Quantitative investigation and intelligent forecasting of thermal conductivity in lime-modified red clay

PLoS One. 2024 Oct 10;19(10):e0311882. doi: 10.1371/journal.pone.0311882. eCollection 2024.

Abstract

This paper delves into the engineering applications of lime-stabilized red clay, a highly water-sensitive material, particularly in the context of the climatic conditions prevalent in the Dalian region. We systematically investigate the impact of water content, dry density, and freeze-thaw cycles (with a freezing temperature set at -10°C) on the thermal conductivity of stabilized soil, a crucial parameter for analyzing soil temperature fields that is influenced by numerous factors. By developing and validating both empirical and machine learning prediction models, we unravel the evolution of thermal conductivity in response to these factors: within the range of influencing variables, thermal conductivity exhibits an exponential or linear increase with rising water content and dry density, while it decreases exponentially with increasing freeze-thaw cycles. Furthermore, we quantitatively analyze the specific influence of water content and other factors on the thermal conductivity of stabilized soil and construct a comprehensive prediction model encompassing BP neural network, gradient boosting decision tree, and linear regression models. Comparative analysis highlights the significant enhancement in prediction accuracy achieved by the proposed ensemble model over single machine learning models, with root mean square error (RMSE) values below 0.05 and mean absolute percentage error (MAPE) values remaining under 2.5% in both frozen and unfrozen states. Additionally, a secondary validation using experimental data from other researchers confirms the model's good agreement with previous results, demonstrating its robust generalization ability. Our findings provide valuable insights for engineering studies in the Dalian region and red clay areas subjected to extreme climatic conditions.

MeSH terms

  • Calcium Compounds* / chemistry
  • Clay* / chemistry
  • Forecasting
  • Machine Learning*
  • Neural Networks, Computer
  • Oxides* / chemistry
  • Soil* / chemistry
  • Temperature
  • Thermal Conductivity*
  • Water / chemistry

Substances

  • Clay
  • Calcium Compounds
  • lime
  • Oxides
  • Soil
  • Water

Grants and funding

This project is supported by the National Natural Science Foundation of China ( 42061011 ) obtained by Li Dongwei, the key R & D projects of Li Dongwei and Zhang Fuqing in Jiangxi Province ( ( 20223BBGW01,20232BBE50025 ) ) and the Doctoral Entrepreneurship Foundation of East China University of Science and Technology ( DHBK2023014 ) obtained by Wang Zhenhua. In the research process of this article, it was funded by Li Dongwei, Zhang Fuqing, Wang Zhenhua and others. Among them, Li Dongwei participated in the topic selection, design, review and revision of the article. Wang Zhenhua participated in the review and analysis of the article. Zhang Fuqing did not participate in research design, data collection and analysis, and decided to publish or prepare manuscripts. Wang Hongqi, the first author, participated in the work of topic selection, experimental design, data collection and analysis, article writing, article review and revision. Wang Zecheng and Jia Zhiwen participated in the writing, review and revision of the article.