Issue 59, 2019

A novel method for total chlorine detection using machine learning with electrode arrays

Abstract

Chlorine is a common natural water disinfectant, but it reacts with ammonia's nitrogen to form chloramines, which affects the accuracy of free chlorine measurement. In this case, total chlorine can be used as an indicator to evaluate the content of the effective disinfectant. In this article, a novel method to detect total chlorine using an electrode array in water has been proposed. We made the total chlorine sensor and captured the cyclic voltammetry curve of the electrode at different concentrations of chlorine ammonia. Principal component analysis and a peak sampling method were used to extract cyclic voltammetry curves, and the total chlorine prediction model was established by support the vector machine and extreme learning machine. The results show that the best predicting power was achieved by support vector regression with principal component analysis (R2 = 0.9689). This study provides a simple method for determining total chlorine under certain conditions and likely can be adapted to monitor disinfection and water treatment processes as well.

Graphical abstract: A novel method for total chlorine detection using machine learning with electrode arrays

Supplementary files

Article information

Article type
Paper
Submitted
22 Aug 2019
Accepted
11 Oct 2019
First published
24 Oct 2019
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2019,9, 34196-34206

A novel method for total chlorine detection using machine learning with electrode arrays

Z. Li, S. Huang and J. Chen, RSC Adv., 2019, 9, 34196 DOI: 10.1039/C9RA06609H

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