Evaluation of Machine Learning Techniques for Forecast Uncertainty Quantification

11/29/2021
by   Maximiliano A. Sacco, et al.
0

Producing an accurate weather forecast and a reliable quantification of its uncertainty is an open scientific challenge. Ensemble forecasting is, so far, the most successful approach to produce relevant forecasts along with an estimation of their uncertainty. The main limitations of ensemble forecasting are the high computational cost and the difficulty to capture and quantify different sources of uncertainty, particularly those associated with model errors. In this work proof-of-concept model experiments are conducted to examine the performance of ANNs trained to predict a corrected state of the system and the state uncertainty using only a single deterministic forecast as input. We compare different training strategies: one based on a direct training using the mean and spread of an ensemble forecast as target, the other ones rely on an indirect training strategy using a deterministic forecast as target in which the uncertainty is implicitly learned from the data. For the last approach two alternative loss functions are proposed and evaluated, one based on the data observation likelihood and the other one based on a local estimation of the error. The performance of the networks is examined at different lead times and in scenarios with and without model errors. Experiments using the Lorenz'96 model show that the ANNs are able to emulate some of the properties of ensemble forecasts like the filtering of the most unpredictable modes and a state-dependent quantification of the forecast uncertainty. Moreover, ANNs provide a reliable estimation of the forecast uncertainty in the presence of model error.

READ FULL TEXT

page 1

page 15

page 16

page 18

page 19

research
05/12/2023

Online machine-learning forecast uncertainty estimation for sequential data assimilation

Quantifying forecast uncertainty is a key aspect of state-of-the-art num...
research
11/02/2019

Predicting Weather Uncertainty with Deep Convnets

Modern weather forecast models perform uncertainty quantification using ...
research
02/16/2022

Robust Nonparametric Distribution Forecast with Backtest-based Bootstrap and Adaptive Residual Selection

Distribution forecast can quantify forecast uncertainty and provide vari...
research
05/26/2021

Estimating the Uncertainty of Neural Network Forecasts for Influenza Prevalence Using Web Search Activity

Influenza is an infectious disease with the potential to become a pandem...
research
12/22/2018

Deep Prediction Interval for Weather Forecasting

Currently there exists a gap between deep learning and the techniques re...
research
10/29/2022

A Bayesian Hierarchical Model Framework to Quantify Uncertainty of Tropical Cyclone Precipitation Forecasts

Tropical cyclones present a serious threat to many coastal communities a...
research
05/15/2019

Forecasting Wireless Demand with Extreme Values using Feature Embedding in Gaussian Processes

Wireless traffic prediction is a fundamental enabler to proactive networ...

Please sign up or login with your details

Forgot password? Click here to reset