PENG Weifeng, DONG Shufeng, QIU Jian. A WGAN-GP Approach for Multi-scenario Specific Photovoltaic Generation With Feature-constrained and Target-driven Optimization[J]. 2025, (23): 9126-9139.
PENG Weifeng, DONG Shufeng, QIU Jian. A WGAN-GP Approach for Multi-scenario Specific Photovoltaic Generation With Feature-constrained and Target-driven Optimization[J]. 2025, (23): 9126-9139. DOI: 10.13334/j.0258-8013.pcsee.250023.
基于特征约束与目标驱动的WGAN-GP光伏特定多场景生成方法
摘要
场景生成技术通过模拟多种典型场景的随机性和多样性,为解决历史数据样本有限和极端场景难以覆盖的问题提供了重要数据支撑。该文提出一种基于特征约束与目标驱动的WGAN-GP(Wasserstein GAN with gradient penalty)光伏多场景生成方法。该方法通过引入Wasserstein距离及梯度惩罚,提高了生成器的稳定性与生成样本的多样性;在此基础上,提取晴天、阴雨天和多云天3类典型场景的关键特征,明确生成目标,并在生成器的输出阶段嵌入动态门函数,动态划定白天与夜间的分界点,确保生成的夜间输出为零,白天的辐照度变化符合实际物理规律;此外,采用加权采样优化策略,通过动态调整样本权重和选中概率,进一步强化对关键特性样本的学习,使生成器能够更准确地捕捉目标特性,从而显著提升稀缺场景的生成效果。算例结果表明,该方法能够精准捕捉不同天气场景的关键特征,生成样本在目标特性匹配及物理合理性方面表现良好,为光伏场景生成提供了一种可靠的解决方案。
Abstract
Scenario generation technology
by simulating the randomness and diversity of various typical scenarios
provides critical data support for addressing the limitations of historical data samples and the difficulty of covering extreme scenarios. This paper proposes a feature-constrained and target-driven WGAN-GP (Wasserstein GAN with gradient penalty) based photovoltaic multi-scenario generation method. By introducing the Wasserstein distance and gradient penalty
the method enhances the stability of the generator and the diversity of generated samples. Based on this
key features of three typical scenarios-sunny
rainy
and cloudy-are extracted to define generation targets. A dynamic gate function is embedded in the generator's output stage to dynamically determine the boundary between daytime and nighttime
ensuring zero output during nighttime and realistic irradiance variations during daytime. Additionally
a weighted sampling optimization strategy is employed to dynamically adjust sample weights and selection probabilities
further strengthening the learning of critical feature samples. This enables the generator to more accurately capture target features and significantly improve the generation of scarce scenarios. Case study results demonstrate that the proposed method effectively captures the key features of various weather scenarios
producing samples with excellent target feature alignment and physical consistency
offering a reliable solution for photovoltaic scenario generation.