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Evaluating Non-Hierarchical Overflow Loss Systems Using Teletraffic Theory and Neural Networks

机译:使用遥控理论和神经网络评估非分级溢流损耗系统

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The Information Exchange Surrogate Approximation (IESA) is a powerful tool for estimating the blocking probability of non-hierarchical overflow loss systems (NH-OLSs), but can exhibit significant approximation errors in some cases. This letter proposes a new method of evaluating the blocking probability of generic NH-OLSs by combining machine learning with IESA. Specifically, we modify IESA by using neural networks (NN) to tune a newly introduced parameter in the IESA algorithm. Extensive numerical results for a simple NH-OLS show that our new hybrid method, which we call IESA+NN, is more accurate and robust than both base IESA and direct NN-based approximation of NH-OLS blocking probability, while remaining much more computationally efficient than computer simulation. Furthermore, due to the generic nature of our technique, IESA+NN is also easily extensible to more specialized stochastic models for communications and service systems, where base IESA has previously been applied.
机译:信息交换代理近似(IESA)是一种强大的工具,用于估计非分级溢出损耗系统(NH-OLSS)的阻塞概率,但在某些情况下可以表现出显着的近似误差。 这封信提出了一种新的方法,通过将机器学习与IESA相结合来评估通用NH-OLSS的阻塞概率。 具体而言,我们通过使用神经网络(NN)修改IESA来调整IESA算法中的新引入的参数。 简单的NH-OLS的广泛数值结果表明,我们呼叫IESA + NN的新混合方法比基于基于IESA和基于NN的NN-OLS阻塞概率的直接NN的近似更为准确和鲁棒,同时剩下更大的计算 高效比计算机模拟。 此外,由于我们技术的通用性质,IESA + NN也很容易地遍布用于通信和服务系统的更专业的随机模型,其中基座IESA先前已应用。

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