Abstract:
This brief presents a data-driven constrained norm-optimal iterative learning control framework for linear time-invariant systems that applies to both tracking and point-...Show MoreMetadata
Abstract:
This brief presents a data-driven constrained norm-optimal iterative learning control framework for linear time-invariant systems that applies to both tracking and point-to-point motion problems. The key contribution of this brief is the estimation of the system's impulse response using input/output measurements from previous iterations, hereby eliminating time-consuming identification experiments. The estimated impulse response is used in a norm-optimal iterative learning controller, where actuator limitations can be formulated as linear inequality constraints. Experimental validation on a linear motor positioning system shows the ability of the proposed data-driven framework to: 1) achieve tracking accuracy up to the repeatability of the test setup; 2) minimize the rms value of the tracking error while respecting the actuator input constraints; 3) learn energy-optimal system inputs for point-to-point motions.
Published in: IEEE Transactions on Control Systems Technology ( Volume: 21, Issue: 2, March 2013)
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- IEEE Keywords
- Actuators ,
- Tracking ,
- Convolution ,
- Noise ,
- Noise measurement ,
- Uncertainty ,
- Accuracy
- Index Terms
- Linear Time-invariant Systems ,
- Linear Time-invariant ,
- Iterative Learning Control ,
- Constrained Control ,
- Norm-optimal Iterative Learning Control ,
- Systemic Response ,
- Experimental Validation ,
- Error Values ,
- Impulse Response ,
- Test Setup ,
- Root Mean Square Values ,
- Tracking Error ,
- Translational Motion ,
- System Input ,
- Previous Iteration ,
- Linear Constraints ,
- Linear Inequality Constraints ,
- Actuator Limits ,
- Actuator Input ,
- Motion Problem ,
- Input Signal ,
- Convolution Matrix ,
- True Output ,
- Output Error ,
- Previous Trials ,
- Measurement Noise ,
- Output Signal ,
- Learned Filters ,
- Weight Matrix ,
- Closed-loop System
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Actuators ,
- Tracking ,
- Convolution ,
- Noise ,
- Noise measurement ,
- Uncertainty ,
- Accuracy
- Index Terms
- Linear Time-invariant Systems ,
- Linear Time-invariant ,
- Iterative Learning Control ,
- Constrained Control ,
- Norm-optimal Iterative Learning Control ,
- Systemic Response ,
- Experimental Validation ,
- Error Values ,
- Impulse Response ,
- Test Setup ,
- Root Mean Square Values ,
- Tracking Error ,
- Translational Motion ,
- System Input ,
- Previous Iteration ,
- Linear Constraints ,
- Linear Inequality Constraints ,
- Actuator Limits ,
- Actuator Input ,
- Motion Problem ,
- Input Signal ,
- Convolution Matrix ,
- True Output ,
- Output Error ,
- Previous Trials ,
- Measurement Noise ,
- Output Signal ,
- Learned Filters ,
- Weight Matrix ,
- Closed-loop System
- Author Keywords