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Estimation of Road Surface Temperature Using NOAA Gridded Forecast Weather Data for Snowplow Operations Management

机译:使用 NOAA 网格化天气预报数据估算路面温度,用于扫雪车运营管理

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Abstract Monitoring road surface temperatures is crucial to establishing winter maintenance strategies by the State Departments of Transportation (State DOTs) in the United States. Traditionally, transportation agencies rely on the information provided by Road Weather Information Systems (RWIS) for road surface temperatures along roadways. However, these systems are costly and only provide estimates at specific locations, resulting in distant areas being under-represented. In recent years, some interpolation techniques have been considered to address this gap by estimating the road surface temperatures between the RWIS stations. Nevertheless, these techniques are only valid when the RWIS data are available. This study aims to estimate the road surface temperatures using forecast weather data which are available at high spatial resolution in the National Weather Service Database maintained by the National Oceanic and Atmospheric Administration (NOAA). To this end, road surface temperature data were collected from roadways using a vehicle-mounted infrared temperature sensor. Furthermore, the associated forecast weather parameters from the National Weather Service database were used to develop relationships between the publicly available weather forecast data and the actual road surface temperatures using multiple linear regression. The authors developed two estimation models for dark and light groups and leveraged the gridded forecast weather data from the national weather service database to visualize the estimated road surface temperatures along roadways using a GIS approach. The results showed that the ambient temperature, relative humidity, wind speed, average temperature of the previous day, and road surface conditions (wet/dry) are statistically significant in estimating the road surface temperatures using gridded forecast weather data. The performance of the models was validated, and satisfactory accuracy metrics (i.e., mean absolute error) of approximately 1°C and 2°C were achieved for the dark and light groups, respectively. The proposed method was implemented in the TxDOT Wichita Falls district as a part of a Snowplow Operations Management System to provide information about the estimated road surface temperatures to transportation managers for the 2021–2022 winter season. This information facilitates establishing proactive anti-icing measures in locations where possible low surface temperatures are expected. The findings of this research contribute to a better understanding of the influence of publicly available weather forecast parameters on road surface temperatures.
机译:摘要 监测路面温度对于美国州交通部(State DOTs)制定冬季养护策略至关重要。传统上,交通机构依靠道路天气信息系统 (RWIS) 提供的道路表面温度信息。然而,这些系统成本高昂,而且只提供特定地点的估计数,导致偏远地区的代表性不足。近年来,人们考虑使用一些插值技术来通过估计RWIS站点之间的路面温度来解决这一差距。然而,这些技术仅在RWIS数据可用时才有效。本研究旨在使用美国国家海洋和大气管理局 (NOAA) 维护的国家气象局数据库中以高空间分辨率提供的预报天气数据来估计路面温度。为此,使用车载红外温度传感器从道路收集路面温度数据。此外,使用来自国家气象局数据库的相关预报天气参数,使用多元线性回归来建立公开可用的天气预报数据与实际路面温度之间的关系。作者为暗组和亮组开发了两种估计模型,并利用来自国家气象局数据库的网格化预报天气数据,使用GIS方法可视化道路沿线的估计路面温度。结果表明,环境温度、相对湿度、风速、前一天平均气温和路面状况(干湿)在利用网格化天气预报数据估算路面温度时具有统计学意义。验证了模型的性能,深色组和浅色组分别达到了令人满意的精度指标(即平均绝对误差)约为1°C和2°C。作为扫雪机运营管理系统的一部分,该建议的方法在 TxDOT 威奇托福尔斯地区实施,以向运输经理提供有关 2021-2022 年冬季估计路面温度的信息。这些信息有助于在预计地表温度可能较低的位置建立主动防冰措施。这项研究的结果有助于更好地了解公开天气预报参数对路面温度的影响。

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