logo

EbookBell.com

Most ebook files are in PDF format, so you can easily read them using various software such as Foxit Reader or directly on the Google Chrome browser.
Some ebook files are released by publishers in other formats such as .awz, .mobi, .epub, .fb2, etc. You may need to install specific software to read these formats on mobile/PC, such as Calibre.

Please read the tutorial at this link:  https://ebookbell.com/faq 


We offer FREE conversion to the popular formats you request; however, this may take some time. Therefore, right after payment, please email us, and we will try to provide the service as quickly as possible.


For some exceptional file formats or broken links (if any), please refrain from opening any disputes. Instead, email us first, and we will try to assist within a maximum of 6 hours.

EbookBell Team

On Spatiotemporal Data Modelling And Uncertainty Quantification Using Machine Learning And Information Theory 1st Edition Fabian Guignard

  • SKU: BELL-56741900
On Spatiotemporal Data Modelling And Uncertainty Quantification Using Machine Learning And Information Theory 1st Edition Fabian Guignard
$ 31.00 $ 45.00 (-31%)

0.0

0 reviews

On Spatiotemporal Data Modelling And Uncertainty Quantification Using Machine Learning And Information Theory 1st Edition Fabian Guignard instant download after payment.

Publisher: Springer Nature
File Extension: PDF
File size: 6.5 MB
Pages: 170
Author: Fabian Guignard
ISBN: 9783030952310, 3030952312
Language: English
Year: 2022
Edition: 1

Product desciption

On Spatiotemporal Data Modelling And Uncertainty Quantification Using Machine Learning And Information Theory 1st Edition Fabian Guignard by Fabian Guignard 9783030952310, 3030952312 instant download after payment.

The gathering and storage of data indexed in space and time are experiencing unprecedented growth, demanding for advanced and adapted tools to analyse them. This thesis deals with the exploration and modelling of complex high-frequency and non-stationary spatio-temporal data. It proposes an efficient framework in modelling with machine learning algorithms spatio-temporal fields measured on irregular monitoring networks, accounting for high dimensional input space and large data sets. The uncertainty quantification is enabled by specifying this framework with the extreme learning machine, a particular type of artificial neural network for which analytical results, variance estimation and confidence intervals are developed. Particular attention is also paid to a highly versatile exploratory data analysis tool based on information theory, the Fisher-Shannon analysis, which can be used to assess the complexity of distributional properties of temporal, spatial and spatio-temporal data sets. Examples of the proposed methodologies are concentrated on data from environmental sciences, with an emphasis on wind speed modelling in complex mountainous terrain and the resulting renewable energy assessment. The contributions of this thesis can find a large number of applications in several research domains where exploration, understanding, clustering, interpolation and forecasting of complex phenomena are of utmost importance.

Related Products