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Efficient Computing Budget Allocation for Simulation-Based Optimization With Stochastic Simulation Time

机译:具有随机仿真时间的基于仿真的优化的高效计算预算分配

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摘要

The dynamics of many systems nowadays follow not only physical laws but also man-made rules. These systems are known as discrete event dynamic systems and their performances can be accurately evaluated only through simulations. Existing studies on simulation-based optimization (SBO) usually assume deterministic simulation time for each replication. However, in many applications such as evacuation, smoke detection, and territory exploration, the simulation time is stochastic due to the randomness in the system behavior. We consider the computing budget allocation for SBOs with stochastic simulation time in this technical note, which has not been addressed in existing literatures to the author's best knowledge. We make the following major contribution. The relationship between simulation time and performance estimation accuracy is quantified. It is shown that when the asymptotic performance is of interest only the mean value of individual simulation time matters. Then based on the existing optimal computing budget allocation (OCBA) method for deterministic simulation time we develop OCBA for stochastic simulation time (OCBAS), and show that OCBAS is asymptotically optimal. Numerical experiments are used to discuss the impact of the variance of simulation time, the impact of correlated simulation time and performance estimation, and to demonstrate the performance of OCBAS on a smoke detection problem in wireless sensor network. The numerical results also show that OCBA for deterministic simulation time is robust even when the simulation time is stochastic.
机译:如今,许多系统的动力学不仅遵循物理定律,还遵循人为规则。这些系统被称为离散事件动态系统,其性能只能通过模拟才能准确评估。现有的基于仿真的优化(SBO)的研究通常假定每次复制的确定性仿真时间。但是,在疏散,烟雾探测和区域探测等许多应用中,由于系统行为的随机性,模拟时间是随机的。在本技术说明中,我们考虑了具有随机模拟时间的SBO的计算预算分配,在现有文献中,作者尚未获得其充分了解。我们做出以下主要贡献。量化了仿真时间与性能估计精度之间的关系。结果表明,当渐近性能受到关注时,仅单个仿真时间的平均值很重要。然后基于现有的确定性仿真时间的最优计算预算分配(OCBA)方法,我们开发了用于随机仿真时间(OCBAS)的OCBA,并证明OCBAS是渐近最优的。数值实验用于讨论仿真时间变化,相关仿真时间和性能估计的影响,并演示OCBAS在无线传感器网络中烟雾检测问题上的性能。数值结果还表明,即使模拟时间是随机的,确定性模拟时间的OCBA也很可靠。

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