西澳大利亚西南部高分辨率网格风预报的时空方法

Fuling Chen, Kevin Vinsen, Arthur Filoche
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引用次数: 0

摘要

准确的风速和风向预报对农业、可再生能源发电和丛林火灾管理等多个领域都至关重要。然而,传统的预报模型在以高空间分辨率精确预测单个地点或较小地理区域(小于 20 平方公里)的风况,以及捕捉中长期时间趋势和综合时空模式方面遇到了巨大挑战。本研究重点关注西澳大利亚西南部大片地区 3 米和 10 米高度的高分辨率网格风预报的空间时间方法,以克服这些挑战。该模型利用了覆盖广泛地理区域的数据,并利用了多种气象因素,包括地形特征、气压、欧洲中期天气预报中心的 10 米风力预报,以及来自分布稀疏的气象站的有限观测数据(如 3 米风力剖面、湿度和温度)。本文展示了我们的机器学习模型在各种预测范围和空间覆盖面内进行风力预测的潜力。它有助于促进更明智的决策,提高关键部门的抗灾能力。
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Spatial Temporal Approach for High-Resolution Gridded Wind Forecasting across Southwest Western Australia
Accurate wind speed and direction forecasting is paramount across many sectors, spanning agriculture, renewable energy generation, and bushfire management. However, conventional forecasting models encounter significant challenges in precisely predicting wind conditions at high spatial resolutions for individual locations or small geographical areas (< 20 km2) and capturing medium to long-range temporal trends and comprehensive spatio-temporal patterns. This study focuses on a spatial temporal approach for high-resolution gridded wind forecasting at the height of 3 and 10 metres across large areas of the Southwest of Western Australia to overcome these challenges. The model utilises the data that covers a broad geographic area and harnesses a diverse array of meteorological factors, including terrain characteristics, air pressure, 10-metre wind forecasts from the European Centre for Medium-Range Weather Forecasts, and limited observation data from sparsely distributed weather stations (such as 3-metre wind profiles, humidity, and temperature), the model demonstrates promising advancements in wind forecasting accuracy and reliability across the entire region of interest. This paper shows the potential of our machine learning model for wind forecasts across various prediction horizons and spatial coverage. It can help facilitate more informed decision-making and enhance resilience across critical sectors.
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