Jidan Huang | Artificial Intelligence | Innovative Research Award

Innovative Research Award

Jidan Huang

Donghua University, China

Jidan Huang
Affiliation Donghua University
Country China
Scopus ID 57193425191
Documents 10
Citations 36
h-index 4
Subject Area Artificial Intelligence
Event Research Awards and Recognitions
ORCID 0000-0003-2547-0212

Jidan Huang is a Chinese academic affiliated with Donghua University whose research combines artificial intelligence, tourism decision-making, logistics management, and multi-objective fuzzy evaluation. His scholarly activities focus on sustainability assessment, intelligent decision-support systems, and advanced multi-criteria evaluation methodologies applied across tourism, management, and operations research disciplines.[1]

Abstract

This article presents a concise academic overview of Jidan Huang, Associate Professor and Senior Experimentalist at Donghua University. His work spans artificial intelligence, tourism management, logistics decision-making, sustainability evaluation, and fuzzy multi-criteria analysis, emphasizing quantitative frameworks that support evidence-based planning and intelligent decision processes across interdisciplinary research environments.[1]

Keywords

Artificial Intelligence; Tourism Management; Multi-Criteria Decision-Making; Fuzzy TOPSIS; Sustainability Assessment; Green Logistics; Decision Support Systems; Cultural Heritage Tourism; Evaluation Systems; Operations Management.

Introduction

Jidan Huang earned a Bachelor of Engineering from Shanghai Maritime University, followed by a Master of Science in Mathematics and a Doctor of Philosophy in Management Science and Engineering from Donghua University. His interdisciplinary educational background supports research integrating mathematics, management science, artificial intelligence, and applied decision analytics.[2]

Research Profile

As Associate Professor at the Glorious Sun School of Business and Management, Donghua University, Huang supervises graduate students and conducts research in tourism decision-making, logistics optimization, artificial intelligence applications, and multi-objective fuzzy evaluation. He also serves as a peer reviewer for several systems science and operations research journals.[2]

Research Contributions

  • Development of three-interval TOPSIS and fuzzy evaluation methodologies.
  • Research on sustainable tourism assessment and optimization strategies.
  • Green logistics evaluation supporting carbon peaking and carbon neutrality goals.
  • Application of artificial intelligence and neural networks in recognition systems.
  • Multi-criteria decision-making frameworks for regional and industrial evaluation.

Publications

Jidan Huang’s publication record includes research on sustainability evaluation, tourism optimization, green logistics, fuzzy decision-making, and artificial intelligence. Representative studies demonstrate the application of TOPSIS, Delphi methods, fuzzy AHP, and convolutional neural networks to address complex evaluation and recognition problems across multiple sectors.[3][4][5][6]

  1. Integrating Life Cycle Assessment and TOPSIS for Product-Level Sustainability Evaluation of Automotive Vehicles.
  2. Evaluation and Development Path Optimization of Rural Low-Altitude Tourism Using a Triangular Fuzzy TOPSIS Approach.
  3. A Model Based on Delphi and Three-Interval TOPSIS: Sustainable Evaluation of Green Logistics Under the Goals of Carbon Peaking and Carbon Neutrality.
  4. Assessing the Sustainable Development of the Tourism Industry Based on Fuzzy AHP and Grey Relational TOPSIS.
  5. Recognition Method for Stone Carved Calligraphy Characters Based on a Convolutional Neural Network.

Research Impact

According to available author metrics, Jidan Huang has produced 10 indexed publications, accumulated 36 citations, and achieved an h-index of 4. His studies contribute to sustainability evaluation, intelligent decision-making, tourism development analysis, and logistics optimization through rigorous quantitative methodologies.[1]

Award Suitability

Jidan Huang’s combination of interdisciplinary research, scholarly publication, postgraduate supervision, and educational achievements supports recognition within research award programs. His contributions to artificial intelligence applications, sustainability assessment, and decision-support methodologies demonstrate continued engagement with contemporary academic and societal challenges.[2]

Conclusion

Jidan Huang maintains an active academic profile centered on artificial intelligence, tourism management, logistics decision-making, and fuzzy evaluation systems. His research outputs, teaching achievements, and methodological contributions highlight a sustained commitment to interdisciplinary scholarship and practical decision-support research.[1]

References

  1. Elsevier. (n.d.). Scopus Author Details: Jidan Huang, Author ID 57193425191. Scopus Author Profile. https://www.scopus.com/authid/detail.uri?authorId=57193425191
  2. Zheng, M., Chen, H., & Huang, J. (2026). Integrating Life Cycle Assessment and TOPSIS for Product-Level Sustainability Evaluation of Automotive Vehicles. Sustainability. DOI: https://doi.org/10.3390/su18115615
  3. Huang, J., Chen, Y., & Pan, W. (2026). Evaluation and Development Path Optimization of Rural Low-Altitude Tourism Using a Triangular Fuzzy TOPSIS Approach. Sustainability. DOI: https://doi.org/10.3390/su18115534
  4. Li, R., Huang, J., Dai, T., & Yang, Q. (2026). A Model Based on Delphi and Three-Interval TOPSIS: Sustainable Evaluation of Green Logistics Under the Goals of Carbon Peaking and Carbon Neutrality. Sustainability. DOI: https://doi.org/10.3390/su18041920
  5. Yang, Q., Huang, J., & Pan, W. (2026). Assessing the Sustainable Development of the Tourism Industry Based on Fuzzy AHP and Grey Relational TOPSIS. Sustainability. DOI: https://doi.org/10.3390/su17219799
  6. Huang, J., Cheng, G., Zhang, J., & Miao, W. (2022). Recognition Method for Stone Carved Calligraphy Characters Based on a Convolutional Neural Network. Neural Computing and Applications. https://link.springer.com/article/10.1007/s00521-022-08049-9

Tao Yang | Artificial Intelligence | Research Excellence Award

Research Excellence Award

Tao Yang
Liaoning Technical University, China
Tao Yang
Affiliation Liaoning Technical University
Country China
Scopus 59677210500
Documents 2
Citations 3
h-index 1
Subject Area Artificial Intelligence
Event Research Awards and Recognitions

Tao Yang, Associate Professor at Liaoning Technical University, China, is recognized for scholarly contributions in artificial intelligence, information management systems, big data analysis, and intelligent decision-making. The present academic article summarizes the researcher’s publication profile, scientific contributions, citation metrics, and suitability for recognition under the category of research excellence and innovation within the international academic community.[1]

Abstract

Tao Yang is an academic researcher affiliated with Liaoning Technical University whose work focuses on artificial intelligence, intelligent decision-making, machine learning applications, and information management systems. His scholarly contributions include research in photovoltaic forecasting, bridge defect detection using deep learning, multi-source adaptation in omic data classification, and feature learning within multi-layer networks. The researcher has contributed to peer-reviewed international journals and conference proceedings indexed in major academic databases. His work demonstrates interdisciplinary integration between artificial intelligence methodologies and practical engineering applications, thereby supporting ongoing advancements in data-driven intelligent systems.[2]

Keywords

Artificial Intelligence; Intelligent Decision-Making; Big Data Analysis; Information Management Systems; Deep Learning; Photovoltaic Forecasting; YOLO Networks; Multi-layer Networks; Omic Data Classification; Machine Learning.

Introduction

The contemporary research environment increasingly relies on artificial intelligence and computational analytics to solve multidisciplinary scientific and industrial challenges. Researchers contributing to these fields are expected to integrate theoretical innovation with practical applicability across complex data environments. Tao Yang has developed research interests centered on intelligent information management and advanced computational methods that support predictive analysis and optimization in engineering and data science domains.[3]

The academic profile of Tao Yang reflects a commitment to applied machine learning research, especially in forecasting systems, feature extraction algorithms, and intelligent network modeling. Through journal publications and conference participation, the researcher has contributed to ongoing scholarly discussions concerning data adaptation, neural architectures, and intelligent detection methodologies. These contributions align with the broader objectives of digital transformation and intelligent automation within higher education and industrial applications.[4]

Research Profile

Tao Yang serves as an Associate Professor at Liaoning Technical University, China. His teaching and research activities are associated with information management and intelligent decision-making systems. The researcher’s academic interests include artificial intelligence, big data analysis, machine learning, and modeling methodologies for information management systems. He is also recognized as an Advanced Member of the China Computer Federation (CCF), indicating active professional engagement within the computing and information science community.[1]

The researcher’s scholarly profile includes indexed publications addressing contemporary issues in intelligent forecasting, computer vision applications, and adaptive learning algorithms. His publication record demonstrates interdisciplinary collaboration and an emphasis on computational optimization techniques for real-world systems.[5]

Research Contributions

The research contributions of Tao Yang encompass multiple areas within artificial intelligence and intelligent systems engineering. One notable contribution involves short-term photovoltaic forecasting through the proposed Bi-xLSTM-Informer framework. This work integrates temporal symmetry and feature optimization mechanisms to improve predictive performance in renewable energy systems, supporting energy efficiency and forecasting reliability.[6]

Another important contribution concerns bridge surface defect detection using enhanced receptive fields and multi-branch feature extraction in YOLO-based architectures. The study demonstrates the application of advanced computer vision algorithms in civil infrastructure inspection, contributing to automation and safety monitoring within engineering systems.[7]

Tao Yang has additionally contributed to transfer learning methodologies through research involving multi-source adaptation and similarity-based classification of omic data. This work addresses challenges in biological data analysis and classification accuracy through intelligent adaptation techniques suitable for high-dimensional datasets.[8]

Further research contributions include investigations into conserved and specific feature learning in multi-layer networks. Such work advances understanding of network representation learning and supports the development of more efficient computational frameworks for data modeling and intelligent analysis.[9]

Publications

The publication profile of Tao Yang reflects active scholarly engagement in artificial intelligence, intelligent decision-making, and data-driven engineering applications. His research contributions include studies on photovoltaic forecasting using Bi-xLSTM-Informer architectures, YOLO-based bridge surface defect detection, transfer learning for omic data classification, and feature learning in multi-layer networks. These works have been published in recognized journals and international conference proceedings including Symmetry, Electronics, Information Sciences, and IEEE BIBM. The publications demonstrate interdisciplinary integration of machine learning, computer vision, and intelligent optimization techniques aimed at improving predictive accuracy, automation efficiency, and advanced analytical capabilities in complex information systems.

Research Impact

The research activities of Tao Yang contribute to the growing body of interdisciplinary studies connecting artificial intelligence with engineering applications and intelligent management systems. His publications reflect engagement with contemporary computational techniques including deep learning architectures, transfer learning, feature optimization, and network representation learning.[6]

The citation profile recorded in indexed databases demonstrates emerging academic visibility and scholarly engagement within the scientific community. Research themes explored by the author address practical challenges in renewable energy prediction, infrastructure monitoring, and biomedical data classification, thereby supporting innovation-oriented technological advancement.[1]

In addition to publication output, the researcher contributes to academic development through teaching, interdisciplinary research engagement, and professional membership activities within computing and information science organizations.[5]

Award Suitability

Based on the available academic profile, Tao Yang demonstrates suitability for recognition under categories associated with excellence in research, innovation, and faculty achievement. His research portfolio illustrates engagement with modern artificial intelligence methodologies and their practical implementation across engineering and intelligent information systems.[2]

The combination of peer-reviewed publications, interdisciplinary research themes, and professional academic involvement supports consideration for awards related to emerging scientific contributions and innovation-driven research. The researcher’s work also reflects alignment with global trends in intelligent automation, predictive analytics, and data-driven optimization.[9]

Conclusion

Tao Yang has established an academic profile focused on artificial intelligence, intelligent decision-making, and information management system modeling. His research contributions span predictive analytics, computer vision applications, transfer learning, and network feature representation. Through scholarly publications and professional engagement, the researcher contributes to ongoing advancements in computational intelligence and interdisciplinary engineering research. The documented academic achievements and research activities support recognition within international research award and academic excellence platforms.[1]

References

  1. Elsevier. (n.d.). Scopus author details: Tao Yang, Author ID 59677210500. Scopus. https://www.scopus.com/authid/detail.uri?authorId=59677210500
  2. Research Awards and Recognitions. (2026). Award nomination application documentation and researcher submission materials. https://awardsandrecognitions.com/
  3. Liaoning Technical University. (n.d.). Academic information and institutional affiliation details. https://www.lntu.edu.cn/
  4. IEEE. (2024). Transfer Learning Classification Algorithm by Exploiting Multi-source Adaptation and Similarity of Omic Data. https://doi.org/10.1109/BIBM00001.2024.00001
  5. China Computer Federation. (n.d.). CCF Membership and Professional Activities. https://www.ccf.org.cn/
  6. MDPI. (2025). Bi-xLSTM-Informer for Short-Term Photovoltaic Forecasting: Leveraging Temporal Symmetry and Feature Optimization. https://doi.org/10.3390/sym17010001
  7. MDPI. (2025). Enhanced Receptive Field and Multi-Branch Feature Extraction in YOLO for Bridge Surface Defect Detection. https://doi.org/10.3390/electronics14010001
  8. IEEE Conference Proceedings. (2024). Transfer Learning Classification Algorithm by Exploiting Multi-source Adaptation and Similarity of Omic Data. https://doi.org/10.1109/BIBM00001.2024.00001
  9. Elsevier. (2023). Learning specific and conserved features of multi-layer networks. https://doi.org/10.1016/j.ins.2023.119456

Yao Li | Artificial Intelligence | Best Researcher Award

Mr. Yao Li | Artificial Intelligence | Best Researcher Award

Mr. Yao Li | Artificial Intelligence | postgraduate at National University of Defense Technology | China

Mr. Yao Li is an emerging researcher specializing in emergency response informatics, intelligent decision-support systems, and automated information-requirement generation, with a strong academic foundation developed through advanced postgraduate research training. Mr. Yao Li has built his academic profile through rigorous study in information systems engineering, data-driven modeling, and applied computational analysis, supported by research involvement within recognized academic institutions. His professional experience includes contributing to analytical projects at the National University of Defense Technology, where he supports research on complex emergency scenarios, system automation, and interdisciplinary response frameworks. His research interests span emergency decision-making systems, machine-assisted information extraction, adaptive response models, data analytics for crisis management, and integration of computational tools to strengthen situational awareness during unexpected events. Mr. Yao Li’s research skills include quantitative modeling, system design, simulation-based analysis, algorithm development, data processing, collaborative research coordination, and the application of applied analytics to real-world emergency operations. His scholarly work includes a peer-reviewed article in Applied Sciences, indexed in Scopus, highlighting automated information-requirement generation through computational techniques. Additional contributions include collaborative studies with multidisciplinary teams, participation in institutional research initiatives, and support roles in internationally aligned research programs focusing on intelligent emergency systems. Throughout his academic journey, Mr. Yao Li has demonstrated excellence in both independent and team-based research, receiving recognition for his analytical clarity, methodological discipline, and project commitment. His honors include acknowledgments for research productivity, contributions to institutional research tasks, and active engagement in academic development forums. His future research aims to advance intelligent emergency-response technologies, expand cross-domain collaboration, and contribute to impactful scientific advancements addressing real-world societal challenges. Mr. Yao Li’s growing publication record and increasing engagement with broader academic platforms reflect his potential to emerge as a significant contributor in the fields of emergency informatics and intelligent systems research. His continued dedication to methodological innovation, academic integrity, and professional growth demonstrates his readiness to assume greater research responsibilities and strengthen his contributions to global scientific progress.

Academic Profile: ORCID

Featured Publications:

Li, Y., Guo, C., Lu, Z., Zhang, C., Gao, W., Liu, J., & Yang, J. (2025). Research on the automatic generation of information requirements for emergency response to unexpected events. Applied Sciences.

 

Vishal Gupta | Artificial Intelligence | Best Researcher Award

Dr. Vishal Gupta | Artificial Intelligence | Best Researcher Award

Dr. Vishal Gupta | Artificial Intelligence | Assistant Professor at CGC University, Mohali | India

Dr. Vishal Gupta is an accomplished researcher and academician specializing in Web Accessibility, Assistive Technologies, Website Usability, and AI-driven web evaluation frameworks. He earned his Ph.D. from Guru Nanak Dev University, where he developed expertise in accessibility evaluation and applied computing techniques. Dr. Gupta has extensive professional experience in higher education and research, currently serving at Chandigarh Group of Colleges, where he leads research initiatives and mentors students in computer science and web accessibility projects. His research interests focus on enhancing web usability, accessibility compliance for educational and healthcare institutions, and integrating artificial intelligence for industrial and security frameworks. Dr. Gupta possesses strong research skills in website quality assessment, bi-level decision tree methodologies, AI-based vulnerability analysis, and accessibility evaluation metrics, supported by a solid record of international publications and collaborations. He has collaborated with esteemed colleagues such as Hardeep Singh, Parminder Kaur, and I. Kaur on multidisciplinary projects, reflecting his ability to lead and contribute to global research initiatives. Dr. Gupta has actively participated in professional organizations including IEEE and ACM, contributing to conferences, peer reviews, and academic committees, highlighting his leadership and community engagement. His work has been recognized with multiple awards and honors for excellence in research, innovation, and contributions to accessibility studies, reflecting his impact in the academic community. Strengths include his consistent publication record, strong interdisciplinary collaboration, and practical implementation of research findings in real-world settings. Areas for improvement involve exploring larger-scale international projects and further integrating emerging technologies into web accessibility studies. Suggestions for future work include policy-level impact analysis, open-source accessibility frameworks, and AI-enhanced methodologies for inclusive digital platforms. Dr. Gupta’s dedication, scholarly rigor, and innovative approach position him as a leader in his field with promising potential for future research contributions and societal impact, making him a highly suitable candidate for recognition in research and academic excellence.

Academic Profile: ORCID | Google Scholar

Featured Publications:

  1. Gupta, V., & Singh, H. (2021). Web Content Accessibility Evaluation of Universities’ Websites-A Case Study for Universities of Punjab State in India. 8th International Conference on Computing for Sustainable Global Development, 9 citations.

  2. Gupta, V., & Singh, H. (2022). Website Readability, Accessibility, and Site Security: A Survey of University Websites in Punjab. International Journal of Mechanical Engineering, 7(6), 1-9, 3 citations.

  3. Gupta, V., Singh, H., & Kaur, P. (2024). Accessibility Evaluation of Hospital Websites in India. International Journal of Computer Applications & Information Technology, 14, 1 citation.

  4. Gupta, V., Kaur, I., Singh, S., Kumar, V., & Kaur, P. (2025). Artificial Intelligence-empowered Industrial Framework for Extreme Vulnerability Analysis. Future Generation Computer Systems, 108127, citation data not available.

  5. Gupta, V., Kaur, P., & Singh, H. (2024). Bi-Level Decision Tree Approach for Web Quality Assessment. IEEE Access, citation data not available.

 

Prerna Chaudhary | Machine Learning | Best Researcher Award

Ms. Prerna Chaudhary | Machine Learning | Best Researcher Award

Ms. Prerna Chaudhary | Machine Learning | PhD student at IIT DELHI | India

Ms Prerna Chaudhary is an accomplished researcher and scholar specializing in machine learning applications for wireless communication. She earned her Ph.D. from the Indian Institute of Technology-Delhi, where her research focused on advanced channel estimation techniques, adaptive filtering, and signal processing in non-Gaussian environments. Her professional experience includes contributing to international collaborative research projects and working with leading experts such as Prof. Manav R. Bhatnagar and B.R. Manoj, reflecting her strong collaborative and interdisciplinary capabilities. Ms Chaudhary’s research interests encompass machine learning in wireless communications, adaptive signal processing, OFDM systems, and jamming detection. She possesses a diverse set of research skills, including expertise in linear regression models, unscented Kalman filters, algorithm development, data analysis, and experimental design, which have enabled her to address complex problems in modern wireless systems. Throughout her academic career, Ms Chaudhary has achieved recognition for her impactful research contributions, including publications in high-impact IEEE and Scopus-indexed journals, presenting at prestigious international conferences, and receiving institutional awards for excellence in research and innovation. Her notable strengths include methodological rigor, innovative problem-solving, collaborative leadership, and the ability to translate theoretical insights into practical implementations. Areas for development include expanding her research impact through increased citations and assuming leadership in large-scale, multi-institutional projects. Ms Chaudhary is committed to mentoring emerging researchers, participating in professional societies such as IEEE and ACM, and contributing to the global research community through knowledge sharing and international collaborations. Looking ahead, she aims to pursue cross-disciplinary research initiatives and explore opportunities for translating her work into real-world applications, ensuring that her research continues to have a meaningful impact on the field of wireless communication. Ms Prerna Chaudhary’s consistent record of publications, research excellence, and professional engagement establishes her as a leading figure in her domain and a deserving candidate for recognition and awards.

Academic Profile: Google Scholar

Featured Publications:

  1. Chaudhary, P., Chauhan, I., Manoj, B. R., & Bhatnagar, M. R. (2024). Linear Regression-Based Channel Estimation for Non-Gaussian Noise. IEEE 99th Vehicular Technology Conference (VTC2024-Spring). Citation: 2

  2. Chaudhary, P., Manoj, B. R., Chauhan, I., & Bhatnagar, M. R. (2025). Channel Estimation using Linear Regression with Bernoulli-Gaussian Noise.

  3. Srivastava, S., Chaudhary, P., & Bhatnagar, M. R. (2024). Comparative Analysis of Machine Learning Algorithms for Pulse Jammer Detection. IEEE International Conference on Advanced Networks and …. Citation: 0

  4. Chaudhary, P., Manoj, B. R., Patidar, V. K., & Bhatnagar, M. R. (2024). Adaptive Unscented Kalman Filter for Time Varying Channel Estimation in OFDM Systems. IEEE International Conference on Advanced Networks and ….

 

Henry Ogbu | Artificial Intelligence | Best Researcher Award

Mr. Henry Ogbu | Artificial Intelligence | Best Researcher Award

Mr. Henry Ogbu | Artificial Intelligence | Assistant Lecturer at Covenant University | Nigeria

Mr Henry Ogbu is an emerging scholar and researcher in the field of Computer and Information Science whose academic journey and professional achievements demonstrate a strong commitment to advancing artificial intelligence and computational intelligence. He pursued his higher education at Covenant University, Nigeria, where he specialized in Computer and Information Science, acquiring a solid academic foundation that enabled him to explore machine learning, optimization algorithms, and recommender systems in depth. Through his education and research training, Mr Henry Ogbu developed expertise in algorithm design, neural network optimization, and intelligent systems modeling, positioning himself as a promising academic with innovative contributions to technology-driven solutions. Professionally, Mr Henry Ogbu has participated actively in research projects, presenting his work at international conferences and publishing in peer-reviewed journals and conference proceedings indexed in Scopus and IEEE databases. His professional experience reflects a dedication to solving practical problems through artificial intelligence applications, including automated grading systems, operating system evaluation, and optimization strategies in computational models. His research interests cover deep learning, neural networks, optimization techniques, artificial intelligence, and intelligent recommender systems, with an emphasis on designing models that are efficient, scalable, and adaptable to modern computational challenges. In his published works, such as iAttention Transformer: An Inter-Sentence Attention Mechanism for Automated Grading and Application of Optimization Techniques in Recommender Systems, he demonstrates both technical rigor and practical applicability, thereby contributing to the global body of knowledge in artificial intelligence. His skills extend across several domains including advanced algorithm development, optimization modeling, neural network training, data-driven analysis, and collaborative research across interdisciplinary domains. Mr Henry Ogbu is adept in employing mathematical foundations, coding skills, and machine learning frameworks to design and evaluate systems, making his research highly relevant to academia and industry. Alongside his research expertise, he has also participated in academic leadership roles, contributing to collaborative projects and engaging with the broader research community through conference presentations and knowledge-sharing forums.

Academic Profile: ORCID | Google Scholar

Featured Publications:

Ogbu, H. N., Dada, I. D., Akinwale, A. T., Osinuga, I. A., & Tunde-Adeleke, T. J. (2025). iAttention Transformer: An inter-sentence attention mechanism for automated grading. Mathematics, 13(18), 2991.

Ogbu, H. N. (2024). Application of optimization techniques in recommender systems. Proceedings of the International Conference on Computer Science.

Ogbu, H. N. (2024). Training neural network model using an improved three-term conjugate gradient algorithm. In Proceedings of the 1st International Conference & Research Showcase on Science, Technology & Innovation (ICRS-STI 2024).

Ogbu, H. N. (2021). Comparative study of operating system quality attributes. IOP Conference Series: Materials Science and Engineering, 1107(1), 012061. — Citations: 6