A Stochastic Recurrent Encoder Decoder Network for Multistep Probabilistic Wind Power Predictions

Zhong Zheng, Zijun Zhang*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

27 Citations (Scopus)

Abstract

In this article, a stochastic recurrent encoder decoder neural network (SREDNN), which considers latent random variables in its recurrent structures, is developed for the first time for the generative multistep probabilistic wind power predictions (MPWPPs). The SREDNN enables the stochastic recurrent model under the encoder-decoder framework to engage exogenous covariates to produce better MPWPP. The SREDNN consists of five components, the prior network, the inference network, the generative network, the encoder recurrent network, and the decoder recurrent network. The SREDNN is equipped with two critical advantages compared with conventional RNN-based methods. First, the integration over the latent random variable builds an infinite Gaussian mixture model (IGMM) as the observation model, which drastically increases the expressiveness of the wind power distribution. Secondly, hidden states of the SREDNN are updated in a stochastic way, which builds an infinite mixture of the IGMM for describing the ultimate wind power distribution and enables the SREDNN to model complex patterns across wind speed and wind power sequences. Computational experiments are conducted on a dataset of a commercial wind farm having 25 wind turbines (WTs) and two publicly assessable WT datasets to verify the advantages and effectiveness of the SREDNN for MPWPP. Experimental results show that the SREDNN achieves a lower negative form of the continuously ranked probability score (CRPS* ) as well as a superior sharpness and comparable reliability of prediction intervals by comparing against considered benchmarking models. Results also show the clear benefit gained from considering latent random variables in SREDNN.

© 2023 IEEE.
Original languageEnglish
Pages (from-to)9565-9578
JournalIEEE Transactions on Neural Networks and Learning Systems
Volume35
Issue number7
Online published9 Jan 2023
DOIs
Publication statusPublished - Jul 2024

Funding

This work was supported in part by the National Natural Science Foundation of China Youth Scientist Fund Project under Grant 52007160; in part by Hong Kong Research Grants Council General Research Fund Project under Grant 11204419; in part by HKIDS Early Career Research Grant 9360163; in part by CityU Strategic Research Grant under Project 7005537; and in part by InnoHK Initiative, the Government of the HKSAR, and Laboratory for AI-Powered Financial Technologies

Research Keywords

  • Wind power generation
  • Stochastic processes
  • Random variables
  • Predictive models
  • Time series analysis
  • Wind speed
  • Probabilistic logic
  • Data-driven models
  • deep neural networks (DNNs)
  • multistep probabilistic wind power prediction (MPWPP)
  • stochastic recurrent network
  • time series analysis
  • UNIT COMMITMENT
  • SPEED
  • GENERATION
  • FLUCTUATIONS
  • FORECASTS

RGC Funding Information

  • RGC-funded

Fingerprint

Dive into the research topics of 'A Stochastic Recurrent Encoder Decoder Network for Multistep Probabilistic Wind Power Predictions'. Together they form a unique fingerprint.

Cite this