Data-Driven Machine Learning Applications in Thermochemical Conversion Processes: Emerging Technologies and Materials in Thermal Engineering
Editat de Jude Okolie, Adewale Giwa, Patrick Okoye, Bilainu Oboirienen Limba Engleză Paperback – mar 2026
- Presents a comprehensive perspective by integrating the disciplines of geology, engineering, policy, and economics to provide a nuanced, comprehensive volume on the subject
- Bridges the gap between data science and thermochemical process engineering
- Spans foundational features and digs deeper on root causes and remedies to challenges and limitations to yield a practical publication for a varied audience
- Uses cutting-edge characterization and modelling tools along with novel methodologies to make the subject practical, easy-to-understand and implement
- Serves as a valuable resource for professionals, researchers, students, educators, and policymakers
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Specificații
ISBN-13: 9780443333729
ISBN-10: 0443333726
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Seria Emerging Technologies and Materials in Thermal Engineering
ISBN-10: 0443333726
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Seria Emerging Technologies and Materials in Thermal Engineering
Cuprins
1. Machine Learning Introduction
2. Higher Heating Value Prediction
3. Catalysts Screening and Optimization
4. Biochar Properties Prediction
5. Hydrothermal Gasification and Pyrolysis Process Conditions Optimization
6. Kinetics And Reaction Mechanism Study with Machine Learning
7. Machine Learning Applications in Combustion (Process Parameter Predictions and Image Processing)
8. Machine Learning Applications in Nanomaterial Preparation for Thermochemical Processes
9. Machine Learning Applications in Emerging Thermochemical Technologies
10. Integrating Machine Learning into Biorefinery Operations
11. Bioinformatics Approaches for Microbial-Driven Thermochemical Conversion
12. Machine Learning Applications in Microfluidic Thermochemical Reactors
13. Machine Learning for Advancing Techno-Economic and Lifecycle Assessment of Thermochemical Conversion Processes
14. Energy Efficiency and Heat Integration
15. Machine Learning Application in Feedstock Selection and Durability
2. Higher Heating Value Prediction
3. Catalysts Screening and Optimization
4. Biochar Properties Prediction
5. Hydrothermal Gasification and Pyrolysis Process Conditions Optimization
6. Kinetics And Reaction Mechanism Study with Machine Learning
7. Machine Learning Applications in Combustion (Process Parameter Predictions and Image Processing)
8. Machine Learning Applications in Nanomaterial Preparation for Thermochemical Processes
9. Machine Learning Applications in Emerging Thermochemical Technologies
10. Integrating Machine Learning into Biorefinery Operations
11. Bioinformatics Approaches for Microbial-Driven Thermochemical Conversion
12. Machine Learning Applications in Microfluidic Thermochemical Reactors
13. Machine Learning for Advancing Techno-Economic and Lifecycle Assessment of Thermochemical Conversion Processes
14. Energy Efficiency and Heat Integration
15. Machine Learning Application in Feedstock Selection and Durability