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Genetic Programming for the Downscaling of Extreme Rainfall Events on the East Coast of Peninsular Malaysia

机译:降低马来西亚半岛东海岸极端降雨事件规模的遗传程序设计

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A genetic programming (GP)-based logistic regression method is proposed in the present study for the downscaling of extreme rainfall indices on the east coast of Peninsular Malaysia, which is considered one of the zones in Malaysia most vulnerable to climate change. A National Centre for Environmental Prediction reanalysis dataset at 42 grid points surrounding the study area was used to select the predictors. GP models were developed for the downscaling of three extreme rainfall indices: days with larger than or equal to the 90th percentile of rainfall during the north-east monsoon; consecutive wet days; and consecutive dry days in a year. Daily rainfall data for the time periods 1961–1990 and 1991–2000 were used for the calibration and validation of models, respectively. The results are compared with those obtained using the multilayer perceptron neural network (ANN) and linear regression-based statistical downscaling model (SDSM). It was found that models derived using GP can predict both annual and seasonal extreme rainfall indices more accurately compared to ANN and SDSM.
机译:在本研究中,提出了一种基于遗传规划(log)的logistic回归方法,用于降低马来西亚半岛东海岸极端降雨指数的规模,该地区被认为是马来西亚最易受气候变化影响的地区之一。在研究区域周围42个网格点上的国家环境预测中心重新分析数据集用于选择预测因子。 GP模型是为降低三个极端降雨指数而开发的:东北季风期间降雨量大于或等于第90个百分位数的日子;连续的雨天;一年中连续的干旱天。分别使用1961-1990年和1991-2000年期间的每日降雨数据来进行模型的校准和验证。将结果与使用多层感知器神经网络(ANN)和基于线性回归的统计缩减模型(SDSM)获得的结果进行比较。研究发现,与ANN和SDSM相比,使用GP导出的模型可以更准确地预测年度和季节性极端降雨指数。

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