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Nodirbek, Yusupbekov; Gulyamov, Shukhrat; and Doshchanova, Malika
"NEURO-FUZZY MODELING FOR PREDICTIVE CONTROL SYSTEMS WITH COMPLEX TECHNOLOGICAL PROCESSES AND PRODUCTION,"
Chemical Technology, Control and Management: Vol. 2020
, Article 7.
Available at: https://uzjournals.edu.uz/ijctcm/vol2020/iss1/7