Machine Learning Approaches for Prediction of the Compressive Strength of Alkali Activated Termite Mound Soil
暂无分享,去创建一个
Moussa Mahamat Boukar | Holmer Savastano | Nurudeen Mahmud Ibrahim | Assia Aboubakar Mahamat | Tido Tiwa Stanislas | Numfor Linda Bih | Ifeyinwa Ijeoma Obianyo | H. Savastano | A. A. Mahamat | T. T. Stanislas | N. Ibrahim
[1] S. Chithra,et al. A comparative study on the compressive strength prediction models for High Performance Concrete containing nano silica and copper slag using regression analysis and Artificial Neural Networks , 2016 .
[2] C. Schaefer,et al. Chemical, physical and micromorphological properties of termite mounds and adjacent soils along a toposequence in Zona da Mata, Minas Gerais State, Brazil , 2009 .
[4] Jong Yil Park,et al. Prediction of Concrete Strength with P-, S-, R-Wave Velocities by Support Vector Machine (SVM) and Artificial Neural Network (ANN) , 2019, Applied Sciences.
[5] Hong-Dar Lin,et al. Advanced Artificial Neural Networks , 2018, Algorithms.
[6] Rajendra Kumar Sharma,et al. Prediction of Compressive Strength of Concrete Using Artificial Neural Network and Genetic Programming , 2016 .
[7] E. Ranst,et al. Clay composition and properties in termite mounds of the Lubumbashi area, D.R. Congo , 2013 .
[8] Nhat-Duc Hoang,et al. A swarm intelligence-based machine learning approach for predicting soil shear strength for road construction: a case study at Trung Luong National Expressway Project (Vietnam) , 2018, Engineering with Computers.
[9] D. Pomeroy. The Distribution and Abundance of Large Termite Mounds in Uganda , 1977 .
[10] A. al-Swaidani,et al. Applicability of Artificial Neural Networks to Predict Mechanical and Permeability Properties of Volcanic Scoria-Based Concrete , 2018, Advances in Civil Engineering.
[11] Steve A. Adeshina,et al. Analysis of Bad Roads Using Smart phone , 2019, 2019 15th International Conference on Electronics, Computer and Computation (ICECCO).
[12] V. Vapnik. The Support Vector Method of Function Estimation , 1998 .
[13] Numfor Linda Bih,et al. Alkali activation of compacted termite mound soil for eco-friendly construction materials , 2021, Heliyon.
[14] E. Boakye,et al. The Effect of Polymer Waste Addition on the Compressive Strength and Water Absorption of Geopolymer Ceramics , 2021, Applied Sciences.
[15] Mohamed Ali Hajjaji,et al. Physical properties, microstructure and mineralogy of termite mound material considered as construction materials , 2011 .
[16] Hao Wang,et al. Effects of halloysite in kaolin on the formation and properties of geopolymers , 2012 .
[17] Susan J. Riha,et al. The impact of mound-building termites on surface soil properties in a secondary forest of Central Amazonia , 2007 .
[18] Banjo A. Akinyemi,et al. Prospects of Coir Fibre as Reinforcement in Termite Mound Clay Bricks , 2016 .
[19] Amir Hossein Rafiean,et al. Compressive strength prediction of environmentally friendly concrete using artificial neural networks , 2018 .
[20] Flávio de Souza Barbosa,et al. Application of Support Vector Machine and Finite Element Method to predict the mechanical properties of concrete , 2019, Latin American Journal of Solids and Structures.
[21] Francisco Carlos Gomes,et al. PHYSICAL, MECHANICAL AND THERMAL BEHAVIOR OF ADOBE STABILIZED WITH “SYNTHETIC TERMITE SALIVA” , 2019, Engenharia Agrícola.
[22] Quang Dang Nguyen,et al. A Machine Learning-Assisted Numerical Predictor for Compressive Strength of Geopolymer Concrete Based on Experimental Data and Sensitivity Analysis , 2020, Applied Sciences.
[23] A. Huis. Cultural significance of termites in sub-Saharan Africa. , 2017 .
[24] A. Baruah,et al. Nanocrystalline Silica from Termite Mounds , 2014 .
[25] K. KandasamiRamesh,et al. Effect of biocementation on the strength and stability of termite mounds , 2016 .
[26] H. Savastano,et al. Development of Sustainable and Eco-Friendly Materials from Termite Hill Soil Stabilized with Cement for Low-Cost Housing in Chad , 2021, Buildings.
[27] A. P. Onwualu,et al. Multivariate regression models for predicting the compressive strength of bone ash stabilized lateritic soil for sustainable building , 2020 .
[28] Liang Liu,et al. Using support vector machine for materials design , 2013 .
[29] Emeso B. Ojo,et al. Development of unfired earthen building materials using muscovite rich soils and alkali activators , 2019 .
[30] M. Illikainen,et al. Effects of Activator Properties and Curing Conditions on Alkali-Activation of Low-Alumina Mine Tailings , 2019, Waste and Biomass Valorization.
[31] Moncef L. Nehdi,et al. Machine learning prediction of mechanical properties of concrete: Critical review , 2020, Construction and Building Materials.
[32] P. Narloch,et al. Feature Importance of Stabilised Rammed Earth Components Affecting the Compressive Strength Calculated with Explainable Artificial Intelligence Tools , 2020, Materials.
[33] Ali Sadrmomtazi,et al. Modeling compressive strength of EPS lightweight concrete using regression, neural network and ANFIS , 2013 .
[34] B. Jean-Pierre,et al. SPATIAL DISTRIBUTION AND DENSITY OF TERMITE MOUNDS IN A PROTECTED HABITAT IN THE SOUTH OF COTE D’IVOIRE: CASE OF NATIONAL FLORISTIC CENTER (CNF) OF UFHB OF ABIDJAN , 2015 .
[35] Jui-Sheng Chou,et al. Optimizing the Prediction Accuracy of Concrete Compressive Strength Based on a Comparison of Data-Mining Techniques , 2011, J. Comput. Civ. Eng..
[36] Yuantian Sun,et al. Developing Hybrid Machine Learning Models for Estimating the Unconfined Compressive Strength of Jet Grouting Composite: A Comparative Study , 2020, Applied Sciences.
[37] Farid Sartipi,et al. Predicting Compressive Strength of Concrete Containing Recycled Aggregate Using Modified ANN with Different Optimization Algorithms , 2021, Applied Sciences.
[38] Christian Hartmann,et al. Influence of termites on ecosystem functioning. Ecosystem services provided by termites , 2011 .