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Autores principales: Wang, Caicheng, Wang, Zili, Zhang, Shuyou, Xiang, Yongzhe, Li, Zheyi, Tan, Jianrong
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2504.03669
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author Wang, Caicheng
Wang, Zili
Zhang, Shuyou
Xiang, Yongzhe
Li, Zheyi
Tan, Jianrong
author_facet Wang, Caicheng
Wang, Zili
Zhang, Shuyou
Xiang, Yongzhe
Li, Zheyi
Tan, Jianrong
contents Pipe routing is a highly complex, time-consuming, and no-deterministic polynomial-time hard (NP-hard) problem in aeroengine design. Despite extensive research efforts in optimizing constant-curvature pipe routing, the growing demand for free-form pipes poses new challenges. Dynamic design environments and fuzzy layout rules further impact the optimization performance and efficiency. To tackle these challenges, this study proposes a self-learning-based method (SLPR) for optimizing free-form pipe routing in aeroengines. The SLPR is based on the proximal policy optimization (PPO) algorithm and integrates a unified rule modeling framework for efficient obstacle detection and fuzzy rule modeling in continuous space. Additionally, a potential energy table is constructed to enable rapid queries of layout tendencies and interference. The agent within SLPR iteratively refines pipe routing and accumulates the design knowledge through interaction with the environment. Once the design environment shifts, the agent can swiftly adapt by fine-tuning network parameters. Comparative tests reveal that SLPR ensures smooth pipe routing through cubic non-uniform B-spline (NURBS) curves, avoiding redundant pipe segments found in constant-curvature pipe routing. Results in both static and dynamic design environments demonstrate that SLPR outperforms three representative baselines in terms of the pipe length reduction, the adherence to layout rules, the path complexity, and the computational efficiency. Furthermore, tests in dynamic environments indicate that SLPR eliminates labor-intensive searches from scratch and even yields superior solutions compared to the retrained model. These results highlight the practical value of SLPR for real-world pipe routing, meeting lightweight, precision, and sustainability requirements of the modern aeroengine design.
format Preprint
id arxiv_https___arxiv_org_abs_2504_03669
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Self-Learning-Based Optimization for Free-form Pipe Routing in Aeroengine with Dynamic Design Environment
Wang, Caicheng
Wang, Zili
Zhang, Shuyou
Xiang, Yongzhe
Li, Zheyi
Tan, Jianrong
Machine Learning
Artificial Intelligence
Systems and Control
J.0; J.6
Pipe routing is a highly complex, time-consuming, and no-deterministic polynomial-time hard (NP-hard) problem in aeroengine design. Despite extensive research efforts in optimizing constant-curvature pipe routing, the growing demand for free-form pipes poses new challenges. Dynamic design environments and fuzzy layout rules further impact the optimization performance and efficiency. To tackle these challenges, this study proposes a self-learning-based method (SLPR) for optimizing free-form pipe routing in aeroengines. The SLPR is based on the proximal policy optimization (PPO) algorithm and integrates a unified rule modeling framework for efficient obstacle detection and fuzzy rule modeling in continuous space. Additionally, a potential energy table is constructed to enable rapid queries of layout tendencies and interference. The agent within SLPR iteratively refines pipe routing and accumulates the design knowledge through interaction with the environment. Once the design environment shifts, the agent can swiftly adapt by fine-tuning network parameters. Comparative tests reveal that SLPR ensures smooth pipe routing through cubic non-uniform B-spline (NURBS) curves, avoiding redundant pipe segments found in constant-curvature pipe routing. Results in both static and dynamic design environments demonstrate that SLPR outperforms three representative baselines in terms of the pipe length reduction, the adherence to layout rules, the path complexity, and the computational efficiency. Furthermore, tests in dynamic environments indicate that SLPR eliminates labor-intensive searches from scratch and even yields superior solutions compared to the retrained model. These results highlight the practical value of SLPR for real-world pipe routing, meeting lightweight, precision, and sustainability requirements of the modern aeroengine design.
title Self-Learning-Based Optimization for Free-form Pipe Routing in Aeroengine with Dynamic Design Environment
topic Machine Learning
Artificial Intelligence
Systems and Control
J.0; J.6
url https://arxiv.org/abs/2504.03669