Prediction of mechanical properties of green concrete incorporating waste foundry sand based on gene expression programming.
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Muhammad Iqbal | Muhammad Faisal Javed | Jian Yang | Qing-feng Liu | Iftikhar Azim | Xingyi Zhu | Momina Rauf | Xingyi Zhu | Jian Yang | M. F. Iqbal | Momina Rauf | Qing-feng Liu | I. Azim | M. Javed
[1] H. M. Başar,et al. The effect of waste foundry sand (WFS) as partial replacement of sand on the mechanical, leaching and micro-structural characteristics of ready-mixed concrete , 2012 .
[2] Ali Nazari,et al. Modeling the compressive strength of geopolymeric binders by gene expression programming-GEP , 2013, Expert Syst. Appl..
[3] T. Naik,et al. Effects of Fly Ash and Foundry Sand on Performance of Architectural Precast Concrete , 2012 .
[4] Amir Hossein Gandomi,et al. Assessment of artificial neural network and genetic programming as predictive tools , 2015, Adv. Eng. Softw..
[5] Kiang Hwee Tan,et al. Properties of high volume glass powder concrete , 2017 .
[6] R. Siddique,et al. Recycle option for metallurgical by-product (Spent Foundry Sand) in green concrete for sustainable construction , 2018 .
[7] Jin Xia,et al. Ionic transport features in concrete composites containing various shaped aggregates: a numerical study , 2018 .
[8] Ali Sadrmomtazi,et al. Modeling compressive strength of EPS lightweight concrete using regression, neural network and ANFIS , 2013 .
[9] M. Sowmya,et al. MIXING OF WASTE FOUNDRY SAND IN CONCRETE , 2015 .
[10] Dongshuai Hou,et al. Numerical study of carbonation and its effect on chloride binding in concrete , 2019, Cement and Concrete Composites.
[11] Gurpreet Singh,et al. Abrasion resistance and strength properties of concrete containing waste foundry sand (WFS) , 2012 .
[12] Amir Hossein Alavi,et al. An evolutionary approach for modeling of shear strength of RC deep beams , 2013 .
[13] Mônica Batista Leite,et al. Prediction of compressive strength of concrete containing construction and demolition waste using artificial neural networks , 2013 .
[14] Qing-feng Liu,et al. Experimental study on the utilization of waste foundry sand as embankment and structural fill , 2019, IOP Conference Series: Materials Science and Engineering.
[15] G. Prabhu,et al. Effects of foundry sand as a fine aggregate in concrete production , 2014 .
[16] Jian Yang,et al. Five-phase modelling for effective diffusion coefficient of chlorides in recycled concrete , 2017, Magazine of Concrete Research.
[17] X. Querol,et al. Environmental impact and potential use of coal fly ash and sub-economical quarry fine aggregates in concrete. , 2018, Journal of hazardous materials.
[18] Geert De Schutter,et al. Effect of used-foundry sand on the mechanical properties of concrete , 2009 .
[19] Mohammed Sonebi,et al. Genetic programming based formulation for fresh and hardened properties of self-compacting concrete containing pulverised fuel ash , 2009 .
[20] N. Gurumoorthy,et al. Micro and mechanical behaviour of Treated Used Foundry Sand concrete , 2016 .
[21] Xiaoe Yang,et al. A modified receptor model for source apportionment of heavy metal pollution in soil. , 2018, Journal of hazardous materials.
[22] Craig H. Benson,et al. HYDRAULIC CONDUCTIVITY OF FOUNDRY SANDS AND THEIR USE AS HYDRAULIC BARRIERS , 2004 .
[23] Mostafa Jalal,et al. RETRACTED ARTICLE: Application of genetic programming (GP) and ANFIS for strength enhancement modeling of CFRP-retrofitted concrete cylinders , 2012, Neural Computing and Applications.
[24] Anirbid Sircar,et al. Engineering properties of concrete with partial utilization of used foundry sand. , 2018, Waste management.
[25] Juan Luis Pérez-Ordóñez,et al. Prediction of the mechanical properties of structural recycled concrete using multivariable regression and genetic programming , 2016 .
[26] Rafat Siddique,et al. Effect of metakaolin and foundry sand on the near surface characteristics of concrete , 2011 .
[27] Bo Xia,et al. Assessing the life cycle CO2 emissions of reinforced concrete structures: Four cases from China , 2018, Journal of Cleaner Production.
[28] Daniel C W Tsang,et al. Novel synergy of Si-rich minerals and reactive MgO for stabilisation/solidification of contaminated sediment. , 2019, Journal of hazardous materials.
[29] Amir Hossein Alavi,et al. Novel Approach to Strength Modeling of Concrete under Triaxial Compression , 2012 .
[30] Ahmet Tuncan,et al. Re-usage of waste foundry sand in high-strength concrete. , 2010, Waste management.
[31] Ivan Felipe Silva dos Santos,et al. Study on waste foundry exhaust sand, WFES, as a partial substitute of fine aggregates in conventional concrete , 2019, Sustainable Cities and Society.
[32] Emadaldin Mohammadi Golafshani,et al. Application of soft computing methods for predicting the elastic modulus of recycled aggregate concrete , 2018 .
[33] Kiang Hwee Tan,et al. Use of waste glass as sand in mortar: Part I – Fresh, mechanical and durability properties , 2013 .
[34] Savaş Erdem,et al. Environmental performance and mechanical analysis of concrete containing recycled asphalt pavement (RAP) and waste precast concrete as aggregate. , 2014, Journal of hazardous materials.
[35] Dengquan Wang,et al. The role of fly ash microsphere in the microstructure and macroscopic properties of high-strength concrete , 2017 .
[36] M. Mavroulidou,et al. Can waste foundry sand fully replace structural concrete sand? , 2019, Journal of Material Cycles and Waste Management.
[37] Peng Hao,et al. Combine ingress of chloride and carbonation in marine-exposed concrete under unsaturated environment: A numerical study , 2019, Ocean Engineering.
[38] A. Rajor,et al. Influence of Fungus on Properties of Concrete Made with Waste Foundry Sand , 2013 .
[39] Rachid Bennacer,et al. Strength, durability, and micro-structural properties of concrete made with used-foundry sand (UFS) , 2011 .
[40] H. Eskandari-Naddaf,et al. ANN and GEP prediction for simultaneous effect of nano and micro silica on the compressive and flexural strength of cement mortar , 2018, Construction and Building Materials.
[41] Silvia Fiore,et al. Foundry processes: the recovery of green moulding sands for core operations , 2003 .
[42] Sudhir Varma,et al. Optimizing asphalt mix design process using artificial neural network and genetic algorithm , 2018 .
[43] Jun Yang,et al. Long-term properties of concrete containing limestone powder , 2017 .
[44] V. K. Bupesh Raja,et al. Utilization of induction furnace steel slag in concrete as coarse aggregate for gamma radiation shielding. , 2019, Journal of hazardous materials.
[45] A. Torres,et al. Effect of foundry waste on the mechanical properties of Portland Cement Concrete , 2017 .
[46] Ricardo Perera,et al. Artificial intelligence techniques for prediction of the capacity of RC beams strengthened in shear with external FRP reinforcement , 2010 .
[47] T. Y. Lo,et al. Manufacturing of sintered lightweight aggregate using high-carbon fly ash and its effect on the mechanical properties and microstructure of concrete , 2016 .
[48] Gurpreet Singh,et al. Effect of waste foundry sand (WFS) as partial replacement of sand on the strength, ultrasonic pulse velocity and permeability of concrete , 2012 .
[49] Y. Ok,et al. The application of machine learning methods for prediction of metal sorption onto biochars. , 2019, Journal of hazardous materials.
[50] S. Kenai,et al. Capillarity of concrete incorporating waste foundry sand , 2013 .
[51] D. Ramkumar,et al. Development of Concrete with Partial Replacement of Fine Aggregate by Waste Foundry Sand , 2020, IOP Conference Series: Materials Science and Engineering.
[52] G. K. Arunvivek,et al. Properties of concrete containing waste foundry sand for partial replacement of fine aggregate in concrete , 2017 .
[53] C. Giosué,et al. Effect of two different sources and washing treatment on the properties of UFS by-products for mortar and concrete production , 2013 .
[54] Yucel Guney,et al. Geoenvironmental behavior of foundry sand amended mixtures for highway subbases. , 2006, Waste management.
[55] Soon-Bark Kwon,et al. Predicting PM10 concentration in Seoul metropolitan subway stations using artificial neural network (ANN). , 2018, Journal of hazardous materials.
[56] Mustafa Sarıdemir. Genetic programming approach for prediction of compressive strength of concretes containing rice husk ash , 2010 .
[57] Jae-E. Yang,et al. Heavy metal adsorption by a formulated zeolite-Portland cement mixture. , 2007, Journal of hazardous materials.
[58] Fatih Özcan,et al. Gene expression programming based formulations for splitting tensile strength of concrete , 2012 .
[59] Q. Wang,et al. The soundness of steel slag with different free CaO and MgO contents , 2017 .
[60] C. Booth,et al. Foundry Sand Utilisation in Concrete Production , 2010 .
[61] Liang Xiao,et al. Carbon-coated montmorillonite nanocomposite for the removal of chromium(VI) from aqueous solutions. , 2019, Journal of hazardous materials.
[62] Miren Etxeberria,et al. Properties of concrete using metallurgical industrial by-products as aggregates , 2010 .
[63] John R. Koza,et al. Genetic programming - on the programming of computers by means of natural selection , 1993, Complex adaptive systems.
[64] Saman Soleimani Kutanaei,et al. Prediction and modeling of mechanical properties in fiber reinforced self-compacting concrete using particle swarm optimization algorithm and artificial neural network , 2016 .
[65] Ji-Qin Ni,et al. A prediction model of ammonia emission from a fattening pig room based on the indoor concentration using adaptive neuro fuzzy inference system. , 2017, Journal of hazardous materials.
[66] M. Guo,et al. Remediation techniques for heavy metal-contaminated soils: Principles and applicability. , 2018, The Science of the total environment.
[67] Amir Hossein Alavi,et al. Formulation of flow number of asphalt mixes using a hybrid computational method , 2011 .
[68] N. Makul,et al. Innovative utilization of foundry sand waste obtained from the manufacture of automobile engine parts as a cement replacement material in concrete production , 2018, Journal of Cleaner Production.
[69] A. Gandomi,et al. New formulations for mechanical properties of recycled aggregate concrete using gene expression programming , 2017 .
[70] Cândida Ferreira,et al. Gene Expression Programming: Mathematical Modeling by an Artificial Intelligence , 2014, Studies in Computational Intelligence.
[71] Rafat Siddique,et al. Properties of concrete containing fungal treated waste foundry sand , 2012 .
[72] Qing-feng Liu,et al. Binding capacity and diffusivity of concrete subjected to freeze-thaw and chloride attack: A numerical study , 2019, Ocean Engineering.
[73] Ricardo Perera,et al. Application of artificial intelligence techniques to predict the performance of RC beams shear strengthened with NSM FRP rods. Formulation of design equations , 2014 .
[74] Özgür Kisi,et al. Evaluation of peak and residual conditions of actively confined concrete using neuro-fuzzy and neural computing techniques , 2018, Neural Computing and Applications.
[75] Abdulkadir Cevik,et al. Modeling mechanical performance of lightweight concrete containing silica fume exposed to high temperature using genetic programming , 2010 .
[76] Seyed Saeed Mahini,et al. Lightweight concrete design using gene expression programing , 2017 .
[77] Mohamed Lachemi,et al. Use of spent foundry sand and fly ash for the development of green self-consolidating concrete , 2011 .
[78] Łukasz Sadowski,et al. Hybrid ultrasonic-neural prediction of the compressive strength of environmentally friendly concrete screeds with high volume of waste quartz mineral dust , 2019, Journal of Cleaner Production.
[79] A. Andrés,et al. Recycling of foundry by-products in the ceramic industry: Green and core sand in clay bricks , 2012 .
[80] G. Prabhu,et al. Mechanical and Durability Properties of Concrete Made with Used Foundry Sand as Fine Aggregate , 2015 .
[81] S. Ji,et al. The Toxic Compounds and Leaching Characteristics of Spent Foundry Sands , 2001 .
[82] Iman Mansouri,et al. Predicting behavior of FRP-confined concrete using neuro fuzzy, neural network, multivariate adaptive regression splines and M5 model tree techniques , 2016, Materials and Structures.
[83] Hamid Eskandari-Naddaf,et al. ANN prediction of cement mortar compressive strength, influence of cement strength class , 2017 .
[84] Gurpreet Singh,et al. Utilization of waste foundry sand (WFS) in concrete manufacturing , 2011 .
[85] H. Eskandari-Naddaf,et al. Effect of cement strength class on the prediction of compressive strength of cement mortar using GEP method , 2019, Construction and Building Materials.
[86] Mehmet Gesoğlu,et al. Empirical modeling of fresh and hardened properties of self-compacting concretes by genetic programming , 2008 .
[87] Gurpreet Singh,et al. Comparative investigation on the influence of spent foundry sand as partial replacement of fine aggregates on the properties of two grades of concrete , 2015 .
[88] Emadaldin Mohammadi Golafshani,et al. Predicting the compressive strength of silica fume concrete using hybrid artificial neural network with multi-objective grey wolves , 2018, Journal of Cleaner Production.
[89] Chi Sun Poon,et al. Influence of lead on stabilization/solidification by ordinary Portland cement and magnesium phosphate cement. , 2018, Chemosphere.
[90] Mulan Mu,et al. Comparison of CO2 emissions from OPC and recycled cement production , 2019, Construction and Building Materials.
[91] Tarun R. Naik,et al. Properties of Field Manufactured Cast-Concrete Products Utilizing Recycled Materials , 2003 .
[92] A. Tropsha,et al. Beware of q2! , 2002, Journal of molecular graphics & modelling.
[93] Jin Xia,et al. Multi-phase modelling of electrochemical rehabilitation for ASR and chloride affected concrete composites , 2019, Composite Structures.
[94] Yong Sik Ok,et al. Targeted removal of organic foulants in landfill leachate in forward osmosis system integrated with biochar/activated carbon treatment. , 2019, Water research.
[95] R. Siddique,et al. Microstructure and properties of concrete using bottom ash and waste foundry sand as partial replacement of fine aggregates , 2014 .
[96] S. B. Beheshti Aval,et al. Estimating Shear Strength of Short Rectangular Reinforced Concrete Columns Using Nonlinear Regression and Gene Expression Programming , 2017 .
[97] Daniel C W Tsang,et al. Sustainable stabilization/solidification of municipal solid waste incinerator fly ash by incorporation of green materials , 2019, Journal of Cleaner Production.
[98] A. Gandomi,et al. Nonlinear Genetic-Based Models for Prediction of Flow Number of Asphalt Mixtures , 2011 .
[99] Angel Irabien,et al. Environmental behaviour of stabilised foundry sludge. , 2004, Journal of hazardous materials.
[100] Eric S. Winkler. A survey of foundry participation in the Massachusetts beneficial use determination process , 1999 .
[101] A. Ravitheja,et al. Effect of Foundry Sand and Mineral Admixtures on Mechanical Properties of Concrete , 2018 .
[102] Mathew P. Tharaniyil,et al. Utilization of Used Foundry Sand in Concrete , 1994 .
[103] Lale Özbakir,et al. Prediction of compressive and tensile strength of limestone via genetic programming , 2008, Expert Syst. Appl..
[104] Daniel C W Tsang,et al. Green remediation of As and Pb contaminated soil using cement-free clay-based stabilization/solidification. , 2019, Environment international.
[105] Arul Arulrajah,et al. Recycled waste foundry sand as a sustainable subgrade fill and pipe-bedding construction material: Engineering and environmental evaluation , 2017 .
[106] Mahmoud Abu Yaman,et al. Predicting the ingredients of self compacting concrete using artificial neural network , 2017 .
[107] Roberto Todeschini,et al. The data analysis handbook , 1994, Data handling in science and technology.
[108] J. M. Khatib,et al. Mechanical Properties of Concrete Containing Foundry Sand , 2001, "SP-200: Fifth CANMET/ACI Conference on Recent Advances in Concrete Technology-Proceeding, Fifth International Conference".
[109] Paul J Tikalsky,et al. Geotechnical and leaching properties of flowable fill incorporating waste foundry sand. , 2008, Waste management.
[110] T. He,et al. Leaching characteristics of steel slag components and their application in cementitious property prediction. , 2012, Journal of hazardous materials.
[111] M. Getahun,et al. Artificial neural network based modelling approach for strength prediction of concrete incorporating agricultural and construction wastes , 2018, Construction and Building Materials.
[112] Sudhakar M. Rao,et al. Re-use of fluoride contaminated bone char sludge in concrete. , 2009, Journal of hazardous materials.
[113] Tarun R. Naik,et al. PRECAST CONCRETE PRODUCTS USING INDUSTRIAL BY-PRODUCTS , 2004 .
[114] Daniel C W Tsang,et al. Low-carbon and low-alkalinity stabilization/solidification of high-Pb contaminated soil , 2018, Chemical Engineering Journal.
[115] J. M. Fernández,et al. A novel use of calcium aluminate cements for recycling waste foundry sand (WFS) , 2013 .
[116] Karthik H. Obla,et al. Green Concrete , 2022 .
[117] Byoung-Gon Kim,et al. The regeneration of waste foundry sand and residue stabilization using coal refuse. , 2012, Journal of hazardous materials.
[118] Francesca Tittarelli,et al. Used Foundry Sand in Cement Mortars and Concrete Production , 2010 .
[119] Amir Hossein Gandomi,et al. New prediction models for concrete ultimate strength under true-triaxial stress states: An evolutionary approach , 2017, Adv. Eng. Softw..
[120] Daniel C W Tsang,et al. The roles of biochar as green admixture for sediment-based construction products , 2019, Cement and Concrete Composites.
[121] Togay Ozbakkaloglu,et al. Evaluation of ultimate conditions of FRP-confined concrete columns using genetic programming , 2016 .
[122] S Gopinath,et al. Durability Study of Concrete using Foundry Waste Sand , 2020 .
[123] Isabel Martínez-Lage,et al. Analytical and genetic programming model of compressive strength of eco concretes by NDT according to curing temperature , 2017 .
[124] A. Rajor,et al. Micro-structural and metal leachate analysis of concrete made with fungal treated waste foundry sand , 2013 .