Vuckovic, D., Bao, E. L., Akbari, P., Lareau, C. A., Mousas, A., Jiang, T., Chen, M. H., Raffield, L. M., Tardaguila, M., Huffman, J. E., Ritchie, S. C., Megy, K., Ponstingl, H., Penkett, C. J., Albers, P. K., Wigdor, E. M., Sakaue, S., Moscati, A., Manansala, R. ... Soranzo, N. (2020).
The Polygenic and Monogenic Basis of Blood Traits and Diseases.
Cell,
182(5), 1214-1231.e11.
https://doi.org/10.1016/j.cell.2020.08.008
Ulriksen, M. D., Skov, J. F., Dickow, K. A.
, Kirkegaard, P. H. & Damkilde, L. (2013).
Modal analysis for crack detection in small wind turbine blades. Key Engineering Materials,
569-570, 603-610.
https://doi.org/10.4028/www.scientific.net/KEM.569-570.603
Tsokanas, N., Zhu, X.
, Abbiati, G., Marelli, S., Sudret, B. & Stojadinović, B. (2021).
A Global Sensitivity Analysis Framework for Hybrid Simulation with Stochastic Substructures.
Frontiers in Built Environment,
7, Artikel 778716.
https://doi.org/10.3389/fbuil.2021.778716
Tao, H., Hameed, M. M., Marhoon, H. A., Zounemat-Kermani, M., Heddam, S., Sungwon, K., Sulaiman, S. O., Tan, M. L., Sa'adi, Z., Mehr, A. D., Allawi, M. F., Abba, S. I., Zain, J. M., Falah, M. W., Jamei, M.
, Bokde, N. D., Bayatvarkeshi, M., Al-Mukhtar, M., Bhagat, S. K. ... Yaseen, Z. M. (2022).
Groundwater level prediction using machine learning models: A comprehensive review.
Neurocomputing,
489, 271-308.
https://doi.org/10.1016/j.neucom.2022.03.014
Tagliabue, L. C., Mastrolembo Ventura, S., Teizer, J. & Ciribini, A. L. C. (2021).
A serious game for lean construction education enabled by internet of things. I Ó. Mealha, M. Rehm & T. Rebedea (red.),
Ludic, Co-design and Tools Supporting Smart Learning Ecosystems and Smart Education - Proceedings of the 5th International Conference on Smart Learning Ecosystems and Regional Development, SLERD 2020 (s. 225-233). Springer.
https://doi.org/10.1007/978-981-15-7383-5_19
Sousa Santos, R., Pimenta do Vale, C., Bogoni, B.
& Kirkegaard, P. H. (2021).
Abordagem, projeto e métodos de investigação qualitativa em contexto educacional. I P. A. de Castro, S. Sá, A. C. Temer, M. González Sanmamed & R. Arellano Saavedra (red.),
Qualitative Research in Education: advances and challenges (Bind 7, s. 181-189). Ludomedia.
https://doi.org/10.36367/ntqr.7.2021.181-189
Sousa Santos, R., Pimenta do Vale, C., Bogoni, B.
& Kirkegaard, P. H. (2021).
Investigação de campoqualitativaem contexto educacional: Definição e considerações. I P. A. de Castro, S. Sá, A. C. Temer, M. González Sanmamed & R. Arellano Saavedra (red.),
Qualitative Research in Education: advances and challenges (Bind 7, s. 190-199). Ludomedia.
https://doi.org/10.36367/ntqr.7.2021,
https://doi.org/10.36367/ntqr.7.2021.190-199
Sørensen, S. B., Toftum, J., Clausen, G.
, Jensen, K. L. & Kristensen, K. V. (2022).
Large-scale study of Classroom VOCs: Sources, Dynamics, and Indoor Air Quality Impacts. I
Proceedings of Indoor Air 2022 Artikel 1401 International Society of Indoor Air Quality and Climate.
https://www.conftool.com/indoorair2022/index.php?page=browseSessions&presentations=show&mode=list&search=s%C3%B8rensen
Skov, J. F.
, Ulriksen, M. D., Dickow, K. A.
, Kirkegaard, P. H. & Damkilde, L. (2013).
On Structural Health Monitoring of Wind Turbine Blades.
Key Engineering Materials,
569-570, 628-635.
https://doi.org/10.4028/www.scientific.net/KEM.569-570.628
Shen, C., Zhang, D.
, Clausen, J., Song, T., Xu, J. & Yang, S. (2023).
Centrifuge modelling on the stability of emergency flood control riverbank reinforced by deep mixed column: Case Study of Baishan Junction, China.
Case Studies in Construction Materials,
19, Artikel e02614.
https://doi.org/10.1016/j.cscm.2023.e02614
Shakya, S., Schmüdderich, C., Machaček, J.
, Prada-Sarmiento, L. F. & Wichtmann, T. (2024).
Influence of Sampling Methods on the Accuracy of Machine Learning Predictions Used for Strain-Dependent Slope Stability.
Geosciences (Switzerland),
14(2), Artikel 44.
https://doi.org/10.3390/geosciences14020044
Sawant, M., Shende, M. K., Feijóo-Lorenzo, A. E.
& Bokde, N. D. (2021).
The state-of-the-art progress in cloud detection, identification, and tracking approaches: A systematic review.
Energies,
14(23), Artikel 8119.
https://doi.org/10.3390/en14238119