Physics-guided ODE neural network for high-fidelity gearbox dynamics modeling based on vibration measurements

IF 8.9 1区 工程技术 Q1 ENGINEERING, MECHANICAL Mechanical Systems and Signal Processing Pub Date : 2025-04-12 DOI:10.1016/j.ymssp.2025.112720
Rui He , Xingkai Yang , Yifei Wang , Zhigang Tian , Mingjian Zuo , Zhisheng Ye
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Abstract

High-fidelity dynamics modeling of gearboxes is the prerequisite for developing digital twins capable of elucidating failure behaviors under varying speed conditions. However, traditional approaches, such as finite element and lumped parameter models, often exhibit discrepancies from real-world measurements. This issue is particularly pronounced in complex systems, which limits their practical applicability. To overcome this limitation, we propose a novel physics-guided ordinary differential equation (ODE) neural network. This method integrates a neural network into the gearbox dynamics model to address model incompleteness, specifically the discrepancies between theoretical predictions and actual system behavior. Real acceleration measurements are utilized to calibrate both the neural network and the overall dynamics model, enabling the inference of unknown dynamic parameters without the need for prior determination. By aligning simulated responses with experimental data, the model captures system dynamics with high accuracy. The proposed physics-guided ODE neural network is fully differentiable with respect to both model incompleteness and undetermined dynamic parameters. The effectiveness of this high-fidelity modeling approach is demonstrated using an experimental two-stage gearbox system. Validation against experimental test rig data under varying rotational speeds and faulty conditions confirms the model capability to replicate real-world dynamic responses.
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基于振动测量的高保真齿轮箱动力学建模的物理引导 ODE 神经网络
齿轮箱的高保真动力学建模是开发能够阐明变速条件下失效行为的数字孪生体的先决条件。然而,传统的方法,如有限元和集总参数模型,往往表现出与实际测量的差异。这个问题在复杂系统中尤其明显,这限制了它们的实际适用性。为了克服这一限制,我们提出了一种新的物理引导常微分方程(ODE)神经网络。该方法将神经网络集成到齿轮箱动力学模型中,以解决模型的不完全性,特别是理论预测与实际系统行为之间的差异。利用实际加速度测量来校准神经网络和整体动力学模型,从而无需事先确定就可以推断未知的动态参数。通过将模拟响应与实验数据进行比对,该模型能够高精度地捕捉系统动态。所提出的物理导向ODE神经网络在模型不完备和动态参数不确定的情况下都是完全可微的。采用实验两级齿轮箱系统验证了这种高保真建模方法的有效性。根据不同转速和故障条件下的实验试验台数据进行验证,证实了该模型能够复制真实世界的动态响应。
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来源期刊
Mechanical Systems and Signal Processing
Mechanical Systems and Signal Processing 工程技术-工程:机械
CiteScore
14.80
自引率
13.10%
发文量
1183
审稿时长
5.4 months
期刊介绍: Journal Name: Mechanical Systems and Signal Processing (MSSP) Interdisciplinary Focus: Mechanical, Aerospace, and Civil Engineering Purpose:Reporting scientific advancements of the highest quality Arising from new techniques in sensing, instrumentation, signal processing, modelling, and control of dynamic systems
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