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Main Authors: Wang, Han, Chen, Donghe, Zheng, Tengjie, Cheng, Lin, Gong, Shengping
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.04533
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author Wang, Han
Chen, Donghe
Zheng, Tengjie
Cheng, Lin
Gong, Shengping
author_facet Wang, Han
Chen, Donghe
Zheng, Tengjie
Cheng, Lin
Gong, Shengping
contents Modern aerospace guidance systems demand rigorous constraint satisfaction, optimal performance, and computational efficiency. Traditional analytical methods struggle to simultaneously satisfy these requirements. While data driven methods have shown promise in learning optimal guidance strategy, challenges still persist in generating well-distributed optimal dataset and ensuring the reliability and trustworthiness of learned strategies. This paper presents a confidence-aware learning framework that addresses these limitations. First, a region-controllable optimal data generation method is proposed leveraging Hamiltonian state transition matrices, enabling efficient generation of optimal trajectories of specified data distribution. Then, to obtain a lightweight and effective dataset for efficient strategy learning, an error-distribution-smoothing method is incorporated to employ data filtering, which reduces dataset size by almost 90% while preserving prediction accuracy. To assess the operational domain of the learned strategy, a confidence-aware learning guidance strategy is proposed based on gaussian process regression, achieving constraint satisfaction even beyond training distributions. Numerical simulations validate the effectiveness and reliability of the proposed learning framework in terms of data generation, data filtering and strategy learning.
format Preprint
id arxiv_https___arxiv_org_abs_2504_04533
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Confidence-Aware Learning Optimal Terminal Guidance via Gaussian Process Regression
Wang, Han
Chen, Donghe
Zheng, Tengjie
Cheng, Lin
Gong, Shengping
Systems and Control
Modern aerospace guidance systems demand rigorous constraint satisfaction, optimal performance, and computational efficiency. Traditional analytical methods struggle to simultaneously satisfy these requirements. While data driven methods have shown promise in learning optimal guidance strategy, challenges still persist in generating well-distributed optimal dataset and ensuring the reliability and trustworthiness of learned strategies. This paper presents a confidence-aware learning framework that addresses these limitations. First, a region-controllable optimal data generation method is proposed leveraging Hamiltonian state transition matrices, enabling efficient generation of optimal trajectories of specified data distribution. Then, to obtain a lightweight and effective dataset for efficient strategy learning, an error-distribution-smoothing method is incorporated to employ data filtering, which reduces dataset size by almost 90% while preserving prediction accuracy. To assess the operational domain of the learned strategy, a confidence-aware learning guidance strategy is proposed based on gaussian process regression, achieving constraint satisfaction even beyond training distributions. Numerical simulations validate the effectiveness and reliability of the proposed learning framework in terms of data generation, data filtering and strategy learning.
title Confidence-Aware Learning Optimal Terminal Guidance via Gaussian Process Regression
topic Systems and Control
url https://arxiv.org/abs/2504.04533