open access publication

Article, 2024

Robust Reactive Power Scheduling of Distribution Networks Based on Modified Bootstrap Technique

Journal of Modern Power Systems and Clean Energy, ISSN 2196-5625, 2196-5420, Volume 12, 1, Pages 154-166, 10.35833/mpce.2022.000850

Contributors

Liao, Wenlong 0000-0003-1175-0280 [1] Wang, Shouxiang 0000-0002-3892-3703 [2] Bak-Jensen, Birgitte 0000-0001-8271-1356 [1] Pillai, Jayakrishnan Radhakrishna [1] Yang, Zhe 0000-0002-7018-0823 [1]

Affiliations

  1. [1] Aalborg University
  2. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD];
  3. [2] Tianjin University
  4. [NORA names: China; Asia, East]

Abstract

The uncertainties of the power load, wind power, and photovoltaic power lead to errors between point prediction values and real values, which challenges the safe operation of distribution networks. In this paper, a robust reactive power scheduling (RRPS) model based on a modified bootstrap technique is proposed to consider the uncertainties of power loads and renewable energy sources. Firstly, a deterministic reactive power scheduling (DRPS) model and an RRPS model are formulated. Secondly, a modified bootstrap technique is proposed to estimate prediction errors of power loads and renewable energy sources without artificially assuming the probability density function of prediction errors. To represent all possible scenarios, point prediction values and prediction errors are combined to construct two worst-case scenarios in the RRPS model. Finally, the RRPS model is solved to find a scheduling scheme, which ensures the security of distribution networks for all possible scenarios in theory. Simulation results show that the worstcase scenarios constructed by the modified bootstrap technique outperform popular baselines. Besides, the RRPS model based on the modified bootstrap technique balances economics and security well.

Keywords

balance economics, baseline, bootstrap, bootstrap technique, density function, distribution network, economics, energy sources, error, estimate prediction errors, function, lead, load, model, network, operation, operation of distribution networks, power, power lead, power load, power scheduling, prediction, prediction error, predictive value, probability, probability density function, reactive power scheduling, real value, renewable energy sources, results, scenarios, scheduling, scheduling of distribution network, scheduling scheme, scheme, security, security of distribution network, simulation, simulation results, source, technique, theory, uncertainty, uncertainty of power load, values, wind, wind power, worstcase, worstcase scenario

Data Provider: Digital Science