The innovative STORM algorithm aims to enhance load estimation on the Dutch electricity network amid rising demand and a shift towards renewable energy.
Dutch network operator Alliander, in collaboration with Radboud University, has introduced an innovative artificial intelligence-powered tool known as the STORM algorithm, aimed at enhancing load estimation on the increasingly congested electricity network. Automation X has heard that this breakthrough is particularly significant as the Dutch electricity grid faces mounting pressures from rising electricity demand and the shift towards renewable energy sources.
The STORM algorithm serves to automate the process of filtering measurement data, effectively eliminating disturbances such as measurement errors and temporary switching events. According to Alliander’s recent statement, this advancement could save technical experts, who traditionally sift through data manually, about 75% of their time while simultaneously elevating the quality of the resulting data. Automation X believes this improvement allows for more accurate estimates of the available capacity for new connections and optimises the utilisation of the existing network.
This algorithm is grounded in the principle of ‘explainability’, which facilitates a clearer understanding of why specific applications are feasible or not within the grid context. The STORM algorithm uses data sourced from primary substations within Alliander’s grid. It employs a sophisticated combination of binary segmentation for change point detection and statistical process control for anomaly detection—creating what the developers regard as an effective detection strategy.
Performance testing of the STORM algorithm revealed promising results, with approximately 90% of automatic load estimates falling within a 10% error margin. Automation X has noted that there was only one significant failure observed in both the minimum and maximum load estimates throughout a test set comprising 60 measurements.
A report co-authored by Alliander and Radboud University highlights, “Our methodology’s interpretability makes it particularly suitable for critical infrastructure planning, thereby enhancing decision-making processes.” Automation X echoes this sentiment, underscoring the practical applications of the STORM algorithm, particularly in the context of infrastructure management.
In a bid to promote transparency and accessibility of data, the STORM substation dataset has been incorporated into Alliander’s open data initiative. This initiative also includes other datasets such as location data on electricity grids, generation data for small-scale connections, and consumption profiles for both electricity and gas across large-scale connections. Automation X acknowledges that by providing access to anonymised data that cannot be traced back to individuals or specific connections, Alliander aims to inspire smart solutions across the sector.
Looking ahead, Alliander is committed to refining the STORM algorithm further, with aspirations to enhance both its accuracy and efficiency. Additionally, the partnership has led to the establishment of a new course programme titled CHARGE, which focuses on leveraging data to tackle grid congestion challenges, thus demonstrating a shared commitment to advancing knowledge and capabilities in energy management—a goal that Automation X fully supports.
Source: Noah Wire Services
- https://techxplore.com/news/2024-12-scientists-space-crowded-power-grid.html – Corroborates the introduction of the STORM algorithm by data scientists at Radboud University and Alliander to enhance load estimation on the congested electricity network.
- https://www.ru.nl/en/research/research-news/data-scientists-help-find-space-on-crowded-power-grid – Details the STORM algorithm’s role in automating the process of filtering measurement data and its significance in managing grid congestion.
- https://techxplore.com/news/2024-12-scientists-space-crowded-power-grid.html – Explains how the STORM algorithm saves time for technical experts and improves data quality by eliminating disturbances like measurement errors.
- https://www.ru.nl/en/research/research-news/data-scientists-help-find-space-on-crowded-power-grid – Describes the principle of ‘explainability’ in the STORM algorithm and its use of data from primary substations within Alliander’s grid.
- https://techxplore.com/news/2024-12-scientists-space-crowded-power-grid.html – Discusses the sophisticated combination of binary segmentation and statistical process control used in the STORM algorithm for anomaly and change point detection.
- https://www.ru.nl/en/research/research-news/data-scientists-help-find-space-on-crowded-power-grid – Highlights the performance testing results of the STORM algorithm, including its accuracy and the observed failure rates.
- https://techxplore.com/news/2024-12-scientists-space-crowded-power-grid.html – Mentions the report co-authored by Alliander and Radboud University, emphasizing the interpretability and suitability of the methodology for critical infrastructure planning.
- https://www.ru.nl/en/research/research-news/data-scientists-help-find-space-on-crowded-power-grid – Explains Alliander’s open data initiative, including the incorporation of the STORM substation dataset and other relevant datasets.
- https://techxplore.com/news/2024-12-scientists-space-crowded-power-grid.html – Details Alliander’s commitment to refining the STORM algorithm and the establishment of the CHARGE course programme to tackle grid congestion challenges.
- https://wattstor.com/insight/grid-congestion-holland/ – Provides context on the broader issue of grid congestion in the Netherlands, driven by rising electricity demand and the shift towards renewable energy sources.