Enhancing Stability: Novel Control Techniques for Two-Wheeled
Self-Balancing Robots
Abstract
The article focuses on developing a TWSBR (Two-Wheeled Self-Balancing
Robots) controller aimed at enhancing the performance of underperforming
robotic systems, particularly in maintaining stability and precision
during movements. It underscores the importance of a novel control
approach to address specific performance metrics such as balance,
agility, and responsiveness. The paper outlines the establishment of a
non-linear system model to capture the intricate dynamics of robotic
movements. It briefly discusses the incorporation of non-linearity
within the model, potentially involving factors like frictional forces
or dynamic load variations. This non-linear framework helps in
addressing inherent complexities, thereby improving the performance of
two-wheeled robotic systems, especially in scenarios requiring precise
balance and regulation. The paper evaluates the performance of various
controllers, such as LQR (Linear Quadratic Regulator), ANN (Artificial
Neural Network), and PID (Proportional-Integral-Derivative), within the
context of the TWSBR system. This analysis provides insights into the
effectiveness of different control approaches in improving system
stability and precision.