“…Traditionally, sensor issues are resolved by curve fitting, frequent calibration: one point or multipoint, matrix adjustments, cross validation, and routine cleaning and maintenance (Kaelin et al, 2008; Papias et al, 2018; Rieger et al, 2010). The other option for resolution is anomaly and drifting detection through advance data analytics and machine learning, which presents several methods such as artificial neural networks, principal component analysis, Kalman filter‐based methods, and denoising data processing algorithms (Cecconi, 2020; Corominas et al, 2018; Hansen et al, 2022; Huang et al, 2019; Isermann, 1997; Mali & Laskar, 2020; Russo et al, 2020; Thomann et al, 2002; Thürlimann et al, 2018; Villez et al, 2008, 2011; Wang, Fan, et al, 2021). In spite of the diverse methods available, there are still barriers that prevent their utilization (Corominas et al, 2018; Hansen et al, 2022; Russo et al, 2020).…”