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Data-driven multicollinearity-aware multi-objective optimisation of green concrete mixes

Elyas Asadi Shamsabadi, Masoud Salehpour, Peyman Zandifaez, Daniel Dias‐da‐Costa

2023Journal of Cleaner Production70 citationsDOIOpen Access PDF

Abstract

A multicollinearity-aware multi-objective optimisation (MA-MOO) framework was developed to minimise the main environmental issues and the cost of production of green concrete, while preserving the compressive strength in a desirable range with the help of machine learning modelling. A novel set of constraints were proposed to restrain the search space and eliminate the known statistical trap of multicollinearity. To test the framework, a comprehensive dataset of 2644 concrete mixes incorporating five supplementary cementitious materials (SCMs) was collected from the literature on which the extreme gradient boosting machine (XGBM) could achieve the best performance (RMSE 4.3 MPa). XGBM was deployed within the framework to design mixes with a similar multicollinearity structure to the training data. The mixes could reach up to more than two times lower cost of production and environmental issues.

Topics & Concepts

MulticollinearityBoosting (machine learning)Computer scienceGradient boostingCementitiousMachine learningData miningStatisticsEconometricsMathematicsRegression analysisRandom forestHistoryCementArchaeologyInfrastructure Maintenance and MonitoringInnovative concrete reinforcement materialsRecycled Aggregate Concrete Performance
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