研究EJB性能模型的敏感性

Catalina M. Lladó, Johannes Lüthi, P. Harrison
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引用次数: 4

摘要

通常,在构建性能模型时,它的一些输入参数是不确切知道的。这可能是由于各种原因,例如系统本身尚未完成,尚未执行基准过程,或者很难获得对参数的精确估计。在这些情况下,区间值可以用来表示输入参数的不确定性,性能模型的敏感性研究有可能显示输入参数不确定性对最终性能度量的影响。我们研究了Enterprise JavaBeans性能模型的敏感性。该模型采用标准的模型分解方法建立,该方法给出了各个子模型。这些子模型的解已适应于区间参数,因此在所谓的容器子模型中研究基于区间的灵敏度,然后研究整个模型。使用这些技术,可以确定需要比其他参数更仔细地表征的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studying sensitivities of an EJB performance model
Often, at the time when a performance model is built, some of its input parameters are not known exactly. This can be for a variety of reasons, such as the system itself not having been completed, a benchmarking process not yet having been carried out, or that precise estimates for the parameters are very difficult to obtain. In these situations, interval values can be used to express the uncertainties of the input parameters and sensitivity studies of performance models have the potential to show the influence of input parameter uncertainties on the resulting performance measures. We study the sensitivities of an Enterprise JavaBeans performance model. This model is built using the standard method of model decomposition which gives various submodels. Solutions obtained for these submodels have been adapted to interval parameters and hence interval-based sensitivities are studied in the so-called container submodel and then the whole model. Using these techniques, parameters that require to be characterised more carefully than others can be identified.
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