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Spatial Mapping of Winter Road Surface Conditions via Hybrid Geostatistical Techniques

机译:基于混合地统计技术的冬季路面状况空间制图

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Abstract In recent decades, road weather information systems (RWISs) have gained in popularity with road maintenance authorities. However, RWIS stations only provide point measurements that are often unrepresentative of distant surrounding areas. To address such limitations, this study employs a hybrid geostatistical interpolation method, regression kriging (RK), to fill in the large spatial gaps at unmonitored locations. Road surface temperature (RST) data collected by an automated vehicle system along selected interstate highways were used to model the RST spatial variation patterns via semivariograms, which were then used to interpolate the conditions in between RWIS stations. Cross-validation results indicated that RK successfully captured the spatial variation of RST along the highway segment. The nugget-to-sill ratio obtained from semivariograms was further utilized to characterize the weather events, and the results implied that stronger winds and heavier rainfalls were likely to form a stronger spatial dependence within RST. The findings of this research contribute to better understanding of the influences of meteorological factors in RST as well as improved models for inferring the road surface conditions between RWIS stations.
机译:摘要 近几十年来,道路气象信息系统(RWISs)越来越受到道路养护部门的欢迎。然而,RWIS台站仅提供通常不能代表远处周围区域的点测量。为了解决这些局限性,本研究采用混合地统计插值方法,即回归克里金法(RK),来填补未监测位置的巨大空间空白。自动驾驶车辆系统沿选定的州际高速公路收集的路面温度 (RST) 数据用于通过半变异函数对 RST 空间变化模式进行建模,然后用于对 RWIS 站点之间的条件进行插值。交叉验证结果表明,RK成功捕获了RST沿公路段的空间变化。从半变异函数中获得的金块与门槛比进一步用于表征天气事件,结果表明,强风和强降雨可能在RST内形成更强的空间依赖性。本研究结果有助于更好地了解气象因素对RST的影响,并改进了RWIS站点之间路面状况推断模型。

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