Industrial-scale Prediction of Cement Clinker Phases using Machine Learning
Cement production, exceeding 4.1 billion tonnes and contributing 2.4 tonnes of CO2 annually, faces critical challenges in quality control and process optimization. While traditional process models for cement manufacturing are confined to steady-state conditions with limited predictive capability for...
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Zusammenfassung: | Cement production, exceeding 4.1 billion tonnes and contributing 2.4 tonnes
of CO2 annually, faces critical challenges in quality control and process
optimization. While traditional process models for cement manufacturing are
confined to steady-state conditions with limited predictive capability for
mineralogical phases, modern plants operate under dynamic conditions that
demand real-time quality assessment. Here, exploiting a comprehensive two-year
operational dataset from an industrial cement plant, we present a machine
learning framework that accurately predicts clinker mineralogy from process
data. Our model achieves unprecedented prediction accuracy for major clinker
phases while requiring minimal input parameters, demonstrating robust
performance under varying operating conditions. Through post-hoc explainable
algorithms, we interpret the hierarchical relationships between clinker oxides
and phase formation, providing insights into the functioning of an otherwise
black-box model. This digital twin framework can potentially enable real-time
optimization of cement production, thereby providing a route toward reducing
material waste and ensuring quality while reducing the associated emissions
under real plant conditions. Our approach represents a significant advancement
in industrial process control, offering a scalable solution for sustainable
cement manufacturing. |
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DOI: | 10.48550/arxiv.2412.11981 |