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Artificial Intelligence‐Enabled Analytical Technologies for Chemical Engineering

Sonia Jenifer RayenDepartment of Computer Science and Engineering Sathyabama Institute of Science and Technology Chennai Tamil Nadu IndiaRavikumar JayabalDepartment of Mechanical Engineering Academy of Maritime Education and Training, AMET University Chennai Tamil Nadu IndiaPradeep Kumar SinghDepartment of Mechanical Engineering Institute of Engineering and Technology GLA University Mathura Uttar Pradesh 281406 IndiaVinod Kumar Naidu PamuluriPragati Engineering College ADB Road Surampalem, Near Peddapuram, Kakinada District Andhra Pradesh 533437 IndiaSathish KannanDepartment of Mechanical Engineering Amity University Dubai Dubai 345019 United Arab EmiratesManikandan AyyarDepartment of Chemistry Centre For Material Chemistry Karpagam Academy of Higher Education Coimbatore Tamil Nadu IndiaShanmugapriya D.Vicerrectoría De Investigación y Postgrado Universidad De La Serena La Serena ChileSanthamoorthy M.School of Chemical Engineering Yeungnam University Gyeongsan Republic of KoreaMirjalol IsmoilovDepartment of Transport Systems Urgench State University Urgench Uzbekistan
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ABSTRACT Artificial intelligence (AI) is rapidly advancing analytical technologies in chemical engineering by enabling data‐driven interpretation, automated workflows, and real‐time process decision‐making. The growing use of high‐throughput platforms, including liquid chromatography (LC)–MS, NMR, Raman, and FTIR spectroscopy, chromatography, electrochemical systems, and microfluidic devices, demands intelligent data‐processing frameworks. Machine learning, deep learning, and generative AI address challenges, including spectral deconvolution, peak resolution, matrix interference suppression, retention‐time prediction, and multicomponent quantification. This review examines AI‐enabled analytical technologies relevant to chemical engineering applications, emphasizing mechanistic insights, performance enhancement, instrument integration, and scalability. Challenges in reproducibility, interpretability, and validation are discussed, along with prospects for autonomous and self‐optimizing analytical systems.

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