Artigo CientíficoBright Science - Artigos - MMC

Artigo científico submetido e aceite pelo “Journal of Optics”, em fevereiro de 2026, no âmbito do estágio final do Mestrado em Matemática Aplicada para a Indústria, do ISEL.

O estudo avalia o Método de Monte Carlo (MCM) na propagação de incerteza em medições fotométricas com goniofotómetros Tipo C, comparando-o com a soma dos quadrados. Três modelos de MCM foram testados: um baseado em classificações Tipo A/B, outro na teoria da informação de Shannon e um terceiro com distribuições aleatórias. A análise de sensibilidade (Pareto) identificou variáveis-chave. Os resultados mostraram menores incertezas com o MCM (até 2,3%) face ao método tradicional (3,4%). Conclui-se que o MCM melhora a precisão, sendo o modelo de Shannon o mais eficiente.

Autores do artigo:  Pedro B. Nogueira, André Carvalho e José A. Rodrigues, do ISEL, e João Ribeiro e Thomas Langhof, da Bright Science.

Ler artigo
ABSTRACT:
“The Monte Carlo Method is a powerful statistical technique for propagating uncertainty in photometric measurements, particularly when models are nonlinear or input variables deviate from Gaussian distributions. This study explores the application of MCM to luminous flux measurements using Type C goniophotometers, with comparisons to the conventional Root Sum of Squares Method. Three distinct Monte Carlo models were implemented. The first classified uncertainties as Type A or Type B, assigning corresponding probability distributions. The second employed Shannon information
theory to derive distributions based on available knowledge, while the third exploratory model randomized distribution selection among normal, uniform, and triangular forms. Sensitivity analysis, guided by the Pareto principle, identified the key variables contributing to 80% of overall variability. Results showed that Root Sum of Squares Method yielded an expanded uncertainty of 3.4%, whereas the first, second, and third Monte Carlo models achieved 3.0%, 2.5%, and 2.3%, respectively. Importantly, the Pareto-based reduction strategy preserved accuracy while lowering computational complexity. These findings demonstrate that Monte Carlo Method provides a more effective framework for uncertainty evaluation in photometry than traditional approaches, with the information theory-based model offering the best balance between accuracy and efficiency. The proposed methodology enhances the reliability of luminaire characterization and supports practical adoption in industrial measurement contexts.”