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Machine Learning and Data Analysis for Energy Efficiency in Buildings: Intelligent Operation, Maintenance, and Optimization of Building Energy Systems: Advances in Intelligent Energy Systems

Autor Tianyi Zhao, Chengyu Zhang, Ben Jiang
en Limba Engleză Paperback – sep 2025
Machine Learning and Data Analysis for Energy Efficiency in Buildings: Intelligent Operation, Maintenance, and Optimization of Building Energy Systems introduces data basics, from selecting and evaluating data to the identification and repair of abnormalities. Other sections cover data mining applied to energy forecasting, including long- and short-term predictions, the introduction of occupant-focused behavior analysis, and current methods for supply and demand applications. Case studies are included in each part to assist in evaluation and implementation of these techniques across building energy systems.

Working from the fundamentals of big data analysis to a complete method for building energy assessment, flexibility, and management, this book provides students, researchers, and professionals with an essential, cutting-edge resource on this important technology.

  • Builds from data basics to complex solutions and applications for energy efficiency in building systems
  • Includes step-by-step methods for data anomaly and fault identification, repair, and maintenance
  • Provides real-world case studies and applications for immediate use in research and industry
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Specificații

ISBN-13: 9780443289538
ISBN-10: 0443289530
Pagini: 250
Dimensiuni: 152 x 229 mm
Editura: ELSEVIER SCIENCE
Seria Advances in Intelligent Energy Systems


Cuprins

Part I: Data Basics
1. Introduction
2. Data Preparation
3. Abnormal Data Identification and Repair
4. Classification and Definition of Data Type
5. Identification and Repair of Abnormal Energy Consumption Data
6. Case Studies in Different Buildings

Part II: Data Mining
7. Energy Consumption Forecasting
8. Short-time-scale Energy Consumption Prediction (for O&M Regulation)
9. Long-time-scale Energy Consumption Prediction (for Design Evaluation)
10. Case Studies in Different Scenarios

Part III: Data Application
11. Review of Evaluation and Methods for Energy Supply and Demand Matching
12. Energy Supply and Demand Matching Evaluation Methods: Power-load Matching Coefficient
13. Optimization of Supply-side Energy Schemes
14. Optimization of Demand-side Energy Use Solutions
15. Conclusions