Probabilistic forecasting of power system imbalance using neural network-based ensembles
Jonas Van Gompel, Bert Claessens, Chris Develder

TL;DR
This paper introduces an ensemble of neural networks for probabilistic power system imbalance forecasting, significantly improving accuracy during high imbalance events and providing reliable uncertainty estimates.
Contribution
It presents a novel ensemble of variable selection networks for short-term imbalance forecasting, with a focus on high imbalance situations and a new fine-tuning method for limited data scenarios.
Findings
Outperforms state-of-the-art by 23.4% in high imbalance CRPS
Achieves 6.5% overall improvement in CRPS
Provides reliable uncertainty estimates for power imbalance forecasts
Abstract
Keeping the balance between electricity generation and consumption is becoming increasingly challenging and costly, mainly due to the rising share of renewables, electric vehicles and heat pumps and electrification of industrial processes. Accurate imbalance forecasts, along with reliable uncertainty estimations, enable transmission system operators (TSOs) to dispatch appropriate reserve volumes, reducing balancing costs. Further, market parties can use these probabilistic forecasts to design strategies that exploit asset flexibility to help balance the grid, generating revenue with known risks. Despite its importance, literature regarding system imbalance (SI) forecasting is limited. Further, existing methods do not focus on situations with high imbalance magnitude, which are crucial to forecast accurately for both TSOs and market parties. Hence, we propose an ensemble of C-VSNs, which…
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Taxonomy
TopicsPower System Reliability and Maintenance · Engineering Diagnostics and Reliability · Electricity Theft Detection Techniques
MethodsFocus
