确定性网络演算的质量和成本:设计和评估一个准确和快速的分析

Steffen Bondorf, Paul Nikolaus, J. Schmitt
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引用次数: 35

摘要

网络是现代安全关键系统的组成部分,认证要求为数据传输提供保证。确定性网络演算(Deterministic Network Calculus, DNC)可以计算数据流端到端延迟的最坏情况边界。DNC结果的准确性稳步提高,产生了两个DNC分支:经典代数分析(algDNC)和最近的基于优化的分析(optDNC)。基于优化的分支为紧边界问题提供了理论上的解决方案。然而,它的计算成本随着网络规模呈指数增长(可能是超指数增长)。因此,提出了一种基于计算成本的交易精度启发式优化公式。在本文中,我们用一种新的代数DNC算法挑战基于优化的DNC。我们发现:(1)目前没有一种优化公式能很好地适应网络规模;(2)代数DNC在精度和计算成本两方面都有显著提高。为此,我们提出了一种新的DNC算法,该算法将优化搜索最佳可达到的延迟界转移到代数DNC中。它实现了高度的准确性,我们新颖的效率改进大大降低了分析成本。在大量的数值实验中,我们观察到我们的延迟界与基于优化的延迟界平均偏差仅为1.142%,而计算时间同时减少了几个数量级。
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Quality and Cost of Deterministic Network Calculus: Design and Evaluation of an Accurate and Fast Analysis
Networks are integral parts of modern safety-critical systems and certification demands the provision of guarantees for data transmissions. Deterministic Network Calculus (DNC) can compute a worst-case bound on a data flow's end-to-end delay. Accuracy of DNC results has been improved steadily, resulting in two DNC branches: the classical algebraic analysis (algDNC) and the more recent optimization-based analysis (optDNC). The optimization-based branch provides a theoretical solution for tight bounds. Its computational cost grows, however, (possibly super-)exponentially with the network size. Consequently, a heuristic optimization formulation trading accuracy against computational costs was proposed. In this paper, we challenge optimization-based DNC with a novel algebraic DNC algorithm. We show that: (1) no current optimization formulation scales well with the network size and (2) algebraic DNC can be considerably improved in both aspects, accuracy and computational cost. To that end, we contribute a novel DNC algorithm that transfers the optimization's search for best attainable delay bounds to algebraic DNC. It achieves a high degree of accuracy and our novel efficiency improvements reduce the cost of the analysis dramatically. In extensive numerical experiments, we observe that our delay bounds deviate from the optimization-based ones by only 1.142% on average while computation times simultaneously decrease by several orders of magnitude.
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