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Modeling the Efficacy of Geopolymer Mosquito Repellent Strips Leachate Distribution Using Meta-heuristic Optimization

  • D. K. D. B. RupiniEmail author
  • T. Vamsi Nagaraju
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 1048)

Abstract

Many mosquito repellents were available in the markets in various forms such as coils, plug-in repellents, papers, creams, and other repellent imparted synthetics and fibers are in vogue. Moreover, all the aforementioned repellents were used in in-doors, applying for human bodies and some of them are imparted in clothes and accessories. However, one should give prime importance to control mosquitoes at their breeding stage itself in stagnant waters or drain waters. In this context, geopolymer soils imparted with mosquito repellent was developed to eradicate mosquitoes at their breeding stage itself. This paper presents the leachate distribution assessment of VR-geo mosquito repellent strip using swarm-assisted multi-linear regression. A model equation has been developed for the prediction of leachate distribution in terms of pH using input parameters like volume of the geopolymer repellent strip, molarity of NaOH, Na2SiO3/NaOH ratio, and alkali-activator content.

Keywords

Geopolymerization Leachate assessment VR-geo mosquito repellent PSO 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2020

Authors and Affiliations

  1. 1.S. R. K. R. Engineering CollegeBhimavaramIndia

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