← Back to Research Radar
Scientific Literature Scientific Literature

AI-Powered Surrogate Modelling for Multiscale Combustion: A Critical Review and Opportunities

Amirali Shateri, Zhiyin Yang, Yuying Yan, Manosh C. Paul, Jianfei Xie
April 28, 2026
Published Date

Research Abstract & Technology Focus

Recent advances in combustion science have led to the generation of large volumes of data from high-fidelity simulations, detailed chemical-kinetic calculations and engine-relevant measurements and create new opportunities for data-driven modelling across interacting physical and chemical scales. Among these approaches, artificial intelligence has emerged as a promising framework for constructing surrogate models that reduce computational costs, deliver substantial speed-up and support prediction in complex reacting systems. This review provides a state-of-the-art assessment of AI-powered surrogate modelling for multiscale combustion, spanning chemical kinetics, mechanism reduction, turbulent flames, combustors, engines, and emissions prediction. Supervised, unsupervised, and hybrid or physics-guided learning approaches are examined and compared in terms of predictive accuracy, physical consistency, computational efficiency, and generalizability across conditions and scales. The review further discusses key challenges, including limited transferability across fuels and operating regimes, extrapolation errors, inconsistency in datasets and benchmarks, and the difficulty of building robust and trustworthy models for practical combustion workflows. Future opportunities are identified in the development of more reliable, scalable, and physically grounded surrogate frameworks for next-generation combustion research.

Correlated Market Trend: Computational Model

Bridging academia to market: The 60-day public search velocity mapping directly to the core technology of this paper. Dashed line represents 7-day moving average.

AI Semantic Synergy Context

Connecting this academic literature to real-world market discussions and products.

crossref.org › academic paper
0%

Generative artificial intelligence of things systems, multisensory immersive extended reality technologies, and algorithmic big data simulation and modelling tools in digital twin industrial metaverse

Research background: Multi-modal synthetic data fusion and analysis, simulation and modelling technologies, and virtual environmental and location sensors shape the industrial metaverse. Visual dig...

openalex.org › research concept
0%

Mechs

You can treat this as buildable with today’s tech, but you’re in “prototype MBT + experimental railgun + biped robot” cost territory for a single unit. Below is an order‑of‑magnitude cost breakdown...

openalex.org › research concept
0%

Contrail formation for aircraft with hydrogen combustion – Part 3: A neural-network-based parameterization of ice crystal number

Abstract. Contrail cirrus clouds are a major contributor to the climate impact of aviation. Large-scale models, such as general circulation models (GCMs) with an integrated contrail module, are use...

crossref.org › academic paper
0%

Optimizing renewable energy systems through artificial intelligence: Review and future prospects

The global transition toward sustainable energy sources has prompted a surge in the integration of renewable energy systems (RES) into existing power grids. To improve the efficiency, reliability, ...

roipad.com › trend story
0%

Launch an autonomous AI agent with sandboxed execution in 2 lines of code

A tool for running on-premises large language models on non-public data

Frequently Asked Questions (FAQ)

Curated market intelligence mapped to this research.

What is the core focus of the research titled 'AI-Powered Surrogate Modelling for Multiscale Combustion: A Critical Review and Opportunities'?

This literature focuses on: Recent advances in combustion science have led to the generation of large volumes of data from high-fidelity simulations, detailed chemical-kinetic calculations and engine-relevant measurements and create new opportunities for data-driven modellin...

What other academic literature is closely related to 'AI-Powered Surrogate Modelling for Multiscale Combustion: A Critical Review and Opportunities'?

Yes, highly correlated activity was mapped. An entry titled 'Generative artificial intelligence of things systems, multisensory immersive extended reality technologies, and algorithmic big data simulation and modelling tools in digital twin industrial metaverse' discusses this: Research background: Multi-modal synthetic data fusion and analysis, simulation and modelling technologies, and virtual environmental and location ...

Are there commercial applications of 'AI-Powered Surrogate Modelling for Multiscale Combustion: A Critical Review and Opportunities' in market news publications?

Yes, highly correlated activity was mapped. An entry titled 'Launch an autonomous AI agent with sandboxed execution in 2 lines of code' discusses this: A tool for running on-premises large language models on non-public data

Cite this Market Intelligence Report

Reference our AI-mapped synergy between this research and the commercial market to instantly build authority.