- The paper presents a novel automated reinforcement learning (AutoRL) framework to improve forecasting and optimize scheduling in isolated microgrids, aiming to reduce operating costs under renewable and load uncertainty.
- A key innovation is the PER-AutoRL model, which automates the selection of optimal deep reinforcement learning architectures and hyperparameters for enhanced multi-period single-step forecasting.
- Empirical results demonstrate that the proposed AutoRL-based approach significantly reduces microgrid operating costs compared to conventional methods by effectively handling the stochastic nature of renewable energy and load.
Optimal Scheduling of Isolated Microgrids with Automated Reinforcement Learning
The paper presents a rigorous approach to optimizing the scheduling of isolated microgrids using an automated reinforcement learning (AutoRL) framework. This research addresses the inherent uncertainty in load and renewable energy outputs that challenge effective microgrid operations. The primary contribution is leveraging an automated reinforcement learning-based multi-period forecasting model to enhance the prediction accuracy of renewable power generation and load variability, thus improving microgrid economic operations.
Key Innovations
- PER-AutoRL Model: A prioritized experience replay automated reinforcement learning (PER-AutoRL) model is introduced. Unlike conventional machine learning models, this framework can independently determine optimal model architectures and hyperparameters, streamlining the complex process of deploying deep reinforcement learning (DRL) models.
- Multi-period Single-step Forecasting: The paper proposes a novel single-step multi-period forecasting approach, a significant departure from traditional multi-step methods known for error accumulation over successive periods. By treating each forecasted period independently, the presented model alleviates cumulative prediction errors, thus increasing reliability.
- Error Distribution and Revision: A t location-scale (TLS) distribution models the uncertainty of forecasting errors. By accounting for the probabilistic nature of these errors, forecasting results are revised to minimize systemic biases, fortifying the reliability of the dispatching basis.
- Integrated Scheduling Model: The paper constructs a scheduling model integrating demand response and the revised forecasts, structured to minimize operating costs. Incorporating sequence operation theory (SOT), the model translates into a mixed-integer linear program solvable by optimization solvers such as the CPLEX.
Empirical Analysis
The empirical results presented demonstrate that the adoption of the PER-AutoRL framework significantly reduces system operating costs when compared to conventional scheduling models sans forecasting. Simulation outcomes indicate that the model effectively handles the stochastic nature of renewable outputs and load demands, underscoring the efficacy of accurate prediction methods in reducing microgrid economic burdens.
Discussion and Implications
While the research provides robust evidence supporting the proposed method’s benefits, it also highlights the intricate balance between forecast accuracy and the computational feasibility of large-scale deployments. The proposed method's potential application in broader integrated energy systems, tackling energy management issues, and enhancing operational flexibility under uncertainty, marks exciting future directions.
This paper contributes substantially to the literature on microgrid operation optimization under uncertainty conditions, offering a compelling case for integrating advanced AI techniques into energy management practices. As AI technologies continue to evolve, the methods discussed hold promise for more adaptable and efficient microgrid systems and broader implications for sustainable energy integration in power systems globally.