在EnlightenGAN的启发下,提出了一种新的基于无监督学习全局和局部特征建模的低光照图像增强网络(Low-light Image Enhancement Network Based on Unsupervised Learning Global and Local Feature Modeling Image Enhancement,GLFMIE)...在EnlightenGAN的启发下,提出了一种新的基于无监督学习全局和局部特征建模的低光照图像增强网络(Low-light Image Enhancement Network Based on Unsupervised Learning Global and Local Feature Modeling Image Enhancement,GLFMIE)。该网络分为两个阶段:生成网络和判别网络。生成网络包括全局和局部特征建模网络,判别网络包括全局和局部判别网络。在全局特征建模中创新性地引入了Swin-Transformer Block,其移位窗口机制可以以较少的内存消耗对输入图像进行长距离的特征依赖建模,并很好地提取图像颜色、纹理和形状的特征,从而有效地抑制噪声和伪影。在局部特征建模中,设计了一种多尺度图像和特征聚合(Multi-Scale Image and Feature Aggregation,MSIFA)网络,允许在单个U型网内交换来自不同尺度的信息,进一步增强图像特征的表征能力。在多个公共数据集的测试实验中,与已有一些先进低光照图像增强算法相比,该算法均取得了SOTA级别的表现。展开更多
To facilitate rapid analysis of the oscillation stability mechanism in modular multilevel converter-based high voltage direct current(MMC-HVDC)systems and streamline the simulation process for determining MMC impedanc...To facilitate rapid analysis of the oscillation stability mechanism in modular multilevel converter-based high voltage direct current(MMC-HVDC)systems and streamline the simulation process for determining MMC impedance characteristics,a simplified mathematical simulation model for MMC closed-loop impedance is developed using the harmonic state space method.This model considers various control strategies and includes both AC-side and DC-side impedance models.By applying a Nyquist criterion-based impedance analysis method,the stability mechanisms on the AC and DC sides of the MMC are examined.In addition,a data-driven oscillation stability analysis method is also proposed,leveraging a global sensitivity algorithm based on fast model results to identify key parameters influencing MMC oscillation stability.Based on sensitivity analysis results,a parameter adjustment strategy for oscillation suppression is proposed.The simulation results from the MATLAB/Simulinkbased MMC model validate the effectiveness of the proposed method.展开更多
文摘在EnlightenGAN的启发下,提出了一种新的基于无监督学习全局和局部特征建模的低光照图像增强网络(Low-light Image Enhancement Network Based on Unsupervised Learning Global and Local Feature Modeling Image Enhancement,GLFMIE)。该网络分为两个阶段:生成网络和判别网络。生成网络包括全局和局部特征建模网络,判别网络包括全局和局部判别网络。在全局特征建模中创新性地引入了Swin-Transformer Block,其移位窗口机制可以以较少的内存消耗对输入图像进行长距离的特征依赖建模,并很好地提取图像颜色、纹理和形状的特征,从而有效地抑制噪声和伪影。在局部特征建模中,设计了一种多尺度图像和特征聚合(Multi-Scale Image and Feature Aggregation,MSIFA)网络,允许在单个U型网内交换来自不同尺度的信息,进一步增强图像特征的表征能力。在多个公共数据集的测试实验中,与已有一些先进低光照图像增强算法相比,该算法均取得了SOTA级别的表现。
基金National Natural Science Foundation of China(52307127)State Key Laboratory of Power System Operation and Control(SKLD23KZ07)。
文摘To facilitate rapid analysis of the oscillation stability mechanism in modular multilevel converter-based high voltage direct current(MMC-HVDC)systems and streamline the simulation process for determining MMC impedance characteristics,a simplified mathematical simulation model for MMC closed-loop impedance is developed using the harmonic state space method.This model considers various control strategies and includes both AC-side and DC-side impedance models.By applying a Nyquist criterion-based impedance analysis method,the stability mechanisms on the AC and DC sides of the MMC are examined.In addition,a data-driven oscillation stability analysis method is also proposed,leveraging a global sensitivity algorithm based on fast model results to identify key parameters influencing MMC oscillation stability.Based on sensitivity analysis results,a parameter adjustment strategy for oscillation suppression is proposed.The simulation results from the MATLAB/Simulinkbased MMC model validate the effectiveness of the proposed method.