Home /Research /Development of the Algorithm of Locomotion Modes Decision based on RBF-SVM for Hip Gait Assist Robot
LOCOMOTION

Development of the Algorithm of Locomotion Modes Decision based on RBF-SVM for Hip Gait Assist Robot

Dong Bin Shin, Seung Chan Lee, Seung Hoon Hwang, In Hyuk Baek, Joon Kyu No, Soon Woong Hwang, Chang-Soo Han

Year
2020
Citations
2

Abstract

The purpose of this study was to suggest the method for automated locomotion modes (Level Walking, Stair Ascent, Stair Descent) detection based on the Radial Basis Function Support Vector Machine (RBF-SVM) for the hip gait assist robot. The universal hip gait assist robot had a limit in detection of the walking intention of users because of the limited sensors’ quantity. Through the offline training, using MATLAB, we trained the collected gait data of users wearing the hip gait assist robot and obtained the parameter of the RBF-SVM model. In the online test, using LabVIEW, we developed the algorithm for the locomotion modes decision of individuals using the optimized parameter of the RBF-SVM. Finally, we executed the gait test for three terrains through the walking environment’s test platform. As a result, the locomotion modes decision rate for three terrains was 98.5%, 99%, and 98% respectively. And the decision delay time of algorithm was 0.03 s, 0.03 s, and 0.06 s respectively.

Keywords

GaitSupport vector machineRobotTerrainGait analysisSimulationComputer scienceMATLABArtificial intelligenceEngineering

Related papers

Browse all LOCOMOTION papers