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Developing a PCA-ANN Model for Predicting Chlorophyll a Concentration from Field Hyperspectral Measurements in Dianshan Lake, China

机译:开发一个PCA-ANN模型,用于从中国淀山湖野外高光谱测量中预测叶绿素a的浓度

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This paper aims at combining principle component analysis (PCA) and artificial neural network (ANN) algorithm to predict chlorophyll a concentration in Dianshan Lake, Shanghai, eastern China. Firstly, based on field hyperspectral measurements, the sensitive wavelengths were selected as the input variables to build the basic ANN model, and the estimate accuracy (R-2) reached 0.85. In order to improve the accuracy and stability of the ANN model, the total nitrogen, total phosphorus, chemical oxygen demand, dissolve oxygen, and dissolved potential of hydrogen were selected as additional input variables. Consequently, the model accuracy increased to 0.9091. Further, aiming at eliminating the effect of inter-correlation of input variables, the PCA method was utilized to reduce the dimension of input variables. The result shows that the combined PCA-ANN model can reach an estimated accuracy with R-2 = 0.9184 and RMSE < 5.6 mg m(-3). Moreover, the stability and performance of the enhanced model was further evaluated by cross-validation of PCA-ANN model output and in situ measured datasets. The model sensitivity test through adding 10 % Gauss white noise to the input variables also proved that the enhanced PCA-ANN model has better noise tolerance ability.
机译:本文旨在结合主成分分析(PCA)和人工神经网络(ANN)算法来预测上海东部淀山湖中的叶绿素a浓度。首先,基于现场高光谱测量,选择敏感波长作为输入变量,建立基本的人工神经网络模型,估计精度(R-2)达到0.85。为了提高ANN模型的准确性和稳定性,选择了总氮,总磷,化学需氧量,溶解氧和氢溶解势作为附加输入变量。因此,模型精度提高到0.9091。此外,为了消除输入变量的相互关系的影响,利用PCA方法来减小输入变量的尺寸。结果表明,组合的PCA-ANN模型可以达到估计的精度,R-2 = 0.9184,RMSE <5.6 mg m(-3)。此外,通过交叉验证PCA-ANN模型输出和现场测量的数据集,进一步评估了增强模型的稳定性和性能。通过在输入变量中添加10%高斯白噪声的模型敏感性测试还证明,增强的PCA-ANN模型具有更好的噪声容忍能力。

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