Hybrid offline/online methods for optimization under uncertainty /
Balancing the solution-quality/time trade-off and optimizing problems which feature offline and online phases can deliver significant improvements in efficiency and budget control. Offline/online integration yields benefits by achieving high quality solutions while reducing online computation time....
Clasificación: | Libro Electrónico |
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Autor principal: | |
Autor Corporativo: | |
Formato: | Electrónico eBook |
Idioma: | Inglés |
Publicado: |
Amsterdam, Netherlands :
IOS Press,
2022.
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Colección: | Frontiers in artificial intelligence and applications ;
v. 349. Frontiers in artificial intelligence and applications. Dissertations in artificial intelligence. |
Temas: | |
Acceso en línea: | Texto completo |
Tabla de Contenidos:
- Intro
- Title Page
- Abstract
- Contents
- Introduction
- Context
- Contribution
- Outline
- Related Work
- Optimization Under Uncertainty
- Robust Optimization
- Stochastic Optimization and Sequential Decision Problems
- Sampling and Sample Average Approximation
- Two-Stage Stochastic Programming
- Multistage Stochastic Programming
- Stochastic Dynamic Programming
- Markov Decision Processes
- Towards Online Stochastic Optimization
- Online Stochastic Optimization
- Online Anticipatory Algorithms
- Integrated Offline/Online Decision-Making in Complex Systems
- Motivating Examples
- Offline/Online Models
- Optimization Models under Uncertainty for EMS
- Distributed Generation and Virtual Power Plants
- Optimization Techniques
- Offline/Online Integration in Optimization under Uncertainty
- Introduction
- Strategic and Operational Decisions
- Model Description and Motivations
- Baseline Model: Formal Description
- Flattened Problem
- Offline Problem
- Online Heuristic
- Improving Offline/Online Integration Methods
- ANTICIPATE
- TUNING
- ACKNOWLEDGE
- ACTIVE
- Method Comparison
- Instantiating the Integrated Offline/Online Methods
- Distributed Energy System: the Virtual Power Plant Case Study
- Instantiating the Baseline Model
- Instantiating ANTICIPATE
- Instantiating TUNING
- Instantiating ACKNOWLEDGE
- Instantiating ACTIVE
- Results for the VPP
- Experimental Setup
- Discussion
- The Vehicle Routing Problem Case Study
- Instantiating the Baseline Model
- Instantiating ANTICIPATE
- Instantiating TUNING
- Instantiating ACKNOWLEDGE
- Instantiating ACTIVE
- Results for the VRP
- Experimental Setup
- Discussion
- Trade-Offs of Online Anticipatory Algorithms
- Introduction
- Motivations of ``Taming"" an Online Anticipatory Algorithm
- Offline Information Availability
- Building Block Techniques
- Probability Estimation for Scenario Sampling
- Building a Contingency Table
- Efficient Online Fixing Heuristic
- Deriving the FIXING Heuristic
- Formal Method Description
- ANTICIPATE-D
- CONTINGENCY
- CONTINGENCY-D
- Instantiating the Methods
- Instantiating the Methods for the VPP Energy Problem
- Instantiating the Baseline Model
- The Models of Uncertainty
- Instantiating ANTICIPATE
- Instantiating ANTICIPATE-D
- Instantiating CONTINGENCY
- Instantiating CONTINGENCY-D
- Results for the VPP
- Experimental Setup
- Discussion
- The Traveling Salesman Problem Case Study
- Instantiating the Baseline Model
- The Models of Uncertainty
- Instantiating ANTICIPATE
- Results for the TSP
- Experimental Setup
- Discussion
- Concluding Remarks & Future Works
- Bibliography