Research Excellence Award
Songtao Lv
Changsha University of Science and Technology
| Songtao Lv | |
|---|---|
| Affiliation | Changsha University of Science and Technology |
| Country | China |
| Scopus ID | 57169645600 |
| Documents | 189 |
| Citations | 4900 |
| h-index | 38 |
| Subject Area | Particle Experiments |
| Event | Global Particle Physics Excellence Awards |
| ORCID | 0000-0003-0426-5033 |
Songtao Lv is a professor and doctoral supervisor at Changsha University of Science and Technology whose research activity has focused on pavement engineering, asphalt materials, fatigue behavior, and infrastructure performance assessment. Academic profile indicators demonstrate sustained publication output with substantial citation activity and continued contribution to engineering literature. Research records indexed through international databases indicate broad participation in collaborative scientific work and interdisciplinary engineering studies.[1]
Contents
Abstract
This article presents an overview of the scholarly profile, publication activity, and research output associated with Songtao Lv of Changsha University of Science and Technology. Available publication indicators and indexing information demonstrate sustained research productivity across multiple engineering topics and collaborative scientific studies. Research records suggest continued engagement in material characterization, pavement performance studies, and analytical investigations within modern engineering research environments. The profile further reflects measurable scholarly visibility through publication metrics and international indexing systems.[2]
Introduction
Modern infrastructure research increasingly requires advanced evaluation techniques capable of understanding material behavior under complex operational conditions. Engineering studies in pavement materials have become important because of their relationship with transportation durability and long-term structural performance. Research associated with Songtao Lv reflects continuing investigation into these scientific areas through experimental analysis and performance evaluation approaches. Multiple studies indicate an emphasis on practical engineering applications supported by analytical methodology.[3]
Research Profile
Academic records indicate that Songtao Lv has participated in research activities involving asphalt mixtures, fatigue damage mechanisms, rheological assessment, and infrastructure material studies. Publication trends suggest broad engagement across laboratory experimentation and engineering modeling methods. Scholarly collaboration with researchers from multiple institutions is also evident through co-authored publications and multidisciplinary contributions. These activities demonstrate continuity in research participation and publication output.[4]
Research Contributions
Research contributions include investigations related to fatigue behavior analysis, modified asphalt performance, self-healing material systems, and structural response modeling. Published findings also discuss aging characteristics and dynamic behavior under changing environmental conditions. Several studies propose assessment frameworks designed to improve understanding of engineering material performance and durability mechanisms. Such contributions indicate active involvement in methodological development and engineering analysis.[5]
Publications
Published work associated with Songtao Lv includes studies addressing fatigue evolution, self-healing behavior, rheological performance, dynamic response analysis, and pavement material assessment. Recent scholarly activity additionally discusses recycled material applications and modified asphalt systems under varying environmental conditions. Publication records indicate continuity across engineering topics while maintaining relevance to broader material science and infrastructure research objectives. The available research profile suggests ongoing contribution to peer-reviewed academic literature.
Research Impact
Publication metrics including citation activity and h-index indicators are commonly used to assess scholarly influence within academic environments. Available information indicates that Songtao Lv has developed measurable visibility through sustained publication output and research dissemination practices. Citation patterns suggest that published findings have received attention from related scientific communities and engineering researchers. Such indicators contribute to understanding broader research influence and academic reach.[1]
Award Suitability
Academic recognition programs frequently consider publication records, citation indicators, collaborative research activity, and sustained scholarly contribution during evaluation processes. Based on available profile information, the publication history and engineering research activity associated with Songtao Lv may align with several commonly used academic assessment criteria. The combination of productivity and scholarly visibility provides supporting context for research-related recognition evaluation. Assessment outcomes nevertheless remain dependent upon independent award selection procedures.
Conclusion
The academic profile of Songtao Lv reflects substantial engagement in engineering research through publication activity and collaborative scientific participation. Available metrics and publication records indicate continued involvement in material science and infrastructure-related investigations. Research output demonstrates consistency across several engineering themes while contributing to broader technical understanding and analytical development. The profile therefore represents an active and sustained scholarly research presence.
External Links
References
- Lv, S., Peng, X., Liu, C., Ge, D., Tang, M., & Zheng, J. (2020). Laboratory investigation of fatigue parameters characteristics of aging asphalt mixtures: A dissipated energy approach. Construction and Building Materials, 242, 116972.
DOI: https://doi.org/10.1016/j.conbuildmat.2019.116972
- Lv, S., Zhao, T., Xia, C., Zhao, S., Liu, T., Liu, Y., Liu, B., & Cabrera, M. B. (2022). A new method for characterizing the fatigue performance of high-modulus asphalt mixtures. Journal of Testing and Evaluation, 50(4).
DOI: https://doi.org/10.1520/JTE20210719
- He, L., Li, G., Lv, S., Gao, J., Kowalski, K. J., Valentin, J., & Alexiadis, A. (2020). Self-healing behavior of asphalt system based on molecular dynamics simulation. Construction and Building Materials, 254, 119225.
DOI: https://doi.org/10.1016/j.conbuildmat.2020.119225
- Lv, S., Ge, D., Wang, Z., Wang, J., Liu, J., Ju, Z., Peng, X., Fan, X., Cao, S., & Liu, D. (2023). Performance assessment of self-healing polymer-modified bitumens by evaluating the suitability of current failure definition, failure criterion, and fatigue-restoration criteria. Materials, 16(6), 2488.
DOI: https://doi.org/10.3390/ma16062488
- Xia, C., Lv, S., You, L., Chen, D., Li, Y., & Zheng, J. (2019). Unified strength model of asphalt mixture under various loading modes. Materials, 12(6), 889.
DOI: https://doi.org/10.3390/ma12060889