Comparative Analysis of Linear Models and Artificial Neural Networks for Sugar Price Prediction
Tathiana M. Barchi,
João Lucas Ferreira dos Santos,
Priscilla Bassetto,
Henrique Nazário Rocha,
Sergio L. Stevan,
Fernanda Cristina Correa,
Yslene Rocha Kachba,
Hugo Valadares Siqueira
Affiliations
Tathiana M. Barchi
Graduate Program Computer Sciences (PPGCC), Federal University of Technology–Paraná (UTFPR), Dr. Washington Subtil Chueire St., 330, Jardim Carvalho, Ponta Grossa 84017-220, Brazil
João Lucas Ferreira dos Santos
Graduate Program in Industrial Engineering (PPGEP), Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Priscilla Bassetto
Graduate Program in Industrial Engineering (PPGEP), Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Henrique Nazário Rocha
Department of Electrical Engineering, Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Sergio L. Stevan
Department of Electrical Engineering, Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Fernanda Cristina Correa
Department of Electrical Engineering, Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Yslene Rocha Kachba
Department of Industrial Engineering, Federal University of Technology–Parana, Ponta Grossa 84017-220, Brazil
Hugo Valadares Siqueira
Graduate Program Computer Sciences (PPGCC), Federal University of Technology–Paraná (UTFPR), Dr. Washington Subtil Chueire St., 330, Jardim Carvalho, Ponta Grossa 84017-220, Brazil
Sugar is an important commodity that is used beyond the food industry. It can be produced from sugarcane and sugar beet, depending on the region. Prices worldwide differ due to high volatility, making it difficult to estimate their forecast. Thus, the present work aims to predict the prices of kilograms of sugar from four databases: the European Union, the United States, Brazil, and the world. To achieve this, linear methods from the Box and Jenkins family were employed, together with classic and new approaches of artificial neural networks: the feedforward Multilayer Perceptron and extreme learning machines, and the recurrent proposals Elman Network, Jordan Network, and Echo State Networks considering two reservoir designs. As performance metrics, the MAE and MSE were addressed. The results indicated that the neural models were more accurate than linear ones. In addition, the MLP and the Elman networks stood out as the winners.