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Abstract:
The strength of cement is one of the important indicators of its Performance. The traditional strength detection method based on manual timed sampling has a good accuracy, but there is a large lag, which can not regulate the cement production process in time. Machine learning en-ables targeted correlation analysis of multi-dimensional production data in the cement industry, for example, raw material and product fest data, microstructure images and process operating Parameters. The lagging problem of manual testing methods can be solved by establishing a cement strength prediction model based on machine learning. This paper summarizes the cement strength prediction model based on machine learning by sorting out the basic working principles and advantages of commonly used algorithms, and discusses its application effect and development direc-tion, with a view to providing guidance for further optimization of the cement strength prediction model and its application in the cement industry. © 2025 Cailiao Daobaoshe/ Materials Review. All rights reserved.
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Materials Reports
ISSN: 1005-023X
Year: 2025
Issue: 5
Volume: 39
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ESI Highly Cited Papers on the List: 0 Unfold All
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Chinese Cited Count:
30 Days PV: 11
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