Machine Learning and Hybrid Modelling for Reaction Engineering
Theory and Applications
Ehecatl Antonio del Río Chanona editor Dongda Zhang editor
Format:Hardback
Publisher:Royal Society of Chemistry
Published:20th Dec '23
Currently unavailable, and unfortunately no date known when it will be back
Over the last decade, there has been a significant shift from traditional mechanistic and empirical modelling into statistical and data-driven modelling for applications in reaction engineering. In particular, the integration of machine learning and first-principle models has demonstrated significant potential and success in the discovery of (bio)chemical kinetics, prediction and optimisation of complex reactions, and scale-up of industrial reactors.
Summarising the latest research and illustrating the current frontiers in applications of hybrid modelling for chemical and biochemical reaction engineering, Machine Learning and Hybrid Modelling for Reaction Engineering fills a gap in the methodology development of hybrid models. With a systematic explanation of the fundamental theory of hybrid model construction, time-varying parameter estimation, model structure identification and uncertainty analysis, this book is a great resource for both chemical engineers looking to use the latest computational techniques in their research and computational chemists interested in new applications for their work.
ISBN: 9781839165634
Dimensions: unknown
Weight: 2288g
440 pages