Predicting the Gas Permeability of Sustainable Cement Mortar Containing Internal Cracks by Combining Physical Experiments and Hybrid Ensemble Artificial Intelligence Algorithms

Author:

Chao Zhiming12,Yang Chuanxin1,Zhang Wenbing1ORCID,Zhang Ye3,Zhou Jiaxin1

Affiliation:

1. College of Ocean Science and Engineering, Shanghai Maritime University, Shanghai 200135, China

2. Institute of Water Sciences and Technology, Hohai University, Nanjing 211106, China

3. Mentverse Ltd., 25 Cabot Square, Canary Wharf, London E14 4QZ, UK

Abstract

The presence of internal fissures holds immense sway over the gas permeability of sustainable cement mortar, which in turn dictates the longevity and steadfastness of associated edifices. Nevertheless, predicting the gas permeability of sustainable cement mortar that contains internal cracks poses a significant challenge due to the presence of numerous influential variables and intricate interdependent mechanisms. To solve the deficiency, this research establishes an innovative machine learning algorithm via the integration of the Mind Evolutionary Algorithm (MEA) with the Adaptive Boosting Algorithm-Back Propagation Artificial Neural Network (ABA-BPANN) ensemble algorithm to predict the gas permeability of sustainable cement mortar that contains internal cracks, based on the results of 1452 gas permeability tests. Firstly, the present study employs the MEA-tuned ABA-BPANN model as the primary tool for gas permeability prediction in cement mortar, a comparative analysis is conducted with conventional machine learning models such as Particle Swarm Optimisation Algorithm (PSO) and Genetic Algorithm (GA) optimised ABA-BPANN, MEA optimised Extreme Learning Machine (ELM), and BPANN. The efficacy of the MEA-tuned ABA-BPANN model is verified, thereby demonstrating its proficiency. In addition, the sensitivity analysis conducted with the aid of the innovative model has revealed that the gas permeability of durable cement mortar incorporating internal cracks is more profoundly affected by the dimensions and quantities of such cracks than by the stress conditions to which the mortar is subjected. Thirdly, puts forth a novel machine-learning model, which enables the establishment of an analytical formula for the precise prediction of gas permeability. This formula can be employed by individuals who lack familiarity with machine learning skills. The proposed model, namely the MEA-optimised ABA-BPANN algorithm, exhibits significant potential in accurately estimating the gas permeability of sustainable cement mortar that contains internal cracks in varying stress environments. The study highlights the algorithm’s ability to offer essential insights for designing related structures.

Funder

2022 Open Project of Failure Mechanics and Engineering Disaster Prevention, Key Lab of Sichuan Province

Shanghai Sailing Program

China Institute of Water Resources and Hydropower Research

Shanghai Natural Science Foundation

China Postdoctoral Science Foundation

Shanghai Soft Science Key Project

Key Laboratory of Ministry of Education for Coastal Disaster and Protection, Hohai University

Key Laboratory of Estuarine & Coastal Engineering, Ministry of Transport

Publisher

MDPI AG

Subject

General Materials Science

Reference66 articles.

1. Properties of sustainable cement mortars containing high volume of raw diatomite;Ahmadi;Sustain. Mater. Technol.,2018

2. Modern sustainable cement and concrete composites: Review of current status, challenges and guidelines;Makul;Sustain. Mater. Technol.,2020

3. Effect of multi-minerals on the mechanical behavior and pore structure of fiber reinforced internal-cured green concrete;Zhang;J. Cleaner Prod.,2022

4. Characterization of sustainable bio-based mortar for concrete repair;Jonkers;Constr. Build. Mater.,2014

5. Research on anisotropic permeability and porosity of columnar jointed rock masses during cyclic loading and unloading based on physical model experiments;Chao;Bull. Eng. Geol. Environ.,2020

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