LGApr 15, 2022

An interpretable machine learning approach for ferroalloys consumptions

arXiv:2204.07421v1h-index: 1
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific optimization problem in metallurgy for improving efficiency in steel production, but it is incremental as it combines existing methods like k-means, decision trees, and linear regression.

The paper tackled the problem of optimizing ferroalloys consumption in steelmaking by developing an interpretable machine learning method that predicts chemical reaction results and provides consumption recommendations, achieving practical application in Basic Oxygen Furnace steelmaking.

This paper is devoted to a practical method for ferroalloys consumption modeling and optimization. We consider the problem of selecting the optimal process control parameters based on the analysis of historical data from sensors. We developed approach, which predicts results of chemical reactions and give ferroalloys consumption recommendation. The main features of our method are easy interpretation and noise resistance. Our approach is based on k-means clustering algorithm, decision trees and linear regression. The main idea of the method is to identify situations where processes go similarly. For this, we propose using a k-means based dataset clustering algorithm and a classification algorithm to determine the cluster. This algorithm can be also applied to various technological processes, in this article, we demonstrate its application in metallurgy. To test the application of the proposed method, we used it to optimize ferroalloys consumption in Basic Oxygen Furnace steelmaking when finishing steel in a ladle furnace. The minimum required element content for a given steel grade was selected as the predictive model's target variable, and the required amount of the element to be added to the melt as the optimized variable. Keywords: Clustering, Machine Learning, Linear Regression, Steelmaking, Optimization, Gradient Boosting, Artificial Intelligence, Decision Trees, Recommendation services

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