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Forecasting warm-season burnoff of low clouds at the San Francisco International Airport using linear regression and a neural network

机译:使用线性回归和神经网络预测旧金山国际机场低云的暖季燃尽

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摘要

In this study, both linear regression and a nonlinear neural network are used to forecast burnoff of low clouds in the warm season at San Francisco International Airport (SFO). Both forecast systems show skill scores between 0.2 and 0.25 in comparison with use of climatological values. The neural network is slightly more skillful. The forecast systems are derived from 45 yr of NCEP-NCAR reanalysis data and SFO surface observations. A forecast is attempted for both the time of burnoff and the probability of being burned off by 1000 Pacific standard time. The lack of significant superiority of the neural network over linear regression is not due to a failing of the neural network as a method. When both methods are applied to a statistical predictionof the afternoon temperature at SFO, based on early morning conditions, the neural network has a skill score of 0.446 and the linear regression has a skill score of 0.290.
机译:在这项研究中,线性回归和非线性神经网络都用于预测旧金山国际机场(SFO)在暖季中低云的燃尽。与使用气候值相比,两种预测系统均显示技能得分在0.2到0.25之间。神经网络更加熟练。预测系统来自45年的NCEP-NCAR再分析数据和SFO表面观测。尝试对燃尽时间和1000太平洋标准时间燃尽的可能性进行预测。与线性回归相比,神经网络没有明显的优势,这并不是由于神经网络作为一种方法而失败。当将两种方法都用于基于清晨条件的SFO下午温度的统计预测时,神经网络的技能得分为0.446,线性回归的技能得分为0.290。

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