The landscape of electricity generation has undergone a profound transformation in recent years, propelled by the urgent global climate change movement. This shift has led to a significant increase in the generation of renewable energy (RE), resulting in a grid that is increasingly subjected to fluctuating inputs. The rise of heat pumps and electric vehicles has further escalated consumer demand for electricity, while users are also beginning to contribute to the grid by generating their own electricity through photovoltaic systems.
Transmission System Operators (TSO) will need to adapt their power infrastructure in innovative ways to deal with the unpredictability. Bus switching at the substation level to alter the grid’s topology is an encouraging method that is gaining more and more attention in the academic community. To a certain degree, the grid can be stabilized through intelligent switching in key parts, as stated in. Especially in DRL, which stands for Deep Reinforcement Learning, deep learning technologies might drastically cut computational costs, so academics propose using them to solve this problem. The French TSO RTE was the first to test such methods in the L2RPN challenge. As a result of its realistic portrayal of power grids, ongoing development, and difficulties, L2RPN has emerged as the community’s go-to standard for DRL-based grid simulations.
The issue arises when these behaviors are frequently examined independently. Although they might be useful for the following stage, they could cause less-than-ideal topologies to emerge. Contrary to popular belief, grid operations do not take autonomous substation activities into account. As an alternative, they are considering switching out several substations in stages. Nevertheless, DRL studies aiming at optimizing grids hardly touch upon these comprehensive topology techniques. The costly computations required to determine the combinations could be to blame, or it could be a limitation of the L2RPN Grid2Op environment design that permits just one substation modification per time step.
Researchers from Kassel University explore a new direction in their recent study that focuses on the electric grid’s topology, not on individual substation switching operations but on arranging all buses at all substations. The basic premise is that some topologies (TTs) are more stable than others. Attempting to reach close TTs takes precedence if our present topological state is insufficiently durable. Since the Target Topology (TT) may be reached from nearly any topology configuration, there’s no need to understand specific combinations of substation activities. This is an advantage and particularly useful in more intricate grids because TTs might cause numerous substation actions to be executed sequentially.
The study presents a search technique for TTs that meet the criteria. Findings show that TTs are stable against instability using the technique, given a collection of existing substation activities. Furthermore, the researchers incorporate a greedy search component with TTs into their previously reported CAgent technique to create a Topology Agent (TopoAgent85−95%). The team ran the agent on the WCCI 2022 L2RPN challenge’s validation grid to verify that their method is useful for optimizing the grid. Using a multi-seed evaluation with 500 TTs, the suggested topology agent’s impact on the WCCI 2022 L2RPN environment was assessed. The TopoAgent85−95% agent achieved a 10% higher score and a 25% longer median survival duration than the benchmark. Additional investigation found that the TopoAgent85−95% is near the base topology, which clarifies its performance resilience.
Overall, the study shows that using TTs as a greedy iteration hardly increases the runtime. They believe that the research community should investigate TTs more, particularly when combined with DRL.
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Dhanshree Shenwai is a Computer Science Engineer and has a good experience in FinTech companies covering Financial, Cards & Payments and Banking domain with keen interest in applications of AI. She is enthusiastic about exploring new technologies and advancements in today’s evolving world making everyone’s life easy.