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Main Authors: Feng, Shilun, Shi, Dawei, Shi, Yang, Zheng, Kaikai
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.15708
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author Feng, Shilun
Shi, Dawei
Shi, Yang
Zheng, Kaikai
author_facet Feng, Shilun
Shi, Dawei
Shi, Yang
Zheng, Kaikai
contents An important question in data-driven control is how to obtain an informative dataset. In this work, we consider the problem of effective data acquisition of an unknown linear system with bounded disturbance for both open-loop and closed-loop stages. The learning objective is to minimize the volume of the set of admissible systems. First, a performance measure based on historical data and the input sequence is introduced to characterize the upper bound of the volume of the set of admissible systems. On the basis of this performance measure, an open-loop active learning strategy is proposed to minimize the volume by actively designing inputs during the open-loop stage. For the closed-loop stage, a closed-loop active learning strategy is designed to select and learn from informative closed-loop data. The efficiency of the proposed closed-loop active learning strategy is proved by showing that the unselected data cannot benefit the learning performance. Furthermore, an adaptive predictive controller is designed in accordance with the proposed data acquisition approach. The recursive feasibility and the stability of the controller are proved by analyzing the effect of the closed-loop active learning strategy. Finally, numerical examples and comparisons illustrate the effectiveness of the proposed data acquisition strategy.
format Preprint
id arxiv_https___arxiv_org_abs_2409_15708
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Open-/Closed-loop Active Learning for Data-driven Predictive Control
Feng, Shilun
Shi, Dawei
Shi, Yang
Zheng, Kaikai
Systems and Control
An important question in data-driven control is how to obtain an informative dataset. In this work, we consider the problem of effective data acquisition of an unknown linear system with bounded disturbance for both open-loop and closed-loop stages. The learning objective is to minimize the volume of the set of admissible systems. First, a performance measure based on historical data and the input sequence is introduced to characterize the upper bound of the volume of the set of admissible systems. On the basis of this performance measure, an open-loop active learning strategy is proposed to minimize the volume by actively designing inputs during the open-loop stage. For the closed-loop stage, a closed-loop active learning strategy is designed to select and learn from informative closed-loop data. The efficiency of the proposed closed-loop active learning strategy is proved by showing that the unselected data cannot benefit the learning performance. Furthermore, an adaptive predictive controller is designed in accordance with the proposed data acquisition approach. The recursive feasibility and the stability of the controller are proved by analyzing the effect of the closed-loop active learning strategy. Finally, numerical examples and comparisons illustrate the effectiveness of the proposed data acquisition strategy.
title Open-/Closed-loop Active Learning for Data-driven Predictive Control
topic Systems and Control
url https://arxiv.org/abs/2409.15708