TY - JOUR
T1 - Self-adaptive production performance monitoring framework under different operating regimes
AU - Prioli, Joao Paulo Jacomini
AU - Altinpulluk, Nur Banu
AU - Rickli, Jeremy L.
AU - Yildirim, Murat
N1 - Publisher Copyright:
© 2025
PY - 2025/6
Y1 - 2025/6
N2 - Dynamic operational regimes in modern manufacturing systems generate a myriad of challenges for production performance monitoring applications. Heterogeneous data streams and fast production changeovers often complicate sensor information, leading to misinterpretation of systemic performance issues. Conventional methods address this problem by explicitly modeling these operational regimes. However, it requires significant engineering hours and expertise, constituting a substantial adoption barrier for small-to-medium enterprises (SMEs). This paper proposes a self-adaptive smart monitoring framework that autonomously discovers and accounts for operational regime changes to offer accurate predictions on systemic performance despite the complexities in continuous multi-sourced data acquisition and dynamic regime behavior of machines. Computational experiments tested the methodology using a predictive system in two manufacturing cells under dynamic operational regimes. The proposed framework outperforms benchmark policies commonly used in prediction models by improving prediction accuracy from 3% to 62%, along with a better convergence rate. The results demonstrated that the proposed framework can positively impact smart maintenance implementation for SMEs with limited resources.
AB - Dynamic operational regimes in modern manufacturing systems generate a myriad of challenges for production performance monitoring applications. Heterogeneous data streams and fast production changeovers often complicate sensor information, leading to misinterpretation of systemic performance issues. Conventional methods address this problem by explicitly modeling these operational regimes. However, it requires significant engineering hours and expertise, constituting a substantial adoption barrier for small-to-medium enterprises (SMEs). This paper proposes a self-adaptive smart monitoring framework that autonomously discovers and accounts for operational regime changes to offer accurate predictions on systemic performance despite the complexities in continuous multi-sourced data acquisition and dynamic regime behavior of machines. Computational experiments tested the methodology using a predictive system in two manufacturing cells under dynamic operational regimes. The proposed framework outperforms benchmark policies commonly used in prediction models by improving prediction accuracy from 3% to 62%, along with a better convergence rate. The results demonstrated that the proposed framework can positively impact smart maintenance implementation for SMEs with limited resources.
KW - Performance monitoring
KW - Regime clustering
KW - Self-adapting model
KW - Smart manufacturing
UR - https://www.scopus.com/pages/publications/105000882795
U2 - 10.1016/j.jmsy.2025.02.011
DO - 10.1016/j.jmsy.2025.02.011
M3 - Article
SN - 0278-6125
VL - 80
SP - 380
EP - 394
JO - Journal of Manufacturing Systems
JF - Journal of Manufacturing Systems
ER -