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Augmented Logarithmic Gaussian Process Regression Methodology for Chlorophyll Prediction

机译:叶绿素预测的增强对数高斯过程回归方法

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In aquaculture engineering, estimation of chlorophyll concentration is of utmost importance for water quality monitoring. For a particular area, its concentration is a direct manifestation of the region suitability for fish farming. In literature different parametric and non parametric methods have been studied for chlorophyll concentration prediction. In this paper we have pre-processed the remote sensing data by logarithmic transformation which enhances the data correlation and followed by Gaussian Process Regression (GPR) based forecasting. The proposed methodology is validated on Sea-viewing Wide Pield-of-View Sensor (SeaWIFS) and the NASA operational Moderate Resolution Imaging Spectro-radiometer onboard AQUA (MODIS-Aqua) data-sets. Experimental result shows the proposed method's efficacy in enhanced accuracy using the projected data.
机译:在水产养殖工程中,叶绿素浓度的估计对于水质监测至关重要。对于特定区域,其集中程度直接表明该区域适合养鱼。在文献中,已经研究了用于叶绿素浓度预测的不同参数和非参数方法。在本文中,我们通过对数变换对遥感数据进行了预处理,以增强数据相关性,然后进行基于高斯过程回归(GPR)的预测。拟议的方法论已在海上宽视场传感器(SeaWIFS)和美国航空航天局(NASA)运营的AQUA中等分辨率成像分光辐射计(AQUA)数据集上得到了验证。实验结果表明,该方法能有效提高投影数据的准确性。

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