论文标题
基于干旱影响记者使用XGBoost对干旱影响的定量评估
Quantitative Assessment of Drought Impacts Using XGBoost based on the Drought Impact Reporter
论文作者
论文摘要
在气候变化下,干旱事件的频率,强度和空间程度的增加导致社会经济成本更高。但是,由于复杂性和数据稀缺性,水电学指标与干旱影响之间的关系尚未得到很好的确定。在本文中,我们提出了一个基于极端梯度模型(XGBoost)的框架,以预测多类干旱影响,并将典型的干旱指标,标准降水指数(SPI)连接到干旱影响记者(DIR)的基于文本的影响。这项研究的初步结果表明,训练有素的模型表现出色,以评估对农业,消防,社会和公共卫生,植物和野生动植物的影响,以及得克萨斯州的救济,反应和限制。它还提供了使用水电学指标与美国拟议框架进行评估影响干旱影响的可能性,这可以通过提供其他信息并提高干旱影响的更新频率来帮助干旱风险管理。我们使用Shapley添加说明(SHAP)的解释性技术的解释结果表明,指导XGBoost预测的规则符合SPI指标围绕干旱影响的域专业知识知识。
Under climate change, the increasing frequency, intensity, and spatial extent of drought events lead to higher socio-economic costs. However, the relationships between the hydro-meteorological indicators and drought impacts are not identified well yet because of the complexity and data scarcity. In this paper, we proposed a framework based on the extreme gradient model (XGBoost) for Texas to predict multi-category drought impacts and connected a typical drought indicator, Standardized Precipitation Index (SPI), to the text-based impacts from the Drought Impact Reporter (DIR). The preliminary results of this study showed an outstanding performance of the well-trained models to assess drought impacts on agriculture, fire, society & public health, plants & wildlife, as well as relief, response & restrictions in Texas. It also provided a possibility to appraise drought impacts using hydro-meteorological indicators with the proposed framework in the United States, which could help drought risk management by giving additional information and improving the updating frequency of drought impacts. Our interpretation results using the Shapley additive explanation (SHAP) interpretability technique revealed that the rules guiding the predictions of XGBoost comply with domain expertise knowledge around the role that SPI indicators play around drought impacts.