Litcius/Paper detail

Prediction interval estimation of sinter drum index based on light gradient boosting machine and kernel density estimation

Guanglei Xia, Zhaoxia Wu, Mengyuan Liu, Yushan Jiang

2023Ironmaking & Steelmaking Processes Products and Applications15 citationsDOI

Abstract

Owing to the uncertainty operation in the sintering process, it is easy to produce uncertain prediction errors in the single drum index prediction model, which makes the prediction results lack certain reliability. Accurate and reliable prediction of the drum index can help improve the drum index. In this paper, a prediction interval estimation method of drum index based on a light gradient boosting machine (LightGBM) and kernel density estimation (KDE) is proposed. LightGBM can obtain accurate points prediction of drum index, and then use the KDE method to obtain the estimated prediction interval of drum index. The comparison results of different methods show that LightGBM has high prediction performance, and KDE can well quantify the prediction error of drum index, which verifies the effectiveness of the prediction interval estimation method combined with LightGBM and KDE, and provides more reliable decision-making information for the optimisation of sintering process parameters.

Topics & Concepts

Kernel density estimationDrumComputer scienceInterval (graph theory)Kernel (algebra)Gradient boostingPrediction intervalProcess (computing)Artificial intelligenceStatisticsMathematicsMachine learningEngineeringEstimatorMechanical engineeringCombinatoricsRandom forestOperating systemIron and Steelmaking ProcessesMineral Processing and GrindingInjection Molding Process and Properties
Prediction interval estimation of sinter drum index based on light gradient boosting machine and kernel density estimation | Litcius