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Математичне моделювання процесу нанофільтрації: аналітичний огляд

Serhii Huliienko1, Yaroslav Kornienko1, Svitlana Muzyka1, Kateryna Holubka2
Affiliation: 
1 National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute”, 37 Beresteiskyi Ave., 03056 Kyiv, Ukraine 2 University of Montpellier, 163 Auguste Broussonnet Street - 34090, Montpellier, France sergiiguliienko@gmail.com
DOI: 
https://doi.org/10.23939/chcht18.02.187
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Abstract: 
Проведено огляд публікацій, присвячених математичному моделюванню процесу нанофільтрації, встановлено переваги, обмеження та сфери застосування різних підходів до моделювання. Виявлено, що найефективніші підходи ґрунтуються на розширеному рівняння Нернста-Планка, рівновазі Доннана, а також методах обчислювальної гідродинаміки та молекулярної динаміки. Розглянуто використання програмного забезпечення для вирішення завдань моделювання нанофільтрації.
References: 

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