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Applications of Physics-Informed Machine Learning in Chemical Engineering.
紀錄類型:
書目-語言資料,手稿 : Monograph/item
正題名/作者:
Applications of Physics-Informed Machine Learning in Chemical Engineering./
作者:
Ansari, Mehrad.
面頁冊數:
1 online resource (159 pages)
附註:
Source: Dissertations Abstracts International, Volume: 85-03, Section: B.
Contained By:
Dissertations Abstracts International85-03B.
標題:
Chemical engineering. -
電子資源:
click for full text (PQDT)
ISBN:
9798380314978
Applications of Physics-Informed Machine Learning in Chemical Engineering.
Ansari, Mehrad.
Applications of Physics-Informed Machine Learning in Chemical Engineering.
- 1 online resource (159 pages)
Source: Dissertations Abstracts International, Volume: 85-03, Section: B.
Thesis (Ph.D.)--University of Rochester, 2023.
Includes bibliographical references
Traditionally, testing of a given scientific hypothesis was hard due to the scarcity and limitations of the data that each experiment could produce. Today, experimental data collection at higher quantities, yet at lower relative costs has given a rise to data-driven modeling approaches. The main shortcoming of these black-box data-driven models is their complicated interpretability, mainly due to lacking a connection to the system's underlying physics. In contrast, physics-based models try to generate predictive data by solving complex mathematical formulations that are derived based on the conservation laws and physical principles. Regardless of their complexity, these models are still a proxy representation of a biased physical reality and in many cases, they fail at replicating the natural phenomena to the full extent. In this dissertation, the two approaches are combined over a variety of different problems relevant to chemical engineering, with the key idea of mitigating the disadvantages of using purely physics-based or data-driven models. This research demonstrates on flexibility of machine learning in application to computational fluid dynamics, epidemiological modeling, and peptide design.
Electronic reproduction.
Ann Arbor, Mich. :
ProQuest,
2024
Mode of access: World Wide Web
ISBN: 9798380314978Subjects--Topical Terms:
555952
Chemical engineering.
Subjects--Index Terms:
CheminformaticsIndex Terms--Genre/Form:
554714
Electronic books.
Applications of Physics-Informed Machine Learning in Chemical Engineering.
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Traditionally, testing of a given scientific hypothesis was hard due to the scarcity and limitations of the data that each experiment could produce. Today, experimental data collection at higher quantities, yet at lower relative costs has given a rise to data-driven modeling approaches. The main shortcoming of these black-box data-driven models is their complicated interpretability, mainly due to lacking a connection to the system's underlying physics. In contrast, physics-based models try to generate predictive data by solving complex mathematical formulations that are derived based on the conservation laws and physical principles. Regardless of their complexity, these models are still a proxy representation of a biased physical reality and in many cases, they fail at replicating the natural phenomena to the full extent. In this dissertation, the two approaches are combined over a variety of different problems relevant to chemical engineering, with the key idea of mitigating the disadvantages of using purely physics-based or data-driven models. This research demonstrates on flexibility of machine learning in application to computational fluid dynamics, epidemiological modeling, and peptide design.
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click for full text (PQDT)
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