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

Liheng Wu – space structure – Best Researcher Award

Liheng Wu - space structure - Best Researcher Award

Southeast University - China

AUTHOR PROFILE

SCOPUS

🔧 RESEARCH FOCUS

Liheng Wu is a postdoctoral researcher at Southeast University, specializing in civil engineering. His research spans kinematics, dynamics, compliant mechanisms, robotics, and tensegrity structures. He integrates advanced mechanical theories to develop cutting-edge solutions in both theoretical and applied mechanics.

📚 EDUCATIONAL BACKGROUND

Liheng completed his PhD in Mechanical Engineering at Tianjin University in 2020. With an MS from Hebei University of Technology and a Bachelor's in Engineering from Chongqing Business and Technology University, his educational journey has been marked by a deep focus on mechanical and structural dynamics.

⚙️ KINEMATIC DISCOVERIES

One of Liheng’s key contributions is his work on matrix methods for identifying linkages with first-order mobility. He has also contributed to understanding second-order kinematic constraints and discovered a new Euler-Savary equation of four-bar linkages, pushing the boundaries of mechanical design theory.

🏗️ TENSEGRITY STRUCTURES

In the field of tensegrity structures, Liheng has pioneered novel transformations between linkage-truss systems and tensegrity structures. His work on prestress-stability analysis and prismatic tensegrity systems has influenced structural design methodologies in mechanical engineering.

💡 INNOVATIVE MECHANISMS

Liheng is known for designing innovative displacement amplifying mechanisms using curvature theory. These mechanisms are crucial in enhancing the precision and efficiency of compliant systems, leading to new applications in robotics and dynamic systems.

🔋 SOLITON IN METAMATERIALS

A significant area of his research is the generation of solitary waves in electrical transmission networks. By leveraging soliton dynamics in metamaterials, Liheng's work has the potential to revolutionize energy transmission and network stability.

🏆 PUBLICATIONS & IMPACT

Liheng has published influential papers in leading journals such as Mechanisms and Machine Theory and Journal of Mechanical Design. His research has broad applications, from structural mechanics to advanced robotics, making him a recognized voice in his field.

NOTABLE PUBLICATION

Analyzing Higher-Order Curvature of Four-Bar Linkages with Derivatives of Screws
Authors: Wu, L., Cai, J., Dai, J.S.
Year: 2024
Journal: Machines, 12(8), 576

A Novel Ortho-Triplex Tensegrity Derived by the Linkage-Truss Transformation with Prestress-Stability Analysis Using Screw Theory
Authors: Wu, L., Dai, J.S.
Year: 2021
Journal: Journal of Mechanical Design, 143(1), 013302

A Matrix Method to Determine Infinitesimally Mobile Linkages with Only First-Order Infinitesimal Mobility
Authors: Wu, L., Müller, A., Dai, J.S.
Year: 2020
Journal: Mechanism and Machine Theory, 148, 103776

Matrix Analysis of Second-Order Kinematic Constraints of Single-Loop Linkages in Screw Coordinates
Authors: Wu, L., Müller, A., Dai, J.S.
Year: 2018

SIMONE BOLLATTINO – Aerospace Engineering – Best Researcher Award

SIMONE BOLLATTINO - Aerospace Engineering - Best Researcher Award

Politecnico Di Torino - Italy

AUTHOR PROFILE

SCOPUS

ACADEMIC BACKGROUND

SIMONE BOLLATTINO is an MSc graduate in Electronic Engineering from the Polytechnic of Turin, Italy, with a specialization in electronic systems. His thesis focused on developing a versatile onboard computer for small satellites, reflecting his research activities in the aerospace field.

PROFESSIONAL EXPERIENCE

Currently, Simone works as a Hardware Engineer at SPEA, where he is involved in research and development for Automatic Test Equipment in the Semi and MEMS Business Unit.

RESEARCH AND DEVELOPMENT

He has contributed to various projects related to space electronics as an R&D Engineer at the STARLab research team, where he received a scholarship for the development of a test bench based on CubeSat technology.

CUBESAT MISSIONS

Simone has played a significant role in the design and development of subsystems for CubeSat missions, including the Spei Satelles CubeSat Mission and SINAV, focusing on power systems, telemetry gathering, and onboard computers.

PUBLICATIONS

He has co-authored several papers, including "Fast development and validation of a Sensing Suite system for CubeSats" in Acta Astronautica and presented at the International Astronautical Congress on topics such as CubeSat missions and spacecraft design.

EXTRA-CURRICULAR ACTIVITIES

He actively participated in the CubeSat PoliTo team, contributing to the phase A and B design of the onboard computer subsystem for future CubeSat missions of Turin Polytechnic.

TECHNICAL SKILLS

Simone is proficient in various technical areas including hardware design, embedded programming, PCB design, and communication protocols. He is skilled in using tools such as Modelsim/Questasim, Cadence Virtuoso, KiCAD, and languages like VHDL, Verilog, C, C++, and Python.

NOTABLE PUBLICATION

From design to delivery in three months: the fast development of a 3U CubeSat 2023

3U CubeSat mission to assess vegetation hydration status and hydrological instability risk 2022