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Multiple genetic programming: a new approach to improve genetic-based month ahead rainfall forecasts

机译:多种基因规划:一种改进基于遗传的月前降雨预报的新方法

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It is well documented that standalone machine learning methods are not suitable for rainfall forecasting in long lead-time horizons. The task is more difficult in arid and semiarid regions. Addressing these issues, the present paper introduces a hybrid machine learning model, namely multiple genetic programming (MGP), that improves the predictive accuracy of the standalone genetic programming (GP) technique when used for 1-month ahead rainfall forecasting. The new model uses a multi-step evolutionary search algorithm in which high-performance rain-borne genes from a multigene GP solution are recombined through a classic GP engine. The model is demonstrated using rainfall measurements from two meteorology stations in Lake Urmia Basin, Iran. The efficiency of the MGP was cross-validated against the benchmark models, namely standard GP and autoregressive state-space. The results indicated that the MGP statistically outperforms the benchmarks at both rain gauge stations. It may reduce the absolute and relative errors by approximately up to 15% and 40%, respectively. This significant improvement over standalone GP together with the explicit structure of the MGP model endorse its application for 1-month ahead rainfall forecasting in practice.
机译:有充分的文献证明,独立的机器学习方法不适合长交货时间范围内的降雨预测。在干旱和半干旱地区,这项任务更加困难。针对这些问题,本论文介绍了一种混合机器学习模型,即多重遗传规划(MGP),该模型提高了独立遗传规划(GP)技术用于提前1个月降雨预报的预测准确性。新模型使用了多步进化搜索算法,其中通过经典的GP引擎重组了来自多基因GP解决方案的高性能雨源基因。伊朗乌尔米亚湖盆地两个气象站的降雨测量结果证明了该模型。 MGP的效率已与基准模型(即标准GP和自回归状态空间)进行了交叉验证。结果表明,MGP在两个雨量计站的统计性能均优于基准。可以将绝对误差和相对误差分别减少大约15%和40%。相对于独立GP的显着改进以及MGP模型的显式结构,在实践中支持将其应用于提前1个月的降雨预报。

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