Deep Learning for Hydrometeorology and Environmental Science 99 Water Science and Technology Library, 99

Taesam Lee

Deep Learning for Hydrometeorology and Environmental Science 99 Water Science and Technology Library, 99 - 1
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Deep Learning for Hydrometeorology and Environmental Science 99 Water Science and Technology Library, 99
Chapter 1 Introduction 1.1 What is deep learning? 1.2 Pros and cons of deep learning 1.3 Recent applications of deep learning in hydrometeorological and environmental studies 1.4 Organization of chapters 1.5 Summary and conclusion Chapter 2 Mathematical Background 2.1 Linear regression model 2.2 Time series model 2.3 Probability distributions Chapter 3 Data Preprocessing 3.1 Normalization 3.2 Data splitting for...

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Deep Learning for Hydrometeorology and Environmental Science 99 Water Science and Technology Library, 99

Chapter 1            Introduction

1.1          What is  deep learning?

1.2          Pros and cons of deep learning

1.3          Recent applications of deep learning in hydrometeorological and environmental studies

1.4          Organization of chapters

1.5          Summary and conclusion

Chapter 2            Mathematical Background

2.1          Linear regression model

2.2          Time series model

2.3          Probability distributions

Chapter 3            Data Preprocessing

3.1          Normalization

3.2          Data splitting for training and testing

Chapter 4            Neural Network

4.1          Terminology in neural network

4.2          Artificial neural network

Chapter 5            . Training a Neural Network

5.1          Initialization

5.2          Gradient descent

5.3          Backpropagation

Chapter 6            . Updating Weights

6.1          Momentum

6.2          Adagrad

6.3          RMSprop

6.4          Adam

6.5          Nadam

6.6          Python coding of updating weights

Chapter 7            . Improving model performance

7.1          Batching and minibatch

7.2          Validation

7.3          Regularization

Chapter 8            Advanced Neural Network Algorithms

8.1          Extreme Learning Machine (ELM)

8.2          Autoencoding

Chapter 9            Deep learning for time series

9.1          Recurrent neural network

9.2          Long Short-Term Memory (LSTM)

9.3          Gated Recurrent Unit (GRU)

Chapter 10          Deep learning for spatial datasets

10.1        Convolutional Neural Network (CNN)

10.2        Backpropagation of CNN

Chapter 11          Tensorflow and Keras Programming for Deep Learning

11.1        Basic Keras modeling

11.2        Temporal deep learning (LSTM and GRU)

11.3        Spatial deep learning (CNN)

Chapter 12          Hydrometeorological Applications of deep learning

12.1        Stochastic simulation with LSTM

12.2        Forecasting daily temperature with LSTM

Chapter 13          Environmental Applications of deep learning

13.1        Remote sensing of water quality using CNN

 


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Encadernação: Capa Dura / Hardback
Tema: Hydrology & the hydrosphere
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Características

Editora

Springer

Idiomas

Inglês

Data de lançamento

28/01/2021

Peso

0,0

Série/Edição Limitada

1st ed. 2021

EAN

9783030647766

Publicidade
Publicidade