1. Introduction
Different agricultural products such as wheat, sugarcane, rice, and cotton, among others, are produced in large quantities around the globe. However, the waste that is produced at the time of harvesting these crops should be studied to prevent environmental pollution. For example, a large amount of rice husk and bagasse is available after their respective utilization, and this waste must be effectively disposed of, or suitable applications for it must be found, in accordance with the principles of circular economy and sustainability. Talking of sustainability, the applications of vegetable fibers in cementitious matrix composites have also been explored by Marvila et al. [
1]. The researchers observed that the plant fibers reduced the density and enhanced the water absorption capacity and tensile strength of the composites. It was also recommended by the researchers that the cellulose, lignin, and sugars present in the vegetable fibers must be removed before their application in cementitious composites. Similarly, Aquino et al. [
2] used corn straw fiber in cement-lime mortars used during coating and laying blocks. It was found that corn straw fibers treated with sodium hydroxide improved the performance of specimens by demonstrating higher compressive strength and lower water absorption than the untreated fiber specimens.
Concrete is a widely used construction material with numerous benefits such as high compressive strength (CS), the ability to be cast in any desired shape, and the ready availability of its fundamental materials. The integral materials are bonded by a suitable binder, typically cement, which may or may not be convoyed with pozzolanic materials. The mechanical and durability properties of concrete depend mainly upon the gradation and physical properties of the fine and coarse aggregates used, the type of cement used, the presence of pozzolanic materials, the cement used, and the water–cement ratio [
3,
4,
5]. The hydration of cement imparts the fusing action due to its reaction with water to form a binder gel such as calcium–silicate hydrate (C-S-H) gel and calcium–aluminate hydrate (C-A-H) gel, which are mainly used in addition to portlandite [
5,
6]. Different pozzolanic materials such as fly ash (FA) [
7], silica fume [
8], pumice (Pu) [
9], blast furnace slag [
10], rice husk ash (RHA) [
11], and metakaolin [
12] have also been used in mortar and concrete. It is important to note that pozzolans need a high-pH environment and a cation for activation to form secondary binder gels. Therefore, portlandite, produced as a result of cement hydration, is consumed by the pozzolans and results in the formation of a secondary binder gel (C-S-H, C-A-H, or C-A-S-H). The composition of secondary binder gels is highly dependent upon the chemical composition of the pozzolanic material used [
13,
14].
Numerous studies have shown that the partial replacement of cement with FA in the mortar and/or in the concrete improved its mechanical properties and densified its microstructure over time [
15,
16]. The inclusion led to a lower porosity in the samples and a higher resistance against aggressive environments. Similarly, RHA is produced by burning rice husk at around 700 °C. It is an excellent pozzolanic material and comprises a large proportion of silica, which imparts the pozzolanic property. It is important to mention here that the chemical composition and crystallinity percentage of RHA samples depends on the type of nutrients present in the soil where the crop had been sown and the burning temperature of rice husk [
11,
17]. Previous studies have also revealed that the partial replacement of cement with RHA improved its mechanical, durability, and microstructural properties [
17]. Similarly, Pu is a natural pozzolanic material and is a type of igneous rock. It is mostly comprised of silicon dioxide in addition to other compounds such as aluminum oxide. It has been effectively used in cement mortars, improving its mechanical properties and densifying its microstructure, leading to fewer voids [
18]. In addition to the use of a single pozzolanic material in mortar and concrete, the literature also reveals the influence of utilizing binary and ternary blends of different materials on different properties of concrete. For example, Tahir and Kirca [
19] employed FA, SF, and blast furnace slag as ternary cementitious blends. It was observed that the ternary blend had a higher CS than the binary blend (cement and SF only). In an another attempt, Rahman et al. [
20] observed that a ternary blend of MK, palm oil fuel ash, and cement improved the workability of paste, and attained high early CS with a reduced porosity in comparison with the binary blend (cement and MK only). Similarly, Anwar and Emarah [
21] used a ternary blend of cement, FA, and SF to study their influence on the carbonation and ingress of chloride ions in samples. It was observed that the ternary blend improved the resistance of specimens against the ingression of these ions.
Thus, the performance of mortar and concrete is highly dependent on their constituent materials and chemical compositions. Therefore, several experimental trials must be undertaken to determine the influence of a particular constituent on the resulting properties of mortar and concrete. However, such experimental trials are arduous and time- and resource-consuming tasks [
22]. Lately, artificial intelligence (AI) techniques have gained fame due to their swift learning capabilities for modeling different processes and/or phenomena, allowing models to accurately predict output(s) with the consideration of several inputs [
23,
24]. For instance, Baykasoglu et al. [
25] made use of an artificial neural network (ANN) and gene expression programming (GEP) to forecast the CS of high-strength concrete. Topcu et al. [
26] used an ANN and an adaptive neuro-fuzzy inference system (ANFIS) to forecast the CS of cement mortar containing MK. Similarly, Saridemir [
27] used ANN and fuzzy logic to study the effect of MK on the CS of cement mortar. Likewise, several other models such as the radial basis function network (RBFNN), multi-layer neural networks (MLNNs) [
28], decision tree models, gradient-boosting tree models [
29], and extreme learning machines (ELMs) [
30] have been successfully used for modeling the CS of concrete with various constituents and additives integrated. In addition to these, Nour and Mete [
31] used GEP to model the ultimate strength of axially loaded, recycled-aggregate, concrete-filled steel tubular columns. It was observed that GEP successfully modelled the ultimate strength values with higher R
2 values (0.995 and 0.996 in the training and testing phases, respectively). The researchers also provided an empirical equation to estimate the axial load capacity of tubular columns with recycled aggregate. Similarly, Gholampour et al. [
32] employed GEP to predict the mechanical properties and their empirical models of concrete containing natural and recycled aggregates. A large dataset comprising 650, 421, 346, and 152 datapoints for the CS, elastic modulus, splitting–tensile strength, and flexure strength, respectively, were used to develop the model. It was observed that GEP successfully predicted the CS of concrete, as evident from the lower RMSE value of 7.8 and the coefficient of variation of 0.19.
A survey of the literature shows that different AI models have been successfully employed to model the mechanical properties of concrete containing different constituents; however, there are some problems associated with their prediction capabilities such as the production of unexpected outcomes for new datasets and the overfitting of data. Such shortcomings limit their use for forecasting in different situations. Therefore, ANN and other traditional machine learning models are considered to be black-box models [
33,
34]. In contrast, white-box models do not possess these limitations, and the associated information about its working and the influential variables can be extracted. One example of such models includes the gene expression programming (GEP) model, whose basic principle is based on making complex trees of chromosomes, with genes connected through linking functions; the model learns by changing their sizes and shapes [
35]. Different researchers have made use of GEP models to model different properties of concrete, incorporating various materials. For instance, a study led by Iqbal et al. [
36] used GEP to model the mechanical properties of green concrete with waste foundry sand integrated. GEP has also been successfully used to model the resilient modulus of stabilized soils [
37]. The use of GEP algorithms has enabled researchers to accurately predict the output (R
2 > 0.85), and at the same time, provide an empirical equation for the output in terms of the input variables.
Considering the ability of different AI models to predict the properties of concrete, this study aimed to perform a comparative analysis of the ANN and GEP models to predict the compressive strength of ternary blended concrete to avoid laborious and time- and resource-consuming experimentation. The ANN and GEP models were utilized to model the compressive strength of ternary blended concrete using different input variables such as the amounts of cement, fine aggregate, coarse aggregate, water, superplasticizer, fly ash, and rice husk ash, and the age of the sample. In addition to the performance comparison, we took advantage of the white-box nature of the GEP model to derive an empirical equation for the compressive strength of ternary blended concrete in terms of the above-mentioned inputs. Finally, parametric analysis was also conducted to study and understand the influence of the different input parameters on the compressive strength of ternary blended concrete. These analyses will be a significant contribution to the field of civil engineering materials as it employs both black-box and white-box AI models to predict the compressive strength of concrete by incorporating two different pozzolanic materials and comparing their performance.