Big Data and Machine Learning for Energy 4.0: Shaping the Future of Energy Conversion Technologies for Sustainable Power Generation

Big Data and Machine Learning for Energy 4.0: Shaping the Future of Energy Conversion Technologies for Sustainable Power Generation

Guest Editors:

Dr. Muhammad Farhan

Assistant Professor of Computer Science, COMSATS University Islamabad,

Sahiwal Campus, Pakistan.

Mail: farhan@ciitsahiwal.edu.pk, farhanmuhammad.dr@gmail.com

Google Scholar: https://scholar.google.com/citations?user=flDECaEAAAAJ&hl=en

ORCID: https://orcid.org/0000-0002-3649-5717

Researcher ID: F-8071-2011

Scopus Author ID: 56823258900

Loop profile: 1913951

Sci Profiles: 15286

Dr. Khalid Mahmood

Future Technology Research Center

National Yunlin University of Science and Technology

Yunlin, Taiwan.

Gmail: khalid@yuntech.edu.tw

ORCID: https://orcid.org/0000-0001-5046-7766

Google Scholar: https://scholar.google.com.pk/citations?user=Hvjr9voAAAAJ&hl=en

Researcher ID: AAE-9552-2020

Scopus Author ID: 57342911900

Sci Profiles: 2658687

Dr. Sohail Jabbar

College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU),

Riyadh 11432, Saudi Arabia.

Gmail: sjjabar@imamu.edu.sa

Google Scholar:

https://0-scholar-google-com.brum.beds.ac.uk/citations?user=5DrhXKQAAAAJ&hl=ru

Web of Science: https://www.webofscience.com/wos/author/rid/E-3052-2012

ORCID: https://orcid.org/0000-0002-2127-1235

Scopus Author ID: 35179598300

Researcher ID: E-3052-2012

Sci Profiles: 83693

Topics

  • Data-driven big data-assisted machine learning for Sustainable Power Generation

  • Decentralized edge computing for advanced ML for Sustainable Power Generation in Energy 4.0

  • Big data assisted user-centric intelligent networking for Sustainable Power Generation urban informatics

  • Real-time data analysis and management for Sustainable Power Generation in Energy 4.0

  • Big data-enabled ML for behavioural decision-making in Energy 4.0

  • Deep learning-based big data analytics for Sustainable Power Generation in Energy 4.0

  • Big data-enabled ML in Green manufacturing for Sustainable Power Generation in Energy 4.0

  • ML-based prescriptive, predictive, and descriptive-analytical approaches for Sustainable Power Generation in Energy 4.0

  • Big data-enabled ML industrial IoT for Sustainable Power Generation in Energy 4.0

  • Risk Management analysis using Big data-enabled ML in Sustainable Power Generation for Energy 4.0

Submission procedure

Prospective authors are invited to submit their papers by following the instructions on the website of Journal of New Materials for Electrochemical Systems (JNMES):

https://www.iieta.org/Journals/JNMES/Instructions%20for%20Authors

You can send directly your manuscript to the guest editor: Dr. Muhammad Farhan;

Email: farhan@ciitsahiwal.edu.pk, or  farhanmuhammad.dr@gmail.com

The submitted manuscripts should not have been previously published, nor should they be currently under consideration for publication elsewhere.

Important dates

• Manuscript submissions due: 2024-03-15

• First round of reviews completed: 2024-04-15

Revised manuscripts due: 2024-06-21

• Final manuscripts due: 2024-10-27