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Application of machine learning in corrosion inhibition study

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2022
Application_of_machine_pub_2022.pdf (804.2Kb)
Authors
Rajendran, D.
Sasilatha, T.
Rajendran, S.
Selvaraj, S.K.
Lacnjevac, C.
Prabha, S.S.
Rathish, R.J.
Article (Published version)
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Abstract
Artificial intelligence is a branch of science concerned with teaching machines to think and act like humans. Machine learning is concerned with enabling computers to perform tasks without the need for explicit programming. Machine Learning enables computers to learn without the need for explicit programming. Machine Learning is a broad field that encompasses a wide range of machine learning operations such as clustering, classification, and the development of predictive models. Machine Learning (ML) and Deep Learning (DL) research is now finding a home in both industry and academia. Machine Learning technologies are increasingly being used in medical imaging. To detect tumours and other malignant growths in the human body. Deep Learning is making significant contributions to the advancement of industrial robotics. Machine learning algorithms are used in the self-driving car industry to guide the vehicle to its destination. Deep Learning and Machine Learning are also used in corrosion ...science and engineering. They are used to choose the inhibitor molecules from a large pool of available molecules. © 2022 Authors.

Keywords:
Algorithms / Artificial Intelligence / Deep learning / Machine learning / Neural Networks / The Hidden Layer and The Output Layer / The Input Layer
Source:
Materials Protection, 2022, 63, 3, 280-290

DOI: 10.5937/zasmat2203280R

ISSN: 0351-9465

[ Google Scholar ]
URI
http://aspace.agrif.bg.ac.rs/handle/123456789/6171
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  • Radovi istraživača / Researchers’ publications
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Poljoprivredni fakultet

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