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Open AccessJournal ArticleDOI

Direct Quantile Regression for Nonparametric Probabilistic Forecasting of Wind Power Generation

TLDR
In this article, a novel direct quantile regression approach was proposed to efficiently generate nonparametric probabilistic forecasting of wind power generation combining extreme learning machine and quantile regressions.
Abstract
The fluctuation and uncertainty of wind power generation bring severe challenges to secure and economic operation of power systems. Because wind power forecasting error is unavoidable, probabilistic forecasting becomes critical to accurately quantifying the uncertainty involved in traditional point forecasts of wind power and to providing meaningful information to conduct risk management in power system operation. This paper proposes a novel direct quantile regression approach to efficiently generate nonparametric probabilistic forecasting of wind power generation combining extreme learning machine and quantile regression. Quantiles with different proportions can be directly produced via an innovatively formulated linear programming optimization model, without dependency on point forecasts. Multistep probabilistic forecasting of 10-min wind power is newly carried out based on real wind farm data from Bornholm Island in Denmark. The superiority of the proposed approach is verified through comparisons with other well-established benchmarks. The proposed approach forms a new artificial neural network-based nonparametric forecasting framework for wind power with high efficiency, reliability, and flexibility, which can be beneficial to various decision-making activities in power systems.

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Citations
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Journal ArticleDOI

Short-term wind power forecasting based on support vector machine with improved dragonfly algorithm

TL;DR: This study combined support vector machine and improved dragonfly algorithm to forecast short-term wind power for a hybrid prediction model and has shown better prediction performance compared with the other models such as back propagation neural network and Gaussian process regression.
Journal ArticleDOI

Neural Network-Based Uncertainty Quantification: A Survey of Methodologies and Applications

TL;DR: The purpose of this survey paper is to comprehensively study neural network-based methods for construction of prediction intervals to cover how PIs are constructed, optimized, and applied for decision-making in presence of uncertainties.
Journal ArticleDOI

A survey on deep learning methods for power load and renewable energy forecasting in smart microgrids

TL;DR: A comprehensive survey of the existing DL-based approaches, which are developed for power forecasting of wind turbines and solar panels as well as electric power load forecasting, and discusses the datasets used to train and test the differentDL-based prediction models, enabling future researchers to identify appropriate datasets to use in their work.
Journal ArticleDOI

Trading strategy optimization for a prosumer in continuous double auction-based peer-to-peer market: A prediction-integration model

TL;DR: A novel prediction-integration strategy optimization (PISO) model is proposed, which learns the interaction relationship between prosumer bidding actions and market responses from historical transaction data, and can be conveniently transformed and integrated into the prosumer operation optimization model in the form of constraints.
Journal ArticleDOI

Novel Multi-Step Short-Term Wind Power Prediction Framework Based on Chaotic Time Series Analysis and Singular Spectrum Analysis

TL;DR: In this paper, the authors proposed a novel decomposition approach to take the chaotic nature of wind power time series into account and to improve WPP accuracy by separating wind power TS into several components with different time-frequency characteristics by means of ensemble empirical mode decomposition.
References
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Journal ArticleDOI

Multilayer feedforward networks are universal approximators

TL;DR: It is rigorously established that standard multilayer feedforward networks with as few as one hidden layer using arbitrary squashing functions are capable of approximating any Borel measurable function from one finite dimensional space to another to any desired degree of accuracy, provided sufficiently many hidden units are available.
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Extreme Learning Machine for Regression and Multiclass Classification

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A practical Bayesian framework for backpropagation networks

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MonographDOI

Quantile Regression: Name Index

Roger Koenker
Journal ArticleDOI

A Fast and Accurate Online Sequential Learning Algorithm for Feedforward Networks

TL;DR: The results show that the OS-ELM is faster than the other sequential algorithms and produces better generalization performance on benchmark problems drawn from the regression, classification and time series prediction areas.
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