需要多少次模拟运行才能获得统计上可靠的结果:基于模拟的替代安全措施的案例研究

L. Truong, M. Sarvi, G. Currie, T. Garoni
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引用次数: 15

摘要

本研究探讨了如何计算模拟交通网络的多个性能测量(MOP)达到指定置信水平所需的最小运行数(MNR)。传统的MNR计算方法分别考虑多个mop的置信区间,无法控制整体的置信水平。提出了一种计算MNR的新方法,该方法依次运行模型并在每次额外运行时重新计算样本标准差和均值,直到基于Bonferroni不等式的停止条件得到满足。总体置信水平由Bonferroni不等式控制。该方法可以在大多数交通微仿真包中自动实现,具有计算实用性。采用基于多个模拟的替代安全措施,包括碰撞时间(TTC)或避免碰撞所需的减速率(DRAC),以及基于大量运行的经验置信度分析,对所提出的方法进行了评估。评价结果表明了所提出方法的有效性,因为它可以同时在所需的置信水平上准确地估计所有MOPs,而传统方法则不能。此外,该方法不保守,因为它不需要比传统方法更多的运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Many Simulation Runs are Required to Achieve Statistically Confident Results: A Case Study of Simulation-Based Surrogate Safety Measures
This research explores how to compute the minimum number of runs (MNR) required to achieve a specified confidence level for multiple measures of performance (MOP) of a simulated traffic network. Traditional methods to calculate MNR consider the confidence intervals of multiple MOPs separately and hence are not able to control the overall confidence level. A new method to calculate MNR is proposed, which sequentially runs the model and recalculates sample standard deviations and means whenever an additional run is made until a stopping condition based on the Bonferroni inequality is satisfied. The overall confidence level is controlled by the Bonferroni inequality. The proposed method is computationally practical since it can be implemented automatically in most traffic micro-simulation packages. The proposed method is evaluated using a case study with multiple simulation-based surrogate safety measures, including time to collision (TTC) or deceleration rate required to avoid a crash (DRAC), and an empirical confidence level analysis based on a very large number of runs. Evaluation results indicate the effectiveness of the proposed method as it enables all MOPs at the same time to be estimated accurately at the desired confidence level whereas traditional methods do not. In addition, the proposed method is not conservative since it does not require significantly more runs compared to traditional methods.
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