增强长期云计算工作量预测框架:多变量时间序列中的异常处理和集合学习

IF 5.3 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Transactions on Cloud Computing Pub Date : 2024-03-14 DOI:10.1109/TCC.2024.3400859
Yeong-Min Kim;Seunghwan Song;Byoung-Mo Koo;Jeena Son;Yeseul Lee;Jun-Geol Baek
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引用次数: 0

摘要

预测工作负载并及时响应资源扩展和迁移,对于优化云环境中的运营和加强资源管理至关重要。然而,云环境中设备的多样性和动态性使工作负载预测变得更加复杂。这些挑战往往会导致违反服务水平协议或资源使用效率低下。因此,本文提出了一个增强型长期云工作量预测(E-LCWF)框架,专门用于在这些异构和动态环境中进行高效资源管理。E-LCWF 框架将单个资源工作负载作为多变量时间序列进行处理,并通过异常检测和处理提高模型性能。此外,E-LCWF 框架还采用了基于误差的集合方法,使用基于变压器的模型和长期时间序列预测(LTSF)线性模型。使用来自真实世界管理信息系统和制造执行系统的虚拟机数据获得的实验结果表明,E-LCWF 框架在预测准确性方面优于最先进的模型。
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Enhancing Long-Term Cloud Workload Forecasting Framework: Anomaly Handling and Ensemble Learning in Multivariate Time Series
Forecasting workloads and responding promptly with resource scaling and migration is critical to optimizing operations and enhancing resource management in cloud environments. However, the diverse and dynamic nature of devices within cloud environments complicates workload forecasting. These challenges often lead to service level agreement violations or inefficient resource usage. Hence, this paper proposes an Enhanced Long-Term Cloud Workload Forecasting (E-LCWF) framework designed specifically for efficient resource management in these heterogeneous and dynamic environments. The E-LCWF framework processes individual resource workloads as multivariate time series and enhances model performance through anomaly detection and handling. Additionally, the E-LCWF framework employs an error-based ensemble approach, using transformer-based models and Long-Term Time Series Forecasting (LTSF) linear models, each of which has demonstrated exceptional performance in LTSF. Experimental results obtained using virtual machine data from real-world management information systems and manufacturing execution systems show that the E-LCWF framework outperforms state-of-the-art models in forecasting accuracy.
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来源期刊
IEEE Transactions on Cloud Computing
IEEE Transactions on Cloud Computing Computer Science-Software
CiteScore
9.40
自引率
6.20%
发文量
167
期刊介绍: The IEEE Transactions on Cloud Computing (TCC) is dedicated to the multidisciplinary field of cloud computing. It is committed to the publication of articles that present innovative research ideas, application results, and case studies in cloud computing, focusing on key technical issues related to theory, algorithms, systems, applications, and performance.
期刊最新文献
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