Evaluation of 'Dunkelflaute' event detection methods considering grid operators' needs
Benjamin Biewald, Bastien Cozian, Laurent Dubus, William Zappa, Laurens Stoop

TL;DR
This paper reviews and validates methods for detecting 'dunkelflaute' events, which challenge renewable energy supply, comparing their effectiveness against detailed power system simulations to inform grid management.
Contribution
It provides a comparative validation of three dunkelflaute detection methods using real system data, highlighting their strengths and limitations for grid operator needs.
Findings
All methods can identify some energy shortages but miss others.
Residual load input improves detection performance.
Otero'22 method is the most effective and easy to implement.
Abstract
Weather conditions associated with low electricity production from renewable energy sources (RES) can result in challenging 'dunkelflaute' events, where 'dunkel' means dark and 'flaute' refers to low windspeeds. In a power system relying significantly on RES, such events can pose a risk for maintaining resource adequacy, i.e. the balance between generation and demand, particularly if they occur over a large geographical area and for an extended period of time. This risk is further emphasized in periods of cold ('kalte') temperature, known as 'kalte dunkelflaute'. In this paper, we perform a literature review of different methods to identify dunkelflaute events from hourly RES production and load data alone. We then validate three of these methods by comparing their results with periods of shortage identified from a detailed power system simulation model used by grid operators…
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Taxonomy
TopicsDistributed and Parallel Computing Systems · Seismology and Earthquake Studies
