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Sea Surface Air Temperature and Humidity Estimated by Artificial Neural Networks

机译:海面空气温度和湿度由人工神经网络估计

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Sea surface air temperature (Ta) and relative humidity (RH) have been the main parameters of climate studies. In the past, the data can be obtained from observations, but the observations are sparse, especially over ocean. Now we can get the aid of satellites, but it is impossible to estimate them from satellites directly so far. This paper presents a new method to derive monthly averaged Ta and RH from satellite data using artificial neural networks (ANN). For Ta estimation, four inputs are needed: wind speed, cloud liquid water, total precipitable water from SSM/I and sea surface temperature (SST) from AVHRR, the data to develop and train the methodology are offered by Tropical Atmosphere Ocean (TAO) project and National Database Buoy Center (NDBC). For RH estimation, the methodology is similar with the method of Ta estimation, except adding the parameter of ram rate (from SSM/I) as the fifth inputs. Comparison with independent validation samples in the Pacific and Atlantic Oceans indicate the result of Ta and RH estimated from satellite data is reasonable well The root mean square (RMS) and the correlation between estimated and measured air temperature are about 0.94°C and 0.98, respectively. The RMS and the correlation of relative humidity are about 3.74 and 0.64, respectively. The simple statistical formula is also obtained in this paper. Compared with ANN methodology, the statistical formula is intuitionistic and the result is reasonable accepted.
机译:海面空气温度(Ta)和相对湿度(RH)已气候研究的主要参数。在过去,数据可以从观察得到,但观察是稀少,尤其是在海洋。现在,我们可以得到卫星的帮助,但它不可能从卫星估计它们直接为止。本文提出了一种新的方法用于利用人工神经网络(ANN)月平均Ta和RH从卫星数据。对于TA估计,需要四个输入:风速,云液态水,从AVHRR SSM / I和海洋表面温度(SST)的总可降水,该数据来开发和培养的方法是由热带大气海洋(TAO)提供项目和国家数据库浮标中心(NDBC)。为RH估计,该方法是用TA估计的方法相似,除了添加RAM率的参数(从SSM / I)作为第五输入。在太平洋和大西洋独立验证样品比较表明的Ta和RH从卫星数据所估计的结果被合理以及均方根(RMS)和估计的和测得的空气温度之间的相关性分别为约0.94°C和0.98, 。 RMS和相对湿度的相关性分别约为3.74和0.64。在本文也得到了简单的统计公式。基于人工神经网络方法相比,统计公式是直观的,结果是合理的接受。

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