Adaptive Feedback Linearization Using Efficient Neural Networks
Journal of Intelligent and Robotic Systems
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This article analyzes the evaluation of approximation accuracy in online applications. In particular, it is first shown that the most commonly used approximation accuracy evaluation method (e.g., analysis of training or tracking error) is not in itself sufficient to demonstrate proper function approximation. In spite of this, many articles use tracking (training) errors as the means to demonstrate successful function approximation. This article presents two alternative methods for the evaluation of online performance. Related issues include probably approximately correct learning from statistics and persistence of excitation from adaptive control