Detection of Critical Events in Renewable Energy Production Time Series

Publication date

2021

Authors

Stoop, Laurens P.ISNI 0000000492798389
Duijm, Erik
Feelders, AdISNI 0000000350720316
Broek, Machteld van denORCID 0000-0003-1028-1742ISNI 0000000396870440

Editors

Lemaire, Vincent
Malinowski, Simon
Bagnall, Anthony
Guyet, Thomas
Tavenard, Romain
Ifrim, Georgiana

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

The introduction of more renewable energy sources into the energy system increases the variability and weather dependence of electricity generation. Power system simulations are used to assess the adequacy and reliability of the electricity grid over decades, but often become computational intractable for such long simulation periods with high technical detail. To alleviate this computational burden, we investigate the use of outlier detection algorithms to find periods of extreme renewable energy generation which enables detailed modelling of the performance of power systems under these circumstances. Specifically, we apply the Maximum Divergent Intervals (MDI) algorithm to power generation time series that have been derived from ERA5 historical climate reanalysis covering the period from 1950 through 2019. By applying the MDI algorithm on these time series, we identified intervals of extreme low and high energy production. To determine the outlierness of an interval different divergence measures can be used. Where the cross-entropy measure results in shorter and strongly peaking outliers, the unbiased Kullback-Leibler divergence tends to detect longer and more persistent intervals. These intervals are regarded as potential risks for the electricity grid by domain experts, showcasing the capability of the MDI algorithm to detect critical events in these time series. For the historical period analysed, we found no trend in outlier intensity, or shift and lengthening of the outliers that could be attributed to climate change. By applying MDI on climate model output, power system modellers can investigate the adequacy and possible changes of risk for the current and future electricity grid under a wider range of scenarios.

Keywords

Energy climate, Power system modelling, Outlier detection, Time series, Climate change, Anomaly detection, High impact events, Taverne, Theoretical Computer Science, General Computer Science, SDG 7 - Affordable and Clean Energy

Citation

Stoop, L P, Duijm, E, Feelders, A & Broek, M V D 2021, Detection of Critical Events in Renewable Energy Production Time Series. in V Lemaire, S Malinowski, A Bagnall, T Guyet, R Tavenard & G Ifrim (eds), Advanced Analytics and Learning on Temporal Data : 6th ECML PKDD Workshop, AALTD 2021, Bilbao, Spain, September 13, 2021, Revised Selected Papers. 1 edn, Lecture Notes in Computer Science, vol. 13114, Springer, pp. 104-119, 6th International Workshop on Advanced Analytics and Learning on Temporal Data, AALTD 2021, held at the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, ECML-PKDD 2021, Virtual, Online, 13/09/21. https://doi.org/10.1007/978-3-030-91445-5_7, conference