In controller synthesis for basic robotic assembly tasks, the optimal performance is characterized by high level criteria. Performance of a peg-into-hole task is, for example, measured in insertion time and average/maximum force level. Moreover, the unknown optimal control of a peg-into-hole task was shown to be nonlinear. Fuzzy rules are used in our approach to approximate this nonlinear control. The fuzzy controller synthesis can be automated with the use of a machine learning tool SMART+, provided that examples are available. Besides examples, SMART+ can also handle domain knowledge as input. Its output can also be a learning fuzzy controller, in order to achieve online performance improvement.
Fuzzy controller synthesis in robotic assembly: procedure and experiments
BAROGLIO, Cristina;
1994-01-01
Abstract
In controller synthesis for basic robotic assembly tasks, the optimal performance is characterized by high level criteria. Performance of a peg-into-hole task is, for example, measured in insertion time and average/maximum force level. Moreover, the unknown optimal control of a peg-into-hole task was shown to be nonlinear. Fuzzy rules are used in our approach to approximate this nonlinear control. The fuzzy controller synthesis can be automated with the use of a machine learning tool SMART+, provided that examples are available. Besides examples, SMART+ can also handle domain knowledge as input. Its output can also be a learning fuzzy controller, in order to achieve online performance improvement.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.