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Applying Artificial Neural Networks for the Estimation of Chlorophyll-a Concentrations along the Istanbul Coast

机译:应用人工神经网络估算伊斯坦布尔沿岸的叶绿素a浓度

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Chlorophyll-a (chl-a) concentration is considered to be the main measure of phytoplankton biomass. The location and intensity of the surface chl-a maximum in a coastal area are governed by daylight hours, air and seawater temperatures, and nutrient availability in the euphotic zone. The aim of this study is to model a back-propagation neural network (BP-ANN) for estimating chlorophyll-a concentrations from obtained input values. In this study an ANN structure of 3 input neurons and 1 output neuron is used. The 3 inputs represent sea surface temperature (SST), air temperature, and daylight hours, while the output represents chl-a concentration respectively and hidden layers number which is dependent to the application is determined as 20. The ANN structure, which is simulated in MATLAB, estimated the data of the experiments. When compared to current data, it can be said that these are successful results and they provide ANN for estimating chl-a. In our ANN approach, the effects of all input/output parameters can be evaluated and various outputs can be obtained for different environments and predicted maximum chl-a data.
机译:叶绿素a(chl-a)浓度被认为是浮游植物生物量的主要指标。在沿海地区,地表chl-a最大值的位置和强度取决于日光时数,空气和海水温度以及富营养区的养分利用率。这项研究的目的是对反向传播神经网络(BP-ANN)进行建模,以根据获得的输入值估算叶绿素a的浓度。在这项研究中,使用了3个输入神经元和1个输出神经元的ANN结构。 3个输入分别代表海面温度(SST),气温和白天,而输出分别代表chl-a浓度,取决于应用的隐蔽层数确定为20。 MATLAB,估计了实验数据。与当前数据相比,可以说这些都是成功的结果,它们为估计chl-a提供了ANN。在我们的人工神经网络方法中,可以评估所有输入/输出参数的影响,并可以针对不同的环境和预测的最大chl-a数据获得各种输出。

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