Application of Feedforward Neural Networks for Virtual Sensor Implementation in Nuclear Reactors

Autores/as

  • Frederico Emidio Wu Instituto de Pesquisas Energéticas e Nucleares image/svg+xml
    • Thadeu das Neves Conti Instituto de Pesquisas Energéticas e Nucleares image/svg+xml

      DOI:

      https://doi.org/10.15392/2319-0612.2026.2993

      Palabras clave:

      nuclear reactor, sensor redundancy, sensor failure, artificial neural network

      Resumen

      This study builds on a line of research developed at the Nuclear and Energy Research Institute (IPEN), focused on the use of Artificial Neural Networks (ANNs) to provide sensor redundancy in nuclear reactors. The proposed methodology consists of training a Feedforward Neural Network (FFNN) to estimate the value of one reactor variable based on measurements from other variables. The feasibility was demonstrated using data from IPEN’s nuclear research reactor and a scaled model. While previous works relied on data from a single operating cycle of the reactor, this study tested network performance using data from multiple cycles to assess accuracy and generalization, and to identify deficiencies in the method. One fault-free cycle was selected for training and validation, while five others were used for testing, featuring different events. Three temperature variables, three radiation variables, one power measurement, and one safety rod position were chosen as output sensors for the ANNs to estimate. Performance was evaluated using the Mean Absolute Percentage Error (MAPE). All ANNs performed well during training. However, only two temperature variables were estimated across all the test cycles with similar accuracy as in the training and validation process, with MAPE values below 3%. Other ANNs performed poorly, with instances of persistent offsets or failure to track the general shape of the measured signals. The results underscore the challenges posed by strong input-output correlations and the difficulty in capturing the full complexity of functional relationships within reactor variables.

      Descargas

      Los datos de descarga aún no están disponibles.

      Referencias

      [1] BARTLETT, E. B.; UHRIG, R. E. Nuclear power plant status diagnostics using an artificial neural network. Nuclear Technology, v. 97, n. 3, p. 272–281, 1992. DOI: https://doi.org/10.13182/NT92-A34635

      [2] BUENO, E. I. Group Method of Data Handling (GMDH) e Redes Neurais na Monitoração e Detecção de Falhas em Sensores de Centrais Nucleares. 2011. Tese (Doutorado em Tecnologia Nuclear - Reatores) — Instituto de Pesquisas Energéticas e Nucleares, Universidade de São Paulo, São Paulo, 2011. Disponível em: https://doi.org/10.11606/T.85.2011.tde-02092011-140535. Acesso em: 19 out. 2021. DOI: https://doi.org/10.11606/T.85.2011.tde-02092011-140535

      [3] CAIXETA, B. M. et al. Optimizing Deep Neural Networks for Nuclear Power Plant Temperature Estimation: A Study on Feature Importance and Outlier Detection. SSRN Electronic Journal, [S.I.]. 2025. Disponível em: https://papers.ssrn.com/sol3/papers.cfm?abstract_id=5131784. Acesso em: 03 nov. 2025. DOI: https://doi.org/10.2139/ssrn.5131784

      [4] DENG, A.; HOOI, B. Graph neural network-based anomaly detection in multivariate time series. Proceedings of the AAAI Conference on Artificial Intelligence, v. 35, n. 5, p. 4027–4035, 2021. DOI: https://doi.org/10.1609/aaai.v35i5.16523

      [5] GOMES, C. R.; MEDEIROS, J. A. C. C. Neural network of Gaussian radial basis functions applied to the problem of identification of nuclear accidents in a PWR nuclear power plant. Annals of Nuclear Energy, v. 77, p. 285–293, 2015. DOI: https://doi.org/10.1016/j.anucene.2014.10.001

      [6] LEE, G.; LEE, S. J.; LEE, C. A convolutional neural network model for abnormality diagnosis in a nuclear power plant. Applied Soft Computing, v. 99, p. 106874, 2021. DOI: https://doi.org/10.1016/j.asoc.2020.106874

      [7] MANDAL, S. Sensor fault detection in nuclear power plant using artificial neural network. Journal of Mathematics and Informatics, v. 4, p. 81–87, 2015.

      [8] MESSAI, A. et al. On-line fault detection of a fuel rod temperature measurement sensor in a nuclear reactor core using ANNs. Progress in Nuclear Energy, v. 79, p. 8–21, 2015. DOI: https://doi.org/10.1016/j.pnucene.2014.10.013

      [9] MORAES, D. A. Planta experimental para monitoração e diagnóstico de falhas utilizando inteligência artificial. 2019. Tese (Doutorado em Tecnologia Nuclear - Reatores) - Instituto de Pesquisas Energéticas e Nucleares, Universidade de São Paulo, São Paulo, 2019. Disponível em: https://doi.org/10.11606/T.85.2020.tde-03022020-110813. Acesso em: 27 jul. 2025. DOI: https://doi.org/10.11606/T.85.2020.tde-03022020-110813

      [10] NABESHIMA, K. et al. Real-time nuclear power plant monitoring with neural network. Journal of Nuclear Science and Technology, v. 35, n. 2, p. 93–100, 1998. DOI: https://doi.org/10.1080/18811248.1998.9733829

      [11] NABESHIMA, K. et al. Nuclear reactor monitoring with the combination of neural network and expert system. Mathematics and Computers in Simulation, v. 60, n. 3–5, p. 233–244, 2002. DOI: https://doi.org/10.1016/S0378-4754(02)00018-6

      [12] RICCI FILHO, W.; SURKOV, V. Sistema de Aquisição de Dados do Reator IEA-R1 – SAD – Lista de Variáveis. São Paulo: Instituto de Pesquisas Energéticas e Nucleares, 2007. Não publicado.

      [13] SAEED, A.; RASHID, A. Development of core monitoring system for a nuclear power plant using artificial neural network technique. Annals of Nuclear Energy, v. 144, p. 107513, 2020. DOI: https://doi.org/10.1016/j.anucene.2020.107513

      [14] SANTOS, G. R. dos. Algoritmo de Colônia de Formigas e Redes Neurais Artificiais Aplicados na Monitoração e Detecção de Falhas em Centrais Nucleares. 2016. Dissertação (Mestrado em Tecnologia Nuclear) — Instituto de Pesquisas Energéticas e Nucleares, Universidade de São Paulo, São Paulo, 2016. Disponível em: https://doi.org/10.11606/D.85.2016.tde-02082016-144618. Acesso em: 16 jan. 2024. DOI: https://doi.org/10.11606/D.85.2016.tde-02082016-144618

      [15] TAN, C. L.; DEBRAY, Y. Neural Network Module, v. 3.0. 2020. Disponível em: https://atoms.scilab.org/toolboxes/neuralnetwork/3.0. Acesso em: 24 out. 2024.

      [16] TERREMOTO, L. A. A. Fundamentos de Tecnologia Nuclear – Reatores. São Paulo: Instituto de Pesquisas Energéticas e Nucleares, Divisão de Ensino, 2021.

      [17] YUE, Q. et al. Method to determine nuclear accident release category via environmental monitoring data based on a neural network. Nuclear Engineering and Design, v. 367, p. 110789, 2020. DOI: https://doi.org/10.1016/j.nucengdes.2020.110789

      Descargas

      Publicado

      2026-03-13

      Número

      Sección

      Original Articles