Multi-objective Bayesian optimization of super hydrophobic coatings on asphalt concrete surfaces

Author:

Nahvi Ali1,Sadoughi Mohammad Kazem2,Arabzadeh Ali1,Sassani Alireza1,Hu Chao3,Ceylan Halil4,Kim Sunghwan5

Affiliation:

1. Civil, Construction and Environmental Engineering, 176 Town Engineering Building, Iowa State University, Ames, IA 50011-3232, USA

2. Mechanical Engineering, Black Engineering Building, Iowa State University, Ames, IA 50011, USA

3. Mechanical Engineering, Electrical and Computer Engineering (Courtesy), 2026 Black Engineering Building, Iowa State University, Ames, IA 50011, USA

4. Construction and Environmental Engineering, ISU Site Director for FAA PEGASAS (Partnership to Enhance General Aviation Safety, Accessibility and Sustainability) Center of Excellence (COE) on General Aviation, Director of Program for Sustainable Pavement Engineering and Research (PROSPER), 406 Town Engineering Building, Iowa State University, Ames, IA 50011-3232, USA

5. Institute for Transportation, 24 Town Engineering Building, Iowa State University, Ames, IA 50011-3232, USA

Abstract

Abstract Conventional snow removal strategies add direct and indirect expenses to the economy through profit lost due to passenger delays costs, pavement durability issues, contaminating the water runoff, and so on. The use of superhydrophobic (super-water-repellent) coating methods is an alternative to conventional snow and ice removal practices for alleviating snow removal operations issues. As an integrated experimental and analytical study, this work focused on optimizing superhydrophobicity and skid resistance of hydrophobic coatings on asphalt concrete surfaces. A layer-by-layer (LBL) method was utilized for spray depositing polytetrafluoroethylene (PTFE) on an asphalt concrete at different spray times and variable dosages of PTFE. Water contact angle and coefficient of friction at the microtexture level were measured to evaluate superhydrophobicity and skid resistance of the coated asphalt concrete. The optimum dosage and spay time that maximized hydrophobicity and skid resistance of flexible pavement while minimizing cost were estimated using a multi-objective Bayesian optimization (BO) method that replaced the more costly experimental procedure of pavement testing with a cheap-to-evaluate surrogate model constructed based on kriging. In this method, the surrogate model is iteratively updated with new experimental data measured at proper input settings. The result of proposed optimization method showed that the super water repellency and coefficient of friction were not uniformly increased for all the specimens by increasing spray time and dosage. In addition, use of the proposed multi-objective BO method resulted in hydrophobicity and skid resistance being maximally augmented by approximately 23% PTFE dosage at a spray time of 5.5 s. Highlights Effects of spray time and dosage on the hydrophobicity and friction of asphalt were investigated. A layer-by-layer method was utilized for spray depositing polytetrafluoroethylene on an asphalt concrete. The optimum dosage and spay time were estimated by using a multi-objective Bayesian optimization method. An acquisition function that can tackle problems involving multiple objective functions was proposed. The optimum hydrophobicity and skid resistance were achieved with 23% PTFE dosage and at a spray time of 5.5 s.

Funder

Iowa State University

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computer Graphics and Computer-Aided Design,Human-Computer Interaction,Engineering (miscellaneous),Modelling and Simulation,Computational Mechanics

Reference42 articles.

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