Title :
An Interval-Valued Neural Network Approach for Uncertainty Quantification in Short-Term Wind Speed Prediction
Author :
Ak, Ronay ; Vitelli, Valeria ; Zio, Enrico
Author_Institution :
Syst. Sci. & the Energetic Challenge, Ecole Centrale Paris, Châtenay-Malabry, France
Abstract :
We consider the task of performing prediction with neural networks (NNs) on the basis of uncertain input data expressed in the form of intervals. We aim at quantifying the uncertainty in the prediction arising from both the input data and the prediction model. A multilayer perceptron NN is trained to map interval-valued input data onto interval outputs, representing the prediction intervals (PIs) of the real target values. The NN training is performed by nondominated sorting genetic algorithm-II, so that the PIs are optimized both in terms of accuracy (coverage probability) and dimension (width). Demonstration of the proposed method is given in two case studies: 1) a synthetic case study, in which the data have been generated with a 5-min time frequency from an autoregressive moving average model with either Gaussian or Chi-squared innovation distribution and 2) a real case study, in which experimental data consist of wind speed measurements with a time step of 1 h. Comparisons are given with a crisp (single-valued) approach. The results show that the crisp approach is less reliable than the interval-valued input approach in terms of capturing the variability in input.
Keywords :
Gaussian distribution; genetic algorithms; multilayer perceptrons; velocity measurement; wind power plants; Chi-squared innovation distribution; Gaussian innovation distribution; NN training; crisp approach; interval-valued neural network approach; multilayer perceptron NN; nondominated sorting genetic algorithm-II; uncertainty quantification; wind speed prediction; Artificial neural networks; Predictive models; Sociology; Statistics; Training; Uncertainty; Wind speed; Interval-valued neural networks (NNs); multi-objective genetic algorithm (MOGA); prediction intervals (PIs); short-term wind speed forecasting; uncertainty; uncertainty.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2015.2396933