Abstract:
Compression therapy is a crucial treatment method
for managing Chronic Venous Disease (CVD), a prevalent condition
that affects the veins in the lower extremities. Active compression
using soft pneumatic actuators was found to be effective
in maintaining consistent pressure across the circumference of the
lower limb. However, the optimum design parameters of the soft
pneumatic actuator have not been established. Thus, this study
analyzed the performance of predicting the pressure transmission
percentage of soft pneumatic actuators via an artificial neural
network (ANN) and multiple linear regression models (MLR) in
establishing optimum design parameters. It was observed that the
lowest MSE on training data was recorded from MLR, however,
better performances were recorded for the ANN model on testing
data. Moreover, the highest R-squared values were obtained from
the ANN model. Hence it was concluded that the ANN model
was superior in terms of establishing optimum design parameters
for the soft pneumatic actuators which are used in compression
textiles.
Citation:
D. Hedigalla, M. Ehelagasthenna, I. D. Nissanka, R. Amarasinghe and G. K. Nandasiri, "Comparative Analysis of Artificial Neural Network and Multiple Linear Regression Models in Predicting Pressure Transmission of soft pneumatic actuators used for active compression," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 771-776, doi: 10.1109/MERCon60487.2023.10355424.