2022
DOI: 10.1007/978-981-19-4208-2_34
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Solution of Lubrication Problems with Deep Neural Network

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Cited by 5 publications
(5 citation statements)
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“…The initial publication on the application of PINNs to solve a simplified variant of the Reynolds equation was by Almqvist in 2021 [3]. This pioneering work was expanded upon by researchers such as Zhao et al, Li et al, and Yadav et al, who developed more advanced algorithms to address the 2D Reynolds equation in contexts ranging from linear sliders to gas bearings and journal bearings, respectively, [4][5][6]. A significant advancement was achieved by Rom, who became the first to implement PINNs for the stationary Reynolds equation, incorporating the Jakobsson-Floberg-Olsson (JFO) cavitation model.…”
Section: Physical-informed Lossmentioning
confidence: 99%
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“…The initial publication on the application of PINNs to solve a simplified variant of the Reynolds equation was by Almqvist in 2021 [3]. This pioneering work was expanded upon by researchers such as Zhao et al, Li et al, and Yadav et al, who developed more advanced algorithms to address the 2D Reynolds equation in contexts ranging from linear sliders to gas bearings and journal bearings, respectively, [4][5][6]. A significant advancement was achieved by Rom, who became the first to implement PINNs for the stationary Reynolds equation, incorporating the Jakobsson-Floberg-Olsson (JFO) cavitation model.…”
Section: Physical-informed Lossmentioning
confidence: 99%
“…As a pioneer in this field, Almqvist investigated the interpolation with PINNs for the determination of hydrodynamic pressure, described by a simplified variant of the Reynolds equation [3]. In subsequent work, PINNs were applied to 2D problems [4][5][6]. The newest achievements consider the computation of pressure and cavitation in tribological systems [7][8][9].…”
Section: Introductionmentioning
confidence: 99%
“…In contrast, when complete field physics values are directly provided, the data-driven method can accurately predict the flow field for unknown conditions without possessing physical interpretability. Yadav and Thakre [69] also employed a PINN to study the behavior of a fluidlubricated journal as well as a two-lobe bearing and compared the obtained results against an FEM model. Even though the authors provided few insights and details on the employed model and its implementation, they reported a quite good correlation between the PINN and FEM at various load cases, with errors below 6% and 5% with respect to the predicted eccentricity and friction coefficient.…”
Section: Lubrication Predictionmentioning
confidence: 99%
“…Using PINN to solve the 1D Reynolds BVP to predict the pressure distribution in a fluid-lubricated linear converging slider 2021 [64] Using PINN to solve the 2D Reynolds equation to predict the pressure and film thickness distribution considering load balance in a fluid-lubricated linear converging slider 2023 [66] Using supervised, semi-supervised, and unsupervised PINN to solve the 2D Reynolds equation to predict the pressure and film thickness distribution considering load balance and eccentricity in a gas-lubricated journal bearing 2022 [68] Using PINN to solve the 2D Reynolds equation to predict the behavior of fluid-lubricated journal as well as two-lobe bearings 2023 [69] Using PINN with soft and hard constraints to solve the 2D Reynolds equation to predict the pressure distribution in fluid-lubricated journal bearings at fixed eccentricity with constant and variable viscosity 2023 [70] Using PINN to solve the 2D Reynolds equation to predict the pressure and fractional film content distribution in fluid-lubricated journal bearings at fixed and variable eccentricity considering cavitation 2023 [71] Using PINN to solve the 2D Reynolds equation to predict the pressure and fractional film content distribution in fluid-lubricated journal bearings at fixed eccentricity considering cavitation 2023 [72] Wear and damage prediction Using semi PINN to find regression fitting parameters for Archard's wear law based upon small data from fretting wear experiments 2015 [77] Using hybrid PINN to predict wind turbine bearing fatigue based upon a physics-informed bearing damage model as well as data-driven grease degradation approach 2020 [78] Using physics-informed CNN with preceding threshold model for rolling bearing fault detection 2021 [79] Using physics-informed residual network for rolling bearing fault detection 2023 [80] Using PIML framework consisting of piecewise fitting, a hybrid physics-informed data-driven model, and meta-learning to predict tool wear 2022 [81] As such, PINNs have been employed for lubrication prediction by solving the Reynolds differential equation. Starting with the 1D Reynolds equation for a converging slider, in only two years, the complexity has already been tremendously increased, now covering the 2D Reynolds equation, journal bearings with load balance and variable eccentricity, and cavitation effects.…”
Section: Lubrication Predictionmentioning
confidence: 99%
“…This mesh-free nature of PINNs may, in some cases, outperform classical FEMs, as illustrated by Yadav and Thakre. 16…”
Section: Introductionmentioning
confidence: 99%