OCLGApr 5, 2022

Normalizing Flow-based Day-Ahead Wind Power Scenario Generation for Profitable and Reliable Delivery Commitments by Wind Farm Operators

arXiv:2204.02242v218 citationsh-index: 51
Originality Incremental advance
AI Analysis

This addresses the problem of profitable and reliable delivery commitments for wind farm operators, representing an incremental improvement in scenario generation methods.

The paper tackled generating day-ahead wind power scenarios for scheduling by using normalizing flows conditioned on wind speed forecasts, resulting in scenarios that narrow around daily trends while maintaining diversity and consistently achieving the highest profits in bidding compared to other methods.

We present a specialized scenario generation method that utilizes forecast information to generate scenarios for day-ahead scheduling problems. In particular, we use normalizing flows to generate wind power scenarios by sampling from a conditional distribution that uses wind speed forecasts to tailor the scenarios to a specific day. We apply the generated scenarios in a stochastic day-ahead bidding problem of a wind electricity producer and analyze whether the scenarios yield profitable decisions. Compared to Gaussian copulas and Wasserstein-generative adversarial networks, the normalizing flow successfully narrows the range of scenarios around the daily trends while maintaining a diverse variety of possible realizations. In the stochastic day-ahead bidding problem, the conditional scenarios from all methods lead to significantly more stable profitable results compared to an unconditional selection of historical scenarios. The normalizing flow consistently obtains the highest profits, even for small sets scenarios.

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