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Dusane, Namita
- Role of IoT and AI in Welding Industry 4.0
Abstract Views :282 |
PDF Views:4
Authors
Affiliations
1 G.S.Mandal's Maharashtra Institute of Technology,Aurangabad - 431010, Maharashtra State, IN
2 Centre for Materials Joining and Research (CEMAJOR), Department of Manufacturing Engineering, Annamalai University Annamalai Nagar - 608002, Tamil Nadu State, IN
3 Department of Computer Science and Applications, Hinduja College of Commerce Mumbai 400004, Maharashtra State, IN
1 G.S.Mandal's Maharashtra Institute of Technology,Aurangabad - 431010, Maharashtra State, IN
2 Centre for Materials Joining and Research (CEMAJOR), Department of Manufacturing Engineering, Annamalai University Annamalai Nagar - 608002, Tamil Nadu State, IN
3 Department of Computer Science and Applications, Hinduja College of Commerce Mumbai 400004, Maharashtra State, IN
Source
Indian Welding Journal, Vol 55, No 1 (2022), Pagination: 54-62Abstract
The IoT (Internet of Thing) basically pertains to the concept of linking anything that is powered both to the internet and each other and simulating human intelligence by machines, particularly computer systems is artificial intelligence. It includes learning (acquisition of data and rules for exploiting the data), logic (exploiting rules to arrive at probable or definitive findings) and selfrectification. Many automatic welding machines are now connected to a computer and are fully networked and can be reached anywhere in world from a computer at any time. The first apparent use would be in the evaluation and configuration of the equipment itself, as the equipment must be regularly interfaced with a network to perform these functions. Future IoT technology for the welding sector is likely to emerge largely as part of an artificial intelligence network, as it would be extremely beneficial to control and monitor functions even though the system is not in connection with internet. Simulating human intelligence by machines, specifically computers is known as Artificial intelligence (AI). It includes learning (acquisition of data and rules for exploiting the data), logic (exploiting rules to arrive at probable or definitive findings) and self-rectification. AI is incorporated into a variety of different types of technology. AI will have IoT flexibility which would play a major role in complying the requirements of Welding Industry 4.0.References
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- Indian Railways on Fast Track with Welding Industry 4.0 : Application of Internet of Things and Artificial Intelligence
Abstract Views :101 |
PDF Views:1
Authors
Tushar Sonar
1,
V. Balasubramanian
2,
S. Malarvizhi
2,
Namita Dusane
3,
V. Sivamaran
4,
C. Rajendran
5
Affiliations
1 G. S. Mandal's Maharashtra Institute of Technology, Aurangabad, Maharashtra, IN
2 Annamalai University, Annamalai Nagar, Tamil Nadu, IN
3 Hinduja College of Commerce, Mumbai, Maharashtra, IN
4 Audisankara College of Engineering & Technology (Autonomous), Gudur, Andhra Pradesh, IN
5 Sri Krishna College of Engineering and Technology, Coimbatore, Tamil Nadu, IN
1 G. S. Mandal's Maharashtra Institute of Technology, Aurangabad, Maharashtra, IN
2 Annamalai University, Annamalai Nagar, Tamil Nadu, IN
3 Hinduja College of Commerce, Mumbai, Maharashtra, IN
4 Audisankara College of Engineering & Technology (Autonomous), Gudur, Andhra Pradesh, IN
5 Sri Krishna College of Engineering and Technology, Coimbatore, Tamil Nadu, IN
Source
Manufacturing Technology Today, Vol 20, No 11-12 (2021), Pagination: 10-20Abstract
The objective of this paper is to explain about application of Internet of Things (IoT) and Artificial Intelligence (AI) in welding of Indian Railways. The introduction of welding technology has also been followed by the country’s economic growth. Indian Railways has long been the single most significant infrastructure entity in India, with the railway track network expanding for many years. The new manufacturing sector is speeding the transition to digital and intelligent manufacturing, with the ongoing growth and maturity of cloud computing, big data, IoT and other innovations. Welding methods are also one of the fields where AI is tested and used early, with the help of information technology. Train maintenance and repair is usually carried out in demanding working conditions and frequently under demand from time. In such high demand and dynamic activities, it helps to decrease human error. In the welding of rail tracks and machine parts, IoT and AI will certainly offer many advantages in less time and with greater accuracy and precision. It will allow the Indian Railways to become more profitable and effective.Keywords
Indian Railways, Internet of Things, Artificial Intelligence, Welding 4.0.References
- Avinash, B. (2020). Industry 4.0 and related technologies. ttps://www.apo-tokyo.org/ resources/articles/industry-4-0-and-related-technologies/
- Bonomi, F., Milito, R., Natarajan, P., Zhu, J. (2014). Fog computing: A Platform for Internet of Things and Analytics. In Big Data and Internet of Things: A Roadmap for Smart Environments (169-186). Springer.
- Chantry, B. (2021). Cloud based production monitoring reshapes weld performance tracking. https://www.lincolnelectric.com/en-us/support/process-and-theory/Pages/cloud-based-production-monitoring.aspx
- Chen, C., Lv, N., Chen, S. (2018). Data driven welding expert system structure based on internet of things, Transactions on Intelligent Welding Manufacturing, 45-60.
- Data assets. (2021) https://www.fronius.com/en/welding-technology/info-centre/magazine/2017/ successfully-leveraging-data-assets
- ESAB WeldCloud. (2021). https://www.esabna.com/us/en/weldcloud/index.cfm
- Indian Railways. (2020). https://icf.indianrailways.gov.in/view_section.jsp?lang=0&id=0,29
- Indian Railways. (2021). https://www. financialexpress.com/industry/indian-railways-to-introduce-ultrasonic-track-testing/772422/
- Ji, Z., Yanhong, Z., Baicun, W., & Jiyuan, Z. (2019). Human–Cyber–Physical Systems (HCPSs) in the context of new-generation intelligent manufacturing. Engineering, 5(4), 624-636. https://doi.org/10.1016/j.eng.2019.07.015
- Latz, B. (2018). How will the Internet of Things impact the welding & manufacturing industries. https://www.k-tig.com/2017-blog/how-will-the-internet-of-things-impact-the-welding-manufacturing-industries.
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