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2023
Cintra, RF, Valk M, Filho DM.  2023.  A model-free-based control chart for batch process using U-statistics. Journal of Process Control. Website
2022
de Oliveira, BN, Valk M, Filho DM.  2022.  Fault detection and diagnosis of batch process dynamics using ARMA-based control charts. Journal of Process Control. 111:46-58. AbstractWebsite

A wide range of approaches for batch processes monitoring can be found in the literature. This kind of process generates a very peculiar data structure, in which successive measurements of many process variables in each batch run are available. Traditional approaches do not take into account the time series nature of the data. The main reason is that the time series inference theory is not based on replications of time series, as it is in batch process data. It is based on the variability in a time domain. This fact demands some adaptations of this theory in order to accommodate the model coefficient estimates, considering jointly the batch to batch samples variability (batch domain) and the serial correlation in each batch (time domain). In order to address this issue, this paper proposes a new approach grounded in a group of control charts based on the classical ARMA model for monitoring and diagnostic of batch processes dynamics. The model coefficients are estimated (through the ordinary least square method) for each historical time series sample batch and modified Hotelling and t-Student distributions are derived and used to accommodate those estimates. A group of control charts based on that distributions are proposed for monitoring the new batches. Additionally, those groups of charts help to fault diagnosis, identifying the source of disturbances. Through simulated and real data we show that this approach seems to work well for both purposes.

Fraga, AZ, Hauschild L, Campos PHRF, Valk M, Bello DZ, Kipper M, Andretta I.  2022.  Genetic selection modulates feeding behavior of group-housed pigs exposed to daily cyclic high ambient temperatures. Plos One. OnlineWebsite
2021
Gomes, BCK, Andretta I, Valk M, Pomar C, Hauschild L, Fraga AZ, Kipper M, Trevizan L, Remus A.  2021.  Prandial Correlations and Structure of the Ingestive Behavior of Pigs in Precision Feeding Programs. Animals. 11(10) AbstractWebsite

The feeding behavior of growing-finishing pigs was analyzed to study prandial correlations and the probability of starting a new feeding event. The data were collected in real-time based on 157,632 visits by a group of 70 growing-finishing pigs (from 30.4 to 115.5 kg body weight, BW) to automatic feeders. The data were collected over 84 days, during which period the pigs were kept in conventional (by phase and by group) or precision (with daily and individual adjustments) feeding programs. A criterion to delimit each meal was then defined based on the probability of an animal starting a new feeding event within the next minute since the last visit. Prandial correlations were established between meal size and interval before meal (pre-prandial) or interval after meal (post-prandial) using Pearson correlation analysis. Post-prandial correlations (which can be interpreted as hunger-regulating mechanisms) were slightly stronger than pre-prandial correlations (which can be interpreted as satiety regulation mechanisms). Both correlations decreased as the animals’ age increased but were little influenced by the feeding programs. The information generated in this study allows a better understanding of pigs’ feeding behavior regulation mechanisms and could be used in the future to improve precision feeding programs.