=0.95 and rlat=0.97. The correlation coefficients between lateral accelerations on all three devices were higher than with the corresponding longitudinal accelerations for most maneuvers. Conclusions The gForce iPhone app reliably assessed elevated g-force events compared to the DAS. Collectively, the gForce app and iPhone platform have the potential to serve as feature-rich, inexpensive, scalable, and open-source tool for assessment of kinematic risky driving events, with potential for research and feedback forms of intervention.

[1]  Mohan M. Trivedi,et al.  Driving style recognition using a smartphone as a sensor platform , 2011, 2011 14th International IEEE Conference on Intelligent Transportation Systems (ITSC).

[2]  Jing Wang,et al.  Hard Braking Events Among Novice Teenage Drivers By Passenger Characteristics. , 2017, Proceedings of the ... International Driving Symposium on Human Factors in Driver Assessment, Training, and Vehicle Design.

[3]  Cory Siebe,et al.  Distracted Driving and Risk of Road Crashes among Novice and Experienced Drivers , 2014 .

[4]  Johnathon P Ehsani,et al.  Comparing G-Force Measurement Between a Smartphone App and an In-Vehicle Accelerometer , 2017 .

[5]  Bruce Simons-Morton,et al.  Learning to Drive Safely: Reasonable Expectations and Future Directions for the Learner Period , 2016, Safety.

[6]  P. Albert,et al.  Do elevated gravitational-force events while driving predict crashes and near crashes? , 2012, American journal of epidemiology.

[7]  Frank Gauterin,et al.  Employing Smartphones as a Low-Cost Multi Sensor Platform in a Field Operational Test with Electric Vehicles , 2014, 2014 47th Hawaii International Conference on System Sciences.

[8]  Feng Guo,et al.  Driver crash risk factors and prevalence evaluation using naturalistic driving data , 2016, Proceedings of the National Academy of Sciences.

[9]  Allan F Williams,et al.  The Contribution of Fatal Crashes Involving Teens Transporting Teens , 2010, Traffic injury prevention.

[10]  Thierry Derrmann,et al.  Driver Behavior Profiling Using Smartphones: A Low-Cost Platform for Driver Monitoring , 2015, IEEE Intelligent Transportation Systems Magazine.

[11]  Jin-Hyuk Hong,et al.  A smartphone-based sensing platform to model aggressive driving behaviors , 2014, CHI.

[12]  Divera A M Twisk,et al.  Trends in young driver risk and countermeasures in European countries. , 2007, Journal of safety research.

[13]  Feng Guo,et al.  Naturalistic teenage driving study: Findings and lessons learned. , 2015, Journal of safety research.

[14]  Thomas A. Dingus,et al.  Variability in crash and near-crash risk among novice teenage drivers: a naturalistic study. , 2013, The Journal of pediatrics.

[15]  A. Pradhan,et al.  The effect on teenage risky driving of feedback from a safety monitoring system: a randomized controlled trial. , 2013, The Journal of adolescent health : official publication of the Society for Adolescent Medicine.