With the popularization of the Internet and the development of technology,cyber threats are increasing day by day.Threats such as malware,hacking,and data breaches have had a serious impact on cybersecurity.The networ...With the popularization of the Internet and the development of technology,cyber threats are increasing day by day.Threats such as malware,hacking,and data breaches have had a serious impact on cybersecurity.The network security environment in the era of big data presents the characteristics of large amounts of data,high diversity,and high real-time requirements.Traditional security defense methods and tools have been unable to cope with the complex and changing network security threats.This paper proposes a machine-learning security defense algorithm based on metadata association features.Emphasize control over unauthorized users through privacy,integrity,and availability.The user model is established and the mapping between the user model and the metadata of the data source is generated.By analyzing the user model and its corresponding mapping relationship,the query of the user model can be decomposed into the query of various heterogeneous data sources,and the integration of heterogeneous data sources based on the metadata association characteristics can be realized.Define and classify customer information,automatically identify and perceive sensitive data,build a behavior audit and analysis platform,analyze user behavior trajectories,and complete the construction of a machine learning customer information security defense system.The experimental results show that when the data volume is 5×103 bit,the data storage integrity of the proposed method is 92%.The data accuracy is 98%,and the success rate of data intrusion is only 2.6%.It can be concluded that the data storage method in this paper is safe,the data accuracy is always at a high level,and the data disaster recovery performance is good.This method can effectively resist data intrusion and has high air traffic control security.It can not only detect all viruses in user data storage,but also realize integrated virus processing,and further optimize the security defense effect of user big data.展开更多
Computational fluid dynamics(CFD) has recently emerged as an effective tool for the investigation of the hydraulic parameters and efficiency of tray towers.The computation domain was established for two types of orien...Computational fluid dynamics(CFD) has recently emerged as an effective tool for the investigation of the hydraulic parameters and efficiency of tray towers.The computation domain was established for two types of oriented valves within a tray and meshed into two parts with different grid types and sizes.The volume fraction correlation concerning inter-phase momentum transfer source was fitted based on experimental data,and built in UDF for simulation.The flow pattern of oriented valve tray under different operating conditions was simulated under Eulerian-Eulerian framework with realizable k-ε model.The predicted liquid height from CFD simulation was in good agreement with the results of pressure drop and volume fraction correlations.Meanwhile,the velocity distribution and volume fraction of the two phases were demonstrated and analyzed,which are useful in design and analysis of the column trays.展开更多
为进一步提高对携行航材品种确定和消耗数量预测的准确性,针对非线性多影响因素的品种分类和消耗预测模型中的特征选择问题进行研究。对影响携行航材需求的因素进行分析,建立三级特征体系,并针对品种确定和消耗预测提取相应的特征集合;...为进一步提高对携行航材品种确定和消耗数量预测的准确性,针对非线性多影响因素的品种分类和消耗预测模型中的特征选择问题进行研究。对影响携行航材需求的因素进行分析,建立三级特征体系,并针对品种确定和消耗预测提取相应的特征集合;采用XGboost、灰色关联度分析(grey relation analysis,GRA)、决策试验和评价实验法(decision making trial and evaluation laboratory,DEMATEL)等方法对各影响特征进行重要性排序和相关性分析;综合运用定性和定量分析方法筛选特征;分别建立可用于品种确定和数量预测的精简版特征集合。该研究可为后续提高携行航材品种确定和预测的准确率和运算效率提供参考。展开更多
基于单样本的人脸识别是一项充满挑战性的任务。文中结合Similar Principal Component Analysis(SPCA)算法与Histograms of Oriented Gradients(HOG)算法,利用SPCA筛选出图像类的相似信息,用HOG算法对相似的信息块进行特征量化,使二者...基于单样本的人脸识别是一项充满挑战性的任务。文中结合Similar Principal Component Analysis(SPCA)算法与Histograms of Oriented Gradients(HOG)算法,利用SPCA筛选出图像类的相似信息,用HOG算法对相似的信息块进行特征量化,使二者优势互补。最后利用Pearson correlation(PC)进行相似性判别,在数据库Extended Yale B database上进行实验,结果表明,在光照变化的情况下,该算法对人脸正面图像的识别性能比传统算法好。展开更多
基金This work was supported by the National Natural Science Foundation of China(U2133208,U20A20161).
文摘With the popularization of the Internet and the development of technology,cyber threats are increasing day by day.Threats such as malware,hacking,and data breaches have had a serious impact on cybersecurity.The network security environment in the era of big data presents the characteristics of large amounts of data,high diversity,and high real-time requirements.Traditional security defense methods and tools have been unable to cope with the complex and changing network security threats.This paper proposes a machine-learning security defense algorithm based on metadata association features.Emphasize control over unauthorized users through privacy,integrity,and availability.The user model is established and the mapping between the user model and the metadata of the data source is generated.By analyzing the user model and its corresponding mapping relationship,the query of the user model can be decomposed into the query of various heterogeneous data sources,and the integration of heterogeneous data sources based on the metadata association characteristics can be realized.Define and classify customer information,automatically identify and perceive sensitive data,build a behavior audit and analysis platform,analyze user behavior trajectories,and complete the construction of a machine learning customer information security defense system.The experimental results show that when the data volume is 5×103 bit,the data storage integrity of the proposed method is 92%.The data accuracy is 98%,and the success rate of data intrusion is only 2.6%.It can be concluded that the data storage method in this paper is safe,the data accuracy is always at a high level,and the data disaster recovery performance is good.This method can effectively resist data intrusion and has high air traffic control security.It can not only detect all viruses in user data storage,but also realize integrated virus processing,and further optimize the security defense effect of user big data.
文摘Computational fluid dynamics(CFD) has recently emerged as an effective tool for the investigation of the hydraulic parameters and efficiency of tray towers.The computation domain was established for two types of oriented valves within a tray and meshed into two parts with different grid types and sizes.The volume fraction correlation concerning inter-phase momentum transfer source was fitted based on experimental data,and built in UDF for simulation.The flow pattern of oriented valve tray under different operating conditions was simulated under Eulerian-Eulerian framework with realizable k-ε model.The predicted liquid height from CFD simulation was in good agreement with the results of pressure drop and volume fraction correlations.Meanwhile,the velocity distribution and volume fraction of the two phases were demonstrated and analyzed,which are useful in design and analysis of the column trays.
文摘为进一步提高对携行航材品种确定和消耗数量预测的准确性,针对非线性多影响因素的品种分类和消耗预测模型中的特征选择问题进行研究。对影响携行航材需求的因素进行分析,建立三级特征体系,并针对品种确定和消耗预测提取相应的特征集合;采用XGboost、灰色关联度分析(grey relation analysis,GRA)、决策试验和评价实验法(decision making trial and evaluation laboratory,DEMATEL)等方法对各影响特征进行重要性排序和相关性分析;综合运用定性和定量分析方法筛选特征;分别建立可用于品种确定和数量预测的精简版特征集合。该研究可为后续提高携行航材品种确定和预测的准确率和运算效率提供参考。
文摘基于单样本的人脸识别是一项充满挑战性的任务。文中结合Similar Principal Component Analysis(SPCA)算法与Histograms of Oriented Gradients(HOG)算法,利用SPCA筛选出图像类的相似信息,用HOG算法对相似的信息块进行特征量化,使二者优势互补。最后利用Pearson correlation(PC)进行相似性判别,在数据库Extended Yale B database上进行实验,结果表明,在光照变化的情况下,该算法对人脸正面图像的识别性能比传统算法好。