结合神经网络动态模型预测水泥抗压强度

IF 1.6 4区 生物学 Q4 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
D. Tsamatsoulis
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引用次数: 3

摘要

本研究旨在开发基于浅层神经网络(ANN)的水泥强度预测模型,该模型仅使用工业数据。模型使用物理、化学和早期强度结果来预测28天和7天的强度。神经网络在一个可移动的时间段内进行动态训练,然后用于至少一天的未来时间段。该研究包括九种类型的激活函数。该算法使用测试集的均方根误差(RMSEFuture)及其鲁棒性作为优化准则。采用最优人工神经网络的最佳模型的RMSEFuture在1.36 ~ 1.63 MPa之间,接近或在一个非常有能力的实验室的长期可重复性范围内。该模型在某水泥厂实际条件下的长期连续应用表明,其性能至少与设计阶段的计算结果相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Cement Compressive Strength by Combining Dynamic Models of Neural Networks
This study aimed at developing models predicting cement strength based on shallow neural networks (ANN) using exclusively industrial data. The models used physical, chemical, and early strength results to forecast those for 28and 7-day. Neural networks were trained dynamically for a movable period and then used for a future period of at least one day. The study includes nine types of activation functions. The algorithms use the root mean square errors of testing sets (RMSEFuture) and their robustness as optimization criteria. The RMSEFuture of the best models with optimum ANNs was in the range of 1.36 MPa to 1.63 MPa, which is near or within the area of long-term repeatability of a very competent laboratory. Continuous application of the models in actual conditions of a cement plant in the long-term showed a performance at least equivalent to that calculated during the design step.
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来源期刊
Chemical and Biochemical Engineering Quarterly
Chemical and Biochemical Engineering Quarterly 工程技术-工程:化工
CiteScore
2.70
自引率
6.70%
发文量
23
审稿时长
>12 weeks
期刊介绍: The journal provides an international forum for presentation of original papers, reviews and discussions on the latest developments in chemical and biochemical engineering. The scope of the journal is wide and no limitation except relevance to chemical and biochemical engineering is required. The criteria for the acceptance of papers are originality, quality of work and clarity of style. All papers are subject to reviewing by at least two international experts (blind peer review). The language of the journal is English. Final versions of the manuscripts are subject to metric (SI units and IUPAC recommendations) and English language reviewing. Editor and Editorial board make the final decision about acceptance of a manuscript. Page charges are excluded.
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