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一种用于配电网可再生能源系统鲁棒优化的信息差距决策理论与改进的基于梯度的优化器

An information gap decision theory and improved gradient-based optimizer for robust optimization of renewable energy systems in distribution network.

作者信息

Duan Fude, Basem Ali, Ali Sadek Habib, Abbas Teeb Basim, Eslami Mahdiyeh, Shahbazzadeh Mahdi Jafari

机构信息

School of Intelligent Transportation, Nanjing Vocational College of Information Technology, Jiangsu, 210000, Nanjing, China.

Faculty of Engineering, Warith Al-Anbiyaa University, Karbala, 56001, Iraq.

出版信息

Sci Rep. 2025 Jan 2;15(1):346. doi: 10.1038/s41598-024-83521-1.

Abstract

In this paper, a robust fuzzy multi-objective framework is performed to optimize the dispersed and hybrid renewable photovoltaic-wind energy resources in a radial distribution network considering uncertainties of renewable generation and network demand. A novel multi-objective improved gradient-based optimizer (MOIGBO) enhanced with Rosenbrock's direct rotational technique to overcome premature convergence is proposed to determine the problem optimal decision variables. The deterministic optimization framework without uncertainty minimizes active energy loss, unmet customer energy, and renewable generation costs. The study also examines the impact of dispersed and hybrid renewable resources on solving the problem. In the robust optimization framework considering the deterministic obtained results, the focus is on determining the maximum uncertainty radius (MUR) of renewable resource generation and network demand based on the uncertainty risk. The MURs and system robustness are optimally determined using information gap decision theory (IGDT) and the MOIGBO, considering various uncertainty budgets under worst-case scenarios. The deterministic results indicate that the MOIGBO effectively balances the objectives and identifies the final solution within the Pareto front, according to fuzzy decision-making. The results also reveal that the dispersed case yields better objective values than the hybrid case. Furthermore, the MOIGBO outperforms MOGBO and multi-objective particle swarm optimization (MOPSO) in improving distribution network operations. The robust results show that maximum system robustness is achieved at 30% uncertainty risk due to forecasting errors, with MUR values of 0.54% for resource production and 12.56% for load demand.

摘要

本文提出了一个稳健的模糊多目标框架,用于在考虑可再生能源发电和网络需求不确定性的情况下,优化径向配电网中的分散式和混合式可再生光伏-风能资源。提出了一种新型的多目标改进梯度优化器(MOIGBO),该优化器采用罗森布罗克直接旋转技术进行增强,以克服早熟收敛问题,从而确定问题的最优决策变量。不考虑不确定性的确定性优化框架可将有功电能损耗、未满足的用户电能和可再生能源发电成本降至最低。该研究还考察了分散式和混合式可再生能源对解决该问题的影响。在考虑确定性结果的稳健优化框架中,重点是根据不确定性风险确定可再生能源发电和网络需求的最大不确定性半径(MUR)。在最坏情况下,使用信息间隙决策理论(IGDT)和MOIGBO,考虑各种不确定性预算,对MUR和系统稳健性进行了优化确定。确定性结果表明,根据模糊决策,MOIGBO有效地平衡了各目标,并在帕累托前沿内确定了最终解。结果还表明,分散式情况比混合式情况产生更好的目标值。此外,在改善配电网运行方面 MOIGBO 优于多目标梯度优化器(MOGBO)和多目标粒子群优化算法(MOPSO)。稳健结果表明,由于预测误差,在30%的不确定性风险下可实现最大系统稳健性,资源生产的MUR值为0.54%,负荷需求的MUR值为12.56%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/17d2/11697002/12c5a2f9ce65/41598_2024_83521_Fig1_HTML.jpg

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