The sintered core heat pipe is widely used in precision thermal control and aerospace systems due to its high heat transfer performance.However,conventional computational fluid dynamics approaches for predicting its t...The sintered core heat pipe is widely used in precision thermal control and aerospace systems due to its high heat transfer performance.However,conventional computational fluid dynamics approaches for predicting its thermal behavior are computationally expensive and inflexible under varying operating conditions,while experimental methods are time-consuming and costly.To address the above challenges,in this study,a digital twin-based predictive thermal modeling framework is presented for sintered core heat pipes under rotational conditions,implemented within an edge-cloud artificial intelligence architecture.A fully parameterized physical model is developed on the Simulink platform using the SIMSCAPE Fluids module,enabling dynamic simulations of phase transitions and temperature responses.Validation against experimental data shows prediction errors within±5%.Simulation and experimental datasets are integrated to train three models-physics-informed neural network,Transformer,and light gradient boosting machine-evaluated under steady and transient thermal conditions.The physics-informed neural network achieves the lowest mean absolute error of 0.85℃in high thermal inertia cases,while the Transformer attains the best steady-state accuracy with a root mean square error of 0.58℃and inference latency of 150 ms after Turing Tensor R-Engine deployment.Docker-based deployment enables real-time edge inference,with the Transformer achieving an optimal balance of accuracy,memory footprint(36 MB),and response speed.The proposed framework offers a practical and scalable approach for accurate thermal prediction in advanced thermal management applications.展开更多
基金National Natural Science Foun-dation of China(52275474,52505541)China Postdoctoral Science Foundation(2022M720565)Open Research Project of the High-End CNC Machine Tool Key Laboratory at China General Technology(KLHCMT202404).
文摘The sintered core heat pipe is widely used in precision thermal control and aerospace systems due to its high heat transfer performance.However,conventional computational fluid dynamics approaches for predicting its thermal behavior are computationally expensive and inflexible under varying operating conditions,while experimental methods are time-consuming and costly.To address the above challenges,in this study,a digital twin-based predictive thermal modeling framework is presented for sintered core heat pipes under rotational conditions,implemented within an edge-cloud artificial intelligence architecture.A fully parameterized physical model is developed on the Simulink platform using the SIMSCAPE Fluids module,enabling dynamic simulations of phase transitions and temperature responses.Validation against experimental data shows prediction errors within±5%.Simulation and experimental datasets are integrated to train three models-physics-informed neural network,Transformer,and light gradient boosting machine-evaluated under steady and transient thermal conditions.The physics-informed neural network achieves the lowest mean absolute error of 0.85℃in high thermal inertia cases,while the Transformer attains the best steady-state accuracy with a root mean square error of 0.58℃and inference latency of 150 ms after Turing Tensor R-Engine deployment.Docker-based deployment enables real-time edge inference,with the Transformer achieving an optimal balance of accuracy,memory footprint(36 MB),and response speed.The proposed framework offers a practical and scalable approach for accurate thermal prediction in advanced thermal management applications.