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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Performance of Observation-Based Prediction Algorithms for Very Short-Range, Probabilistic Clear-Sky Condition Forecasting
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Performance of Observation-Based Prediction Algorithms for Very Short-Range, Probabilistic Clear-Sky Condition Forecasting

机译:基于观测的预测算法在极短距离,概率晴朗天空情况下的预测性能

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摘要

Very short-range sky condition forecasts are produced to support a variety of military, civil, and commercial activities. In this investigation, six advanced, observation (obs)-based prediction algorithms were developed and tested that generated probabilistic sky condition forecasts for 1-, 2-, 3-, 4-, and 5-h forecast intervals, for local and regional target types, in six geographic regions within the continental United States. Three of the methods were based on predictive learning algorithms including neural network, random forest, and regression tree. The other three methods were statistical techniques including a A:-nearest neighbor algorithm, a classifier based on the Bayes decision rule, and a multialgorithm ensemble. The performances of thesesix algorithms were compared with forecasts from three benchmark methods: basic persistence, the climato-logical-expectancy-of-persistence, and satellite cloud climatology. The obs database for each forecast target was composed of a multiyear, half-hourly time series of atmospheric parameters that included cloud features extracted from weather satellite imagery and meteorological variables extracted or derived from data assimilation-based model analyses generated by NCEP's Eta Data Assimilation System.The performances of the advanced prediction algorithms exceeded those of the benchmarks at all five forecast intervals for both target types in all regions, on the basis of a group of metrics that included receiver operating characteristic score, sharpness, accuracy, expected best cost, and reliability.
机译:可以生成非常短的天空状况预报,以支持各种军事,民用和商业活动。在这项调查中,开发并测试了六种基于观测(obs)的高级预测算法,这些算法针对本地和区域目标生成了1、2、3、4、5小时预报间隔的概率天空状况预报类型,在美国大陆范围内的六个地理区域中。其中三种方法基于预测学习算法,包括神经网络,随机森林和回归树。其他三种方法是统计技术,包括A:最近邻居算法,基于贝叶斯决策规则的分类器以及多算法集成。将这六种算法的性能与三种基准方法的预测值进行了比较:基本持久性,持久性气候逻辑预期和卫星云气候。每个预报目标的obs数据库由一个多年半小时的大气参数序列组成,包括从气象卫星图像中提取的云特征以及从NCEP的Eta数据同化系统生成的基于数据同化的模型分析中提取或导出的气象变量在一组衡量指标的基础上,高级预测算法的性能在所有五个区域的所有目标类型的所有五个预测间隔均超过了基准测试的性能,这些指标包括接收机的工作特性得分,清晰度,准确性,预期的最佳成本以及可靠性。

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