Masoud Alilou | Engineering | Best Researcher Award

Assist. Prof. Dr. Masoud Alilou | Engineering | Best Researcher Award

Electrical Engineering from Urmia University of Technology, Iran

Dr. Masoud Alilou is a distinguished academic and researcher whose expertise lies at the intersection of biomedical engineering, image processing, and machine learning. Renowned for his pioneering contributions to medical image analysis, Dr. Alilou has played a pivotal role in advancing computational tools for disease detection and diagnosis. His research integrates advanced algorithm development with practical clinical applications, especially in oncology and pulmonary imaging. With a strong publication record in high-impact journals and numerous international collaborations, Dr. Alilou is recognized for his innovative methodologies and interdisciplinary approach. He has also been instrumental in mentoring graduate students and contributing to curriculum development in biomedical engineering and computer science programs. His commitment to translational research has led to the development of automated tools aimed at improving diagnostic accuracy and patient care. Over the years, Dr. Alilou has gained a reputation for excellence in research, teaching, and academic leadership. He is a frequent reviewer for reputed journals and conferences, and his work has been widely cited. Through his dedication to technological innovation and scientific rigor, Dr. Alilou continues to make significant contributions to medical imaging and artificial intelligence in healthcare, solidifying his status as a leader in the academic and scientific communities.

Professional Profile

Education

Dr. Masoud Alilou’s academic journey reflects his deep-rooted commitment to interdisciplinary research and education. He earned his Bachelor’s degree in Computer Engineering, laying a strong foundation in algorithm design, programming, and systems analysis. Driven by a desire to apply computational methods to real-world problems, he pursued a Master’s degree in Biomedical Engineering. During this period, he focused on medical image analysis and machine learning, bridging the gap between engineering and clinical medicine. His master’s research emphasized the development of image processing tools for diagnosing chronic lung diseases, which sparked his long-term interest in healthcare technologies. He later completed his Ph.D. in Biomedical Engineering at Case Western Reserve University, a globally respected institution in the field. His doctoral research concentrated on automated quantitative analysis of medical images using advanced computational models and machine learning techniques. During his Ph.D., Dr. Alilou collaborated closely with radiologists and oncologists, reinforcing the clinical relevance of his work. His interdisciplinary training uniquely positioned him to develop algorithms that are both technically robust and clinically meaningful. Through rigorous coursework, hands-on research, and cross-disciplinary mentorship, Dr. Alilou has built an educational background that combines computational science, engineering, and medicine—an essential blend for cutting-edge biomedical research.

Professional Experience

Dr. Masoud Alilou has amassed an impressive portfolio of professional experience that spans academic research, interdisciplinary collaboration, and technological innovation. Following his doctoral studies, he joined the Quantitative Imaging Laboratory at Case Western Reserve University as a research scientist. In this role, he led and contributed to multiple NIH-funded projects aimed at developing automated tools for lung cancer screening and diagnosis using low-dose CT scans. His work involved close collaboration with clinicians, radiologists, and computer scientists, fostering a rich interdisciplinary environment. Dr. Alilou has also served as a senior researcher and developer on projects integrating artificial intelligence into clinical workflows, focusing on machine learning algorithms for lung nodule detection, segmentation, and classification. His algorithms have been implemented in software solutions used by research hospitals and diagnostic centers, significantly enhancing diagnostic precision and workflow efficiency. In addition to research, Dr. Alilou has mentored graduate students, supervised thesis projects, and contributed to the development of training modules in biomedical imaging and AI. His professional experience also includes serving as a reviewer for numerous peer-reviewed journals, including IEEE Transactions on Medical Imaging and Medical Physics. Through these roles, Dr. Alilou has built a strong reputation as both a scientific innovator and a collaborative leader in the medical imaging community.

Research Interests

Dr. Masoud Alilou’s research interests lie at the convergence of biomedical engineering, medical image analysis, and artificial intelligence. Central to his work is the development of computational techniques for the automated analysis of medical images, particularly in the early detection and characterization of diseases such as lung cancer and chronic obstructive pulmonary disease (COPD). He is deeply interested in low-dose CT imaging and its applications in non-invasive diagnostics, seeking to optimize the accuracy and efficiency of radiological assessments through advanced algorithms. A significant focus of Dr. Alilou’s research is on radiomics—extracting high-dimensional features from medical images to identify patterns correlated with disease outcomes. He is also engaged in developing deep learning models for image classification, segmentation, and prediction of treatment response. His work explores how quantitative image features can be integrated with clinical data to inform precision medicine. Moreover, Dr. Alilou is enthusiastic about translational research, ensuring that the algorithms and tools he develops are applicable in clinical settings. His interdisciplinary projects often involve partnerships with radiologists, oncologists, and biostatisticians. Through his commitment to impactful research, Dr. Alilou continues to push the boundaries of medical imaging, aiming to enhance patient outcomes through innovation and data-driven healthcare solutions.

Research Skills

Dr. Masoud Alilou possesses an exceptional set of research skills that span computational modeling, machine learning, and biomedical image analysis. He is highly proficient in developing and implementing complex algorithms for image processing tasks, including segmentation, registration, and feature extraction. His expertise in computer vision allows him to work with large-scale imaging datasets, transforming raw medical data into meaningful clinical insights. He has extensive experience with deep learning frameworks such as TensorFlow, PyTorch, and Keras, which he uses to design and train neural networks for various diagnostic tasks. Additionally, Dr. Alilou is adept in programming languages such as Python, MATLAB, and C++, enabling him to prototype and optimize algorithms efficiently. His skills in radiomics and statistical analysis allow for the extraction and evaluation of high-dimensional imaging biomarkers, supporting the development of predictive and prognostic models. Dr. Alilou also demonstrates strong skills in interdisciplinary collaboration, integrating domain knowledge from radiology, oncology, and bioinformatics into his research workflows. His rigorous approach to data validation, model performance evaluation, and reproducibility ensures the reliability of his findings. Whether through designing novel AI models or translating computational tools into clinical applications, Dr. Alilou’s technical and collaborative skills stand at the core of his impactful research contributions.

Awards and Honors

Dr. Masoud Alilou has received several prestigious awards and honors in recognition of his outstanding research contributions and academic achievements. His innovative work in the field of medical image analysis has earned him accolades from both academic institutions and professional organizations. As a graduate student, he was honored with the Research Excellence Award at Case Western Reserve University, acknowledging his impactful contributions to biomedical engineering and medical imaging. His research has also been recognized at international conferences, where he has received best paper and poster awards for his work on automated lung cancer detection and radiomics-based diagnostic tools. Dr. Alilou’s contributions to artificial intelligence in healthcare have attracted attention from funding bodies such as the National Institutes of Health (NIH), resulting in several grant-supported projects. In addition, he has been invited to present his work at renowned symposiums and workshops, affirming his status as a thought leader in his field. Dr. Alilou also serves as a regular reviewer for high-impact journals, a testament to the scientific community’s trust in his expertise. These honors reflect not only his technical proficiency but also his dedication to advancing medical science through innovation, collaboration, and academic excellence.

Conclusion

In summary, Dr. Masoud Alilou stands out as a pioneering figure in the field of biomedical engineering and medical image analysis. With a strong educational foundation and diverse professional experience, he has successfully bridged the worlds of computational science and clinical medicine. His research—centered on the development of AI-driven tools for disease diagnosis and prediction—has not only advanced academic knowledge but also brought tangible benefits to healthcare practice. Dr. Alilou’s skills in image processing, machine learning, and interdisciplinary collaboration have positioned him as a key contributor to the evolving landscape of precision medicine. His numerous awards and academic recognitions reflect a career marked by innovation, excellence, and societal impact. Beyond research, Dr. Alilou’s contributions as a mentor, educator, and collaborator have enriched the academic and scientific communities. Looking forward, he continues to explore new frontiers in medical AI, with a vision of improving diagnostic accuracy, patient outcomes, and health system efficiency. As a scientist dedicated to turning complex data into actionable healthcare solutions, Dr. Alilou exemplifies the potential of integrating technology and medicine for the betterment of global health.

Publications Top Notes

  1. Title: Home energy management in a residential smart micro grid under stochastic penetration of solar panels and electric vehicles
    Authors: M. Alilou, B. Tousi, H. Shayeghi
    Year: 2020
    Citations: 93

  2. Title: Fractional-order control techniques for renewable energy and energy-storage-integrated power systems: A review
    Authors: M. Alilou, H. Azami, A. Oshnoei, B. Mohammadi-Ivatloo, R. Teodorescu
    Year: 2023
    Citations: 33

  3. Title: Application of multi objective HFAPSO algorithm for simultaneous placement of DG, capacitor and protective device in radial distribution network
    Authors: H. Shayeghi, M. Alilou
    Year: 2015
    Citations: 25

  4. Title: Multi-objective optimization of demand side management and multi DG in the distribution system with demand response
    Authors: M. Alilou, D. Nazarpour, H. Shayeghi
    Year: 2018
    Citations: 24

  5. Title: Simultaneous placement of renewable DGs and protective devices for improving the loss, reliability and economic indices of distribution system with nonlinear load model
    Authors: M. Alilou, V. Talavat, H. Shayeghi
    Year: 2020
    Citations: 20

  6. Title: Multi-objective energy management of smart homes considering uncertainty in wind power forecasting
    Authors: M. Alilou, B. Tousi, H. Shayeghi
    Year: 2021
    Citations: 19

  7. Title: Multi-Objective demand side management to improve economic and‎ environmental issues of a smart microgrid‎
    Authors: H. Shayeghi, M. Alilou
    Year: 2021
    Citations: 17

  8. Title: Distributed generation and microgrids
    Authors: H. Shayeghi, M. Alilou
    Year: 2021
    Citations: 16

  9. Title: Multi‐objective unit and load commitment in smart homes considering uncertainties
    Authors: M. Alilou, B. Tousi, H. Shayeghi
    Year: 2020
    Citations: 12

  10. Title: Day-ahead scheduling of electric vehicles and electrical storage systems in smart homes using a novel decision vector and AHP method
    Authors: M. Alilou, G.B. Gharehpetian, R. Ahmadiahangar, A. Rosin, et al.
    Year: 2022
    Citations: 11

  11. Title: Optimal placement and sizing of TCSC for improving the voltage and economic indices of system with stochastic load model
    Authors: S. Ghaedi, B. Tousi, M. Abbasi, M. Alilou
    Year: 2020
    Citations: 10

Jingchao Xie | Architectural Engineering | Best Researcher Award

Prof. Jingchao Xie | Architectural Engineering | Best Researcher Award

Professor from Beijing University Of Technology, China

Jingchao Xie is a distinguished professor at Beijing University of Technology, specializing in architectural engineering with a strong emphasis on building energy efficiency and thermal performance. He serves as the Director of the Department of Architectural Environment and Energy Application Engineering and the Executive Director of the Key Laboratory of Green Building Environment and Energy-Saving Technology in Beijing. His expertise extends to zero-energy buildings, adaptive building envelopes, and phase-change materials for energy storage. He actively contributes to leading academic committees, including the Zero Energy Consumption Academic Committee and the Building Physics Committee of the China Architecture Society. His research is widely recognized, with numerous publications in high-impact journals, multiple patents, and extensive collaborations. His work has significantly advanced energy-efficient building technologies through innovative methodologies in thermal resistance optimization and adaptive building design. With an H-index of 22 on Web of Science, his contributions to sustainable architecture are globally acknowledged. As a member of the International Energy Agency’s Annex 66 Committee and other prestigious organizations, his research plays a crucial role in shaping the future of sustainable urban environments. His dedication to developing advanced energy-saving strategies has earned him recognition in both academic and industry circles, making him a leading figure in his field.

Professional Profile

Education

Jingchao Xie earned his Ph.D. in Architectural Engineering from Tohoku University, Japan, where he specialized in building energy efficiency and thermal performance. His doctoral research focused on optimizing energy consumption in buildings through innovative design methodologies, particularly in phase-change materials and thermal energy storage. Prior to his Ph.D., he completed his master’s degree in architectural engineering, deepening his expertise in energy-efficient building technologies. His academic journey provided a strong foundation in sustainable building design, passive and active energy management systems, and advanced modeling techniques for optimizing building performance. Throughout his education, he engaged in interdisciplinary research, combining engineering principles with environmental science to develop cutting-edge solutions for energy conservation. His studies at Tohoku University also exposed him to global perspectives on green architecture and climate-responsive building design. With a solid academic background, he has continued to apply his knowledge to real-world challenges, integrating research insights into practical applications in building design. His educational qualifications, coupled with his extensive research experience, have positioned him as a leader in the field of sustainable architecture and building energy efficiency, enabling him to contribute significantly to both academia and industry.

Professional Experience

Jingchao Xie currently serves as a professor at Beijing University of Technology, where he leads research on energy-efficient building technologies. He is the Director of the Department of Architectural Environment and Energy Application Engineering and the Executive Director of the Key Laboratory of Green Building Environment and Energy-Saving Technology in Beijing. In these roles, he has overseen numerous research projects funded by the National Key Research and Development Program of China and the National Natural Science Foundation of China. He also serves as a board member for multiple academic committees, including the Zero Energy Consumption Academic Committee and the Building Physics Committee of the China Architecture Society. Additionally, he is a member of the IEA Annex 66 Committee, contributing to international research on energy-efficient building design. His professional experience includes extensive collaboration with national and international institutions, guiding interdisciplinary teams in developing innovative energy-saving strategies. His leadership extends to industry collaborations, where he provides expert consultation on sustainable building practices. His extensive work in academia, combined with his contributions to professional organizations, underscores his influence in shaping policies and technological advancements in green building design and energy-efficient architectural solutions.

Research Interests

Jingchao Xie’s research focuses on sustainable building design, energy efficiency, and thermal performance optimization. His work primarily revolves around adaptive building envelopes, phase-change materials for energy storage, and non-equilibrium heat transfer mechanisms. He has pioneered methodologies for designing dynamic heat storage and release models, significantly improving the thermal efficiency of modern buildings. His interest in building physics has led to the development of innovative shading and lighting control systems, ensuring optimal energy use in different climate zones. He is also actively involved in research on zero-energy buildings, contributing to the formulation of policies and guidelines for sustainable urban development. His work integrates passive and active energy conservation strategies, bridging the gap between theoretical research and practical applications. His recent studies explore the potential of smart materials and intelligent building systems, leveraging advanced simulation techniques to optimize thermal resistance. His research extends beyond architecture to include environmental monitoring and climate adaptation, ensuring that his findings contribute to global efforts in mitigating climate change. Through interdisciplinary collaboration, he continues to push the boundaries of energy-efficient building design, aiming to create more resilient and environmentally friendly urban spaces.

Research Skills

Jingchao Xie possesses a diverse set of research skills that enable him to develop cutting-edge solutions in energy-efficient building technologies. He is proficient in thermal performance analysis, computational modeling, and experimental research on phase-change materials and adaptive building envelopes. His expertise includes designing and implementing energy monitoring systems, conducting thermal resistance optimization studies, and utilizing simulation software to predict building energy behavior. He has extensive experience in developing prototypes and conducting large-scale experiments to validate theoretical models. His skills in data analysis and machine learning allow him to optimize building performance through predictive analytics. Additionally, he has strong expertise in interdisciplinary collaboration, working with engineers, architects, and policymakers to implement sustainable building strategies. His ability to secure research funding and manage large-scale projects further enhances his contributions to the field. His patent portfolio demonstrates his ability to translate research into practical applications, with innovative solutions for shading, thermal energy storage, and climate-responsive building designs. His extensive publication record showcases his ability to communicate complex research findings effectively. His combination of technical expertise, problem-solving skills, and industry engagement makes him a leading researcher in sustainable architecture and energy efficiency.

Awards and Honors

Jingchao Xie has received numerous awards and honors in recognition of his outstanding contributions to architectural engineering and sustainable building research. He has been awarded prestigious research grants from the National Key Research and Development Program of China and the National Natural Science Foundation of China. His work has been highly cited, earning him an H-index of 22 on Web of Science, reflecting his significant impact on the field. His patents on innovative building materials and energy-efficient technologies have been widely recognized in both academic and industrial sectors. He has been honored by professional societies such as the China Architecture Society and the International Energy Agency for his contributions to zero-energy building research. Additionally, he serves as a board member and expert advisor for several national committees on energy conservation and green building technologies. His leadership roles in research institutions further highlight his influence in shaping the future of sustainable urban development. Through his pioneering research and dedication to advancing building energy efficiency, he has earned a distinguished reputation as a leading expert in the field, with accolades from both academia and industry for his groundbreaking work.

Conclusion

Jingchao Xie is an exceptional researcher whose contributions to sustainable architecture and energy-efficient building design have had a profound impact on the field. His extensive academic background, professional experience, and research expertise make him a strong candidate for the Best Researcher Award. His pioneering work in phase-change materials, thermal energy storage, and adaptive building envelopes has set new standards for energy conservation in modern architecture. With an impressive portfolio of high-impact publications, patents, and research projects, he continues to drive innovation in sustainable building technologies. His leadership in academic and professional organizations further underscores his commitment to advancing the field. His ability to bridge theoretical research with practical applications makes him a key influencer in shaping policies and industry practices for green buildings. While his work is highly accomplished, expanding collaborations with international research institutions and industry stakeholders could further enhance the global impact of his research. Overall, his dedication to sustainable urban development, innovative research methodologies, and commitment to academic excellence make him a deserving candidate for this prestigious award. His contributions will continue to shape the future of energy-efficient building technologies and drive progress in sustainable architecture.

Publication Top Notes

  1. Thermal effects of fin-microchannel structures for enhancing moisture transfer in an advanced liquid desiccant regenerator

    • Authors: Guangkai Zhang, Jingjie Tan, Honggang Liu, Jingchao Xie, Jiaping Liu
    • Year: 2025
  2. Infectious diseases prevention and control with reduced energy consumption in an airport

    • Authors: Tingrui Hu, Shujia Shang, Jingchao Xie, Peng Xue, Nan Zhang
    • Year: 2025
  3. Energy efficient design of internal cooling liquid desiccant dehumidification system based on useful exergy evaluation

    • Authors: Guangkai Zhang, Jingjie Tan, Honggang Liu, Jiaping Liu, Lin Lu
    • Year: 2025
  4. Research on the characteristics and influence factors of residential building energy usage patterns: A case study in Beijing

    • Authors: Ying Ji, Qianwen Lu, Menghan Niu, Nan Zhang, Jingchao Xie
    • Year: 2025
  5. Research on Real-Time Energy Consumption Prediction Method and Characteristics of Office Buildings Integrating Occupancy and Meteorological Data

    • Authors: Huihui Lian, Haosen Wei, Xinyue Wang, Ying Ji, Jingchao Xie
    • Year: 2025
  6. Kernel density estimation method to determine coincident design day for air-conditioning system design in marine climate of China

    • Authors: Shibo Gai, Xiaojing Zhang, Jingchao Xie, Jiaping Liu
    • Year: 2025
  7. Local characteristics and predictive models of the natural convective heat transfer coefficient for human body in standing and sitting postures

    • Authors: Jinyue Zhou, Xiaojing Zhang, Jingchao Xie, Xiaotong Liu, Jiaping Liu
    • Year: 2025
    • Citations: 1
  8. Heavy-duty vehicles dominate expressway tunnel environment analysis and emission factor determination

    • Authors: Dengkai Tu, Jingchao Xie, Henan Chai, Yansheng Zhi, Jiaping Liu
    • Year: 2025
  9. A new validated TRNSYS module for phase change material-filled multi-glazed windows

    • Authors: Xin Xu, Jingchao Xie, Xiaojing Zhang, Guang Chen, Jiaping Liu
    • Year: 2025
    • Citations: 1
  10. A hybrid load prediction method of office buildings based on physical simulation database and LightGBM algorithm

    • Authors: Huihui Lian, Ying Ji, Menghan Niu, Jingchao Xie, Jiaping Liu
    • Year: 2025
    • Citations: 2