Mohammed AlAmeri | Artificial Intelligence | Innovative Research Award

Innovative Research Award

Mohammed AlAmeri 
Khalifa University , United Arab Emirates

Mohammed AlAmeri
Affiliation Khalifa University
Country United Arab Emirates
Scopus ID 57203369001
Documents 14
Citations 40
h-index 5
Subject Area Artificial Intelligence
Event New Scientists Awards

Mohammed AlAmeri is a researcher affiliated with Khalifa University in the United Arab Emirates, with scholarly contributions associated with the field of Artificial Intelligence and computational technologies. His research profile reflects participation in scientific investigations involving intelligent systems, machine learning methodologies, and data-driven analytical approaches relevant to contemporary digital innovation. Indexed academic records demonstrate measurable scholarly engagement through publication activity, citation performance, and interdisciplinary research dissemination.[1]

Abstract

This article presents a structured academic overview of the research profile and scholarly contributions of Mohammed AlAmeri in the field of Artificial Intelligence. The profile highlights publication visibility, citation performance, and interdisciplinary scientific engagement associated with intelligent systems and computational technologies. Indexed academic records demonstrate participation in peer-reviewed research dissemination and measurable scholarly activity relevant to contemporary Artificial Intelligence research domains. The article further evaluates the suitability of the researcher for recognition within the New Scientists Awards program.[2]

Keywords

Artificial Intelligence; Machine Learning; Intelligent Systems; Computational Intelligence; Data Analytics; AI Research; Scientific Publications; Interdisciplinary Computing; Research Impact; Academic Recognition

Introduction

Artificial Intelligence has become one of the most transformative scientific and technological fields of the twenty-first century, influencing areas such as automation, predictive analytics, robotics, healthcare systems, cybersecurity, and smart infrastructure. Contemporary AI research integrates computer science, mathematics, engineering, and data science to develop intelligent computational systems capable of advanced learning and decision-making processes.[3]

 His scholarly profile reflects measurable academic participation through indexed publications, citation activity, and interdisciplinary research dissemination relevant to Artificial Intelligence and digital innovation.[1]

Research Profile

Mohammed AlAmeri is affiliated with Khalifa University and maintains an academic profile indexed within internationally recognized scholarly databases. His research metrics include citation-based indicators and publication records associated with Artificial Intelligence and related computational research areas. The profile reflects participation in peer-reviewed scientific dissemination and interdisciplinary collaboration.[1]

Research Contributions

The research contributions associated with Mohammed AlAmeri involve scientific activities related to Artificial Intelligence methodologies, intelligent computational systems, and data-driven analytical approaches. Such contributions are relevant to the advancement of machine learning applications, predictive modeling, and automated decision-support technologies used across multiple scientific and industrial sectors.[4]

Publication records and indexed citation activity indicate participation in peer-reviewed scientific communication and interdisciplinary collaboration. The integration of Artificial Intelligence into engineering, information systems, and technological innovation frameworks further emphasizes the contemporary relevance of this research domain.[2]

Publications

The publication profile of Mohammed AlAmeri demonstrates scholarly engagement with Artificial Intelligence and computational research themes through peer-reviewed academic dissemination. Indexed scientific outputs contribute to interdisciplinary discussions associated with intelligent systems and emerging digital technologies.[5]

  1. Peer-reviewed publications related to Artificial Intelligence methodologies and intelligent systems.
  2. Research outputs indexed through Scopus and other scholarly databases.
  3. Scientific contributions involving machine learning and computational analytics.
  4. Interdisciplinary publications associated with technological innovation and data science applications.

Research Impact

Research impact within Artificial Intelligence is frequently evaluated through publication dissemination, citation accumulation, and interdisciplinary scientific relevance. Mohammed AlAmeri’s academic profile includes indexed publications and citation activity demonstrating measurable engagement within the scientific research community. Citation-based indicators further support the visibility of his scholarly contributions within computational and AI-related research domains.[2]

The availability of indexed academic records through Scopus provides additional evidence of research accessibility and scholarly dissemination. Such indicators are commonly utilized within academic evaluation frameworks and scientific recognition programs to assess publication visibility and research influence.[1]

Award Suitability

The academic profile of Mohammed AlAmeri demonstrates characteristics commonly associated with eligibility for scientific recognition programs, including publication activity, interdisciplinary collaboration, and participation in emerging technological research domains. His work in Artificial Intelligence aligns with contemporary scientific priorities focused on intelligent systems, digital transformation, and computational innovation.[4]

The documented publication metrics, citation indicators, and interdisciplinary research relevance associated with Mohammed AlAmeri support consideration for recognition within the Innovative Research Award category.[5]

Conclusion

Mohammed AlAmeri has established a developing academic profile within the field of Artificial Intelligence through publication activity, indexed research dissemination, and scholarly engagement in computational research domains.  The documented academic contributions collectively support recognition within international scientific award initiatives focused on research excellence and emerging innovation.[1]

References

  1. Elsevier. (n.d.). Scopus author details: Mohammed AlAmeri, Author ID 57203369001. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=57203369001
  2. Elsevier. (n.d.). Research metrics and scholarly indexing for Artificial Intelligence publications. Scopus Database.
    https://www.scopus.com/
  3. Stanford Encyclopedia of Philosophy. (n.d.). Artificial Intelligence overview and scientific foundations.
    https://plato.stanford.edu/entries/artificial-intelligence/
  4. DOI Foundation. (2021). Artificial Intelligence and intelligent systems research publication.
    https://doi.org/10.1016/j.artint.2021.103558
  5. New Scientists Awards. (n.d.). International scientific recognition and academic excellence initiative.
    https://newscientists.net/

Asif Muzaffar | Artificial Intelligence and Machine Learning | Research Excellence Award

Dr. Asif Muzaffar | Artificial Intelligence and Machine Learning | Research Excellence Award

Teaching Fellow | Birmingham City University | United Kingdom

Dr. Asif Muzaffar is a recognized researcher in Operations and Supply Chain Management, known for advancing quantitative modelling, sustainable operations, and digital supply chain innovation. With 816 citations, 45 documents, an h-index of 16, and an i10-index of 17, his scholarly influence is reflected through publications in leading journals, including Sustainable Production and Consumption, Sustainable Development, Operations Management Research, Technological Forecasting & Social Change, International Journal of Disaster Risk Reduction, and the Journal of Services Marketing. His research portfolio encompasses 21 peer-reviewed journal papers, multiple conference contributions, and ongoing works addressing dynamic pricing, newsvendor models, sustainable procurement, and consumer behavior in digital environments. Dr. Asif Muzaffar’s contributions span supply chain contracts, institutional pressures, triple bottom line sustainability, rebate mechanisms, and technology-enabled service innovations such as AR/VR. His work often integrates simulation modelling, optimization, and game-theoretic frameworks to generate actionable insights for resilient, low-carbon, and digitally enabled supply chain systems. He has disseminated his findings at major international conferences, contributing evidence-based perspectives on biased decision-making, rebate coordination, and supply chain optimization. His research leadership extends to mentoring graduate research, shaping sustainable supply chain methodologies, and contributing as a reviewer for high-impact journals including Technological Forecasting & Social Change and Sustainable Development. Through these scholarly contributions, Dr. Asif Muzaffar has established himself as an influential voice in contemporary sustainable operations and supply chain research.

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View Scopus Profile   View ORCID Profile   View Google Scholar   View ResearchGate

Featured Publications

Ibrahim Aromoye | Artificial Intelligence and Machine Learning | Editorial Board Member

Mr. Ibrahim Aromoye | Artificial Intelligence and Machine Learning | Editorial Board Member

Graduate Research Assistant | Universiti Teknologi PETRONAS | Malaysia

Mr. Ibrahim Aromoy is a promising researcher in Electrical and Electronic Engineering with a growing scholarly footprint in hybrid UAV systems, artificial intelligence, and intelligent surveillance technologies. His research is centered on the development of a Pipeline Inspection Air Buoyancy Hybrid Drone, a novel UAV concept that combines lighter-than-air and heavier-than-air technologies to improve flight endurance, stability, and inspection efficiency. By integrating deep learning–based object detection architectures into UAV platforms, his work advances real-time pipeline monitoring, anomaly identification, and autonomous decision-making for industrial applications. His contributions span AI-driven automation, robotics, swarm intelligence, energy-efficient IoT systems, and 5G-enabled surveillance technologies. He has authored several research papers in reputable international journals and conferences, including publications in IEEE Access, Neurocomputing, and Elsevier venues. These works address UAV reconnaissance, transformer-based detection models for pipeline integrity assessment, and optimization frameworks inspired by swarm behavior. His research output reflects measurable scholarly influence, with 15 Scopus citations, 7 indexed documents, and an h-index of 2. Mr. Ibrahim Aromoy has participated in multiple research and development projects, contributing to UAV design, embedded hardware integration, machine learning pipelines, and cyber-secure control systems. His work in hybrid drone architecture and automated surveillance has been supported by competitive institutional funding, reinforcing the technological relevance and innovation potential of his research. His scientific contributions extend beyond publications to academic service. He serves as a peer reviewer for high-impact journals such as IEEE Access and Results in Engineering, supporting the advancement of rigorous research dissemination in engineering and applied sciences. His expertise also includes AI vision systems, OpenCV-based automation, and embedded cybersecurity applications for unmanned systems, further strengthening his interdisciplinary research profile. Mr. Ibrahim Aromoy has been recognized with research-focused scholarships and academic distinctions that support his ongoing work in UAV innovation and intelligent automation. Through his integrated expertise in UAV engineering, deep learning, and intelligent inspection systems, he continues to contribute meaningfully to the evolution of smart surveillance, autonomous robotics, and AI-augmented engineering technologies.

Profiles: Scopus | ORCID | Google Scholar | ResearchGate | Web of Science

Featured Publications

1. Aromoye, I., Lo, H., Sebastian, P., Ghulam, E., & Ayinla, S. (2025). Significant advancements in UAV technology for reliable oil and gas pipeline monitoring. Computer Modeling in Engineering & Sciences, 142(2), 1155.

2. Aromoye, I. A., Hiung, L. H., & Sebastian, P. (2025). P-DETR: A transformer-based algorithm for pipeline structure detection. Results in Engineering, 26, 104652.

3. Zahid, F., Ali, S. S. A., & Aromoye, I. A. (2025). Exploring the potential benefits and overcoming the constraints of virtual and augmented reality in operator training. Transportation Research Procedia, 84, 625–632.

4. Mansoor, Y., Zahid, F., Azhar, S. S., Rajput, S., & Aromoye, I. A. (2025). Energy-efficient solar water pumping: The role of PLCs and DC-DC boost converters in addressing water scarcity. Transportation Research Procedia, 84, 681–688.

5. Zahid, F., Rajput, S., Ali, S. S. A., & Aromoye, I. A. (2025). Challenges and innovations in 3D object recognition: The integration of LiDAR and camera sensors for autonomous applications. Transportation Research Procedia, 84, 618–624.

Amir R. Masoodi | Artificial Intelligence and Machine Learning | Editorial Board Member

Assist. Prof. Dr. Amir R. Masoodi | Artificial Intelligence and Machine Learning | Editorial Board Member

Assistant Professor | Ferdowsi University of Mashhad | Iran

Assist. Prof. Dr. Amir R. Masoodi is a highly accomplished structural engineering researcher whose work spans nonlinear mechanics, composite structures, vibration analysis, finite element modeling, and advanced material systems. With 1,789 Scopus citations, 77 publications, and an h-index of 29, he has established a strong international research footprint in computational mechanics, structural stability, soil–structure interaction, wave propagation, and multiscale modeling of advanced composites. His research contributions include developing novel finite element formulations for beams, plates, and shells, particularly for functionally graded materials (FGMs), carbon nanotube (CNT)-reinforced composites, graphene nanocomposites, and porous structural systems. Assist. Prof. Dr. Amir R. Masoodi’s work on nonlinear dynamic analysis, thermal–mechanical coupling, shell instability, and multiscale behavior of nano-engineered materials has been widely cited and influential in advancing modern structural design methodologies. He has published extensively in leading journals such as Composite Structures, Engineering Structures, Mechanics of Advanced Materials and Structures, Aerospace Science and Technology, Scientific Reports, and Applied Sciences. His publications address cutting-edge topics including vibration of hybrid nano-reinforced shells, multiscale characterization of nanocomposites, nonlinear buckling behavior of tapered beams, thermomechanical modeling of composite cables, and smart materials incorporating shape-memory alloys. Assist. Prof. Dr. Amir R. Masoodi has presented his findings at numerous international conferences and contributed several book chapters, including work on nanofillers and thermal properties in advanced materials. His research output extends to R&D projects, predictive modeling, and computational innovations in structural and nano-engineered systems. He has been recognized with multiple distinguished researcher awards, national elite recognitions, and research excellence honors. His expertise is further reflected in his editorial board memberships and contributions as a reviewer for reputable journals. Overall, Assist. Prof. Dr. Amir R. Masoodi’s research stands at the intersection of computational mechanics, smart materials, and multiscale structural engineering, offering impactful advances for next-generation civil, mechanical, and aerospace systems.

Profiles: Scopus | ORCID | Google Scholar | Sci Profiles | Web of Science

Featured Publications

1. Sobhani, E., Masoodi, A. R., & Ahmadi-Pari, A. (2021). Vibration of FG-CNT and FG-GNP sandwich composite coupled conical–cylindrical–conical shell. Composite Structures, 273, 114281.

2. Sobhani, E., Masoodi, A. R., Civalek, O., & Ahmadi-Pari, A. R. (2021). Agglomerated impact of CNT vs. GNP nanofillers on hybridization of polymer matrix for vibration of coupled hemispherical–conical–conical shells. Aerospace Science and Technology, 120, 107257.

3. Rezaiee-Pajand, M., Sobhani, E., & Masoodi, A. R. (2020). Free vibration analysis of functionally graded hybrid matrix/fiber nanocomposite conical shells using multiscale method. Aerospace Science and Technology, 105, 105998.

4. Rezaiee-Pajand, M., Arabi, E., & Masoodi, A. R. (2019). Nonlinear analysis of FG-sandwich plates and shells. Aerospace Science and Technology, 87, 178–189.

5. Rezaiee-Pajand, M., Masoodi, A. R., & Mokhtari, M. (2018). Static analysis of functionally graded non-prismatic sandwich beams. Advances in Computational Design, 3(2), 165–190.