Neural Network Architecture Search Algorithm for Technical Object State Prediction
Created by W.Langdon from
gp-bibliography.bib Revision:1.8344
- @InProceedings{Kuvayskova:2025:SmartIndustryCon,
-
author = "Yuliya Kuvayskova and Aleksandr Nemykin",
-
title = "Neural Network Architecture Search Algorithm for
Technical Object State Prediction",
-
booktitle = "2025 International Russian Smart Industry Conference
(SmartIndustryCon)",
-
year = "2025",
-
pages = "675--680",
-
month = mar,
-
keywords = "genetic algorithms, genetic programming, Cartesian
Genetic Programming, Lithium-ion batteries, Accuracy,
Neural networks, Prediction algorithms, Search
problems, Libraries, Bayes methods, Reliability,
Optimisation, Monitoring, technical object, predicting,
genetic and evolutionary algorithms, Bayesian
optimisation",
-
DOI = "
doi:10.1109/SmartIndustryCon65166.2025.10986269",
-
abstract = "The paper presents a new algorithm for automated
search for neural network architecture for predicting
the state of technical objects. Prediction is a key
element of monitoring, allowing us to prevent accidents
and improve the reliability of complex systems. The
proposed approach combines the methods of Cartesian
genetic programming, multi-criteria evolutionary
algorithms and Bayesian optimisation. This algorithm
adapts neural network architectures to different types
of data, speeds up the search for a suitable model
configuration, and improves forecast accuracy. The
developed algorithm was implemented as a standalone
program in the Python programming language using the
TensorFlow and Keras libraries. The effectiveness of
the developed approach has been tested in practice in
predicting the remaining service life of bearings, a
turbojet engine, and a Li-ion battery. The AutoKeras
library was used to compare the results. The study
showed that the use of the developed algorithm
significantly improves the performance quality of
neural network models compared to the models obtained
using the AutoKeras library. The algorithm demonstrated
high accuracy of predictions, stability to various
conditions, and potential for application in monitoring
systems of technical objects.",
-
notes = "Also known as \cite{10986269}",
- }
Genetic Programming entries for
Yuliya Kuvayskova
Aleksandr Nemykin
Citations