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Swarm learning anomaly detection framework for cloud data center using multi-channel BiWGAN-GTN and CEEMDAN
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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
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Workload-aware request routing in cloud data center using software-defined networking
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作者 Haitao Yuan Jing Bi Bohu Li 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2015年第1期151-160,共10页
Large latency of applications will bring revenue loss to cloud infrastructure providers in the cloud data center. The existing controllers of software-defined networking architecture can fetch and process traffic info... Large latency of applications will bring revenue loss to cloud infrastructure providers in the cloud data center. The existing controllers of software-defined networking architecture can fetch and process traffic information in the network. Therefore, the controllers can only optimize the network latency of applications. However, the serving latency of applications is also an important factor in delivered user-experience for arrival requests. Unintelligent request routing will cause large serving latency if arrival requests are allocated to overloaded virtual machines. To deal with the request routing problem, this paper proposes the workload-aware software-defined networking controller architecture. Then, request routing algorithms are proposed to minimize the total round trip time for every type of request by considering the congestion in the network and the workload in virtual machines(VMs). This paper finally provides the evaluation of the proposed algorithms in a simulated prototype. The simulation results show that the proposed methodology is efficient compared with the existing approaches. 展开更多
关键词 cloud data center(CDC) software-defined networking request routing resource allocation network latency optimization
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Low-power task scheduling algorithm for large-scale cloud data centers 被引量:3
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作者 Xiaolong Xu Jiaxing Wu +1 位作者 Geng Yang Ruchuan Wang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2013年第5期870-878,共9页
How to effectively reduce the energy consumption of large-scale data centers is a key issue in cloud computing. This paper presents a novel low-power task scheduling algorithm (L3SA) for large-scale cloud data cente... How to effectively reduce the energy consumption of large-scale data centers is a key issue in cloud computing. This paper presents a novel low-power task scheduling algorithm (L3SA) for large-scale cloud data centers. The winner tree is introduced to make the data nodes as the leaf nodes of the tree and the final winner on the purpose of reducing energy consumption is selected. The complexity of large-scale cloud data centers is fully consider, and the task comparson coefficient is defined to make task scheduling strategy more reasonable. Experiments and performance analysis show that the proposed algorithm can effectively improve the node utilization, and reduce the overall power consumption of the cloud data center. 展开更多
关键词 cloud computing data center task scheduling energy consumption.
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Subject Oriented Autonomic Cloud Data Center Networks Model
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作者 Hang Qin Li Zhu 《Journal of Data Analysis and Information Processing》 2017年第3期87-95,共9页
This paper investigates autonomic cloud data center networks, which is the solution with the increasingly complex computing environment, in terms of the management and cost issues to meet users’ growing demand. The v... This paper investigates autonomic cloud data center networks, which is the solution with the increasingly complex computing environment, in terms of the management and cost issues to meet users’ growing demand. The virtualized cloud networking is to provide a plethora of rich online applications, including self-configuration, self-healing, self-optimization and self-protection. In addition, we draw on the intelligent subject and multi-agent system, concerning system model, strategy, autonomic cloud computing, involving independent computing system development and implementation. Then, combining the architecture with the autonomous unit, we propose the MCDN (Model of Autonomic Cloud Data Center Networks). This model can define intelligent state, elaborate the composition structure, and complete life cycle. Finally, our proposed public infrastructure can be provided with the autonomous unit in the supported interaction model. 展开更多
关键词 AUTONOMIC cloud Computing AUTONOMOUS Unit data center SELF-CONFIGURATION Service DESCRIPTION
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Efficient Multi-Tenant Virtual Machine Allocation in Cloud Data Centers 被引量:2
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作者 Jiaxin Li Dongsheng Li +1 位作者 Yuming Ye Xicheng Lu 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2015年第1期81-89,共9页
Virtual Machine(VM) allocation for multiple tenants is an important and challenging problem to provide efficient infrastructure services in cloud data centers. Tenants run applications on their allocated VMs, and th... Virtual Machine(VM) allocation for multiple tenants is an important and challenging problem to provide efficient infrastructure services in cloud data centers. Tenants run applications on their allocated VMs, and the network distance between a tenant's VMs may considerably impact the tenant's Quality of Service(Qo S). In this study, we define and formulate the multi-tenant VM allocation problem in cloud data centers, considering the VM requirements of different tenants, and introducing the allocation goal of minimizing the sum of the VMs' network diameters of all tenants. Then, we propose a Layered Progressive resource allocation algorithm for multi-tenant cloud data centers based on the Multiple Knapsack Problem(LP-MKP). The LP-MKP algorithm uses a multi-stage layered progressive method for multi-tenant VM allocation and efficiently handles unprocessed tenants at each stage. This reduces resource fragmentation in cloud data centers, decreases the differences in the Qo S among tenants, and improves tenants' overall Qo S in cloud data centers. We perform experiments to evaluate the LP-MKP algorithm and demonstrate that it can provide significant gains over other allocation algorithms. 展开更多
关键词 virtual machine allocation cloud data center multiple tenants multiple knapsack problem
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Resilient Power Systems Operation with Offshore Wind Farms and Cloud Data Centers 被引量:3
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作者 Shengwei Liu Yuanzheng Li +2 位作者 Xuan Liu Tianyang Zhao Peng Wang 《CSEE Journal of Power and Energy Systems》 SCIE EI CSCD 2023年第6期1985-1998,共14页
To enhance the resilience of power systems with offshore wind farms(OWFs),a proactive scheduling scheme is proposed to unlock the flexibility of cloud data centers(CDCs)responding to uncertain spatial and temporal imp... To enhance the resilience of power systems with offshore wind farms(OWFs),a proactive scheduling scheme is proposed to unlock the flexibility of cloud data centers(CDCs)responding to uncertain spatial and temporal impacts induced by hurricanes.The total life simulation(TLS)is adopted to project the local weather conditions at transmission lines and OWFs,before,during,and after the hurricane.The static power curve of wind turbines(WTs)is used to capture the output of OWFs,and the fragility analysis of transmission-line components is used to formulate the time-varying failure rates of transmission lines.A novel distributionally robust ambiguity set is constructed with a discrete support set,where the impacts of hurricanes are depicted by these supports.To minimize load sheddings and dropping workloads,the spatial and temporal demand response capabilities of CDCs according to task migration and delay tolerance are incorporated into resilient management.The flexibilities of CDC’s power consumption are integrated into a two-stage distributionally robust optimization problem with conditional value at risk(CVaR).Based on Lagrange duality,this problem is reformulated into its deterministic counterpart and solved by a novel decomposition method with hybrid cuts,admitting fewer iterations and a faster convergence rate.The effectiveness of the proposed resilient management strategy is verified through case studies conducted on the modified IEEERTS 24 system,which includes 4 data centers and 5 offshore wind farms. 展开更多
关键词 cloud computing data center decomposition HURRICANE offshore wind farm resilience enhancement total life simulation unit commitment
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VirtCO:Joint Coflow Scheduling and Virtual Machine Placement in Cloud Data Centers 被引量:3
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作者 Dian Shen Junzhou Luo +1 位作者 Fang Dong Junxue Zhang 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2019年第5期630-644,共15页
Cloud data centers, such as Amazon EC2, host myriad big data applications using Virtual Machines(VMs). As these applications are communication-intensive, optimizing network transfer between VMs is critical to the perf... Cloud data centers, such as Amazon EC2, host myriad big data applications using Virtual Machines(VMs). As these applications are communication-intensive, optimizing network transfer between VMs is critical to the performance of these applications and network utilization of data centers. Previous studies have addressed this issue by scheduling network flows with coflow semantics or optimizing VM placement with traffic considerations.However, coflow scheduling and VM placement have been conducted orthogonally. In fact, these two mechanisms are mutually dependent, and optimizing these two complementary degrees of freedom independently turns out to be suboptimal. In this paper, we present VirtCO, a practical framework that jointly schedules coflows and places VMs ahead of VM launch to optimize the overall performance of data center applications. We model the joint coflow scheduling and VM placement optimization problem, and propose effective heuristics for solving it. We further implement VirtCO with OpenStack and deploy it in a testbed environment. Extensive evaluation of real-world traces shows that compared with state-of-the-art solutions, VirtCO greatly reduces the average coflow completion time by up to 36.5%. This new framework is also compatible with and readily deployable within existing data center architectures. 展开更多
关键词 cloud computing data center coflow SCHEDULING Virtual Machine (VM) PLACEMENT
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Virtual machine placement optimizing to improve network performance in cloud data centers 被引量:3
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作者 DONG Jian-kang WANG Hong-bo +1 位作者 LI Yang-yang CHENG Shi-duan 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2014年第3期62-70,共9页
With the wide application of virtualization technology in cloud data centers, how to effectively place virtual machine (VM) is becoming a major issue for cloud providers. The existing virtual machine placement (VMP... With the wide application of virtualization technology in cloud data centers, how to effectively place virtual machine (VM) is becoming a major issue for cloud providers. The existing virtual machine placement (VMP) solutions are mainly to optimize server resources. However, they pay little consideration on network resources optimization, and they do not concern the impact of the network topology and the current network traffic. A multi-resource constraints VMP scheme is proposed. Firstly, the authors attempt to reduce the total communication traffic in the data center network, which is abstracted as a quadratic assignment problem; and then aim at optimizing network maximum link utilization (MLU). On the condition of slight variation of the total traffic, minimizing MLU can balance network traffic distribution and reduce network congestion hotspots, a classic combinatorial optimization problem as well as NP-hard problem. Ant colony optimization and 2-opt local search are combined to solve the problem. Simulation shows that MLU is decreased by 20%, and the number of hot links is decreased by 37%. 展开更多
关键词 cloud computing data center network virtual machine placement traffic engineering network performance
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A cost-effective scheme supporting adaptive service migration in cloud data center 被引量:1
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作者 Bing YU Yanni HAN +2 位作者 Hanning YUAN Xu ZHOU Zhen XU 《Frontiers of Computer Science》 SCIE EI CSCD 2015年第6期875-886,共12页
Cloud computing as an emerging technology promises to provide reliable and available services on de- mand. However, offering services for mobile requirements without dynamic and adaptive migration may hurt the perform... Cloud computing as an emerging technology promises to provide reliable and available services on de- mand. However, offering services for mobile requirements without dynamic and adaptive migration may hurt the performance of deployed services. In this paper, we propose MAMOC, a cost-effective approach for selecting the server and migrating services to attain enhanced QoS more econom- ically. The goal of MAMOC is to minimize the total operating cost while guaranteeing the constraints of resource de- mands, storage capacity, access latency and economies, including selling price and reputation grade. First, we devise an objective optimal model with multi-constraints, describing the relationship among operating cost and the above con- straints. Second, a normalized method is adopted to calculate the operating cost for each candidate VM. Then we give a de- tailed presentation on the online algorithm MAMOC, which determines the optimal server. To evaluate the performance of our proposal, we conducted extensive simulations on three typical network topologies and a realistic data center net- work. Results show that MAMOC is scalable and robust with the larger scales of requests and VMs in cloud environment. Moreover, MAMOC decreases the competitive ratio by identifying the optimal migration paths, while ensuring the constraints of SLA as satisfying as possible. 展开更多
关键词 cloud computing software-defined networking data center service migration QoS
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Scalability of the DVFS Power Management Technique as Applied to 3-Tier Data Center Architecture in Cloud Computing
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作者 Sulieman Bani-Ahmad Saleh Sa’adeh 《Journal of Computer and Communications》 2017年第1期69-93,共25页
The increase in computing capacity caused a rapid and sudden increase in the Operational Expenses (OPEX) of data centers. OPEX reduction is a big concern and a key target in modern data centers. In this study, the sca... The increase in computing capacity caused a rapid and sudden increase in the Operational Expenses (OPEX) of data centers. OPEX reduction is a big concern and a key target in modern data centers. In this study, the scalability of the Dynamic Voltage and Frequency Scaling (DVFS) power management technique is studied under multiple different workloads. The environment of this study is a 3-Tier data center. We conducted multiple experiments to find the impact of using DVFS on energy reduction under two scheduling techniques, namely: Round Robin and Green. We observed that the amount of energy reduction varies according to data center load. When the data center load increases, the energy reduction decreases. Experiments using Green scheduler showed around 83% decrease in power consumption when DVFS is enabled and DC is lightly loaded. In case the DC is fully loaded, in which case the servers’ CPUs are constantly busy with no idle time, the effect of DVFS decreases and stabilizes to less than 10%. Experiments using Round Robin scheduler showed less energy saving by DVFS, specifically, around 25% in light DC load and less than 5% in heavy DC load. In order to find the effect of task weight on energy consumption, a set of experiments were conducted through applying thin and fat tasks. A thin task has much less instructions compared to fat tasks. We observed, through the simulation, that the difference in power reduction between both types of tasks when using DVFS is less than 1%. 展开更多
关键词 cloud Computing data centerS Operational EXPENSES Green Technology DVFS Energy Reduction
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Towards Attaining Reliable and Efficient Green Cloud Computing Using Micro-Smart Grids to Power Internet Data Center
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作者 Mohammed Mansur Ibrahim Anas Ahmad Danbala Mustapha Ismail 《Journal of Computer and Communications》 2019年第7期195-205,共11页
Energy generation and consumption are the main aspects of social life due to the fact that modern people’s necessity for energy is a crucial ingredient for existence. Therefore, energy efficiency is regarded as the b... Energy generation and consumption are the main aspects of social life due to the fact that modern people’s necessity for energy is a crucial ingredient for existence. Therefore, energy efficiency is regarded as the best economical approach to provide safer and affordable energy for both utilities and consumers, through the enhancement of energy security and reduction of energy emissions. One of the problems of cloud computing service providers is the high rise in the cost of energy, efficiency together with carbon emission with regards to the running of their internet data centres (IDCs). In order to mitigate these issues, smart micro-grid was found to be suitable in increasing the energy efficiency, sustainability together with the reliability of electrical services for the IDCs. Therefore, this paper presents idea on how smart micro-grids can bring down the disturbing cost of energy, carbon emission by the IDCs with some level of energy efficiency all in an effort to attain green cloud computing services from the service providers. In specific term, we aim at achieving green information and communication technology (ICT) in the field of cloud computing in relations to energy efficiency, cost-effectiveness and carbon emission reduction from cloud data center’s perspective. 展开更多
关键词 cloud Computing INTERNET data center Green IT Energy Efficiency Mi-cro-Smart Grids
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Improved Verifiability Scheme for Data Storage in Cloud Computing
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作者 YANG Xiaoyuan ZHU Shuaishuai PAN Xiaozhong 《Wuhan University Journal of Natural Sciences》 CAS 2011年第5期399-404,共6页
In Cloud computing, data and service requests are responded by remote processes calls on huge data server clusters that are not totally trusted. The new computing pattern may cause many potential security threats. Thi... In Cloud computing, data and service requests are responded by remote processes calls on huge data server clusters that are not totally trusted. The new computing pattern may cause many potential security threats. This paper explores how to ensure the integrity and correctness of data storage in cloud computing with user's key pair. In this paper, we aim mainly at constructing of a quick data chunk verifying scheme to maintain data in data center by implementing a balance strategy of cloud computing costs, removing the heavy computing load of clients, and applying an automatic data integrity maintenance method. In our scheme, third party auditor (TPA) is kept in the scheme, for the sake of the client, to periodically check the integrity of data blocks stored in data center. Our scheme supports quick public data integrity verification and chunk redundancy strategy. Compared with the existing scheme, it takes the advantage of ocean data support and high performance. 展开更多
关键词 cloud computing data verifiability data center data interity
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云数据中心高可靠网络技术应用研究
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作者 王猛 王霞 +1 位作者 万成威 张勤昭 《航天技术与工程学报》 2026年第2期61-70,共10页
针对云数据中心在协议快速收敛、多路径传输负载均衡、配置状态一致性保障等方面的系统性高可靠需求,本文提出一种满足其特殊要求的高可靠网络设计方法。首先,对比分析云数据中心相较于传统数据中心网络的特殊需求,明确高可靠网络架构... 针对云数据中心在协议快速收敛、多路径传输负载均衡、配置状态一致性保障等方面的系统性高可靠需求,本文提出一种满足其特殊要求的高可靠网络设计方法。首先,对比分析云数据中心相较于传统数据中心网络的特殊需求,明确高可靠网络架构的内涵;其次,结合云数据中心CLOS网络架构流量特点开展了网络虚拟化模型设计和虚拟化技术应用分析;最后,结合云数据中心虚拟化网络特点,构建云数据中心虚拟化网络可靠性模型,并基于模型特征提出相应的可靠性设计应用方法,能够为云数据中心网络的高可靠建设提供理论参考与实践指导,有效提升云服务在面对复杂故障时的业务连续性与用户体验。 展开更多
关键词 云数据中心 网络架构 虚拟化网络 可靠性设计
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负载感知的深度强化学习虚拟机整合算法
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作者 况翔 马震 +2 位作者 朱万春 张智 崔云飞 《计算机工程与设计》 北大核心 2026年第3期710-716,共7页
为了平衡云平台服务水平违规率和整体能耗,提出了一种云环境下的负载感知深度强化学习自主虚拟机整合算法。算法通过负载因子识别过度使用与欠载的主机选择待迁移的虚拟机,以实现负载均衡;利用基于编码器-解码器的负载感知深度强化学习... 为了平衡云平台服务水平违规率和整体能耗,提出了一种云环境下的负载感知深度强化学习自主虚拟机整合算法。算法通过负载因子识别过度使用与欠载的主机选择待迁移的虚拟机,以实现负载均衡;利用基于编码器-解码器的负载感知深度强化学习网络来决定待迁移虚拟机的放置位置,实现高效与可靠的虚拟机整合。仿真实验结果表明,提出的算法能够显著降低主机能耗(15.9%)和服务水平协议违规率(SLAV)(13.1%)。 展开更多
关键词 虚拟机整合 虚拟机迁移 深度强化学习 云数据中心 能耗优化 服务水平协议违规 编码器-解码器
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国标《地理时空信息云平台运行维护规范》的内容与特点
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作者 张褚朋 张保钢 +1 位作者 王鹏翔 孔俊元 《北京测绘》 2026年第1期94-101,共8页
本文介绍了国家标准《地理时空信息云平台运行维护规范:GB/T 44344—2024》(以下简称标准)的编制背景、主要内容及与相关标准的对比。标准规定了地理时空信息云平台的运维内容和组织、运维管理制度内容、基础运维环境运维、软件系统运... 本文介绍了国家标准《地理时空信息云平台运行维护规范:GB/T 44344—2024》(以下简称标准)的编制背景、主要内容及与相关标准的对比。标准规定了地理时空信息云平台的运维内容和组织、运维管理制度内容、基础运维环境运维、软件系统运维、数据运维、安全与应急保障和运维报告编写,适用于地理时空信息云平台环境、软件、数据和安全等方面的运行维护。本文归纳了该标准的3个特点:①重点突出,针对性强,切中要害;②实操性强,规定翔实,实证可行;③表单简洁,记录到位,查询方便;④符合性好,同类标准有呼应,多个标准成系列。本文与相关标准的各项指标关系做了分析,认为该系列标准尚缺乏时空大数据质量评价规范或检验规范,提出执行本标准、发布《时空大数据平台技术规范》等新标准、开展《时空大数据质量评价规范》标准研制的建议。 展开更多
关键词 时空信息云平台 运行维护 时空大数据 云资源中心
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Hybrid Cloud Architecture for Higher Education System
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作者 Omar Nooh Almotiry Mohemmed Sha +1 位作者 Mohamudha Parveen Rahamathulla Omer Salih Dawood Omer 《Computer Systems Science & Engineering》 SCIE EI 2021年第1期1-12,共12页
As technology improves,several modernization efforts are taken in the process of teaching and learning.An effective education system should maintain global connectivity,federate security and deliver self-access to its... As technology improves,several modernization efforts are taken in the process of teaching and learning.An effective education system should maintain global connectivity,federate security and deliver self-access to its services.The cloud computing services transform the current education system to an advanced one.There exist several tools and services to make teaching and learning more interesting.In the higher education system,the data flow and basic operations are almost the same.These systems need to access cloud-based applications and services for their operational advancement and flexibility.Architecting a suitable cloud-based education system will leverage all the benefits of the cloud to its stakeholders.At the same time,educational institutions want to keep their sensitive information more secure.For that,they need to maintain their on-premises data center along with the cloud infrastructure.This paper proposes an advanced,flexible and secure hybrid cloud architecture to satisfy the growing demands of an education system.By sharing the proposed cloud infrastructure among several higher educational institutions,there is a possibility to implement a common education system among organizations.Moreover,this research demonstrates how a cloud-based education architecture can utilize the advantages of the cloud resources offered by several providers in a hybrid cloud environment.In addition,a reference architecture using Amazon Web Service(AWS)is proposed to implement a common university education system. 展开更多
关键词 Educational cloud hybrid cloud cloud services cloud data center cloud education system
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三维激光扫描技术在水工隧洞变形监测中的应用
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作者 李亚飞 丁国章 +1 位作者 王安 缪盾 《水利水电快报》 2026年第2期61-64,98,共5页
为探讨三维激光扫描技术在水工隧洞变形监测中的应用,解决传统监测方法在复杂三维空间中的局限性,提升监测精度和效率,以浙江省缙云县潜明水库引水工程黄坛隧洞为研究对象,采用三维激光扫描技术采集多期高精度点云数据,通过构建切面中... 为探讨三维激光扫描技术在水工隧洞变形监测中的应用,解决传统监测方法在复杂三维空间中的局限性,提升监测精度和效率,以浙江省缙云县潜明水库引水工程黄坛隧洞为研究对象,采用三维激光扫描技术采集多期高精度点云数据,通过构建切面中心点并进行中心线对比分析,系统研究隧洞的变形特征。结果表明:两处切面位置的几何中心在水平和垂直方向上相对变化量的绝对值均不超过1 mm,各期隧洞中心线与第一期中心线在各方向上的偏角绝对值均控制在10 arcsec以内,对应的位移偏差不超过1 mm。三维激光扫描技术能够实现大范围、高精度的隧洞变形监测,有效克服了传统方法的局限性,为水工隧洞变形监测提供技术支撑。 展开更多
关键词 三维激光扫描 水工隧洞 变形监测 点云数据 中心线分析
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基于H3Cloud架构的广播电视云数据中心IT设备层可靠性分析
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作者 刘卫宏 《电视技术》 2021年第6期5-7,共3页
论述广播电视云数据中心的应用需求,分析基于H3Cloud云架构的广播电视云数据中心的IT设备计算接入层、基础设施层、网络控制与智能保障层以及业务交付层的可靠性技术手段,指出广播电视云数据中心设计和建设过程需要对各层次的可靠性进... 论述广播电视云数据中心的应用需求,分析基于H3Cloud云架构的广播电视云数据中心的IT设备计算接入层、基础设施层、网络控制与智能保障层以及业务交付层的可靠性技术手段,指出广播电视云数据中心设计和建设过程需要对各层次的可靠性进行深入分析和论证,并根据应用需求进行可靠性强化。 展开更多
关键词 云数据中心 虚拟化 可靠性
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云计算环境下数据中心网络负载均衡策略研究
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作者 朱义霞 《信息与电脑》 2026年第4期170-172,共3页
云计算技术日渐普及,云数据中心已成业务承载核心,网络负载均衡是其高效运行的关键。云计算环境特性鲜明,文章以此为切入点,解析数据中心网络负载均衡的核心内涵与特殊需求,指出动态负载感知滞后、多维度资源协同失衡等关键挑战。依托... 云计算技术日渐普及,云数据中心已成业务承载核心,网络负载均衡是其高效运行的关键。云计算环境特性鲜明,文章以此为切入点,解析数据中心网络负载均衡的核心内涵与特殊需求,指出动态负载感知滞后、多维度资源协同失衡等关键挑战。依托软件定义网络(Software-Defined Networking,SDN)、虚拟化等技术,设计了“SDN控制器+虚拟机代理”负载采集机制,构建了多维度权重评估方法,提出了“预测—调度—反馈”闭环控制与场景化调度等优化策略。经实践验证,这些策略可提升资源利用率超30%,降低业务响应延迟40%,为云数据中心负载均衡提供可行方案。 展开更多
关键词 云计算 数据中心 网络负载均衡 SDN技术 负载调度
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云主机资源预配置系统——CCDeepAR算法的探索
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作者 刘大为 李倩 《微型电脑应用》 2026年第2期307-311,共5页
为了有效地解决实际工程领域的数据中心云主机资源配置不合理及利用率低的问题,提出一种新的虚拟机资源需求预测算法——敏捷合作的深度自回归循环(CCDeepAR)网络算法,并将其应用于云主机资源预配置系统。所提出的算法融合了深度自回归... 为了有效地解决实际工程领域的数据中心云主机资源配置不合理及利用率低的问题,提出一种新的虚拟机资源需求预测算法——敏捷合作的深度自回归循环(CCDeepAR)网络算法,并将其应用于云主机资源预配置系统。所提出的算法融合了深度自回归循环网络算法与三次指数平滑(TES)法,旨在提高预测精度并增强对资源需求波动的适应能力。将CCDeepAR网络算法与传统的TES法、组合模型(TES法+自回归积分滑动平均模型)、单独的DeepAR网络算法进行实验比较,结果表明CCDeepAR网络算法相比DeepAR网络算法将误差偏离提升了15.7%。CCDeepAR网络算法不仅能准确预测资源需求变化,还能确保云主机资源预配置系统具备足够的计算资源来处理多样化的用户任务,从而显著提高云计算资源的整体利用率,满足实际工程领域项目的业务期望。 展开更多
关键词 云计算数据中心 预配置 三次指数平滑法 DeepAR网络算法 资源利用率
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