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IEEE Access Special Section Editorial: Advanced Artificial Intelligence Technologies for Smart Manufacturing

IEEE Access Special Section Editorial: Advanced Artificial Intelligence Technologies for Smart Manufacturing
IEEE Access Special Section Editorial: Advanced Artificial Intelligence Technologies for Smart Manufacturing
Industry 4.0, also known as the fourth industrial revolution, is an area that many scientists and manufacturers are pursuing. Industry 4.0 consists of many topics such as the Internet of things (IoT), big data, cloud computing, smart manufacturing, and so on. Smart manufacturing is a crucial and valuable topic which aims at developing advanced techniques to improve the quality and costs of manufacturing. Through sensors, networks, and high-performance computers, powerful algorithms for smart manufacturing can be developed and implemented. Thanks to an innovative variety of sensors, reliable, and high-resolution information can be collected and utilized. Networks allow signals to be exchanged quickly between sensors, machines, and computers. Artificial intelligence (AI) requires huge computation power. Modern computers provide graphic cards with parallel computing, breaking this restriction. Algorithms related to smart manufacturing will be more complicated than before. As a result, this Special Section aims to speed up the development of smart manufacturing, attract the attention of communities, and disseminate novel research.
Artificial intelligent, Advanced, technologies, Smart, manufacturing
2169-3536
119232 - 119234
Yau, Her-Terng
b9404d94-4cbe-43cd-bdfe-a7536c7d9e0c
Prior, Stephen
9c753e49-092a-4dc5-b4cd-6d5ff77e9ced
Wang, Yang
edb2e605-4cb9-4d7d-a8de-1d69e14093c4
Li, Yunhua
d1c5eac2-237c-43c4-9fc1-eaf4ea875c57
Yau, Her-Terng
b9404d94-4cbe-43cd-bdfe-a7536c7d9e0c
Prior, Stephen
9c753e49-092a-4dc5-b4cd-6d5ff77e9ced
Wang, Yang
edb2e605-4cb9-4d7d-a8de-1d69e14093c4
Li, Yunhua
d1c5eac2-237c-43c4-9fc1-eaf4ea875c57

Yau, Her-Terng, Prior, Stephen, Wang, Yang and Li, Yunhua (eds.) (2021) IEEE Access Special Section Editorial: Advanced Artificial Intelligence Technologies for Smart Manufacturing. IEEE Access, 9, 119232 - 119234. (doi:10.1109/ACCESS.2021.3106717).

Record type: Article

Abstract

Industry 4.0, also known as the fourth industrial revolution, is an area that many scientists and manufacturers are pursuing. Industry 4.0 consists of many topics such as the Internet of things (IoT), big data, cloud computing, smart manufacturing, and so on. Smart manufacturing is a crucial and valuable topic which aims at developing advanced techniques to improve the quality and costs of manufacturing. Through sensors, networks, and high-performance computers, powerful algorithms for smart manufacturing can be developed and implemented. Thanks to an innovative variety of sensors, reliable, and high-resolution information can be collected and utilized. Networks allow signals to be exchanged quickly between sensors, machines, and computers. Artificial intelligence (AI) requires huge computation power. Modern computers provide graphic cards with parallel computing, breaking this restriction. Algorithms related to smart manufacturing will be more complicated than before. As a result, this Special Section aims to speed up the development of smart manufacturing, attract the attention of communities, and disseminate novel research.

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More information

e-pub ahead of print date: 2 September 2021
Keywords: Artificial intelligent, Advanced, technologies, Smart, manufacturing

Identifiers

Local EPrints ID: 474163
URI: http://eprints.soton.ac.uk/id/eprint/474163
ISSN: 2169-3536
PURE UUID: e421a99b-ef8a-4e31-8319-dfac19182c3f
ORCID for Stephen Prior: ORCID iD orcid.org/0000-0002-4993-4942

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Date deposited: 14 Feb 2023 17:50
Last modified: 17 Mar 2024 03:30

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Contributors

Editor: Her-Terng Yau
Editor: Stephen Prior ORCID iD
Editor: Yang Wang
Editor: Yunhua Li

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