Optimization of Random Forest Prediction for Industrial Energy Consumption Using Genetic Algorithms

Autor: Dewi Yuliandari, Supriatin Supriatin, Yana Iqbal Maulana, Luthfia Rohimah, Sartini Sartini
Rok vydání: 2023
Předmět:
Zdroj: PIKSEL : Penelitian Ilmu Komputer Sistem Embedded and Logic. 11:35-44
ISSN: 2620-3553
2303-3304
Popis: Saving electrical energy consumption in industries is crucial; hence, the prediction of industrial energy consumption needs to be performed. The random forest method can be applied to steel industry data to predict energy consumption. The purpose of this prediction is to increase energy savings in industries and optimize the performance of the random forest method. The results of the random forest show that the algorithm can predict energy consumption in industries effectively; however, it needs further optimization to achieve better predictions. Therefore, the genetic algorithm method will be used to optimize the previous method. The optimization results indicate that it is successfully conducted in terms of accuracy and kappa level. This optimization is beneficial to society, especially industrial companies.
Databáze: OpenAIRE