首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ESTIMATING CHLOROPHYLL A CONCENTRATIONS OF SEVERAL INLAND WATERS WITH HYPERSPECTRAL DATA AND MACHINE LEARNING MODELS
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ESTIMATING CHLOROPHYLL A CONCENTRATIONS OF SEVERAL INLAND WATERS WITH HYPERSPECTRAL DATA AND MACHINE LEARNING MODELS

机译:估算叶绿素,具有高光谱数据和机器学习模型的几个内陆水域的浓度

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Water is a key component of life, the natural environment and human health. For monitoring the conditions of a water body, the chlorophyll a concentration can serve as a proxy for nutrients and oxygen supply. In situ measurements of water quality parameters are often time-consuming, expensive and limited in areal validity. Therefore, we apply remote sensing techniques. During field campaigns, we collected hyperspectral data with a spectrometer and in situ measured chlorophyll a concentrations of 13 inland water bodies with different spectral characteristics. One objective of this study is to estimate chlorophyll a concentrations of these inland waters by applying three machine learning regression models: Random Forest, Support Vector Machine and an Artificial Neural Network. Additionally, we simulate four different hyperspectral resolutions of the spectrometer data to investigate the effects on the estimation performance. Furthermore, the application of first order derivatives of the spectra is evaluated in turn to the regression performance. This study reveals the potential of combining machine learning approaches and remote sensing data for inland waters. Each machine learning model achieves an R2-score between 80% to 90% for the regression on chlorophyll a concentrations. The random forest model benefits clearly from the applied derivatives of the spectra. In further studies, we will focus on the application of machine learning models on spectral satellite data to enhance the area-wide estimation of chlorophyll a concentration for inland waters.
机译:水是生活的关键组成部分,自然环境和人类健康。为了监测水体的条件,浓度叶绿素可以用作营养素和氧气供应的代理。原位测量水质参数通常是耗时的,昂贵且面积有效性的限制。因此,我们应用遥感技术。在现场运动期间,我们用光谱仪收集高光谱数据,原位测量叶绿素,浓度为13个内陆水体,具有不同的光谱特性。本研究的一个目的是通过应用三台机器学习回归模型来估算这些内陆水域的浓度:随机森林,支持向量机和人工神经网络。此外,我们模拟光谱仪数据的四个不同的高光谱分辨率,以研究对估计性能的影响。此外,依次评估光谱的第一阶衍生物的应用。本研究揭示了内陆水域结合机器学习方法和遥感数据的潜力。每个机器学习模型在叶绿素浓度上的回归达到80%至90%之间的R2分数。随机森林模型从光谱的施加衍生物中清晰地受益。在进一步的研究中,我们将重点关注机器学习模型在光谱卫星数据上的应用,以增强内陆水域叶绿素浓度的区域范围内。

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