Physics-informed neural network for friction-involved nonsmooth dynamics problems

03/05/2023
by   Zilin Li, et al.
0

Friction-induced vibration (FIV) is very common in engineering areas. Analysing the dynamic behaviour of systems containing a multiple-contact point frictional interface is an important topic. However, accurately simulating nonsmooth/discontinuous dynamic behaviour due to friction is challenging. This paper presents a new physics-informed neural network approach for solving nonsmooth friction-induced vibration or friction-involved vibration problems. Compared with schemes of the conventional time-stepping methodology, in this new computational framework, the theoretical formulations of nonsmooth multibody dynamics are transformed and embedded in the training process of the neural network. Major findings include that the new framework not only can perform accurate simulation of nonsmooth dynamic behaviour, but also eliminate the need for extremely small time steps typically associated with the conventional time-stepping methodology for multibody systems, thus saving much computation work while maintaining high accuracy. Specifically, four kinds of high-accuracy PINN-based methods are proposed: (1) single PINN; (2) dual PINN; (3) advanced single PINN; (4) advanced dual PINN. Two typical dynamics problems with nonsmooth contact are tested: one is a 1-dimensional contact problem with stick-slip, and the other is a 2-dimensional contact problem considering separation-reattachment and stick-slip oscillation. Both single and dual PINN methods show their advantages in dealing with the 1-dimensional stick-slip problem, which outperforms conventional methods across friction models that are difficult to simulate by the conventional time-stepping method. For the 2-dimensional problem, the capability of the advanced single and advanced dual PINN on accuracy improvement is shown, and they provide good results even in the cases when conventional methods fail.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/22/2021

Integrating Electrochemical Modeling with Machine Learning for Lithium-Ion Batteries

Mathematical modeling of lithium-ion batteries (LiBs) is a central chall...
research
03/15/2023

Physics-Informed Neural Networks for Time-Domain Simulations: Accuracy, Computational Cost, and Flexibility

The simulation of power system dynamics poses a computationally expensiv...
research
12/21/2021

A Physics-Based Model Reduction Approach for Node-to-Segment Contact Problems in Linear Elasticity

The paper presents a new reduction method designed for dynamic contact p...
research
09/09/2021

DAE-PINN: A Physics-Informed Neural Network Model for Simulating Differential-Algebraic Equations with Application to Power Networks

Deep learning-based surrogate modeling is becoming a promising approach ...
research
02/22/2021

Learning Contact Dynamics using Physically Structured Neural Networks

Learning physically structured representations of dynamical systems that...
research
04/06/2021

Physics-Informed Neural Nets-based Control

Physics-informed neural networks (PINNs) impose known physical laws into...
research
01/16/2022

Solving Inventory Management Problems with Inventory-dynamics-informed Neural Networks

A key challenge in inventory management is to identify policies that opt...

Please sign up or login with your details

Forgot password? Click here to reset