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a comparative study on machine learning algorithms for geochemical prediction using sentinel-2 reflectance spectroscopy
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نویسنده
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mahboob muhammad ahsan ,celik turgay ,genc bekir
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منبع
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journal of mining and environment - 2021 - دوره : 12 - شماره : 4 - صفحه:987 -1001
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چکیده
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The distribution of stream sediments is usually considered as an important and very useful tool for the early-stage exploration of mineralization at the regional scale. the collection of stream samples is not only time-consuming but also very costly. however, the advancements in space remote sensing has made it a suitable alternative for mapping of the geochemical elements using satellite spectral reflectance. in this research work, 407 surface stream sediment samples of the zinc (zn) and lead (pb) elements are collected from central wales. five machine learning models, namely the support vector regression (svr), generalized linear model (glm), deep neural network (dnn), decision tree (dt), and random forest (rf) regression, are applied for prediction of the zn and pb concentrations using the sentinel-2 satellite multispectral images. the results obtained based on the 10 m spatial resolution show that zn is best predicted with rf with significant r2 values of 0.74 (p < 0.01) and 0.7 (p < 0.01) during training and testing. however, for pb, the best prediction is made by svr with significant r2 values of 0.72 (p < 0.01) and 0.64 (p < 0.01) for training and testing, respectively. overall, the performance of svr and rf outperforms the other machine learning models with the highest testing r2 values.
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کلیدواژه
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ore potential ,machine learning ,geochemical stream ,sedimentation ,remote sensing ,satellite spectral reflectance
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آدرس
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university of the witwatersrand, school of mining engineering, wits mining institute (wmi), sibanye-stillwater digital mining laboratory (digimine), south africa, university of the witwatersrand, school of electrical and information engineering, wits institute of data science, south africa, university of the witwatersrand, school of mining engineering, south africa
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پست الکترونیکی
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bkeir.gnec@wits.az.za
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Authors
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