Predicting Tree Growth and Transpiration in Forests: An Analysis of a Small-Scale Dataset With Pareto Optimized Tsaug Augmentation

Authors

DOI:

https://doi.org/10.9781/ijimai.2026.6565

Keywords:

Pareto optimized data augmentation, Tree growth prediction

Abstract

The study demonstrates the potential of specifically developed data augmentation in estimating tree growth and transpiration by emphasizing the influence of environmental variables, such as photosynthetically active radiation (PAR), air temperature, and relative humidity—on tree growth predictions. The investigation utilizes data obtained from two hemi-boreal semi-natural mixed conifer deciduous forest sites in the Aukstaitija National Park in Lithuania. Field measurements included xylem sap flow measurements and stem circumference increment growth. The dataset utilized in the analysis consisted of four trees per species and contained information on tree growth, transpiration, and solar angle measurements. Pareto-optimized Tsaug augmentation techniques were employed to diversify the dataset, generating augmented time series to improve diversity and minimize distortion. The results of the correlation analysis indicated significant relationships between environmental variables and tree growth and transpiration. The Prophet based prediction model, notably when trained with augmented data, outperformed other models in predicting tree growth and perspiration variables (MAPE ranging from 0.0017 to 0.01). This was particularly evident for FACP, FAGP, and FADP variables, showcasing substantial improvement with augmented data.

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Author Biographies

Rytis Maskeliūnas, Kaunas University of Technology

Rytis Maskeliūnas received the Ph.D. degree in computer science, in 2009. He is currently a Professor with the Department of Multimedia Engineering, Kaunas University of Technology, Kaunas, Lithuania and an Invited Professor with the Faculty of Applied Mathematics, Silesian University of Technology, Poland. He is author or coauthor of more than 200 refereed scientific articles and serves as a Reviewer/Committee Member for various refereed journals. His main areas of scientific research are multimodal signal processing, modeling, development and analysis of associative, multimodal interfaces, also targeted at elderly, and people with major disabilities.

Robertas Damaševičius, Kaunas University of Technology

Robertas Damaševičius received the Ph.D. degree in informatics engineering from the Kaunas University of Technology, Lithuania, in 2005. He is currently a Professor with the Department of Software Engineering, Kaunas University of Technology, Lithuania. His research interests include sustainable software engineering, human–computer interfaces, assisted living, data mining, and machine learning. He is the author of more than 300 articles as well as a monograph published by Springer. He is also the Editor-in-Chief of the Information Technology and Control Journal.

Modupe Odusam, Kaunas University of Technology

Modupe Odusami is currently pursuing a Ph.D degree in informatics engineering from Kaunas University of Technology. Her research interest includes Machine learning, multimodal imaging, and computer vision. She is the author or co-author of over 40 research papers and contributes to the academic community as a journal reviewer.

Diana Sidabrienė, Vytautas Magnus University

Diana Sidabrienė is currently pursuing a Ph.D. degree in Forestry at Vytautas Magnus University, where she focuses on the impact of climate change on tree physiology. Her impactfull research focuses on understanding how different tree species adapt to varying climatic conditions and how these adaptations influence their ecophysiological responses. Diana is an author of 12 research papers. She has contributed to several important studies on forest resilience and has presented her findings at multiple international conferences. Her work aims to develop sustainable forest management practices that enhance tree health and productivity in the face of global climate shifts.

Algirdas Augustaitis, Vytautas Magnus University

Algirdas Augustaitis (born 3 December 1962 in Kaunas, Lithuania) - Lithuanian forester, ecologist, professor at the Faculty of Forestry and Ecology, Vytautas Magnus University, Faculty of Agriculture. Graduated from the Lithuanian Academy of Agriculture in 1985. From 1985 he worked at the Academy (which later became a university). In 1992 he was appointed Head of the Forest Monitoring Laboratory. In 2007 he was awarded the title of Professor. In 2011-2012 he was Director of the Institute of Environment. Research interests: forest science, ecology, forest development under global change. In 1993, he developed a comprehensive monitoring programme for natural forest ecosystems, and from 2002 to 2012 he was the coordinator of this programme in Lithuania. 

Gintautas Mozgeris, Vytautas Magnus University

Gintautas Mozgeris received the Ph.D. degree in forestry from the Lithuanian University of Agriculture in 1995. He is currently a Professor with the Department of Forest Sciences, Vytautas Magnus University, Kaunas, Lithuania. He is author or coauthor of more than 70 refereed scientific articles. His main areas of scientific research are spatial modelling, photogrammetry and remote sensing, land use change and habitat modelling, conservation planning, scenario development, forestry decision support systems.

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2026-02-20
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How to Cite

Maskeliūnas, R., Damaševičius, R., Odusam, M., Sidabrienė, D., Augustaitis, A., and Mozgeris, G. (2026). Predicting Tree Growth and Transpiration in Forests: An Analysis of a Small-Scale Dataset With Pareto Optimized Tsaug Augmentation. International Journal of Interactive Multimedia and Artificial Intelligence, 9(6), 126–141. https://doi.org/10.9781/ijimai.2026.6565