期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Swarm learning anomaly detection framework for cloud data center using multi-channel BiWGAN-GTN and CEEMDAN
1
作者 Lun Tang Yuchen Zhao +4 位作者 Chengcheng Xue Zhiwei Jiang Wei Zou yanping liang Qianbin Chen 《Digital Communications and Networks》 2025年第6期1883-1896,共14页
Anomaly detection is an important task for maintaining the performance of cloud data center.Traditional anomaly detection primarily examines individual Virtual Machine(VM)behavior,neglecting the impact of interactions... Anomaly detection is an important task for maintaining the performance of cloud data center.Traditional anomaly detection primarily examines individual Virtual Machine(VM)behavior,neglecting the impact of interactions among multiple VMs on Key Performance Indicator(KPI)data,e.g.,memory utilization.Furthermore,the nonstationarity,high complexity,and uncertain periodicity of KPI data in VM also bring difficulties to deep learningbased anomaly detection tasks.To settle these challenges,this paper proposes MCBiWGAN-GTN,a multi-channel semi-supervised time series anomaly detection algorithm based on the Bidirectional Wasserstein Generative Adversarial Network with Graph-Time Network(BiWGAN-GTN)and the Complete Ensemble Empirical Mode Decomposition with Adaptive Noise(CEEMDAN).(a)The BiWGAN-GTN algorithm is proposed to extract spatiotemporal information from data.(b)The loss function of BiWGAN-GTN is redesigned to solve the abnormal data intrusion problem during the training process.(c)MCBiWGAN-GTN is designed to reduce data complexity through CEEMDAN for time series decomposition and utilizes BiWGAN-GTN to train different components.(d)To adapt the proposed algorithm for the entire cloud data center,a cloud data center anomaly detection framework based on Swarm Learning(SL)is designed.The evaluation results on a real-world cloud data center dataset show that MCBiWGAN-GTN outperforms the baseline,with an F1-score of 0.96,an accuracy of 0.935,a precision of 0.954,a recall of 0.967,and an FPR of 0.203.The experiments also verify the stability of MCBiWGAN-GTN,the impact of parameter configurations,and the effectiveness of the proposed SL framework. 展开更多
关键词 Cloud data center Anomaly detection Bi WGAN-GTN Time series decomposition Swarm learning
在线阅读 下载PDF
PDCA循环法对产褥期产妇抑郁症的预防效果观察
2
作者 梁艳萍 周丽华 李玲雁 《心电图杂志(电子版)》 2017年第2期252-254,共3页
目的探讨产褥期产妇抑郁症预防干预中PDCA循环法的预防效果。方法选取我院接诊分娩初产妇104例,随机分为干预组和对照组,每组各52例。对照组行常规干预,干预组行PDCA循环法干预模式,观测两组产妇爱丁堡产后抑郁量表(EPDS)评分变化以及... 目的探讨产褥期产妇抑郁症预防干预中PDCA循环法的预防效果。方法选取我院接诊分娩初产妇104例,随机分为干预组和对照组,每组各52例。对照组行常规干预,干预组行PDCA循环法干预模式,观测两组产妇爱丁堡产后抑郁量表(EPDS)评分变化以及产妇抑郁症发生率。结果对照组干预后EPDS评估结果为(12.27±1.36)分,干预组干预后EPDS评估结果为(8.62±1.17)(P<0.05);对照组产后抑郁症发生率为17.31%,干预组为3.85%(P<0.05)。结论 PDCA循环法可有效改善产褥期产妇的抑郁情绪,实现对产后抑郁症发病率的预防。 展开更多
关键词 产褥期产妇抑郁症 PDCA循环法 预防效果
暂未订购
上一页 1 下一页 到第
使用帮助 返回顶部