Biography
Dr Zheng received his doctoral degree from Huazhong University of Science and Technology, and became an assistant professor in Huazhong University of Science and Technology. He published 21 SCI papers in the academic journals including two cover papers, i.e., Proc. Combust. Inst., Appl. Catal. B, and Environ. Sci. Technol.
He has long been engaged in the directions of low-carbon combustion of fossil energy and negative carbon utilization of biomass and solid waste, including: 1. Design and development of functional materials for chemical looping technologies; 2. Gas-solid multi-scale kinetic method and application; 3. Emission reduction technology of flue gas pollutants. He constructs a set of multi-scale kinetic models to quantitatively analyze the gas-solid interaction on a basis of molecular dynamics and quantum dynamics, which is conducive to the computational dynamics in chemical looping technology (typical Carbon Capture and Utilization technology).
Research Interest
Computational dynamics, Molecular dynamics, Quantum dynamics, Carbon Capture and Utilization, Chemical looping.

Editor
Work Details
Assistant professor
Huazhong University of Science and Technology
School of Energy and Power Engineering
China
Contribution by Topic Area
Why Publish with us?
Global Visibility – Indexed in major databases
Fast Peer Review – Decision within 14–21 days
Open Access – Maximize readership and citation
Multidisciplinary Scope – Biology, Medicine and Engineering
Editorial Board Excellence – Global experts involved
University Library Indexing – Via OCLC
Permanent Archiving – CrossRef DOI
APC – Affordable APCs with discounts
Citation – High Citation Potential
Which articles are now trending?
Research Articles
- Risks and Effects of Medicinal Plants as an Adjuvant Treatment in Mental Disorders during Pregnancy
- AFM Analysis of Polymeric Membranes Fouling
- EB Naevi-like Lesion in Infant Bullous Pemphigoid
- Assessment of Thermal Uniformity of Heating Plates Using a Thermal Imaging Camera
- Lifestyle and Well-being among Portuguese Firefighters
- A Machine Learning-based Method for COVID-19 and Pneumonia Detection
Advertisement