用SHAP-XGBoost建模焦煤指数:可解释人工智能方法

A. Homafar , H. Nasiri , S.Chehreh Chelgani
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引用次数: 4

摘要

炼焦煤作为高炉的主要原料,在许多国家仍被列为关键原料。炼焦炉的能耗和炼钢效率取决于焦炭的质量,因此根据焦化指数的煤母性质来理解和建模焦化指数将是炼钢工业的重要途径。作为一种创新的方法,这种简短的交流被认为是可解释的人工智能(XAI),用于模拟煤的焦化指数(自由膨胀指数“FSI”和最大流动性“Log (MF)”)。xai可以将黑箱模型转换为基于人类的系统,并开发出显著的学习性能和估计精度。SHapley Additive explanation (SHAP)是最近发展起来的XAI模型之一,它与eXtreme gradient boosting (XGBoost)相结合,对美国伊利诺斯州的煤样进行了建模。首次将FSI和Log (MF)作为有序变量进行建模。建模结果表明,与传统的机器学习方法(随机森林和支持向量回归)相比,SHAP-XGBoost可以准确地显示特征之间的相互依赖关系,展示它们的多重关系的大小,并根据它们的重要性对它们进行排序,并且可以非常准确地预测焦化指数。这些重要的结果将为XAI工具在能源和燃料领域的复杂系统控制和建模打开一扇新的窗口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling coking coal indexes by SHAP-XGBoost: Explainable artificial intelligence method

Coking coal is still on the list of critical raw materials in many countries since it is the main element integrated into the blast furnace. While the energy consumption and steelmaking efficiency in the furnace depends on the coke quality, understanding and modeling coking indexes based on their coal parent properties would be a substantial approach for the steelmaking industry. As an innovative approach, this short comminucation has been considered explainable artificial intelligence (XAI) for modeling coal coking indexes (Free Swelling index “FSI” and maximum fluidity “Log (MF)”). XAIs can convert black-box models into human basis systems and develop a significant learning performance and estimation accuracy. SHapley Additive exPlanations (SHAP), as one of the most recently developed XAI models in combination with eXtreme gradient boosting (XGBoost), were used to model coal samples from Illinois, USA. For the first time, FSI and Log (MF) treat as ordinal variables for modeling. Modeling outcomes relieved that SHAP-XGBoost could accurately show interdependency between features, demonstrate the magnitude of their multi relationships, rank them based on their importance, and predict the coking index quite accurately compared with conventional machine learning methods (random forest and support vector regression). These significant results would be opened a new window by applying XAI tools for controlling and modeling complex systems in the energy and fuel sectors.

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