Detailed Energy Analysis of a Sheet-Metal-Forming Press from Electrical Measurements

Author:

Carrillo Camilo1ORCID,Díaz Dorado Eloy1ORCID,Cidrás Pidre José1,Garrido Campos Julio1ORCID,San Facundo López Diego1ORCID,Lisboa Cardoso Luiz A.1ORCID,Martínez Castañeda Cristina I.2,Sánchez Rúa José F.2

Affiliation:

1. Research Group on Efficient and Digital Engineering, University of Vigo, 36310 Vigo, Spain

2. Stellantis Group, 36210 Vigo, Spain

Abstract

This paper presents a methodology that allows for the detection of the state of a sheet-metal-forming press, the parts being produced, their cadence, and the energy demand for each unit produced. For this purpose, only electrical measurements are used. The proposed analysis is conducted at the level of the press subsystems: main motor, transfer module, cushion, and auxiliary systems, and is intended to count, classify, and monitor the production of pressed parts. The power data are collected every 20 ms and show cyclic behavior, which is the basis for the presented methodology. A neural network (NN) based on heuristic rules is developed to estimate the press states. Then, the production period is determined from the power data using a least squares method to obtain normalized harmonic coefficients. These are the basis for a second NN dedicated to identifying the parts in production. The global error in estimating the parts being produced is under 1%. The resulting information could be handy in determining relevant information regarding the press behavior, such as energy per part, which is necessary in order to evaluate the energy performance of the press under different production conditions.

Funder

FACENDO 4.0

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference28 articles.

1. Nonintrusive appliance load monitoring;Hart;Proc. IEEE,1992

2. Herrero, J.R., Murciego, Á.L., Barriuso, A.L., de la Iglesia, D.H., González, G.V., Rodríguez, J.M.C., and Carreira, R. (2017). Trends in Cyber-Physical Multi-Agent Systems. The PAAMS Collection, Proceedings of the 15th International Conference, PAAMS 2017, Porto, Portugal, 21–23 June 2017, Springer.

3. Energy prediction for CNC machining with machine learning;Brillinger;CIRP J. Manuf. Sci. Technol.,2021

4. Hong, H., Zhang, C., Meng, L., Tian, G., and Yu, J. (2017, January 6–9). Characterising energy efficiency in maching processes: A milling case. Proceedings of the 2017 International Conference on Advanced Mechatronic Systems (ICAMechS), Xiamen, China.

5. An on-line approach for energy efficiency monitoring of machine tools;Hu;J. Clean. Prod.,2012

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