%0 Journal Article %T Prediction the compaction properties of lateritic soils by hybrid ANFIS methods %J Advances in Engineering and Intelligence Systems %I Bilijipub publisher %Z 2821-0263 %A Bui, Ha Manh %A Pugazhendhi, Arivalagan %D 2023 %\ 03/01/2023 %V 002 %N 01 %P - %! Prediction the compaction properties of lateritic soils by hybrid ANFIS methods %K Lateritic soils %K Standard proctor compaction test %K Maximum dry unit weight %K Optimum moisture content %K Hybrid adaptive neuro-fuzzy inference system %R 10.22034/aeis.2023.385123.1077 %X Empirically, soil compaction is an important aspect in the selection of materials for earth constructions. Due to time constraints and attention to completion resources, it is necessary to develop models to forecast compaction parameters (maximum dry unit weight (γ_dmax) and optimum moisture content (ω_opt) from easily measured index properties. The main purpose of this study is to scrutinize the applicability of using the hybrid adaptive neuro-fuzzy inference system (ANFIS) models for predicting the γ_dmax and ω_opt related to the standard proctor compaction test of lateritic soils. Results present that both models have a reasonable performance in predicting the γ_dmax and ω_opt with R^2 larger than 0.9038 and 0.9692 for the training data, representing the acceptable correlation between measured and forecasted γ_dmax and ω_opt. Regarding developed models, the ANFIS model optimized with whale optimization algorithm (WOA) has the best performance than imperialist competitive algorithm (ICA) model in both training and testing phases for predicting γ_dmax and ω_opt. %U https://aeis.bilijipub.com/article_169082_7eb0bc2b91fbf41839353b3e094dcfb8.pdf