LGAIMay 23, 2025

Tube Loss based Deep Networks For Improving the Probabilistic Forecasting of Wind Speed

arXiv:2505.18284v1
Originality Synthesis-oriented
AI Analysis

This addresses uncertainty quantification for wind power production, supporting grid operations and electricity market decisions, but is incremental as it applies an existing loss function to deep networks.

The paper tackles probabilistic forecasting of wind speed by designing deep learning methods using the Tube loss function, achieving more reliable and narrower prediction intervals compared to recent methods on three wind datasets.

Uncertainty Quantification (UQ) in wind speed forecasting is a critical challenge in wind power production due to the inherently volatile nature of wind. By quantifying the associated risks and returns, UQ supports more effective decision-making for grid operations and participation in the electricity market. In this paper, we design a sequence of deep learning based probabilistic forecasting methods by using the Tube loss function for wind speed forecasting. The Tube loss function is a simple and model agnostic Prediction Interval (PI) estimation approach and can obtain the narrow PI with asymptotical coverage guarantees without any distribution assumption. Our deep probabilistic forecasting models effectively incorporate popular architectures such as LSTM, GRU, and TCN within the Tube loss framework. We further design a simple yet effective heuristic for tuning the $δ$ parameter of the Tube loss function so that our deep forecasting models obtain the narrower PI without compromising its calibration ability. We have considered three wind datasets, containing the hourly recording of the wind speed, collected from three distinct location namely Jaisalmer, Los Angeles and San Fransico. Our numerical results demonstrate that the proposed deep forecasting models produce more reliable and narrower PIs compared to recently developed probabilistic wind forecasting methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes