Applied Machine Learning in Chemical Process Engineering: A Practical Approach
Editat de Zafar Said, Muhammad Farooqen Limba Engleză Paperback – iun 2026
- Provides an integrated view of chemical and process engineering basics and machine learning
- Provides a complete reference on machine learning foundations and chemical and process engineering applications
- Includes real-world worked examples and case studies to show how machine learning techniques are applied in process design, optimization, and control
- Evaluates the difficulties, ethical implications, and prospects of chemical industry machine learning integration
- Provides troubleshooting and solutions to common problems associated with data collecting, preprocessing, and model deployment in live operations
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Specificații
ISBN-13: 9780443339431
ISBN-10: 0443339430
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
ISBN-10: 0443339430
Pagini: 350
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Cuprins
1. Introduction to Machine Learning for Chemical Engineers
2. Data Handling and Preprocessing in Chemical Datasets
3. Predictive Modeling for Chemical Processes
4. Unsupervised Learning and Pattern Recognition in Chemical Data
5. Process Optimization and Control using Machine Learning
6. Molecular Simulations and Deep Learning
7. Reinforcement Learning in Process Design
8. Challenges and Ethical Considerations in Implementing ML
9. Case Studies: Breakthroughs at the Intersection of ML and Chemical Engineering
10. Physics-Informed Neural Networks in Chemical Engineering
11. Explainable AI and Sustainable Computing in Machine Learning
12. Future of AI in Chemical and Process Engineering Scope: Future trends and technologies in ML for chemical engineering
2. Data Handling and Preprocessing in Chemical Datasets
3. Predictive Modeling for Chemical Processes
4. Unsupervised Learning and Pattern Recognition in Chemical Data
5. Process Optimization and Control using Machine Learning
6. Molecular Simulations and Deep Learning
7. Reinforcement Learning in Process Design
8. Challenges and Ethical Considerations in Implementing ML
9. Case Studies: Breakthroughs at the Intersection of ML and Chemical Engineering
10. Physics-Informed Neural Networks in Chemical Engineering
11. Explainable AI and Sustainable Computing in Machine Learning
12. Future of AI in Chemical and Process Engineering Scope: Future trends and technologies in ML for chemical engineering