The Use of Case-Based Reasoning for the Choice of Methods for Cleaning Exhaust Gases from Sulfur and Nitrogen Oxides

Computer simulation in the chemical technology and engineering
3rd International Scientific Conference «Chemical Technology and Engineering»: Proceedings – June 21–24th, 2021, Lviv, Ukraine – Lviv: Lviv Polytechnic National University, 2021, pp. 35–37

Authors

First and Last Name Academic degree E-mail Affiliation
Yurii Beznosyk Ph.D. yu_beznosyk [at] ukr.net National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute”
Kyiv, Ukraine
Liudmyla Bugaieva Ph.D. Bugaeva_l [at] ukr.net National Technical University of Ukraine “Igor Sikorsky Kyiv Polytechnic Institute”
Kyiv, Ukraine

I and my co-authors (if any) authorize the use of the Paper in accordance with the Creative Commons CC BY license

First published on this website: 11.04.2021 - 21:33
Abstract

At present, artificial intelligence methods are implemented in many computer programs. One such intelligent technique is Case-Based Reasoning (CBR). This approach is proposed by the authors for use in an intelligent system to choose cleaning methods for exhaust gases from nitrogen and sulfur oxides.

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