Director of the Vehicle Engineering Department | Central South University of Forestry and Technology | China
Dr. Jiang Shuxia is an Associate Professor at the College of Mechanical and Intelligent Manufacturing, Central South University of Forestry and Technology (CSUFT), where she has dedicated her career to teaching, research, and academic leadership. With expertise spanning intelligent driving, machine vision, fault diagnosis, and artificial intelligence applications, she has built a professional profile marked by innovation, perseverance, and outstanding mentorship. Her contributions to higher education and scientific research demonstrate an unwavering commitment to advancing knowledge and shaping the next generation of engineers and researchers.
Professional Profiles
ORCID | Scopus Profile 
Education
Dr. Jiang’s academic foundation was built at Central South University, where she completed undergraduate studies in Mechanical and Electronic Engineering before continuing with a Master’s degree in Vehicle Operation Engineering under the supervision of Professor Fu Qinyi. She later pursued doctoral studies in Traffic Equipment and Information Engineering, guided by Professor Luo Yiping, where her focus deepened in advanced data analysis, signal processing, and intelligent systems. Her perspective was further enriched through international study as a visiting scholar at the Free University of Brussels, Belgium, which provided her with valuable global academic exposure and strengthened her research collaborations.
Experience
Dr. Jiang has served at CSUFT for her entire professional career, advancing from a young lecturer to Associate Professor and Master’s Supervisor. She has taught a broad spectrum of courses, including Optimization Design and MATLAB Software, Automotive Intelligent Networking Technology, and Deep Learning Theory and Intelligent Driving. She has also delivered all-English professional courses such as Automotive Electronic Control Technology to international graduate students, enhancing CSUFT’s global outreach. Over the years, she has consistently maintained a demanding teaching workload while guiding numerous student graduation projects to completion. Many of her students have earned recognition for Excellent Graduation Theses, reflecting her commitment to academic rigor and personalized mentorship.
Research Focus
Dr. Jiang’s research blends engineering, mathematics, and artificial intelligence to address critical challenges in intelligent vehicles, condition monitoring, and system fault diagnosis. She has led funded projects supported by the National Natural Science Foundation of China, the Hunan Provincial Natural Science Foundation, and the Hunan Provincial Department of Education. Her investigations span topics such as energy management, fan noise prediction, and intelligent diagnostic systems for vehicle networking. Her methodologies combine Markov chain models, Monte Carlo simulations, neural networks, and wavelet analysis to deliver both theoretical insights and applied engineering solutions. Through collaborations with industrial partners, she has ensured that her work contributes directly to practical technological advancements in intelligent driving and mechanical systems.
Awards & Honors
Dr. Jiang’s contributions have been widely recognized within academic and professional communities. She has received multiple teaching excellence awards and distinctions for her role in nurturing student talent. Her ethical teaching practices were highlighted in a widely circulated “Model Teachers” profile, and her dedication to students and research was celebrated in a special “CSUFT Personalities” report that portrayed her as a scholar who is both approachable and disciplined. She was also honored with a distinguished teaching title at her university, affirming her role as a leader in education. More recently, her pedagogical innovation earned her top placement in a Teaching Innovation Competition. Under her supervision, students have secured national-level awards in the Intelligent Car Competition, Mathematical Modeling, and Big Data challenges, showcasing her ability to cultivate academic and creative excellence in her mentees.
Publication Top Notes
Title: A Novel Temperature Distribution Modeling Method for Thermoelectric Coolers with Application to Battery Thermal Management Systems
Year: 2024
Title: A Wavelet-Based Computational Framework for a Block-Structured Markov Chain with a Continuous Phase Variable
Year: 2023
Title: A Unified Perturbation Analysis Framework for Countable Markov Chains
Year: 2017
Title: Wavelet Transform for a Quasi-Birth-Death Process with a Continuous Phase Set
Year: 2015
Title: Poisson's Equation for Discrete-Time Single-Birth Processes
Year: 2014
Title: Method for Engine Waveform Analysis and Fault Diagnosis Based on SFB and HHT
Year: 2013
Title: SFB Selection Method and Its Application in Engine Waveform Analysis and Fault Diagnosis
Year: 2012
Title: Injector Waveform Analysis and Engine Fault Diagnosis Based on Frequency Space
Year: 2010
Title: Noise Prediction of Centrifugal Fan Based on Improved Neural Network
Year: 2021
Title: Real-Time Estimation of Lithium Battery SOC Based on Fused EKF and Improved DELM
Year: 2024
Title: Research on Time-Varying Cable Force Identification Method Based on Radar Vibration Testing Technology
Year: 2023
Title: SOH Estimation of Lithium Battery Based on Improved GWO-SVR
Year: 2023
Title: Vehicle Detection Based on SSD-MobilenetV3 Model
Year: 2022
Title: Traffic Sign Recognition Based on Attention Mechanism
Year: 2022
Title: Noise Prediction of Centrifugal Fan Based on PCA-IPSO-INN
Year: 2022
Title: Combined Pruning Algorithm for Unmanned Driving Deep Learning Model
Year: 2021
Title: Spark Plug Gap Identification Based on Wavelet and Neural Network
Year: 2017
Title: Analysis Method of Engine Ignition Waveform Based on Wavelet Threshold Denoising and Secondary Empirical Mode Decomposition
Year: 2015
Conclusion
Dr. Jiang Shuxia exemplifies the qualities of a distinguished academic leader: a devoted educator, an accomplished researcher, and an inspiring mentor. Her career has been marked by excellence in teaching, innovation in research, and leadership in guiding students toward national and international achievements. By uniting advanced theoretical models with practical engineering applications, she has contributed significantly to the fields of intelligent driving, machine vision, and AI-powered diagnostics. Her publications, patents, and project outcomes underscore her ability to push the boundaries of knowledge while delivering tangible impact. These achievements make her a highly deserving candidate for recognition as an outstanding scholar and innovator in her field.