Motivated by a wide variety of applications, this paper introduces a general class of networks of stochastic loss systems in which congestion renders lost revenue due to customers or jobs being permanently removed from the system. We seek to balance the trade-off between mitigating congestion by increasing service capacity and maintaining low costs for the service capacity provided. Given the lack of analytical results and the computational burden of simulation-based methods, we propose a hybrid functional-form approach for finding the optimal resource allocation in general networks of stochastic loss systems that combines the speed of an analytical approach with the accuracy of simulation-based optimisation. The key insight is a core iterative algorithm that replaces the computationally expensive gradient estimation in simulation optimisation with a closed-form analytical approximation that is calibrated using a simple simulation run. Extensive computational experiments on complex networks show that our approach renders near-optimal solutions with objective function values that are comparable to those obtained using stochastic approximation, surrogate optimisation and Bayesian optimisation methods while requiring significantly less computational effort.
翻译:本文在各种应用的推动下,引入了一类一般的随机损失系统网络,在这种网络中,拥堵导致客户或工作永久脱离系统而失去收入。我们力求通过提高服务能力来平衡缓解拥堵与维持所提供服务能力的低成本之间的权衡。鉴于缺乏分析结果和基于模拟方法的计算负担,我们提议一种混合功能形式办法,在Stochani损失系统的一般网络中找到最佳资源分配,将分析方法的速度与基于模拟的优化的准确性结合起来。关键洞察力是一种核心迭代算法,用一种使用简单模拟运行校准的封闭式分析近似值取代模拟优化中计算费用昂贵的计算梯度估计值。对复杂网络的广泛计算实验表明,我们的方法使客观功能值的近最佳解决办法与使用随机近似近似、超正门优化和巴耶斯优化方法而同时需要的计算努力则少得多。