Vol. 11 No. 2 (2025): July - December
Open Access
Peer Reviewed

Integration of Artificial Intelligence in Data Analysis for Modern Physics Experiments

Authors

Fitria Silviana , Soni Prayogi

DOI:

10.29303/jpft.v11i2.10580

Published:

2025-12-17

Downloads

Abstract

This study aims to explore the integration of Artificial Intelligence (AI) in data analysis for modern physics experiments, focusing on how AI-based analytical tools can improve the accuracy, efficiency, and interpretability of experimental results. The research was conducted through an experimental approach combining traditional physics data collection methods with AI-driven algorithms, including regression models, clustering techniques, and neural networks. The experiment utilized datasets from motion and optics laboratories, where sensor-based measurements were analyzed using supervised and unsupervised learning models. Data preprocessing, feature extraction, and model validation were implemented through Python-based frameworks such as TensorFlow and Scikit-learn. The results demonstrated that AI-assisted data analysis significantly enhanced the precision of measurement interpretation, reduced error margins by 15–20% compared to conventional methods and identified hidden patterns within complex datasets that were previously difficult to detect through manual analysis. Moreover, neural network models proved highly effective in predicting outcomes of nonlinear systems, particularly in optics and electromagnetism experiments. The study also revealed that the integration of AI not only accelerates data processing but also serves as an educational tool to promote computational thinking among physics students. It is recommended that modern physics laboratories adopt AI-based analytical frameworks as a standard complement to traditional methods, supported by training modules that familiarize students with data-driven experimentation. This integration is expected to strengthen the alignment between physics education and emerging technologies, ultimately fostering innovation and interdisciplinary competence among future physicists.

Keywords:

Artificial Intelligence Data Analysis Modern Physics Experiments Neural Networks Physics Education

References

Aggarwal, C. C. (2018). Neural networks and deep learning: A textbook. Cham, Switzerland: Springer.

American Psychological Association. (2010). Publication manual of the American Psychological Association (6th ed.). Washington, DC: Author.

Bishop, C. M. (2006). Pattern recognition and machine learning. New York, NY: Springer.

Domingos, P. (2015). The master algorithm: How the quest for the ultimate learning machine will remake our world. New York, NY: Basic Books.

Géron, A. (2019). Hands-on machine learning with Scikit-Learn, Keras, and TensorFlow (2nd ed.). Sebastopol, CA: O’Reilly Media.

Goodfellow, I., Bengio, Y., & Courville, A. (2016). Deep learning. Cambridge, MA: MIT Press.

Hastie, T., Tibshirani, R., & Friedman, J. (2017). The elements of statistical learning: Data mining, inference, and prediction (2nd ed.). New York, NY: Springer.

Haykin, S. (2009). Neural networks and learning machines (3rd ed.). Upper Saddle River, NJ: Pearson Education.

Hinton, G. E. (2018). Deep learning: A perspective. Artificial Intelligence, 264, 1–14.

James, G., Witten, D., Hastie, T., & Tibshirani, R. (2021). An introduction to statistical learning with applications in R (2nd ed.). New York, NY: Springer.

Jordan, M. I., & Mitchell, T. M. (2015). Machine learning: Trends, perspectives, and prospects. Science, 349(6245), 255–260.

Kelleher, J. D., Namee, B. M., & D’Arcy, A. (2015). Fundamentals of machine learning for predictive data analytics: Algorithms, worked examples, and case studies. Cambridge, MA: MIT Press.

LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep learning. Nature, 521(7553), 436–444.

Mitchell, T. M. (1997). Machine learning. New York, NY: McGraw-Hill.

Murphy, K. P. (2012). Machine learning: A probabilistic perspective. Cambridge, MA: MIT Press.

Murphy, K. P. (2022). Probabilistic machine learning: An introduction. Cambridge, MA: MIT Press.

Pedregosa, F., Varoquaux, G., Gramfort, A., Michel, V., Thirion, B., Grisel, O., ... & Duchesnay, É. (2011). Scikit-learn: Machine learning in Python. Journal of Machine Learning Research, 12, 2825–2830.

Russell, S. J., & Norvig, P. (2021). Artificial intelligence: A modern approach (4th ed.). Hoboken, NJ: Pearson Education.

Schmidhuber, J. (2015). Deep learning in neural networks: An overview. Neural Networks, 61, 85–117.

Silver, D., Schrittwieser, J., Simonyan, K., Antonoglou, I., Huang, A., Guez, A., ... & Hassabis, D. (2017). Mastering the game of Go without human knowledge. Nature, 550(7676), 354–359.

Witten, I. H., Frank, E., Hall, M. A., & Pal, C. J. (2016). Data mining: Practical machine learning tools and techniques (4th ed.). Cambridge, MA: Morgan Kaufmann.

Author Biographies

Fitria Silviana, Syarif Hidayatullah State Islamic University

Author Origin : Indonesia

Department of Physics Education

Soni Prayogi, University of Pertamina

Author Origin : Indonesia

Department of Electrical Engineering

Downloads

Download data is not yet available.

How to Cite

Silviana, F., & Prayogi, S. (2025). Integration of Artificial Intelligence in Data Analysis for Modern Physics Experiments. Jurnal Pendidikan Fisika Dan Teknologi, 11(2), 550–558. https://doi.org/10.29303/jpft.v11i2.10580