Authors: Vikas Hasija—Bowhead (Systems & Technology); Erik G. Takhounts—National Highway Traffic Safety Administration
Abstract
The objective of this study is to develop a machine learning based predictive model from the available crash test data and use it for predicting injury metrics. In this study, a model was developed for predicting the head injury criterion, HIC15, using pre-test features (vehicle, test, occupant and restraint related). This problem was solved as a classification task, in which HIC15 with a threshold of 700 was divided into three classes i.e. low, medium and high. Crash test data was collected from the NHTSA database and was split into training and test datasets. Predictive models were developed from the training dataset using cross-validation while the test dataset was only used at the final step to evaluate the chosen predictive model. A logistic regression based predictive model was chosen as it demonstrated minimal overfitting and gave the highest F1 score (0.81) on the validation dataset. This chosen model gave a F1 score of 0.82 on the test (new/unseen) dataset.
Type: Short Communication
© Stapp Association, 2019
Browse Contemporary Short Communications
View additional Short Communications presented at the 63rd Stapp Car Crash Conference, 2019.
- An Experimental Confirmation of the Occupant Kinematic Response for Out of Position and Belt Tensioning Effect during Collision Avoidance SystemAuthors: Myeongkwan Kang and Dohyung Lim—Mechanical Engineering at Sejong University in Korea; Hyung Joo Kim, Seonglae Kim, and Youngkuen Cho—Automotive…
- Improvements in Simulations of Aortic Loading by Filling in Voids of the Global Human Body ModelAuthors: Anderson de Lima and Jiri Kral—General Motors Company Abstract Internal organ injuries of the chest are one of the…
- Investigating Combined Thoracic Loading Using the Elderly Female Dummy (EFD)Authors: Michael Beebe, Kris Sullenberger, Mark Burleigh, Joe McCarthy—Humanetics Innovative Solutions; John H Bolte IV—The Ohio State University Abstract The…
- Machine Learning Based Model for Predicting Head Injury Criterion (HIC)Authors: Vikas Hasija—Bowhead (Systems & Technology); Erik G. Takhounts—National Highway Traffic Safety Administration Abstract The objective of this study is…
- Novel use of a Halo Orthosis on Pediatric Anthropomorphic Test Devices (ATDs) in Frontal Sled TestsAuthors: Julie A. Mansfield and John H. Bolte IV—Injury Biomechanics Research Center, The Ohio State University; Eric A. Sribnick—Department of…
- Passenger Injury Analysis Considering Vehicle Crash after AEB ActivationAuthors: Seokhoon Ko, Garam Jeong, Dohyung Kim, Haekwon Park, Kyusang Lee, and Raeick Jang—Hyundai Mobis Abstract Owing to an increasing…
- Pediatric Cervical Spine Strength and Stiffness in the Sagittal PlaneAuthors: Yadetsie N. Zaragoza-Rivera, John H. Bolte IV, and Laura C. Boucher—Injury Biomechanics Research Center, The Ohio State University Abstract…
- The Effect of An Acoustic Startling Warning On Take-Over Reaction Time And Trunk Kinematics for Drivers in Autonomous Driving ScenariosAuthors: Valentina Graci, Madeline Griffith, Jalaj Maheshwari, Rahul Akkem, Meta Austin, Thomas Seacrist, and Kristy B. Arbogast—Center for Injury Research…
- Volume and Pressure Considerations in Human Body ModelingAuthors: Jiri Kral and Anderson de Lima—General Motors Company Abstract The initial presence and dynamic formation of internal voids in…