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Water Quality evaluation based on RBF Neural Network with Parameters Optimized by PSO algorithm

机译:基于RBF神经网络的PSO算法优化参数的水质评估

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In order to improve water quality evaluation of multi-spectral image accurately, this paper puts forward a model for water quality evaluation based on RBF Neural Network with parameters optimized by particle swarm optimization algorithms. The model uses High-resolution multi-spectral remote SPOT-5 data and the water quality field data, chose four representative water quailty parameters, RBF Neural Network are trained and tested,the parameters of RBF Neural Network are optimized by particle swarm optimization algorithms. Finally, The proposed model is applied to the water quality evaluation of Weihe River in Shaanxi Provincc. The result of experiment shows the proposed method can give a better quality comprehensive evaluation, and can reflect the water quality of rivers accurately and objectively from the overall. It provides a new approach for evaluation of environment to inland rivers.
机译:为了准确提高多光谱图像的水质评估,本文提出了基于RBF神经网络的水质评估模型,具有粒子群优化算法优化的参数。该模型采用高分辨率多光谱远程点5数据和水质现场数据,选择了四个代表性水批准参数,RBF神经网络训练和测试,通过粒子群优化算法优化了RBF神经网络的参数。最后,拟议的模型适用于陕西省渭河水质评价。实验结果表明,该方法可以提供更好的质量综合评价,并可以准确,客观地从整体上反映河流的水质。它为内陆河流评估了对环境评估的新方法。

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