Quickly and easily predict emerging contaminant concentrations in wastewater with artificial intelligence

Machine learning approaches for predicting the behavior of new trace substances
Credit: Korea Institute of Science and Technology(KIST)

Clustering and Predictive Artificial Intelligence Predicts Characterization of Emerging Contaminants in Wastewater. Expected to be used in water treatment facilities by shortening difficult analytical procedures.

The global consumption of pharmaceuticals is growing rapidly every year, reaching 4 billion doses in 2020. As more and more pharmaceuticals are metabolized by the human body and enter sewage and wastewater treatment plants, the amount and types of trace substances found in them are also increasing. When these trace substances enter rivers and oceans and are used as water sources, they can have harmful effects on the environment and human health, including carcinogenesis and endocrine disruption. Therefore, technologies are needed to quickly and accurately predict the properties and behavior of these trace substances, but analyzing unknown trace substances requires expensive equipment, skilled experts, and a long time.

The Korea Institute of Science and Technology (KIST) announced that a team led by Hong Seok-won, head of the Water Resources and Cycle Research Center, and Son Moon, a senior researcher, has developed a technology to classify emerging trace substances according to their physicochemical properties and predict their concentrations using clustering and prediction-based artificial intelligence technology.

The researchers used self-organizing maps, an AI technique that clusters data into maps based on their similarities, to classify 29 known trace substances, including medicinal compounds and caffeine, based on information such as physicochemical properties, functional groups, and biological reaction mechanisms. Random forests, a machine learning technique that classifies data into subsets, were then further built to predict the properties and concentration changes of new trace substances. If a new trace substance belongs to a cluster in the self-organizing map, the properties of other substances in that cluster can be used to predict how the properties and concentration of the new trace substance will change.

As a result of applying this clustering and prediction AI model (self-organizing map and random forest) to 13 new trace substances, the prediction accuracy of about 0.75 was excellent, far exceeding the prediction accuracy of 0.40 of existing AI techniques using biological information.

Compared to traditional prediction methods based on formulas, the KIST research team’s data-driven analysis model has the advantage of only inputting the physicochemical properties of trace substances and efficiently identifying how the concentration of new trace substances will change in the sewage treatment process through clustering with substances with similar data. In addition, the data-driven AI model can be used in the future to predict the concentration of new substances such as drugs that are of social concern.

“It can be applied not only to actual wastewater treatment plants, but also to most water treatment-related facilities where new trace substances exist, and can provide quick and accurate data in the policy-making process for related regulations,” said Dr. Seokwon Hong and Dr. Moon Son (co-corresponding authors) of KIST. “Since it utilizes machine learning technology, the accuracy of the prediction will improve as relevant data is accumulated.”

KIST was established in 1966 as the first government-funded research institute in Korea. KIST now strives to solve national and social challenges and secure growth engines through leading and innovative research. For more information, please visit KIST’s website at https://eng.kist.re.kr/

This study was supported by the Korea Environment Industry & Technology Institute through the “Project for developing innovative drinking water and wastewater technologies,” funded by the Korea Ministry of Environment [Grant No. 2019002710010], and the National Research Foundation of Korea (NRF) grant, funded by the Korean government (MSIT) [No. 2021R1C1C2005643]. The results were published in the October issue of the npj Clean Water (IF: 11.4, top 1.5% in JCR Water Resources).

Journal: npj Clean Water
DOI: 10.1038/s41545-023-00282-6
Article Title: Clustering micropollutants and estimating rate constants of sorption and biodegradation using machine learning approaches
Article Publication Date: 28-Oct-2023

Media Contact

Eunhye Bae
National Research Council of Science & Technology
eunae@nst.re.kr

www.nst.re.kr

Expert Contacts

Dr. Hong, Seok-won
Korea Institute of Science and Technology (KIST)
swhong@kist.re.kr
Office: +82-2-958-5844

Dr. Son, Moon
Korea Institute of Science and Technology (KIST)
moonson@kist.re.kr
Office: +82-2-958-5833

www.kist.re.kr

Media Contact

Eunhye Bae
National Research Council of Science & Technology

All latest news from the category: Ecology, The Environment and Conservation

This complex theme deals primarily with interactions between organisms and the environmental factors that impact them, but to a greater extent between individual inanimate environmental factors.

innovations-report offers informative reports and articles on topics such as climate protection, landscape conservation, ecological systems, wildlife and nature parks and ecosystem efficiency and balance.

Back to home

Comments (0)

Write a comment

Newest articles

Looking inside battery cells

The power of combining different views. Lithium-Ion batteries presently are the ubiquitous source of electrical energy in mobile devices, and the key technology for e-mobility and energy storage. Massive interdisciplinary…

New snail-inspired robot can climb walls

A robot, designed to mimic the motion of a snail, has been developed by researchers at the University of Bristol. Adding to the increasing innovative new ways robots can navigate,…

New technique improves finishing time for 3D printed machine parts

North Carolina State University researchers have demonstrated a technique that allows people who manufacture metal machine parts with 3D printing technologies to conduct automated quality control of manufactured parts during…

Partners & Sponsors