Fayixue Zazhi (Oct 2022)

Strike Velocity Prediction of Stick Blunt Instruments Based on Backpropagation Neural Network

  • LI Hai-yan,
  • LI Hai-fang,
  • PAN Jian-yu,
  • CUI Shi-hai,
  • HE Guang-long,
  • HE Li-juan,
  • LÜ Wen-le

DOI
https://doi.org/10.12116/j.issn.1004-5619.2020.401108
Journal volume & issue
Vol. 38, no. 5
pp. 573 – 578

Abstract

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ObjectiveTo analyze and predict the striking velocity range of stick blunt instruments in different populations, and to provide basic data for the biomechanical analysis of blunt force injuries in forensic identification.MethodsBased on the Photron FASTCAM SA3 high-speed camera, Photron FASTCAM Viewer 4.0 and SPSS 26.0 software, the tester’s maximum striking velocity of stick blunt instruments and related factors were calculated and analyzed, and inputed to the backpropagation (BP) neural network for training. The trained and verified BP neural network was used as the prediction model.ResultsA total of 180 cases were tested and 470 pieces of data were measured. The maximum striking velocity range was 11.30-35.99 m/s. Among them, there were 122 female data, the maximum striking velocity range was 11.63-29.14 m/s; there were 348 male data, the maximum striking velocity range was 20.11-35.99 m/s. The maximum striking velocity of stick blunt instruments increased with the increase of weight and height, but there was no obvious increase trend in the male group; the maximum striking velocity decreased with age, but there was no obvious downward trend in the female group. The maximum striking velocity of stick blunt instruments has no significant correlation with the material and strike posture. The root mean square error (RMSE), the mean absolute error (MAE) and the coefficient of determination (R2) of the prediction results by using BP neural network were 2.16, 1.63 and 0.92, respectively.ConclusionThe prediction model of BP neural network can meet the demand of predicting the maximum striking velocity of different populations.

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