Adaptive control of two-wheeled mobile balance robot capable to adapt different surfaces using a novel artificial neural networkâbased real-time switching dynamic controller:
[摘要] In this article, a novel real-time artificial neural networkâbased adaptable switching dynamic controller is developed and practically implemented. It will be used for real-time control of two-wheeled balance robot which can balance itself upright position on different surfaces. In order to examine the efficiency of the proposed controller, a two-wheeled mobile balance robot is designed and a test platform for experimental setup is made for balance problem on different surfaces. In a developed adaptive controller algorithm which is capable to adapt different surfaces, mean absolute target angle deviation error, mean absolute target displacement deviation error and mean absolute controller output data are employed for surface estimation by using artificial neural network. In a designed two-wheeled mobile balance robot system, robot tilt angle is estimated via Kalman filter from accelerometer and gyroscope sensor signals. Furthermore, a visual robot control interface is developed in C++ software development environment so that robot controller parameters can be changed as desired. In addition, robot balance angle, linear displacement and controller output can be observed online on personal computer. According to the real-time experimental results, the proposed novel type controller gives more effective results than the classic ones.
[发布日期] [发布机构]
[效力级别] [学科分类] 自动化工程
[关键词] Adaptive switching controller;ANN-based surface estimation;sensor fusion;two-wheeled mobile balance robot [时效性]