This paper evaluates the reliability of lumber, accounting for the duration-of-load (DOL) effect under different load profiles based on a multimodel Bayesian approach. Three individual DOL models previously used for reliability assessment are considered: the US model, the Canadian model, and the Gamma process model. Procedures for stochastic generation of residential, snow, and wind loads are also described. We propose Bayesian model-averaging (BMA) as a method for combining the reliability estimates of individual models under a given load profile that coherently accounts for statistical uncertainty in the choice of model and parameter values. The method is applied to the analysis of a Hemlock experimental dataset, where the BMA results are illustrated via estimated reliability indices together with 95% interval bands.
翻译:本文评估木材的可靠性,根据多种模式的贝叶西亚方法,根据不同负荷剖面图计算装载期效应(DOL)的可靠性,考虑了以前用于可靠性评估的三个单独的DOL模型:美国模型、加拿大模型和Gamma过程模型。还介绍了住宅、雪和风负荷的随机生成程序。我们建议Bayesian模型-挥发法(BMA)作为一种方法,将特定负荷剖面图下单个模型的可靠性估计值结合起来,在模型和参数值的选择中统一说明统计不确定性。这种方法用于分析Hemlock实验数据集,其中通过估计可靠性指数和95%的间隔段来说明BMA结果。