Yang et al., 2020 - Google Patents
Reinforcement learning in sustainable energy and electric systems: A surveyYang et al., 2020
- Document ID
- 4348535368807506084
- Author
- Yang T
- Zhao L
- Li W
- Zomaya A
- Publication year
- Publication venue
- Annual Reviews in Control
External Links
Snippet
The dynamic nature of sustainable energy and electric systems can vary significantly along with the environment and load change, and they represent the features of multivariate, high complexity and uncertainty of the nonlinear system. Moreover, the integration of intermittent …
- 230000002787 reinforcement 0 title abstract description 100
Similar Documents
Publication | Publication Date | Title |
---|---|---|
Yang et al. | Reinforcement learning in sustainable energy and electric systems: A survey | |
Mason et al. | A multi-objective neural network trained with differential evolution for dynamic economic emission dispatch | |
Du et al. | A novel asynchronous control for artificial delayed Markovian jump systems via output feedback sliding mode approach | |
Fujimoto et al. | Distributed energy management for comprehensive utilization of residential photovoltaic outputs | |
Long et al. | A scenario-based distributed stochastic MPC for building temperature regulation | |
Jiang et al. | Deep transfer learning for thermal dynamics modeling in smart buildings | |
Fan et al. | Adaptive nearly optimal control for a class of continuous-time nonaffine nonlinear systems with inequality constraints | |
Li et al. | Data-oriented distributed overall optimization for large-scale HVAC systems with dynamic supply capability and distributed demand response | |
Pfannschmidt et al. | Learning context-dependent choice functions | |
Iksan et al. | Home energy management system: A framework through context awareness | |
Yang et al. | Binary teaching-learning based optimization for power system unit commitment | |
Andronchev et al. | MANAGEMENT BY THE EDUCATIONAL PROCESS OF A UNIVERSITY BY MEANS OF INFORMATION AND COMMUNICATION TECHNOLOGIES | |
Molina-Solana et al. | Unifying fuzzy controller for indoor environment quality | |
Wang et al. | Robust decentralized adaptive control for stochastic delayed Hopfield neural networks | |
Ghanavati et al. | Demand-side energy management using an adaptive control strategy for aggregate thermostatic loads | |
Li et al. | Nonlinear identification of triple inverted pendulum based on GA-RBF-ARX | |
Ustun et al. | Building high fidelity human behavior models in the Sigma cognitive architecture | |
Jacobs et al. | Reinforcement learning based mass flow and supply temperature control for combined heat distribution | |
Guo et al. | Develop Web-based Modules to Educate High-School Students in Studying Microbial Fuel Cell Dynamics | |
Mun et al. | Enhancing Scalability of Neural Networks for MPC by Interconnecting Building Dynamics | |
Soofi et al. | Sustainable energy management in multi-unite cooling systems with fuzzy logic and adaptive nonlinear control | |
Hiort Af Ornäs et al. | QUESTIONS OF VALUE-ETHICS IN THE DESIGN CURRICULUM | |
Nejad et al. | Reinforcement Learning for Optimal Renewable Energy Sources Scheduling | |
Siemens et al. | Personal Knowledge/Learning Graph. | |
Chen | Learning to Operate a Sustainable Power System |