Stochastic Planning and Modeling for Energy Systems: Methods, Applications, and Developments
Editat de Miadreza Shafie-khahen Limba Engleză Paperback – aug 2026
Additionally, real-world planning challenges, including capacity expansion, microgrid design, and integration of new technologies like hydrogen, batteries, and supercapacitors are examined. Real-world case studies and algorithms are included to demonstrate stochastic workflows and methods. This is a valuable reference for transmission and distribution operators, system planners, market designers, power-system engineers, energy analysts, and MSc-level graduate students in power systems engineering.
- Demonstrates end-to-end stochastic workflows using detailed case studies, including islanded microgrids and high-EV scenarios
- Presents step-by-step treatment of sampling methods, reduction techniques, multistage programming, and risk-measure incorporation through proven algorithms
- Provides software tutorials on implementing Pyomo, Pandapower, GAMS, and PLEXOS
Preț: 946.93 lei
Preț vechi: 1040.58 lei
-9% Precomandă
Puncte Express: 1420
Carte nepublicată încă
Doresc să fiu notificat când acest titlu va fi disponibil:
Se trimite...
Specificații
ISBN-13: 9780443452987
ISBN-10: 0443452989
Pagini: 350
Dimensiuni: 152 x 229 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0443452989
Pagini: 350
Dimensiuni: 152 x 229 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Cuprins
1. Introduction to Stochastic Planning and Modeling in Energy Systems Scope: Concepts, motivations, structure; modern uncertainty sources
2. Characterizing Uncertainty in Energy Systems: Data and Statistical Foundations Scope: Load, renewable, price, and demand-side statistical models; data preprocessing
3. Scenario Generation Techniques: Monte Carlo, Latin Hypercube & Beyond Scope: Sampling-based and quasi-Monte Carlo methods; trade-offs in accuracy vs. cost
4. Scenario Reduction Methods: Clustering, Fast Forward Selection & Distance Metrics Scope: Backward/forward reduction, moment-matching, distance measures
5. Stochastic Investment Planning: Generation, Transmission & Distribution Scope: Multistage programming for capacity expansion; CVaR, robust optimization
6. Operational Planning under Uncertainty: Unit Commitment and Economic Dispatch Scope: Day-ahead and real-time dispatch; renewables, storage, demand response
7. Case Studies in Renewable-Dominant and Islanded Microgrids Scope: High-penetration PV/wind and off-grid microgrids; performance metrics
8. Modeling Electric Vehicle Uncertainty: Charging Behavior & Grid Impact Scope: Aggregate EV load scenarios and distribution impacts
9. Demand-Side Uncertainty and Planning for Flexibility Provision Scope: End-use variability, demand-response design, flexibility markets
10. Stochastic Modeling for Energy Storage and Hydrogen Systems Scope: Battery degradation, supercapacitors, electrolyzer scenarios, flexibility roles
11. Software Tools and Simulation Frameworks for Stochastic Planning Scope: Pyomo, Pandapower, GAMS, PLEXOS tutorials for scenario modeling
12. AI and Data-Driven Methods in Scenario Generation and Reduction Scope: GANs, deep clustering, and other ML techniques for efficient scenarios
13. Market Design, Policy and Regulatory Implications of Stochastic Planning Scope: Tariff structures, capacity markets, and regulatory frameworks under uncertainty
14. Strategic Capacity Expansion Planning under Uncertainty Scope: High-level investment strategies balancing cost, risk, and flexibility
15. Planning for Distributed Energy Resources and Microgrids Scope: Stochastic siting, sizing, and control of DER clusters in diverse contexts
2. Characterizing Uncertainty in Energy Systems: Data and Statistical Foundations Scope: Load, renewable, price, and demand-side statistical models; data preprocessing
3. Scenario Generation Techniques: Monte Carlo, Latin Hypercube & Beyond Scope: Sampling-based and quasi-Monte Carlo methods; trade-offs in accuracy vs. cost
4. Scenario Reduction Methods: Clustering, Fast Forward Selection & Distance Metrics Scope: Backward/forward reduction, moment-matching, distance measures
5. Stochastic Investment Planning: Generation, Transmission & Distribution Scope: Multistage programming for capacity expansion; CVaR, robust optimization
6. Operational Planning under Uncertainty: Unit Commitment and Economic Dispatch Scope: Day-ahead and real-time dispatch; renewables, storage, demand response
7. Case Studies in Renewable-Dominant and Islanded Microgrids Scope: High-penetration PV/wind and off-grid microgrids; performance metrics
8. Modeling Electric Vehicle Uncertainty: Charging Behavior & Grid Impact Scope: Aggregate EV load scenarios and distribution impacts
9. Demand-Side Uncertainty and Planning for Flexibility Provision Scope: End-use variability, demand-response design, flexibility markets
10. Stochastic Modeling for Energy Storage and Hydrogen Systems Scope: Battery degradation, supercapacitors, electrolyzer scenarios, flexibility roles
11. Software Tools and Simulation Frameworks for Stochastic Planning Scope: Pyomo, Pandapower, GAMS, PLEXOS tutorials for scenario modeling
12. AI and Data-Driven Methods in Scenario Generation and Reduction Scope: GANs, deep clustering, and other ML techniques for efficient scenarios
13. Market Design, Policy and Regulatory Implications of Stochastic Planning Scope: Tariff structures, capacity markets, and regulatory frameworks under uncertainty
14. Strategic Capacity Expansion Planning under Uncertainty Scope: High-level investment strategies balancing cost, risk, and flexibility
15. Planning for Distributed Energy Resources and Microgrids Scope: Stochastic siting, sizing, and control of DER clusters in diverse contexts