Будь ласка, використовуйте цей ідентифікатор, щоб цитувати або посилатися на цей матеріал:
http://elartu.tntu.edu.ua/handle/lib/47577
Назва: | High-performance technologies of modeling and identification of complex multi-component systems and processes |
Автори: | Lupenko, Serhii Petryk, Mykhaylo Legrand, André Pierre Khimich, Oleksandr |
Приналежність: | Politechnika Opolska |
Бібліографічний опис: | Serhii Lupenko, Mykhaylo Petryk, André Pierre Legrand, Oleksandr Khimich. High-performance technologies of modeling and identification of complex multi-component systems and processes. Opole : Opole University of Technology, 2024. 202 p. |
Дата публікації: | 2024 |
Дата внесення: | 15-січ-2025 |
Видавництво: | Publishing House of the Opole University of Technology |
Країна (код): | PL |
Місце видання, проведення: | Opole |
Кількість сторінок: | 202 |
URI (Уніфікований ідентифікатор ресурсу): | http://elartu.tntu.edu.ua/handle/lib/47577 |
ISBN: | 978-83-66903-75-3 |
ISSN: | 1429-6063 |
Власник авторського права: | © Copyright by Politechnika Opolska, 2024 |
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Adsorption, 24(6), 517–530.https://doi.org/10.1007/s10450-018-9962-1 |
Тип вмісту: | Monograph |
Розташовується у зібраннях: | Наукові публікації працівників кафедри програмної інженерії |
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