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An improved bidirectional generative adversarial network model for multivariate estimation of correlated and imbalanced tunnel construction parameters
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作者 Yao Xiao Jia Yu +3 位作者 Guoxin Xu Dawei Tong Jiahao Yu Tuocheng Zeng 《Journal of Rock Mechanics and Geotechnical Engineering》 SCIE CSCD 2023年第7期1797-1809,共13页
Estimation of construction parameters is crucial for optimizing tunnel construction schedule.Due to the influence of routine activities and occasional risk events,these parameters are usually correlated and imbalanced... Estimation of construction parameters is crucial for optimizing tunnel construction schedule.Due to the influence of routine activities and occasional risk events,these parameters are usually correlated and imbalanced.To solve this issue,an improved bidirectional generative adversarial network(BiGAN)model with a joint discriminator structure and zero-centered gradient penalty(0-GP)is proposed.In this model,in order to improve the capability of original BiGAN in learning imbalanced parameters,the joint discriminator separately discriminates the routine activities and risk event durations to balance their influence weights.Then,the self-attention mechanism is embedded so that the discriminator can pay more attention to the imbalanced parameters.Finally,the 0-GP is adapted for the loss of the discrimi-nator to improve its convergence and stability.A case study of a tunnel in China shows that the improved BiGAN can obtain parameter estimates consistent with the classical Gauss mixture model,without the need of tedious and complex correlation analysis.The proposed joint discriminator can increase the ability of BiGAN in estimating imbalanced construction parameters,and the 0-GP can ensure the stability and convergence of the model. 展开更多
关键词 Multivariate parameters estimation Correlated and imbalanced parameters Bidirectional generative adversarial network(bigan) Joint discriminator Zero-centered gradient penalty(0-GP)
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面向大数据的BiGAN网络入侵检测 被引量:1
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作者 李洋 《太原师范学院学报(自然科学版)》 2019年第1期63-66,共4页
针对大数据背景下的网络入侵具有大规模、速度快和入侵变种的特点,提出了一种面向大数据的BiGAN网络入侵检测的方法.通过双向GAN(BiGAN)与潜伏网络的协同机制,有效地提高了检测效率和容灾能力.最后通过实验验证分析,结果表明提出的模型... 针对大数据背景下的网络入侵具有大规模、速度快和入侵变种的特点,提出了一种面向大数据的BiGAN网络入侵检测的方法.通过双向GAN(BiGAN)与潜伏网络的协同机制,有效地提高了检测效率和容灾能力.最后通过实验验证分析,结果表明提出的模型优于OC-SVM,IF,GAN等方法,低误报率、高准确率、高效率,是一种较为可行且有效的网络入侵检测方法. 展开更多
关键词 大数据 入侵检测 bigan 潜伏网络 协同机制
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考虑风电出力不确定性的配电网概率潮流计算 被引量:7
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作者 白洁 王守相 +3 位作者 赵倩宇 廖文龙 赵海洲 张雷 《电力系统及其自动化学报》 CSCD 北大核心 2021年第1期78-84,共7页
在对配电网进行概率潮流计算时,通常采用的风速概率模型存在准确性差、求解参数复杂及多风机出力相关性难以考虑的缺点,为此提出一种采用双向生成对抗网络BIGAN(bidirectional generative adversarial network)刻画风电出力不确定性的... 在对配电网进行概率潮流计算时,通常采用的风速概率模型存在准确性差、求解参数复杂及多风机出力相关性难以考虑的缺点,为此提出一种采用双向生成对抗网络BIGAN(bidirectional generative adversarial network)刻画风电出力不确定性的配电网概率潮流计算方法。首先,分析BIGAN的基本原理和训练过程,给出了利用BIGAN生成风功率样本的步骤。其次,以实际风功率数据为原始样本,通过BIGAN获得生成样本,然后考察原始样本和生成样本的时间相关性、概率分布特性及空间相关性,验证BIGAN方法的有效性;最后,在IEEE33节点系统中,以BIGAN生成的风功率样本和假定服从正态分布的负荷样本为输入进行潮流计算。结果表明所提方法计算精度高,计算时间短。 展开更多
关键词 概率潮流 不确定性 双向生成对抗网络 生成模型 深度学习
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