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首页> 外文期刊>Earth Science Informatics >A combination of probabilistic neural network (PNN) and particle swarm optimization (PSO) algorithms to map hydrothermal alteration zones using ASTER data
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A combination of probabilistic neural network (PNN) and particle swarm optimization (PSO) algorithms to map hydrothermal alteration zones using ASTER data

机译:概率神经网络(PNN)和粒子群优化(PSO)算法的组合来使用ASTER数据映射水热改变区域

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摘要

PNN is a feed-forward neural network in which there is an important parameter called smoothing parameter. This work implemented a combination of PNN with PSO optimization in order to estimate unique smoothing parameters for each SWIR bands of ASTER image and classified the ASTER image to different hydrothermal alteration zones (argillic, phyllic, propylitic and vegetation covering). The stydy area is a part of Kerman Cenozoic Magmatic Arc (KCMA) which contains several known porphyry copper deposits. Confusion matrix was used to validate the results of PNN-PSO algorithm and it presented the overall accuracy of 76.9% for developed algorithm. Also, comparing the obtained results with traditional methods of remote sensing (SPCA) showed that PNN-PSO is superior to SPCA technique. In fact, SPCA could not dicriminate different hydrothermal alterations while the present work proved that PNN-PSO is a good tool for classfication of argillic, phyllic, propylitic and vegetation covering.
机译:PNN是前馈神经网络,其中存在称为平滑参数的重要参数。 这项工作实现了PNN的组合,具有PSO优化,以估计ASTER图像的每个SWIR带的独特平滑参数,并将ASTER图像分类为不同的水热改变区(armillic,Phylic,丙基和植被覆盖物)。 斯蒂迪区是克尔曼新生代岩石弧(KCMA)的一部分,其含有几个已知的斑岩铜沉积物。 混淆矩阵用于验证PNN-PSO算法的结果,并呈现出显影算法的总精度为76.9%。 此外,将获得的结果与传统的遥感方法(SPCA)进行比较,显示PNN-PSO优于SPCA技术。 事实上,SPCA不能致致不同的水热改变,而现行作品证明PNN-PSO是用于血灰,文学,丙基和植被覆盖物的类别的良好工具。

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