Shiyu Liu – Engineering – Best Researcher Award

Shiyu Liu - Engineering - Best Researcher Award

Hebei University - China

AUTHOR PROFILE

SCOPUS

SHIYU LIU: RESEARCHER IN AI-BASED MONITORING 🔬

Shiyu Liu, currently a lecturer and postdoctoral researcher at Hebei University, has been making significant contributions in the field of spectral detection and analysis using artificial intelligence. His primary research revolves around spectral detection, machine learning, and AI-driven health monitoring systems for lithium-ion batteries, bringing innovative solutions to environmental monitoring and engineering applications.

AI-DRIVEN BATTERY MONITORING 🔋

Liu's work focuses on the health monitoring of lithium-ion batteries through artificial intelligence techniques. He combines electrochemical impedance spectroscopy with machine learning to accurately predict battery capacity and health. This research is vital for improving battery longevity, particularly in electric vehicles and sustainable energy systems, where battery performance is crucial.

SPECTRAL ANALYSIS & AI ALGORITHMS 📊

Liu's expertise extends to spectral detection and analysis, utilizing AI-based algorithms for processing near-infrared (NIR) spectroscopy data. His research aims to address issues such as high noise interference and spectral peak overlap, which often hinder accurate detection of complex organic compounds. By integrating machine learning and chemometric methods, he strives for precision in environmental pollutant measurement and industrial applications.

INNOVATIVE PROJECTS & PARTNERSHIPS 🤝

Shiyu Liu has actively contributed to several national and provincial projects, including the National Natural Science Foundation of China. His projects range from detecting environmental pollutants using spectral analysis to developing remote sensing image processing algorithms for space applications. These collaborations underscore his role in advancing both environmental science and technology.

CUTTING-EDGE PUBLICATIONS 📚

Liu has published extensively in prestigious journals, such as Fuel and Spectrochimica Acta, with a focus on using AI techniques for diesel fuel analysis and NIR spectroscopy. His innovative approach combines deep learning with spectral data to enhance the accuracy of fuel property detection, contributing to advancements in both energy and environmental fields.

PROFESSIONAL ENGAGEMENTS & PRESENTATIONS 🎤

Liu actively participates in international conferences, presenting his research findings to global audiences. Notably, he presented at the 2023 UNIfied International Conference in the UK, where he shared insights on battery health monitoring using AI. His academic activities also include contributions to forums on infrared technology, further solidifying his reputation in AI-driven research.

AWARDS & RECOGNITIONS 🏆

Shiyu Liu has received several prestigious awards, including the CSC Scholarship for his visiting PhD tenure at the University of Huddersfield. His accolades also include national scholarships, recognition as an “excellent graduate,” and top prizes in mathematical and physics competitions. These honors reflect his commitment to academic excellence and innovation in his field.

NOTABLE PUBLICATION

Title: Series fusion of scatter correction techniques coupled with deep convolution neural network as a promising approach for NIR modeling
Authors: Liu, S., Wang, S., Hu, C., Kong, D., Yuan, Y.
Journal: Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy
Year: 2023

Title: A MLP-Based Transfer Learning Model Using EIS Health Features for State of Health Estimation of Lithium-Ion Battery
Authors: Zhao, X., Wang, Z., Liu, S., Gu, F., Ball, A.
Conference: ICAC 2023 - 28th International Conference on Automation and Computing
Year: 2023

Title: Markov Transform Field Coupled with CNN Image Analysis Technology in NIR Detection of Alcohols Diesel
Authors: Liu, S., Wang, S., Hu, C., Kong, D.
Conference: Mechanisms and Machine Science
Year: 2023

Title: Rapid and accurate determination of diesel multiple properties through NIR data analysis assisted by machine learning
Authors: Liu, S., Wang, S., Hu, C., Kong, D., Wang, J.
Journal: Spectrochimica Acta - Part A: Molecular and Biomolecular Spectroscopy
Year: 2022

Title: Determination of alcohols-diesel oil by near infrared spectroscopy based on gramian angular field image coding and deep learning
Authors: Liu, S., Wang, S., Hu, C., Bi, W.
Journal: Fuel
Year: 2022

Dr. Akira Aikawa | Railway Ballasted Track Dynamics | Best Researcher Award

Dr. Akira Aikawa | Railway Ballasted Track Dynamics | Best Researcher Award

Railway Technical Research Institute (RTRI) | Japan

Author Profile

Scopus

AKIRA AIKAWA

Akira Aikawa is a distinguished expert in Railway Track Dynamics, Granular Mechanics, and In-situ Measurement. He earned his Ph.D. from Kyushu University in Japan.

PROFESSIONAL CAREER

Dr. Aikawa began his academic career as an Assistant Professor in the Faculty of Engineering at Kyushu University from 1987 to 1993. He then served as an Associate Professor at the Institute of National Colleges of Technology from 1993 to 2006. Since 2006, he has been associated with the Railway Technical Research Institute (RTRI) in Japan.

TECHNICAL COMMITTEE MEMBERSHIPS

Dr. Aikawa has been a Road Disaster Prevention Doctor for the Ministry of Land, Infrastructure, Transport, and Tourism in Japan from 1999 to 2006. He is also a Fellow Member of the Japan Society of Civil Engineers (JSCE).

CURRENT POSITION

Dr. Aikawa currently holds a prominent position at the Railway Technical Research Institute (RTRI) in Japan. His extensive experience and contributions to railway engineering and disaster prevention highlight his expertise and commitment to advancing the field of civil engineering.

IMPACT AND INFLUENCE

Dr. Aikawa's work has had a profound impact on the field of railway engineering, particularly in understanding the complex behaviors of railway tracks and materials. His research has informed best practices and innovations in railway construction and maintenance, enhancing the safety and reliability of railway systems in Japan and beyond.

LEGACY AND FUTURE CONTRIBUTIONS

Dr. Aikawa's legacy is characterized by his extensive contributions to railway dynamics and his role in shaping the future of railway engineering. His ongoing work at RTRI ensures that he remains at the forefront of technological advancements and research in railway systems. As a respected figure in his field, Dr. Aikawa's influence will continue to inspire future generations of engineers and researchers.

NOTABLE PUBLICATIONS

Elastic discrete element analysis of natural vibration characteristics and settlement behavior of railway ballasted track 2024

Dynamic vehicle-track interaction with multiple short rail defects over long wavelength track settlement 2019

The importance of ‘dynamics’ in the design and performance-based testing criteria for railway track components 2019 (5)

Novel discrete element modeling coupled with finite element method for investigating ballasted railway track dynamics 2018 (30)

Development of Viscoelastic Multi-Body Simulation and Impact Response Analysis of a Ballasted Railway Track under Cyclic Loading 2017 (10)