Application of GA-BP neural network in prediction of chl-a concentration in Wuliangsu Lake

Ge Gao, Xueliang Fu, Honghui Li, Hua Hu, Wenyao Liu, Dawei Ren
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Abstract

The concentration of chl-a is one of the important criteria for water quality evaluation. The spectral data of water is closely related to the composition of water. The spectral reflectance data reflects a large amount of water quality information. Therefore, the health of water quality can be judged by analyzing the spectral reflectance. Aiming at the problem of slow convergence speed of neural network, genetic algorithm (GA) is used to optimize the initial parameters of the network, establish the relationship model between spectral reflectance, month and chl-a concentration in water, and analyze and predict the chl-a concentration in water. The results show that the determination coefficient of the optimal model for predicting chl-a concentration by GA-BP combined with monthly characteristics is 0.9561 and the root mean square error is 1.4751$\mu$G/L, the modeling effect is the best compared with other methods. Therefore, this method can realize the function of analyzing and monitoring water quality and meet the application requirements.
GA-BP神经网络在五良苏湖chl-a浓度预测中的应用
chl-a浓度是评价水质的重要指标之一。水的光谱数据与水的成分密切相关。光谱反射率数据反映了大量的水质信息。因此,可以通过光谱反射率的分析来判断水质的健康状况。针对神经网络收敛速度慢的问题,采用遗传算法(GA)对神经网络初始参数进行优化,建立了光谱反射率、月份与水中chl-a浓度的关系模型,并对水中chl-a浓度进行了分析和预测。结果表明,GA-BP结合月特征预测chl-a浓度的最优模型的决定系数为0.9561,均方根误差为1.4751$\mu$G/L,与其他方法相比,建模效果最好。因此,该方法可以实现水质分析与监测的功能,满足应用需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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