GEP Tree-Based Prediction Model for Interfacial Bond Strength of Externally Bonded FRP Laminates on Grooves with Concrete Prism.
Muhammad Nasir AminMudassir IqbalSheikh Muhammad Habib AbdullahShahid UllahKaffayatullah KhanAbdullah M Abu-ArabQasem Mohammed Sultan Al-AhmadSikandar KhanPublished in: Polymers (2022)
Reinforced concrete structures are subjected to frequent maintenance and repairs due to steel reinforcement corrosion. Fiber-reinforced polymer (FRP) laminates are widely used for retrofitting beams, columns, joints, and slabs. This study investigated the non-linear capability of artificial intelligence (AI)-based gene expression programming (GEP) modelling to develop a mathematical relationship for estimating the interfacial bond strength (IBS) of FRP laminates on a concrete prism with grooves. The model was based on five input parameters, namely axial stiffness ( E f t f ), width of FRP plate ( b f ), concrete compressive strength ( f c '), width of groove ( b g ), and depth of the groove ( h g ), and IBS was considered the target variable. Ten trials were conducted based on varying genetic parameters, namely the number of chromosomes, head size, and number of genes. The performance of the models was evaluated using the correlation coefficient (R), mean absolute error (MAE), and root mean square error (RMSE). The genetic variation revealed that optimum performance was obtained for 30 chromosomes, 11 head sizes, and 4 genes. The values of R, MAE, and RMSE were observed as 0.967, 0.782 kN, and 1.049 kN for training and 0.961, 1.027 kN, and 1.354 kN. The developed model reflected close agreement between experimental and predicted results. This implies that the developed mathematical equation was reliable in estimating IBS based on the available properties of FRPs. The sensitivity and parametric analysis showed that the axial stiffness and width of FRP are the most influential parameters in contributing to IBS.
Keyphrases
- artificial intelligence
- irritable bowel syndrome
- gene expression
- genome wide
- machine learning
- big data
- deep learning
- ionic liquid
- dna methylation
- molecular dynamics simulations
- optic nerve
- bioinformatics analysis
- high resolution
- computed tomography
- electron transfer
- tissue engineering
- magnetic resonance
- liquid chromatography
- atomic force microscopy
- mass spectrometry
- copy number
- virtual reality
- perovskite solar cells
- genome wide analysis
- high speed