TY - JOUR
T1 - Clock synchronization method for networks of digital-physical fusion testing under complex dynamic testing circumstances
AU - Wang, Yanlong
AU - Zou, Xiaofu
AU - Guan, Luning
AU - Tao, Fei
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2025.
PY - 2025/10
Y1 - 2025/10
N2 - Precision timing synchronization is of essential significance to achieving valid and credible digital-physical fusion testing for high-speed aerospace applications. The conventional synchronization approaches cannot satisfy accurate synchronization needs over time when working in complex and changing environments because these approaches fail to consider how varying loads, physical field variations, and various real-world impacts affect precision synchronization. The novel clock synchronization method for digital-physical networks based on deep reinforcement learning (RLCSM), introduced here, integrates a clock model to integrate influences from the environment and network through reinforcement learning (RL) training. An RL agent performs error correction learning according to its total residual synchronization error as a reward signal while adapting to the precise demands of different situations. A case study was carried out under complicated and dynamic test scenarios to verify the effectiveness of RLCSM. Compared to traditional synchronization protocols, RLCSM effectively reduces average synchronization error and keeps the microsecond precision level, providing effective error compensation at a microsecond level for synchronization precision with high consistency. The results prove that a learning-based method can achieve successful error control and attains satisfactory levels of flexibility for managing drifting clock phase cycles, despite their complex, non-linear characteristics. Consequently, the proposed method achieves highly precise performance of synchronized clocks under all-encompassing conditions. The algorithm enhances the fusion degree between digital and physical space as well as improving the stability and reliability of digital-physical fusion testing on high-end aerospace equipment.
AB - Precision timing synchronization is of essential significance to achieving valid and credible digital-physical fusion testing for high-speed aerospace applications. The conventional synchronization approaches cannot satisfy accurate synchronization needs over time when working in complex and changing environments because these approaches fail to consider how varying loads, physical field variations, and various real-world impacts affect precision synchronization. The novel clock synchronization method for digital-physical networks based on deep reinforcement learning (RLCSM), introduced here, integrates a clock model to integrate influences from the environment and network through reinforcement learning (RL) training. An RL agent performs error correction learning according to its total residual synchronization error as a reward signal while adapting to the precise demands of different situations. A case study was carried out under complicated and dynamic test scenarios to verify the effectiveness of RLCSM. Compared to traditional synchronization protocols, RLCSM effectively reduces average synchronization error and keeps the microsecond precision level, providing effective error compensation at a microsecond level for synchronization precision with high consistency. The results prove that a learning-based method can achieve successful error control and attains satisfactory levels of flexibility for managing drifting clock phase cycles, despite their complex, non-linear characteristics. Consequently, the proposed method achieves highly precise performance of synchronized clocks under all-encompassing conditions. The algorithm enhances the fusion degree between digital and physical space as well as improving the stability and reliability of digital-physical fusion testing on high-end aerospace equipment.
KW - Clock synchronization
KW - Deep reinforcement learning
KW - Digital communication mechanism
KW - Digital twin
KW - Error compensation
UR - https://www.scopus.com/pages/publications/105017409648
U2 - 10.1007/s00170-025-16564-x
DO - 10.1007/s00170-025-16564-x
M3 - 文章
AN - SCOPUS:105017409648
SN - 0268-3768
VL - 140
SP - 5015
EP - 5032
JO - International Journal of Advanced Manufacturing Technology
JF - International Journal of Advanced Manufacturing Technology
IS - 9-10
ER -