Conceptos Básicos
Optimizing control frequency is crucial for stability and performance in learning-based control systems.
Resumen
Learning models or control policies from data can enhance uncertain systems' performance. Feedback is essential despite data quality. Control frequency impacts stability and performance, often overlooked. Gaussian processes aid in learning continuous-time models for sampled-data control. Robust stability conditions are derived to optimize control frequency. Increasing data or control frequency improves system performance. Real-world systems like robots benefit from considering control frequency as a design parameter.
Estadísticas
Minimum control frequency required for stability: 18 Hz
Tradeoff between model uncertainty and amount of training data: High uncertainty requires more data points.
Impact of increasing control frequency by 33%: Reduces the number of data points needed by half.
Citas
"We show that there is a tradeoff between the two design parameters in terms of stability and performance."
"As illustrated in Fig. 2 and Fig. 4, the amount of data required for stability or achieving a specific performance depends on the frequency at which we can run the controller."
"Stable regulation of the quadrotor is achieved for all simulated initial conditions, even when operating at the MCF."