Potential of neural networks for maximum displacement predictions in railway beams on frictionally damped foundations
release_43n7nfq3cje4beqjanoc6evn2i
by
Abambres M,
Rita Corrêa,
AP Costa,
F Simões
2020
Abstract
Since
the use of finite element (FE) simulations for the dynamic analysis of railway
beams on frictionally damped foundations are (i) very time consuming, and (ii)
require advanced know-how and software that go beyond the available resources
of typical civil engineering firms, this paper aims to demonstrate the
potential of Artificial Neural Networks (ANN) to effectively predict the
maximum displacements and the critical velocity in railway beams under moving
loads. Four ANN-based models are proposed, one per load velocity range ([50,
175] ∪ [250, 300] m/s; ]175, 250[ m/s) and per
displacement type (upward or downward). Each model is function of two
independent variables, a frictional parameter and the load velocity. Among all
models and the 663 data points used, a maximum error of 5.4 % was obtained when
comparing the ANN- and FE-based solutions. Whereas the latter involves an
average computing time per data point of thousands of seconds, the former does
not even need a millisecond. This study was an important step towards the
development of more versatile (i.e., including other types of input variables) ANN-based
models for the same type of problem.
In application/xml+jats
format
Archived Files and Locations
application/pdf
2.1 MB
file_7jgbunc5zjd2dg4w3dbvc6eypu
|
hal.archives-ouvertes.fr (web) web.archive.org (webarchive) |
post
Stage
unknown
Date 2020-07-13
access all versions, variants, and formats of this works (eg, pre-prints)
Crossref Metadata (via API)
Worldcat
wikidata.org
CORE.ac.uk
Semantic Scholar
Google Scholar