Knowledge is Power in Four Dimensions: Models to Forecast Future Paradigm

Knowledge is Power in Four Dimensions: Models to Forecast Future Paradigm

With Artificial Intelligence Integration in Energy and Other Use Cases

Rahmani, Farhang Mossavar; Zohuri, Bahman; Behgounia, Farahnaz

Elsevier Science & Technology

07/2022

998

Mole

Inglês

9780323951128

15 a 20 dias

450

Descrição não disponível.
Part I: Infrastructure Concepts
1. Knowledge is Power
2. A General Approach to Business Resilience System (BRS)
3. Data Warehousing, Data Mining, Data Modeling, and Data Analytics
4. Structured and Unstructured Data Processing
5. Mathematical Modeling Driven Predication
6. Fuzzy Logics: A New Method of Predictions
7. Neural Network Concept
8. Population - Human Growth Driving Ecology
9. Economic Factors
10. Risk Management, Risk Assessment, and Risk Analysis
11. Today's Fast-Paced Technology


Part II: The Impact of Energy on Tomorrow's World
12. Understanding of Energy
13. Economic Impact of Energy
14. Renewable Energy
15. Non-Renewable Energy
16. Nuclear Energy as Non-Renewable Energy Source
17. Energy Storage Technologies and their Role in Renewable Integration

Part III: The Mathematical Approach and Modeling
18. Predictive Analytics
19. Engineering Statistics
20. Data and Data Collection Driven Information
21. Statistical Forecasting - Regression and Time Series Analysis
22. Introduction to Forecasting: The Simplest Models
23. Notes on Linear Regression Analysis
24. Principles and Risks of Forecasting
25. Artificial Intelligence Driving Predictive and Forecasting Paradigm

Part IV: Python Programming Driven Artificial Intelligence
26. Python Programming Driven Artificial Intelligence
27. Artificial Intelligence, Machine Learning and Deep Learning Driving Big Data
28. Artificial Intelligence, Machine Learning and Deep Learning Use Cases
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Business resilience system; data analytics; fuzzy logic; energy forecasting; energy management; data mining; economic factors; risk management; climate change; forecasting