Development of IoT Based Pneumatic Punching Machine
-
Published:2023-03-15
Issue:
Volume:
Page:363-367
-
ISSN:0022-2755
-
Container-title:Journal of Mines, Metals and Fuels
-
language:
-
Short-container-title:jmmf
Author:
S Vasu,Kumar R,H L Nandeesha,H Santhosh
Abstract
Building effective industrial systems are now possible with the help of the Internet of Things abbreviated as IoT. In nowadays automatic systems are recommended over manual systems. IoT is the latest and rising internet technology. IoT is a developing network of everyday products, from industrial machinery to consumer goods which exchange information and carry out tasks while consumers are attending to other responsibilities. A machine tool is used to punch sheet metals to increase the static stability of the section of the sheet. The movement of the piston in the pneumatic punching machine is from the compressed air which generates high pressure on the piston. The focus of this project is on the development of an IoTenabled sheet metal punching machine. The main objective of this project is to develop an IoT-based pneumatic punching machine that is capable of monitoring the production parameters of the pneumatic punching machine through an easily manageable web interface. Additionally this technology is innovative in that it allows the control of the punching machine through the Internet of Things as well as the tracking of production data or production values.
Publisher
Informatics Publishing Limited
Subject
Energy Engineering and Power Technology,Geotechnical Engineering and Engineering Geology,Fuel Technology
Reference15 articles.
1. Nutan Bhalerao, Aishwarya Dhamale, Ashwini Dhamale, Dhananjay Gaikwad Chandrashekhar kols, Design and Fabrication of Pneumatic Punching Machine, International Journal of Emerging Technologies and Innovative Research, Vol.6, Issue 2, 2019, pp.98-101. 2. Gwo-Lianq Chern, Shun-Feng Liu, Ying-Jeng Engin Wu, Development of a micro-punching machine and study on influence of vibration machining in micro EDM, Journal of Material Processing Technology, Volume 180, Issues 1–3, 2006, pp. 102-109. 3. M. Kumari, R. Singhal, A. Kumar, Design and Analysis of IoT-Based Intelligent Robot for real time Monitoring and Control, International Conference on Power Electronics & IoT Applications in Renewable Energy and its Control, 2020, pp. 549-552. 4. Lukas Malburg, Ralph Bergmann, Ronny Seiger, Patrick Klein, Manfred-Peter Rieder, Object Detection for Smart Factory Processes by Machine Learning, Procedia Computer Science, Volume 184, 2021, pp. 581588. 5. Lukas Malburg, Manfred-Peter Rieder, Ronny Seiger, Patrick Klein, Ralph Bergmann, Object Detection for Smart Factory Processes by Machine Learning, Procedia Computer Science, Volume 184, 2021, pp. 581588.
|
|