Figure 1.
Image of the deep mine air-cooling unit used as a case study (courtesy of M-Tech Industrial (Pty) Ltd., Potchefstroom, South Africa).
Figure 1.
Image of the deep mine air-cooling unit used as a case study (courtesy of M-Tech Industrial (Pty) Ltd., Potchefstroom, South Africa).
Figure 2.
Flow diagram of the proposed condition-monitoring methodology.
Figure 2.
Flow diagram of the proposed condition-monitoring methodology.
Figure 3.
Schematic of the refrigerant cycle.
Figure 3.
Schematic of the refrigerant cycle.
Figure 4.
Refrigerant cycle (blue) depicted on the temperature versus entropy diagram as well as temperature traces of the water through the condenser (red) and air through the evaporator (green).
Figure 4.
Refrigerant cycle (blue) depicted on the temperature versus entropy diagram as well as temperature traces of the water through the condenser (red) and air through the evaporator (green).
Figure 5.
Schematic of the condenser heat exchanger model layout (not showing the actual number of increments).
Figure 5.
Schematic of the condenser heat exchanger model layout (not showing the actual number of increments).
Figure 6.
Schematic of a control volume in the refrigerant side that contains the transition from superheated to two-phase conditions.
Figure 6.
Schematic of a control volume in the refrigerant side that contains the transition from superheated to two-phase conditions.
Figure 7.
Calculated temperature distributions on the refrigerant side (blue) and water side (red) as a function of the normalized position through the condenser heat exchanger at nominal operating conditions for different grid sizes.
Figure 7.
Calculated temperature distributions on the refrigerant side (blue) and water side (red) as a function of the normalized position through the condenser heat exchanger at nominal operating conditions for different grid sizes.
Figure 8.
Schematic of the evaporator heat exchanger model layout (the actual number of increments is discussed in the main text).
Figure 8.
Schematic of the evaporator heat exchanger model layout (the actual number of increments is discussed in the main text).
Figure 9.
(a) Calculated temperature distributions on the refrigerant side (blue circles) and air side (red squares) as a function of the normalized position and (b) cooling and dehumidifying process on the psychrometric chart through the evaporator heat exchanger.
Figure 9.
(a) Calculated temperature distributions on the refrigerant side (blue circles) and air side (red squares) as a function of the normalized position and (b) cooling and dehumidifying process on the psychrometric chart through the evaporator heat exchanger.
Figure 10.
(a) Temperature vs. specific entropy and (b) pressure vs. specific enthalpy diagrams calculated with the thermofluid model at the nominal operating conditions.
Figure 10.
(a) Temperature vs. specific entropy and (b) pressure vs. specific enthalpy diagrams calculated with the thermofluid model at the nominal operating conditions.
Figure 11.
Schematic of the forward (a) and backward (b) MLP surrogate models. (The actual number of layers and neurons are discussed in the main text).
Figure 11.
Schematic of the forward (a) and backward (b) MLP surrogate models. (The actual number of layers and neurons are discussed in the main text).
Figure 12.
MSE for the training, validation, and testing samples after training for 10,000 epochs with different data set sizes.
Figure 12.
MSE for the training, validation, and testing samples after training for 10,000 epochs with different data set sizes.
Figure 13.
Histograms of the normalized input feature and output label values used in the surrogate model training.
Figure 13.
Histograms of the normalized input feature and output label values used in the surrogate model training.
Figure 14.
MSE for the training, validation, and testing samples after 10,000 epochs in the forward surrogate model training using different learning rates.
Figure 14.
MSE for the training, validation, and testing samples after 10,000 epochs in the forward surrogate model training using different learning rates.
Figure 15.
MSE for the training, validation, and testing samples after 10,000 epochs in the forward surrogate model training using different network topologies.
Figure 15.
MSE for the training, validation, and testing samples after 10,000 epochs in the forward surrogate model training using different network topologies.
Figure 16.
Training history for the forward 2 × 64 MLP using 4000 data points showing the training (blue squares) and validation (orange triangles) MSE versus the number of training epochs.
Figure 16.
Training history for the forward 2 × 64 MLP using 4000 data points showing the training (blue squares) and validation (orange triangles) MSE versus the number of training epochs.
Figure 17.
MSE for the training, validation, and testing samples after 10,000 epochs in the backward surrogate model training using different learning rates.
Figure 17.
MSE for the training, validation, and testing samples after 10,000 epochs in the backward surrogate model training using different learning rates.
Figure 18.
MSE for the training, validation, and testing samples after 10,000 epochs in the backward surrogate model training using different network topologies.
Figure 18.
MSE for the training, validation, and testing samples after 10,000 epochs in the backward surrogate model training using different network topologies.
Figure 19.
Training history for the 3 × 48 backward MLP using 4000 data points showing the training (blue) and validation (orange) MSE versus the number of training epochs.
Figure 19.
Training history for the 3 × 48 backward MLP using 4000 data points showing the training (blue) and validation (orange) MSE versus the number of training epochs.
Figure 20.
Snapshot of the 1000 pseudo-measured data points with artificial noise sampled from a random distribution with a standard deviation of 10% superimposed on all the data points.
Figure 20.
Snapshot of the 1000 pseudo-measured data points with artificial noise sampled from a random distribution with a standard deviation of 10% superimposed on all the data points.
Figure 21.
Results of predicted versus actual degradation factors using the forward surrogate model combined with parameter identification, with —red circle, —brown square, —green diamond, —purple triangle.
Figure 21.
Results of predicted versus actual degradation factors using the forward surrogate model combined with parameter identification, with —red circle, —brown square, —green diamond, —purple triangle.
Figure 22.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification.
Figure 22.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification.
Figure 23.
Results of predicted versus actual degradation factors using the backward surrogate model, with —red circle, —brown square, —green diamond, —purple triangle.
Figure 23.
Results of predicted versus actual degradation factors using the backward surrogate model, with —red circle, —brown square, —green diamond, —purple triangle.
Figure 24.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case directly using the backward surrogate model.
Figure 24.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case directly using the backward surrogate model.
Figure 25.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification, where only , , and are used as output labels.
Figure 25.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification, where only , , and are used as output labels.
Figure 26.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification, where only , , and are used as output labels.
Figure 26.
Average absolute percentage error between the predicted and actual values of the degradation factors for each case using the forward surrogate model combined with parameter identification, where only , , and are used as output labels.
Table 1.
Nominal operating conditions of the heat pump predicted via the thermofluid model.
Table 1.
Nominal operating conditions of the heat pump predicted via the thermofluid model.
Compressor | Condenser | Evaporator | Cycle |
---|
| 1.889 | | 6.090 | | 11.4 | | 5.4 |
| 696.2 | | 386.0 | | 86.0 | | 10.0 |
| 1653.2 | | 20.0 | | 30.0 | | 12.4 |
| 68.5 | | 35.9 | | 22.7 | | 42.7 |
| 0.607 | | 403.8 | | 0.90 | | 4.9 |
| | | | | 0.99 | | |
| | | | | 335.3 | | |
Table 2.
Input ranges to the LHS training data generation.
Table 2.
Input ranges to the LHS training data generation.
| Parameter | Min | Max |
---|
Boundary values | | 15.0 | 35.0 |
| 0.10 | 0.90 |
| 3.0 | 9.0 |
| 15.0 | 35.0 |
Degradation factors | | 0.7 | 1.1 |
| 0.7 | 1.1 |
| 0.7 | 1.1 |
| 0.7 | 1.1 |
Table 3.
Hyperparameter search space for MLP surrogate model training.
Table 3.
Hyperparameter search space for MLP surrogate model training.
Parameter | Hyperparameter Search Space |
---|
Learning rate | 1e-5, 5e-5, 1e-4, 5e-4, 1e-3, 5e-3, 1e-2 |
Number of hidden layers | 2, 3, 4 |
Neurons per hidden layer | 16, 32, 48, 64 |
Table 4.
Average and maximum percentage errors for the heat pump performance parameters predicted with the trained 2 × 64 forward surrogate model.
Table 4.
Average and maximum percentage errors for the heat pump performance parameters predicted with the trained 2 × 64 forward surrogate model.
| | | | |
---|
Average error | 0.012% | 0.016% | 0.165% | 0.103% |
Maximum error | 0.082% | 0.130% | 1.268% | 1.011% |
Table 5.
Average and maximum percentage errors for the degradation factors predicted with the trained 3 × 48 backward surrogate model.
Table 5.
Average and maximum percentage errors for the degradation factors predicted with the trained 3 × 48 backward surrogate model.
| | | | |
---|
Average error | 0.062% | 0.102% | 0.324% | 0.371% |
Maximum error | 0.412% | 0.979% | 2.175% | 3.096% |
Table 6.
Nominal operating conditions of the healthy (orig) and degraded (degr) heat pump predicted via the thermofluid model.
Table 6.
Nominal operating conditions of the healthy (orig) and degraded (degr) heat pump predicted via the thermofluid model.
Compressor | Condenser | Evaporator | Cycle |
---|
| orig | degr | | orig | degr | | orig | degr | | orig | degr |
---|
| 1.889 | 1.542 | | 6.090 | 6.090 | | 11.4 | 11.4 | | 5.4 | 5.4 |
| 696.2 | 756.9 | | 386.0 | 386.0 | | 86.0 | 86.0 | | 10.0 | 10.0 |
| 1653.2 | 1678.0 | | 20.0 | 20.0 | | 30.0 | 30.0 | | 12.4 | 15.1 |
| 68.5 | 65.8 | | 35.9 | 33.4 | | 22.7 | 23.9 | | 42.7 | 43.3 |
| 0.607 | 0.474 | | 403.8 | 339.7 | | 0.90 | 0.90 | | 4.9 | 4.2 |
| | | | | | | 0.99 | 0.99 | | | |
| | | | | | | 335.3 | 274.4 | | | |
Table 7.
Input ranges to the LHS pseudo plant data generation.
Table 7.
Input ranges to the LHS pseudo plant data generation.
| Parameter | Min | Max |
---|
Boundary values | | 20.0 | 30.0 |
| 0.20 | 0.80 |
| 4.0 | 8.0 |
| 20.0 | 30.0 |