A sequential resource investment planning framework using reinforcement learning and simulation-based optimization: A case study on microgrid storage expansion

01/10/2020
by   S. Tsianikas, et al.
1

A model and expansion plan have been developed to optimally determine microgrid designs as they evolve to dynamically react to changing conditions and to exploit energy storage capabilities. In the wake of the highly electrified future ahead of us, the role of energy storage is crucial wherever distributed generation is abundant, such as microgrid settings. Given the variety of storage options that are recently becoming more economical, determining which type of storage technology to invest in, along with the appropriate timing and capacity becomes a critical research question. In problems where the investment timing is of high priority, like this one, developing analytical and systematic frameworks for rigorously considering these issues is indispensable. From a business perspective, these strategic frameworks will aim to optimize the process of investment planning, by leveraging novel approaches and by capturing all the problem details that traditional approaches are unable to. Reinforcement learning algorithms have recently proven to be successful in problems where sequential decision-making is inherent. In the operations planning area, these algorithms are already used but mostly in short-term problems with well-defined constraints and low levels of uncertainty modeling. On the contrary, in this work, we expand and tailor these techniques to long-term investment planning by utilizing model-free approaches, like the Q-learning algorithm, combined with simulation-based models. We find that specific types of energy storage units, including the vanadium-redox battery, can be expected to be at the core of the future microgrid applications, and therefore, require further attention. Another key finding is that the optimal storage capacity threshold for a system depends heavily on the price movements of the available storage units in the market.

READ FULL TEXT

page 16

page 17

page 19

page 22

research
05/15/2020

Think Too Fast Nor Too Slow: The Computational Trade-off Between Planning And Reinforcement Learning

Planning and reinforcement learning are two key approaches to sequential...
research
09/03/2021

The full Low-carbon Expansion Generation Optimization (LEGO) model

This paper introduces the full Low-carbon Expansion Generation Optimizat...
research
06/26/2020

A Framework for Reinforcement Learning and Planning

Sequential decision making, commonly formalized as Markov Decision Proce...
research
04/19/2023

Optimizing Carbon Storage Operations for Long-Term Safety

To combat global warming and mitigate the risks associated with climate ...
research
01/22/2019

Battery selection for optimal grid-outage resilient photovoltaic and battery systems

The first and most important purpose of the current research work is to ...
research
09/11/2023

Career Path Recommendations for Long-term Income Maximization: A Reinforcement Learning Approach

This study explores the potential of reinforcement learning algorithms t...
research
01/24/2022

Propagating uncertainty in a network of energy models

Computational models are widely used in decision support for energy syst...

Please sign up or login with your details

Forgot password? Click here to reset