Modification of Control Oil Feeding with PLC Using Simulation Visual Basic and Neural Network Analysis

Authors

  • Yuliza Yuliza Universitas Mercu Buana Jakarta
  • Rachmat Muwardi Universitas Mercu Buana
  • Danang Widya Pratama Universitas Mercu Buana
  • Makmur Heri Santoso STT Bina Tunggal
  • Mirna Yunita Beijing Institute of Technology

DOI:

https://doi.org/10.26555/jiteki.v8i1.22336

Keywords:

Neural Network, Oil feeding system, PLC Mitsubishi, Visual Basic

Abstract

The oil feeding system is an oil distribution system used in engine lubrication by flowing it directly to the engine parts to be lubricated through pipes. In addition, it is also a raw material for the production process by collecting the oil first in the storage tank, then weighing it on the oil scale before use in the production process. The current control is still using the conventional model. The operating system is still manual, and the absence of identity and damage information makes it difficult for the engineer to troubleshoot. The research method is to modify the oil feeding system control using PLC (Programmable Logic Controller) and Visual Basic to display process information. This process uses the Neural Network (NN) method. The simulation results show that the PLC program and visual basic software can be connected properly. The speed of the data transfer test connection that can be obtained is 32 ms. The prediction process of the oil feeding system using the backpropagation algorithm Neural Network and the activation function, which uses the binary sigmoid function (logsig) with the 17-10-1 architecture having very good performance getting the MSE value below the error value of 0.001 maximum epoch 961 and hidden layer 10 with an MSE value of 0.00099915.

Downloads

Published

2022-04-09

How to Cite

[1]
Y. Yuliza, R. Muwardi, D. Widya Pratama, M. Heri Santoso, and M. Yunita, “Modification of Control Oil Feeding with PLC Using Simulation Visual Basic and Neural Network Analysis”, J. Ilm. Tek. Elektro Komput. Dan Inform, vol. 8, no. 1, pp. 38–50, Apr. 2022.

Issue

Section

Articles

Similar Articles

1 2 > >> 

You may also start an advanced similarity search for this article.