Probabilistic Forecasting-Based Reserve Determination Considering Multi-Temporal Uncertainty of Renewable Energy Generation

Operating reserve, among the most important ancillary services, is a powerful prescription for mitigating increasing uncertainty of renewable generation. Traditional reserve determination neglects uncertainty of renewable generation variations within the dispatch interval, which cannot gurantee suff...

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Veröffentlicht in:IEEE transactions on power systems 2024-01, Vol.39 (1), p.1-13
Hauptverfasser: Xu, Yuqi, Wan, Can, Liu, Hui, Zhao, Changfei, Song, Yonghua
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creator Xu, Yuqi
Wan, Can
Liu, Hui
Zhao, Changfei
Song, Yonghua
description Operating reserve, among the most important ancillary services, is a powerful prescription for mitigating increasing uncertainty of renewable generation. Traditional reserve determination neglects uncertainty of renewable generation variations within the dispatch interval, which cannot gurantee sufficient reserve deliverability in real-time operation. This paper proposes a probabilistic forecasting-based reserve determination method to efficiently deal with multi-temporal uncertainty of renewable energy in power systems. A novel probabilistic forecasting approach is proposed by integrating Dirichlet process Gaussian mixture model into bootstrap-based extreme learning machine. A unified uncertainty model is constructed for depicting both interval-averaged uncertainty and intra-interval uncertainty by combing the probabilistic forecasts and linearized Itô-process model. In current business practices of many independent system operators, the coordinated determination of two well-designed reserve products, including regulating reserve and ramp capability reserve, is formulated in a two-stage robust optimization framework. A Bernstein polynomial-based model reformulation approach is then employed to handle the existing heterogeneity in the sub-models of each stage. Consequently, the integrated reserve determination is embedded in a generic two-stage robust optimization problem, which can be efficiently solved by the adopted modified column-and-constraint generation method. Finally, numerical simulations are implemented to validate the effectiveness and profitability of the proposed approach.
doi_str_mv 10.1109/TPWRS.2023.3252720
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subjects Ancillary services
Artificial neural networks
Constraint modelling
Dirichlet problem
Forecasting
Gaussian process
Heterogeneity
Itô-process model
Machine learning
Mathematical analysis
multi-temporal uncertainty
Optimization
Polynomials
Predictive models
probabilistic forecasting
Probabilistic logic
Probabilistic models
Profitability
ramp capability reserve
Real time operation
Real-time systems
regulating reserve
Renewable energy
Renewable energy sources
Renewable resources
Reserve determination
Robustness (mathematics)
Stochastic processes
Uncertainty
title Probabilistic Forecasting-Based Reserve Determination Considering Multi-Temporal Uncertainty of Renewable Energy Generation
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