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Titlebook: Deep Learning for Hydrometeorology and Environmental Science; Taesam Lee,Vijay P. Singh,Kyung Hwa Cho Book 2021 The Editor(s) (if applicab

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书目名称Deep Learning for Hydrometeorology and Environmental Science
编辑Taesam Lee,Vijay P. Singh,Kyung Hwa Cho
视频videohttp://file.papertrans.cn/265/264608/264608.mp4
概述Provides step-by-step tutorials that help the reader to learn complex deep learning algorithms.Gives an explanation of deep learning techniques and their applications to hydrometeorological and enviro
丛书名称Water Science and Technology Library
图书封面Titlebook: Deep Learning for Hydrometeorology and Environmental Science;  Taesam Lee,Vijay P. Singh,Kyung Hwa Cho Book 2021 The Editor(s) (if applicab
描述.This book provides a step-by-step methodology and derivation of deep learning algorithms as Long Short-Term Memory (LSTM) and Convolution Neural Network (CNN), especially for estimating parameters, with back-propagation as well as examples with real datasets of hydrometeorology (e.g. streamflow and temperature) and environmental science (e.g. water quality). .Deep learning is known as part of machine learning methodology based on the artificial neural network. Increasing data availability and computing power enhance applications of deep learning to hydrometeorological and environmental fields. However, books that specifically focus on applications to these fields are limited..Most of deep learning books demonstrate theoretical backgrounds and mathematics. However, examples with real data and step-by-step explanations to understand the algorithms in hydrometeorology and environmental science are very rare.. .This book focuses on the explanation of deep learning techniques and their applications to hydrometeorological and environmental studies with real hydrological and environmental data. This book covers the major deep learning algorithms as Long Short-Term Memory (LSTM) and Convo
出版日期Book 2021
关键词Hydrology; Meteorology; Artificial neural networks; Climate index; Convolutional neural networks; Lon Sho
版次1
doihttps://doi.org/10.1007/978-3-030-64777-3
isbn_softcover978-3-030-64779-7
isbn_ebook978-3-030-64777-3Series ISSN 0921-092X Series E-ISSN 1872-4663
issn_series 0921-092X
copyrightThe Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerl
The information of publication is updating

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Improving Model Performance, are explained. The basic idea of these two methods is on controlling the dataset, since repeated usage of the same dataset for training and validation might result in overfitting. Furthermore, regularization of the neural network model training by L-norm regularization and dropout of hidden nodes a
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0921-092X ues and their applications to hydrometeorological and enviro.This book provides a step-by-step methodology and derivation of deep learning algorithms as Long Short-Term Memory (LSTM) and Convolution Neural Network (CNN), especially for estimating parameters, with back-propagation as well as examples
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Erkki Tomppo,Juha Heikkinen,Nina Vainikainen to improve the speed of convergence and to find the best trajectory to reach the optimum of the employed loss function for a network. In this chapter, those methods for updating weights are explained.
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