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QRF: An Optimization-Based Framework for Evaluating Complex Stochastic Networks

机译:QRF:一种基于优化的复杂随机网络评估框架

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摘要

The Quadratic Reduction Framework (QRF) is a numerical modeling framework to evaluate complex stochastic networks composed of resources featuring queueing, blocking, state-dependent behavior, service variability, temporal dependence, or a subset thereof. Systems of this kind are abstracted as network of queues for which QRF supports two common blocking mechanisms: blocking-after-service and repetitive-service random-destination. State-dependence is supported for both routing probabilities and service processes. To evaluate these models, we develop a novel mapping, called Blocking-Aware Quadratic Reduction (BQR), which can describe an intractably large Markov process by a large set of linear inequalities. Each model is then analyzed for bounds or approximate values of performance metrics using optimization programs that provide different levels of accuracy and error guarantees. Numerical results demonstrate that QRF offers very good accuracy and much greater scalability than exact analysis methods.
机译:二次约简框架(QRF)是一个数字建模框架,用于评估由资源组成的复杂随机网络,这些资源具有排队,阻塞,状态相关行为,服务可变性,时间相关性或其子集的特征。这类系统被抽象为队列网络,QRF支持两种常见的阻塞机制:服务后阻塞和重复服务随机目的地。路由概率和服务流程均支持状态相关性。为了评估这些模型,我们开发了一种新的映射,称为“感知阻塞的二次约简(BQR)”,该映射可以通过大量线性不等式描述难以解决的大型马尔可夫过程。然后,使用提供不同级别的准确性和错误保证的优化程序来分析每个模型的性能指标范围或近似值。数值结果表明,与精确的分析方法相比,QRF具有很高的准确性和可扩展性。

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