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contributor authorThomas Simpson
contributor authorNikolaos Dervilis
contributor authorEleni Chatzi
date accessioned2022-02-01T21:49:59Z
date available2022-02-01T21:49:59Z
date issued10/1/2021
identifier other%28ASCE%29EM.1943-7889.0001971.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4272121
description abstractIn analyzing and assessing the condition of dynamical systems, it is necessary to account for nonlinearity. Recent advances in computation have rendered previously computationally infeasible analyses readily executable on common computer hardware. However, in certain use cases, such as uncertainty quantification or high precision real-time simulation, the computational cost remains a challenge. This necessitates the adoption of reduced-order modeling methods, which can reduce the computational toll of such nonlinear analyses. In this work, we propose a reduction scheme relying on the exploitation of an autoencoder as means to infer a latent space from output-only response data. This latent space, which in essence approximates the system’s nonlinear normal modes (NNMs), serves as an invertible reduction basis for the nonlinear system. The proposed machine learning framework is then complemented via the use of long short-term memory (LSTM) networks in the reduced space. These are used for creating a nonlinear reduced-order model (ROM) of the system, able to recreate the full system’s dynamic response under a known driving input.
publisherASCE
titleMachine Learning Approach to Model Order Reduction of Nonlinear Systems via Autoencoder and LSTM Networks
typeJournal Paper
journal volume147
journal issue10
journal titleJournal of Engineering Mechanics
identifier doi10.1061/(ASCE)EM.1943-7889.0001971
journal fristpage04021061-1
journal lastpage04021061-22
page22
treeJournal of Engineering Mechanics:;2021:;Volume ( 147 ):;issue: 010
contenttypeFulltext


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