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Modelling of Incoming Longwave Radiation Under Foggy Sky over Multiple Agro-Climate Settings of India

机译:在印度多次农业气候环境下雾化龙波辐射的建模

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Net surface radiation defines the availability of radiative energy on and near the surface to drive many physical, physiological and eco-hydrological processes such as latent heat, sensible heat fluxes and evapotranspiration. Incoming longwave radiation (LWin) is one of the key components of net longwave radiation. One of the prime challenges of modelling radiation budget is estimation of surface incoming longwave radiation. Estimation of incoming longwave radiation in cloudy and foggy conditions has always been a challenge due to the lack of instrumentation and regular measurements at different spatial and temporal scales. In this study, two neural network models (daytime and night-time) were developed for estimation of incoming longwave radiation under foggy sky using half-hourly LWin, and other meteorological parameters such Ta, RH etc. The model provided high correlation of 0.85 (daytime) and 0.86 (night-time) with Root Mean Square Error (RMSE) of 4.9% for both daytime and night-time.
机译:净表面辐射定义了表面上和附近的辐射能量的可用性,以驱动许多物理,生理和生态水文过程,例如潜热,显热通量和蒸发。传入的长波辐射(LWIN)是净龙波辐射的关键部件之一。建模辐射预算的主要挑战之一是估计光波辐射的表面。由于在不同的空间和时间尺度下缺乏仪器和常规测量,估计多云和有雾条件中的延长辐射的估计一直是挑战。在这项研究中,使用半小时LWIN的雾天空下的传入的长波辐射和其他气象参数,如TA,RH等进行了两个神经网络模型(白天和夜间)。该模型提供了0.85的高相关性白天)和0.86(夜间)具有4.9%的根均线误差(RMSE),每天和夜间时间为4.9%。

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