Litcius/Paper detail

Multitask-Transfer-Learning Method for Random-Force Frequency Identification Considering Multisource Uncertainties

Yaru Liu, Lei Wang, Bing Feng Ng

2024AIAA Journal75 citationsDOI

Abstract

Accurate reconstruction of unknown external forces from measurable responses is critical for ensuring structural safety and minimizing maintenance costs of aircraft structures. This paper presents a novel multitask-transfer-learning method for random-force frequency identification that accounts for modeling and measurement uncertainties. A data-driven convolutional neural network (CNN) model is utilized to capture the relationship between the power spectral densities of external forces and measured responses, addressing the inherent ill-posedness of traditional model-driven force identification methods. To shorten the frequency-dependent training time in the full frequency domain, a transfer-learning strategy is implemented, fine-tuning hyperparameters from a CNN model trained at one source frequency to another target frequency. Furthermore, an iterative dimensionwise collocation method based on nonprobabilistic interval modeling is introduced to quantify the uncertain boundaries of external loads caused by multisource uncertainties. By incorporating a multitask-learning framework, the process of establishing CNN models for collocated samples is accelerated, reducing the computational effort for uncertainty quantification. The proposed method is validated through both numerical and experimental examples, demonstrating its accuracy, robustness, and computational efficiency for force identification in the full frequency domain, even under conditions of insufficient measurements, measurement noises, and material dispersions.

Topics & Concepts

Identification (biology)Computer scienceTransfer of learningStatistical physicsPhysicsAerospace engineeringArtificial intelligenceEngineeringBiologyBotanyStructural Health Monitoring TechniquesHydraulic and Pneumatic SystemsFault Detection and Control Systems