In this study, an artificial neural network (ANN) was deployed as a tool to determine the internal loads between the residual limb and prosthetic socket for below-knee amputees. This was achieved by using simulated load data to validate the ANN and captured clinical load data to predict the internal loads at the residual limb-socket interface. Load/pressure was applied to 16 regions of the socket, using loading pads in conjunction with a load applicator, and surface strains were collected using 15 strain gauge rosettes. A super-position program was utilised to generate training and testing patterns from the original load/strain data collected. Using this data, a back-propagation ANN, developed at the University of the West of England, was trained. The input to the trained network was the surface strains and the output the internal loads/pressure. The system was validated and thesquare error (MSE) of the system was found to be 8.8% for 1000 training patterns and 8.9% for 50 testing patterns, which was deemed an acceptable error. Finally, the validated system was used to predict pressure-sensitive/-tolerant regions at the limb-socket interface with great success. © 2006 Blackwell Publishing Ltd.
CITATION STYLE
Amali, R., Noroozi, S., Vinney, J., Sewell, P., & Andrews, S. (2006). Predicting interfacial loads between the prosthetic socket and the residual limb for below-knee amputees - A case study. Strain, 42(1), 3–10. https://doi.org/10.1111/j.1475-1305.2006.00245.x
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