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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Using Random Effects to Build Impact Models When the Available Historical Record Is Short
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Using Random Effects to Build Impact Models When the Available Historical Record Is Short

机译:当可用历史记录很短时,使用随机效应来建立影响模型

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摘要

The analysis of the affect of weather and climate on human activities requires the construction of impact models that are able to describe the complex links between weather and socioeconomic data. In practice, one of the biggest challenges is the lack of data, because it is generally difficult to obtain time series that are long enough. As a consequence, derived impact models predict well the historical record but are unable to perform well on real forecasts. To avoid this data-limitation problem, it is possible to train the impact model over a large spatial domain by “pooling” data from multiple locations. This general impact model needs to be spatially corrected to take local conditions into account, however. This is particularly true, for example, in agriculture: it is not efficient to pool all of the spatial data into a single very general impact model, but it is also not efficient to develop one impact model for each spatial location. To solve these aggregation problems, mixed-effects (ME) models have been developed. They are based on the idea that each datum belongs to a particular group, and the ME model takes into account the particularities of each group. In this paper, ME models and, in particular, random-effects (RE) models are tested and are compared with more-traditional methods using a real-world application: the sales of salt for winter road deicing by public service vehicles. It is shown that the performance of RE models is higher than that of more-traditional regression models. The development of impact models should strongly benefit from the use of RE and ME models.
机译:对天气和气候对人类活动的影响进行分析需要构建影响模型,该模型能够描述天气与社会经济数据之间的复杂联系。实际上,最大的挑战之一是缺少数据,因为通常很难获得足够长的时间序列。结果,派生的影响模型可以很好地预测历史记录,但不能在实际预测中表现良好。为避免此数据限制问题,可以通过“合并”来自多个位置的数据来在较大的空间域上训练影响模型。但是,需要对一般影响模型进行空间校正,以考虑当地条件。例如,在农业中尤其如此:将所有空间数据汇总到一个非常普遍的影响模型中并没有效率,但是为每个空间位置开发一个影响模型也没有效率。为了解决这些聚集问题,已经开发了混合效应(ME)模型。它们基于这样的思想,即每个数据都属于一个特定的组,并且ME模型考虑了每个组的特殊性。在本文中,对ME模型,尤其是随机效应(RE)模型进行了测试,并将其与使用实际应用的更传统方法进行了比较:公共服务车辆在冬季道路除冰中使用的食盐销售。结果表明,RE模型的性能高于传统的回归模型。影响模型的开发应极大地受益于RE和ME模型的使用。

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