User Tools

Site Tools


dlcp2023:proceedings

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revisionPrevious revision
Next revision
Previous revision
Last revisionBoth sides next revision
dlcp2023:proceedings [05/10/2023 22:16] – [Track 2. Machine Learning in Natural Sciences] admindlcp2023:proceedings [01/12/2023 09:45] – [Current status] admin
Line 7: Line 7:
 After blind peer review, all accepted papers will be published in the conference proceedings.  After blind peer review, all accepted papers will be published in the conference proceedings. 
  
-{{:new3.png?48|}}+
 Notification of paper acceptance — <del>September 11, 2023</del> -> <del>September 25, 2023</del> -> <del>September 29, 2023</del>-> **October 05, 2023** Notification of paper acceptance — <del>September 11, 2023</del> -> <del>September 25, 2023</del> -> <del>September 29, 2023</del>-> **October 05, 2023**
  
Line 23: Line 23:
  
 More details can be found at [[http://vmu.phys.msu.ru/recent|journal website]]. More details can be found at [[http://vmu.phys.msu.ru/recent|journal website]].
 +
 +===== Current status =====
 +{{:new3.png?48|}} //Nov.20, 2023//
 +  * Авторам разосланы гранки. Окончательная версия должна поступить в редакцию не позднее **4 декабря 2023г.**
 +  * В конце ноября будут разосланы верстки для окончательной правки.
 +  * DOI статей должны быть известны в начале декабря.
 +  * Желающие могут получить письмо из издательства о принятии статьи в печать. Для этого надо написать мне запрос по электроной почте [[kryukov@theory.sinp.msu.ru]].
 +  * Тексты статей на сайте издательства будут доступны в январе 2024г.
  
  
Line 57: Line 65:
 Более подробно правила изложены в {{ :dlcp2023:template_for_submissions_to_mupb.pdf |образце}}. Более подробно правила изложены в {{ :dlcp2023:template_for_submissions_to_mupb.pdf |образце}}.
  
 +/**
 ===== Status of submitted articles ===== ===== Status of submitted articles =====
- 
-//Paper status updates 1 time per day// 
- 
-<color red>//**Отправляя статью в сборник трудов авторы дают согласие на ее открытую публикацию в журнале и несут полную ответственность за ее содержание.**//</color> 
  
 Legend: Legend:
Line 74: Line 79:
   * Reject - The article was rejected   * Reject - The article was rejected
   * Withdrawn - Withdrawn from publication or not received on time   * Withdrawn - Withdrawn from publication or not received on time
 +**/
  
 ====== Final version of the Proceedings ====== ====== Final version of the Proceedings ======
 //**List of accepted papers**// //**List of accepted papers**//
  
-====Plenary Reports====+<color red>//**Отправляя статью в сборник трудов авторы дают согласие на ее открытую публикацию в журнале и несут полную ответственность за ее содержание.**//</color> 
 + 
 +===== Plenary Reports =====
  
-^ Corresponding Author and Article Title || 
 | **M.I.Petrovskiy**. DEEP LEARNING METHODS FOR THE TASKS OF CREATING "DIGITAL TWINS" FOR TECHNOLOGICAL PROCESSES    || | **M.I.Petrovskiy**. DEEP LEARNING METHODS FOR THE TASKS OF CREATING "DIGITAL TWINS" FOR TECHNOLOGICAL PROCESSES    ||
  
-==== Track 1. Machine Learning in Fundamental Physics ==== 
  
-^ Corresponding Author and Article Title   || +===== Track 1. Machine Learning in Fundamental Physics ===== 
-| **Ju.Dubenskaya et al.**Generating Synthetic Images of Gamma-Ray Events for Imaging Atmospheric Cherenkov Telescopes Using Conditional Generative Adversarial Networks ||+ 
 +| **Ju.Dubenskaya**Generating Synthetic Images of Gamma-Ray Events for Imaging Atmospheric Cherenkov Telescopes Using Conditional Generative Adversarial Networks ||
 | **R.R.Fitagdinov**. Generation of the ground detector readings of the Telescope Array experiment and the search for anomalies using neural networks || | **R.R.Fitagdinov**. Generation of the ground detector readings of the Telescope Array experiment and the search for anomalies using neural networks ||
 | **K.A.Galaktionov** / Neural network approach to impact parameter estimation in high-energy collisions using the microchannel plate detector data  || | **K.A.Galaktionov** / Neural network approach to impact parameter estimation in high-energy collisions using the microchannel plate detector data  ||
Line 97: Line 104:
 | **A.D.Zaborenko**. Novelty Detection Neural Networks for Model-Independent New Physics Search  || | **A.D.Zaborenko**. Novelty Detection Neural Networks for Model-Independent New Physics Search  ||
  
-==== Track 2. Machine Learning in Natural Sciences ====+===== Track 2. Machine Learning in Natural Sciences =====
  
-^ Corresponding Author and Article Title   || 
 | **M.Borisov**. Estimating cloud base height from all-sky imagery using artificial neural networks  || | **M.Borisov**. Estimating cloud base height from all-sky imagery using artificial neural networks  ||
 | **S.Dolenko**(А.Guskov) Transfer Learning for Neural Network Solution of an Inverse Problem in Optical Spectroscopy  || | **S.Dolenko**(А.Guskov) Transfer Learning for Neural Network Solution of an Inverse Problem in Optical Spectroscopy  ||
Line 116: Line 122:
 | **A.V. Vorobev**. Machine learning for diagnostics of space weather effects in the Arctic region  || | **A.V. Vorobev**. Machine learning for diagnostics of space weather effects in the Arctic region  ||
  
-==== Track 3. Modern Machine Learning Methods ====+===== Track 3. Modern Machine Learning Methods =====
  
-^ Corresponding Author and Article Title   || +**N.Y.Bykov** / Methods for a Partial Differential Equation Discovery: Application to Physical and Engineering Problems  || 
-| N.Y.Bykov / Methods for a Partial Differential Equation Discovery: Application to Physical and Engineering Problems  || +**S.Dolenko**. Decomposition of Spectral Contour into Gaussian Bands using Improved Modification of Gender Genetic Algorithm  || 
-| S.Dolenko. Decomposition of Spectral Contour into Gaussian Bands using Improved Modification of Gender Genetic Algorithm  || +**I.Isaev**. The study of the integration of physical methods in the neural network solution of the inverse problem of exploration geophysics with variable physical properties of the medium   || 
-| I.Isaev. The study of the integration of physical methods in the neural network solution of the inverse problem of exploration geophysics with variable physical properties of the medium   || +**D.N.Polyakov** / Hyper-parameter tuning of neural network for high-dimensional problems in the case of Helmholtz equation  ||
-| D.N.Polyakov / Hyper-parameter tuning of neural network for high-dimensional problems in the case of Helmholtz equation  ||+
  
 /** /**
dlcp2023/proceedings.txt · Last modified: 18/01/2024 16:16 by admin