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Evolutionary approaches to signal decomposition in an application service management system

机译:应用服务管理系统中信号分解的进化方法

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The increased demand for autonomous control in enterprise information systems has generated interest on efficient global search methods for multivariate datasets in order to search for original elements in time-series patterns, and build causal models of systems interactions, utilization dependencies, and performance characteristics. In this context, activity signals deconvolution is a necessary step to achieve effective adaptive control in Application Service Management. The paper investigates the potential of population-based metaheuristic algorithms, particularly variants of particle swarm, genetic algorithms and differential evolution methods, for activity signals deconvolution when the application performance model is unknown a priori. In our approach, the Application Service Management System is treated as a black- or grey-box, and the activity signals deconvolution is formulated as a search problem, decomposing time-series that outline relations between action signals and utilization-execution time of resources. Experiments are conducted using a queue-based computing system model as a test-bed under different load conditions and search configurations. Special attention was put on high-dimensional scenarios, testing effectiveness for large-scale multivariate data analyses that can obtain a near-optimal signal decomposition solution in a short time. The experimental results reveal benefits, qualities and drawbacks of the various metaheuristic strategies selected for a given signal deconvolution problem, and confirm the potential of evolutionary-type search to effectively explore the search space even in high-dimensional cases. The approach and the algorithms investigated can be useful in support of human administrators, or in enhancing the effectiveness of feature extraction schemes that feed decision blocks of autonomous controllers.
机译:对企业信息系统中的自主控制的需求不断增长,已经引起了对多变量数据集的高效全局搜索方法的兴趣,以便在时间序列模式中搜索原始元素,并建立系统交互,利用率依赖性和性能特征的因果模型。在这种情况下,活动信号反卷积是实现应用程序服务管理中有效自适应控制的必要步骤。本文研究了基于种群的启发式算法,特别是粒子群算法,遗传算法和差分进化方法的变体,在先验应用性能模型未知的情况下,对活动信号进行反卷积的潜力。在我们的方法中,将应用程序服务管理系统视为黑匣子或灰匣子,而将活动信号反卷积公式化为搜索问题,分解出概述了行动信号与资源利用执行时间之间关系的时间序列。使用基于队列的计算系统模型作为测试平台,在不同的负载条件和搜索配置下进行实验。特别关注了高维场景,测试了大规模多元数据分析的有效性,该分析可以在短时间内获得接近最佳的信号分解解决方案。实验结果揭示了针对给定的信号反卷积问题选择的各种元启发式策略的优缺点,并证实了进化类型搜索的潜力,即使在高维情况下也可以有效地探索搜索空间。研究的方法和算法在支持人工管理员或增强馈送自主控制器的决策块的特征提取方案的有效性方面可能很有用。

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