CRYPTOREPORTCLUB
  • Crypto news
  • AI
  • Technologies
Tuesday, July 29, 2025
No Result
View All Result
CRYPTOREPORTCLUB
  • Crypto news
  • AI
  • Technologies
No Result
View All Result
CRYPTOREPORTCLUB

How digital twins can accelerate the global transition from fossil fuels to clean energy

July 29, 2025
150
0

July 28, 2025

The GIST How digital twins can accelerate the global transition from fossil fuels to clean energy

Related Post

To explore AI bias, researchers pose a question: How do you imagine a tree?

To explore AI bias, researchers pose a question: How do you imagine a tree?

July 29, 2025
AI bands signal new era for music business

AI bands signal new era for music business

July 29, 2025
Sadie Harley

scientific editor

Robert Egan

associate editor

Editors' notes

This article has been reviewed according to Science X's editorial process and policies. Editors have highlighted the following attributes while ensuring the content's credibility:

fact-checked

trusted source

proofread

How digital twins can accelerate the global transition from fossil fuels to clean energy
A digital twin of an oil rig. Credit: Creative Commons Attribution-Share Alike 4.0 International: creativecommons.org/licenses/by-sa/4.0/

As the world grapples with the urgent need to reduce carbon emissions and combat climate change, researchers at the University of Sharjah are turning to a cutting-edge technology that could reshape the future of energy: AI-powered digital twins.

According to the researchers, these digital replicas of the physical world have the potential to transform the generation, management, and optimization of energy across diverse clean energy platforms, accelerating the transition away from fossil fuels, which environmental scientists associate with global warming.

Digital twins' ability to replicate and interact with complex systems has made them a cornerstone of innovation across industries, driving improvements in efficiency, cost reduction, and the development of novel solutions.

However, the scientists caution that current digital twin models still face notable limitations that restrict their full potential in harnessing energy from sources such as wind, solar, geothermal, hydroelectric, and biomass.

"Digital twins are highly effective in optimizing renewable energy systems," the researchers write in the journal Energy Nexus.

"Yet, each energy source presents unique challenges—ranging from data variability and environmental conditions to system complexity—that can limit the performance of digital twin technologies, despite their considerable promise in improving energy generation and management."

In their study, the authors conducted an extensive review of existing literature on the application of digital twins in renewable energy systems. They examined various contexts, functions, lifecycles, and architectural frameworks to understand how digital twins are currently being utilized and where gaps remain.

To extract meaningful insights, the researchers employed advanced text mining techniques, leveraging artificial intelligence, machine learning, and natural language processing. This scientifically rigorous approach enabled them to analyze large volumes of raw data and uncover structured patterns, concepts, and emerging trends.

From this in-depth analysis, the authors drew several key conclusions. They identified research gaps, proposed new directions, and outlined the challenges that must be addressed to fully harness the potential of digital twin technology in the renewable energy sector.

Following a detailed discussion on the integration of digital twins across various renewable energy applications, the authors summarized their most significant findings across five major energy sources: wind, solar, geothermal, hydroelectric, and biomass. Each source presents unique opportunities and challenges, and the study offers a comprehensive overview of how digital twins can be tailored to optimize performance in each domain.

How digital twins can accelerate the global transition from fossil fuels to clean energy
The structure of a digital twin. Credit: Energy Nexus (2025). DOI: 10.1016/j.nexus.2025.100415

The study reveals that digital twins offer significant advantages across various renewable energy systems:

Wind energy: Digital twins can predict unknown parameters and correct inaccurate measurements, enhancing system reliability and performance.

Solar energy: They help identify key factors that influence efficiency and output power, enabling better system design and optimization.

Geothermal energy: Digital twins can simulate the entire operational process—particularly drilling—facilitating cost analysis and reducing both time and expenses.

Hydroelectric energy: The AI-driven models simulate system dynamics to identify influencing factors. In older hydro plants, they are used to mitigate the impact of worker fatigue on productivity.

Biomass energy: Digital twins improve performance and management by offering deep insights into operational processes and plant configurations.

But the authors' contribution to the field stands out in highlighting critical limitations in the application of digital twin technology across these energy sources. Their analysis underscores the need for more robust models that can address specific challenges unique to each renewable energy system.

The authors identify several limitations in the application of digital twins across different renewable energy systems:

Wind energy: Digital twins face challenges in accurately modeling and monitoring environmental conditions. They struggle to simulate critical factors such as blade erosion, gearbox degradation, and electrical system performance—particularly in aging turbines.

Solar energy: Despite their potential, digital twins still fall short in reliably predicting long-term performance. They have difficulty tracking panel degradation and accounting for environmental influences over time, which affects their accuracy and usefulness.

Geothermal energy: A major obstacle is the lack of high-quality data, which hampers the ability of digital twins to simulate geological uncertainties and subsurface conditions. The technology also faces complexity in modeling the long-term behavior of geothermal systems, including heat transfer and fluid flow dynamics.

Hydroelectric energy: Applied to hydroelectric projects, digital twins face challenges in accurately modeling water flow variability and in capturing environmental and ecological constraints. These limitations reduce their effectiveness in optimizing system performance and sustainability.

Biomass energy: When used with biomass energy systems, digital twins still struggle to simulate the entire production supply chain. They fall short in providing precise models for biological processes, biomass conversion, and the complex biochemical and thermochemical reactions involved.

The authors emphasize the broader implications of these shortcomings for the renewable energy sector. To address these challenges, they offer a set of guidelines and a research roadmap aimed at helping scientists enhance the reliability and precision of digital twin technologies.

Their recommendations focus on improving data collection methods, advancing modeling techniques, and expanding computational capabilities to ensure digital twins can deliver trustworthy insights for decision-making and system optimization.

More information: Concetta Semeraro et al, Harnessing the future: Exploring digital twin applications and implications in renewable energy, Energy Nexus (2025). DOI: 10.1016/j.nexus.2025.100415

Provided by University of Sharjah Citation: How digital twins can accelerate the global transition from fossil fuels to clean energy (2025, July 28) retrieved 28 July 2025 from https://techxplore.com/news/2025-07-digital-twins-global-transition-fossil.html This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

Explore further

Experts link digital twins with complexity data science 1 shares

Feedback to editors

Share212Tweet133ShareShare27ShareSend

Related Posts

To explore AI bias, researchers pose a question: How do you imagine a tree?
AI

To explore AI bias, researchers pose a question: How do you imagine a tree?

July 29, 2025
0

July 29, 2025 The GIST To explore AI bias, researchers pose a question: How do you imagine a tree? Lisa Lock scientific editor Andrew Zinin lead editor Editors' notes This article has been reviewed according to Science X's editorial process and policies. Editors have highlighted the following attributes while ensuring...

Read moreDetails
AI bands signal new era for music business

AI bands signal new era for music business

July 29, 2025
LA may not have flying cars, but more food delivery bots are coming

LA may not have flying cars, but more food delivery bots are coming

July 29, 2025
Scientists use AI-powered robot to assemble cyborg insects for use in search and rescue efforts

Scientists use AI-powered robot to assemble cyborg insects for use in search and rescue efforts

July 29, 2025
AI can see clearly now, when it comes to energy storage

AI can see clearly now, when it comes to energy storage

July 28, 2025
Researchers test the trustworthiness of AI by teaching it to play sudoku

Researchers test the trustworthiness of AI by teaching it to play sudoku

July 28, 2025
AI agents—here’s what to know about what they can do and how they can go wrong

AI agents—here’s what to know about what they can do and how they can go wrong

July 28, 2025

Recent News

XRP out of Billionaire Club: Bull Run Getting Canceled?

XRP out of Billionaire Club: Bull Run Getting Canceled?

July 29, 2025
Apple’s 14-inch MacBook Pro with M4 drops to a record-low price

Apple’s 14-inch MacBook Pro with M4 drops to a record-low price

July 29, 2025
To explore AI bias, researchers pose a question: How do you imagine a tree?

To explore AI bias, researchers pose a question: How do you imagine a tree?

July 29, 2025

Bitcoin Exchange Binance Announces Listing of Two New Altcoin Trading Pairs on its Futures Platform! Here Are the Details

July 29, 2025

TOP News

  • The AirPods 4 are still on sale at a near record low price

    The AirPods 4 are still on sale at a near record low price

    533 shares
    Share 213 Tweet 133
  • Ripple Partners With Ctrl Alt to Expand Custody Footprint Into Middle East

    533 shares
    Share 213 Tweet 133
  • Cyberpunk 2077: Ultimate Edition comes to the Mac on July 17

    533 shares
    Share 213 Tweet 133
  • HBO confirms The Last of Us season 3 will arrive in 2027

    533 shares
    Share 213 Tweet 133
  • Reddit is back online after a brief outage

    533 shares
    Share 213 Tweet 133
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms of Use
Advertising: digestmediaholding@gmail.com

Disclaimer: Information found on cryptoreportclub.com is those of writers quoted. It does not represent the opinions of cryptoreportclub.com on whether to sell, buy or hold any investments. You are advised to conduct your own research before making any investment decisions. Use provided information at your own risk.
cryptoreportclub.com covers fintech, blockchain and Bitcoin bringing you the latest crypto news and analyses on the future of money.

© 2023-2025 Cryptoreportclub. All Rights Reserved

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
No Result
View All Result
  • Crypto news
  • AI
  • Technologies

Disclaimer: Information found on cryptoreportclub.com is those of writers quoted. It does not represent the opinions of cryptoreportclub.com on whether to sell, buy or hold any investments. You are advised to conduct your own research before making any investment decisions. Use provided information at your own risk.
cryptoreportclub.com covers fintech, blockchain and Bitcoin bringing you the latest crypto news and analyses on the future of money.

© 2023-2025 Cryptoreportclub. All Rights Reserved