Artificial Neural Network Models for Predicting the Energy Consumption of the Process of Crystallization Syrup in Konya Sugar Factory

Abstract

In this study, artificial neural network models have been developed from the sugar production process stages in Konya Sugar Factory using artificial neural networks to estimate the energy consumption of the process of crystallization syrup. Models developing specific enthalpy, mass and pressure as input layer parameters and consumption energy as output layer were used. 124 different data are taken from Konya Sugar Factory during January 2016. Feedforward back propagation algorithm was used in the training phase of the network. Learning function LEARNGDM and the number of hidden layer kept constant as 2 and transfer functions are modified. In the developed 27 ANN model, 2-5-1 network architecture was determined as the best suitable network architecture and transfer function is determined logsig function as the optimal transfer function. Optimum results of the model taken in the coefficient of determination was found R = 0.98 neural network training, testing and validate was also found to be R = 0.98, the performance of the network for not shown data to network was found R=0,99.

Authors and Affiliations

Abdullah Erdal Tümer*| Necmettin Erbakan University, Dept.of Comp. Eng., Konya,Turkey, Bilgen Ayan Koç| Necmettin Erbakan University, Dept.of Industry Eng., Konya,Turkey, Sabri Koçer| Necmettin Erbakan University, Dept.of Comp. Eng., Konya,Turkey

Keywords

Related Articles

Improving Intrusion Detection using Genetic Linear Discriminant Analysis

The objective of this research is to propose an efficient soft computing approach with high detection rates and low false alarms while maintaining low cost and shorter detection time for intrusion detection. Our results...

A Note on Entropy Subsethood Relationship

We comment on subsethood measure defined by Kosko and Young and give some new aspects of these measures. Finally we would like to discard the entropy subsethood relationship established by the authirs. We present some pr...

Classification of Neurodegenerative Diseases using Machine Learning Methods

In this study, neurodegenerative diseases (Amyotrophic Lateral Sclerosis, Huntington’s disease, and Parkinson’s disease) were diagnosed and classified using force signals. In the classification, five machine learning al...

The Control of A Non-Linear Chaotic System Using Genetic and Particle Swarm Based On Optimization Algorithms

In this study, the control of a non-linear system was realized by using a linear system control strategy. According to the strategy and by using the controller coefficients, system outputs were controlled for all referen...

Validation of Registration for Renal Dynamic Contrast Enhanced MRI Imaging

In Dynamic Contrast Enhanced Resonance Imaging (DCE-MRI), abdomen is scanned repeatedly and rapidly after injection of a contrast agent. During data acquisition, collected images suffer from the motion induced by the pat...

Download PDF file
  • EP ID EP816
  • DOI 10.18201/ijisae.2017526691
  • Views 430
  • Downloads 25

How To Cite

Abdullah Erdal Tümer*, Bilgen Ayan Koç, Sabri Koçer (2017). Artificial Neural Network Models for Predicting the Energy Consumption of the Process of Crystallization Syrup in Konya Sugar Factory. International Journal of Intelligent Systems and Applications in Engineering, 5(1), 18-21. https://europub.co.uk/articles/-A-816