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A multivariate freezing-thawing depth prediction model for spring load restriction

机译:弹簧载荷约束的多元冻融深度预测模型

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摘要

Road damages induced by heavily loaded truck traffic during the spring thaw are a major road distress in cold regions. To minimize these damages, Spring Load Restriction (SLR) is widely applied in the U.S., Canada, and other countries during the early thawing season by controlling the movement of freight-carrying trucks and heavy equipment travel until the thawing ends. Most SLR policies rely on the Freezing Depth (FD) and Thawing Depth (TD), especially the latter one. Therefore, accurate predictions of FD and TD are important to prevent both the extensive damage to the pavement due to the late placement or early removal of SLR and the economic loss of road users due to an unnecessarily long SLR period. Here, we propose a new multivariate model for predicting FD and TD in support of SLR decision-making. The model gives a curving surface of FD and TD in a 3-dimensional space, instead of 2-dimensional in traditional methods, by considering both the freezing and thawing indices in the entire freeze-thaw cycle. For model evaluations, yearly field data measured at five typical sites from 104 sites in Michigan were adopted. The evaluation results showed that the proposed model is accurate in predicting FD and TD for most sites. Compared to the previous TD predictions in the existing study, the TD predictions with the proposed model have been significantly improved. In addition, this study provides field data that have not been reported earlier in the literature and that can be used for validating other prediction models. The reported work is ready for practice for roadways in cold regions to support SLR decision-making.
机译:在春季解冻期间,由于卡车交通负荷大而引起的道路损坏是寒冷地区的主要道路困扰。为了最大程度地减少这些损害,在解冻初期,通过控制载货卡车的移动和重型设备的行驶直到解冻结束,在美国,加拿大和其他国家/地区广泛采用了弹簧载荷限制(SLR)。大多数SLR策略都依赖于“冻结深度”(FD)和“解冻深度”(TD),尤其是后者。因此,FD和TD的准确预测对于防止由于SLR的较晚放置或提早拆除而对人行道造成的广泛破坏以及由于不必要的较长的SLR周期而造成的道路使用者经济损失都非常重要。在这里,我们提出了一种新的用于预测FD和TD的多元模型,以支持SLR决策。该模型通过考虑整个冻融循环中的冻融指数,在3维空间(而不是传统方法的2维)中提供了FD和TD的曲面。对于模型评估,采用了密歇根州104个站点的五个典型站点的年度现场数据。评估结果表明,该模型对于大多数站点的FD和TD预测是准确的。与现有研究中先前的TD预测相比,所提出模型的TD预测已得到显着改善。此外,这项研究提供了尚未在文献中较早报道的现场数据,可用于验证其他预测模型。报告的工作已准备就绪,可以在寒冷地区的道路上实践,以支持SLR决策。

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