Author Contributions
Conceptualization, L.P., F.S. and M.G.X.; methodology, L.P., F.S. and M.G.X.; software, F.S.; validation, L.P., F.S. and M.G.X.; formal analysis, L.P., F.S. and M.G.X.; investigation, L.P., F.S. and M.G.X.; resources, L.P. and M.G.X.; data curation, L.P., F.S. and M.G.X.; writing—original draft preparation, F.S.; writing—review and editing, L.P., F.S. and M.G.X.; visualization, F.S.; supervision, L.P., F.S. and M.G.X.; project administration, L.P. and M.G.X.; funding acquisition, L.P. and M.G.X. All authors have read and agreed to the published version of the manuscript.
Figure 1.
HDMDc block scheme.
Figure 1.
HDMDc block scheme.
Figure 2.
SRU line working scheme.
Figure 2.
SRU line working scheme.
Figure 3.
Schematic representation of the debutanizer column (DC) with indication of the location of the hardware measuring devices, the model exogenous input, u, and soft sensor model output, y.
Figure 3.
Schematic representation of the debutanizer column (DC) with indication of the location of the hardware measuring devices, the model exogenous input, u, and soft sensor model output, y.
Figure 4.
SRU case study: percentage performance improvement for (a) and (b) at each prediction step, varying the input delay shifts, , in the MSA-HDMDc algorithm. The was calculated for each of the identified models with respect to the baseline model with .
Figure 4.
SRU case study: percentage performance improvement for (a) and (b) at each prediction step, varying the input delay shifts, , in the MSA-HDMDc algorithm. The was calculated for each of the identified models with respect to the baseline model with .
Figure 5.
SRU case study: MSA model performances: (a) , (b) for ARX, FIR, and MSA-HDMDc models by varying the reduced order, p, of the matrix in the and considering the matrix at full-order .
Figure 5.
SRU case study: MSA model performances: (a) , (b) for ARX, FIR, and MSA-HDMDc models by varying the reduced order, p, of the matrix in the and considering the matrix at full-order .
Figure 6.
SRU case study: barplot of for (a) and (b) with matrix order reduction and varying the matrix reduction order in the range . The was calculated for each of the identified models with respect to the reference model with and .
Figure 6.
SRU case study: barplot of for (a) and (b) with matrix order reduction and varying the matrix reduction order in the range . The was calculated for each of the identified models with respect to the reference model with and .
Figure 7.
SRU case study: regression plots of predicted output at 30 steps versus the target measured output, : (a) ARX model, (b) FIR model, (c) MSA-HDMDc model with optimal parameters , , , .
Figure 7.
SRU case study: regression plots of predicted output at 30 steps versus the target measured output, : (a) ARX model, (b) FIR model, (c) MSA-HDMDc model with optimal parameters , , , .
Figure 8.
SRU case study: comparison of the measured output () with the predicted ones at 30-step-ahead for the baseline and the MSA-HDMDc models with optimal parameters , , , .
Figure 8.
SRU case study: comparison of the measured output () with the predicted ones at 30-step-ahead for the baseline and the MSA-HDMDc models with optimal parameters , , , .
Figure 9.
SRU case study: analysis of computed using time batches of 100 samples for a 30-step-ahead prediction on a selected interval of the test dataset. The corresponding normalized input signals and associated clusters are also included. 1st panel: time evolution of the inputs, 2nd panel: input clusters, 3rd panel: time evolution of .
Figure 9.
SRU case study: analysis of computed using time batches of 100 samples for a 30-step-ahead prediction on a selected interval of the test dataset. The corresponding normalized input signals and associated clusters are also included. 1st panel: time evolution of the inputs, 2nd panel: input clusters, 3rd panel: time evolution of .
Figure 10.
DC case study: MSA model performances in terms of (a) , (b) for ARX, FIR and MSA-HDMDc models by varying the reduced order, p, of the matrix in the and considering the matrix at full-order .
Figure 10.
DC case study: MSA model performances in terms of (a) , (b) for ARX, FIR and MSA-HDMDc models by varying the reduced order, p, of the matrix in the and considering the matrix at full-order .
Figure 11.
DC case study: barplot of for (a) and (b) with matrix order reduction and varying the matrix reduction order in the range . The was calculated for each of the identified models with respect to the reference MSA-HDMDc model with and .
Figure 11.
DC case study: barplot of for (a) and (b) with matrix order reduction and varying the matrix reduction order in the range . The was calculated for each of the identified models with respect to the reference MSA-HDMDc model with and .
Figure 12.
DC case study: comparison of the measured output (y) with the predicted one at (a) 5-step-ahead (30 min) and (b) 10-step-ahead (60 min) for the baseline and the MSA-HDMDc models with the optimal parameters , , , on a selected interval of the test dataset.
Figure 12.
DC case study: comparison of the measured output (y) with the predicted one at (a) 5-step-ahead (30 min) and (b) 10-step-ahead (60 min) for the baseline and the MSA-HDMDc models with the optimal parameters , , , on a selected interval of the test dataset.
Figure 13.
DC case study: analysis of computed using time batches of 100 samples for a 5-step-ahead prediction on a selected interval of the test dataset. The corresponding normalized input signals and associated clusters are also included. 1st panel: time evolution of the inputs, 2nd panel: input clusters, 3rd panel: time evolution of .
Figure 13.
DC case study: analysis of computed using time batches of 100 samples for a 5-step-ahead prediction on a selected interval of the test dataset. The corresponding normalized input signals and associated clusters are also included. 1st panel: time evolution of the inputs, 2nd panel: input clusters, 3rd panel: time evolution of .
Table 1.
Input and output variables of the SRU models.
Table 1.
Input and output variables of the SRU models.
Variable | Description |
---|
| gas flow in the MEA chamber (NM3/h) |
| airflow in the MEA chamber (NM3/h) |
| total gas flow in the SWS chamber (NM3/h) |
| total airflow in the SWS chamber (NM3/h) |
| secondary air flow (NM3/h) |
| concentration (output 1) (mol%) |
| concentration (output 2) (mol%) |
Table 2.
Input and output variables of the DC models.
Table 2.
Input and output variables of the DC models.
Variable | Description |
---|
| top temperature (°C) |
| top pressure (Kg/cm2) |
| top reflux (m3/h) |
| top flow (m3/h) |
| side temperature (°C) |
| and bottom temperatures (°C) |
| C4 concentration in the bottom flow (%) |
Table 3.
SRU case study: performance comparison for the selection of the . The mean value over 20 subsets of data of the is reported for different state time shifts, q. The KPI is evaluated for a 30-step-ahead prediction. The is reported considering as the reference value.
Table 3.
SRU case study: performance comparison for the selection of the . The mean value over 20 subsets of data of the is reported for different state time shifts, q. The KPI is evaluated for a 30-step-ahead prediction. The is reported considering as the reference value.
State Time-Shift Optimization |
---|
| 20 | 30 | 40 | 50 | 60 |
| | | | | |
| | | 0 | | |
Table 4.
SRU case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ).
Table 4.
SRU case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ).
|
---|
Steps | | | | | | | |
ARX | | 8.08 | 10.91 | 12.70 | 13.74 | 14.26 | 14.55 |
FIR | 11.84 | 11.84 | 11.84 | 11.84 | 11.84 | 11.84 | 11.84 |
MSA-HDMDc | 5.56 | | | | | | |
Table 5.
SRU case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ).
Table 5.
SRU case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ).
|
---|
Steps | | | | | | | |
ARX | 0.95 | 0.49 | 0.18 | −0.02 | −0.15 | −0.21 | −0.24 |
FIR | 0.26 | 0.26 | 0.26 | 0.26 | 0.26 | 0.26 | 0.26 |
MSA-HDMDc | 0.73 | 0.70 | 0.67 | 0.64 | 0.62 | 0.61 | 0.59 |
Table 6.
DC case study: performance comparison for the selection of the . The mean value over 70 subsets of 100 of data samples of the is reported for different state time shifts, q. The KPI is evaluated for a 20-step-ahead prediction. The is reported considering as the reference value.
Table 6.
DC case study: performance comparison for the selection of the . The mean value over 70 subsets of 100 of data samples of the is reported for different state time shifts, q. The KPI is evaluated for a 20-step-ahead prediction. The is reported considering as the reference value.
State Time-Shift Optimization |
---|
| 10 | 12 | 15 | 17 | 20 | 30 |
| | | | | | |
| | 0 | | | | |
Table 7.
DC case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ) in the test dataset.
Table 7.
DC case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ) in the test dataset.
|
---|
Steps | | | | |
ARX | 4.44 | 13.75 | 29.40 | 53.91 |
FIR | 57.42 | 57.42 | 57.42 | 57.42 |
MSA-HDMDc | | | | |
Table 8.
DC case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ) in the test dataset.
Table 8.
DC case study: values at different prediction steps obtained for the considered models: ARX, FIR, MSA-HDMDc (, , , ) in the test dataset.
|
---|
Steps | | | | |
ARX | 0.983 | 0.854 | 0.347 | −1.20 |
FIR | −0.99 | −0.99 | −0.99 | −0.99 |
MSA-HDMDc | | | | |