Empirical Modeling of Direct Expansion (DX) Cooling System for Multiple Research Use Cases
Abstract
:1. Introduction
1.1. Background
1.2. Literature Review
1.3. Objectives
2. Modeling and Evaluation
2.1. Test-Bed Description
2.2. RTU Modeling
2.2.1. General RTU Model Structure
2.2.2. Modeling Results
2.2.3. Model Analysis
3. Case Study
3.1. Case 1: Building Energy Modeling Study
3.2. Case 2: Model-Based Predictive Control (MPC)
3.3. Case3: Fault Diagnostics and Detection (FDD)
4. Conclusions and Discussion
- The estimated DX cooling model for RTU system matched well with the measurement for the two stages. Their RMSE and correlation coefficient were 0.96kW and 0.98 in the cooling capacity and 0.14kW and 0.99 in power consumption.
- A BES program validation with EnergyPlus was conducted with a 2-story unoccupied commercial building. The power consumption of the model matched well with the experiment compared to the naive adoption of the nominal curve. The NMBE and cv(RMSE) improved from −21.7~−37.1% and 25.5~41.4% to −0.2% and 6.1%, respectively.
- An MPC simulation study was carried out with an estimated grey-box building and RTU models. Simplified linear COP prediction was incorporated in the MPC formulation, and 14.3% power savings was achieved compared to the feedback control.
- Three fault tests (duct leakage, limited refrigerant, and condenser fouling) were performed with the regressed RTU model. In all cases, the delivered cooling decreased distinctively. The cv(RMSE) of faulty experimental data against the model was 7~52% while the normal experimental data against the model were 9% (baseline). However, the power consumption of the faulty condition increased slightly compared to the prediction from the model.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Stage 1 | Stage 2 | Stage 1 | Stage 2 | ||
---|---|---|---|---|---|
Ccap,1 | 1.57742940 × 10−1 | 1.67520969 × 100 | CEIR,1 | 1.54543818 × 100 | −6.39859076 × 10−1 |
Ccap,2 | 4.37237407 × 10−2 | −6.92156475 × 10−3 | CEIR,2 | −2.70157221 × 10−2 | 1.34507138e0−2 |
Ccap,3 | 7.29207705 × 10−4 | 5.48380617 × 10−5 | CEIR,3 | −3.46088947 × 10−4 | 2.34046419 × 10−3 |
Ccap,4 | 3.18835887 × 10−2 | −5.86719003 × 10−2 | CEIR,4 | −4.03434888 × 10−2 | 1.01593333 × 10−1 |
e | −5.41107627 × 10−4 | 2.08504063 × 10−4 | CEIR,5 | 1.31449523 × 10−3 | 2.82545174 × 10−4 |
Ccap,6 | −1.18166008 × 10−3 | 1.93809110 × 10−3 | CEIR,6 | 1.69638404 × 10−4 | −4.99337303 × 10−3 |
Ccap,7 | 8.09989450 × 10−1 | 7.93045348 × 10−1 | CEIR,7 | 1.27320835 × 100 | 1.20706248 × 100 |
Ccap,8 | 2.43276315 × 10−1 | 2.34209810 × 10−1 | CEIR,8 | −2.20756876 × 10−1 | −1.24473476 × 10−1 |
Ccap,9 | −5.40767115 × 10−1 | −5.20610958 × 10−5 | CEIR,9 | 4.90756905 × 10−5 | 2.76826460 × 10−5 |
Feedback Control | MPC | Savings [%] | |
---|---|---|---|
Cooling rate [kWh] | 129.7 | 136.5 | −5.3 |
Power consumption [kWh] | 51.9 | 44.4 | 14.3 |
Cost [$] | 5.6 | 4.8 | 13.2 |
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Joe, J.; Im, P.; Dong, J. Empirical Modeling of Direct Expansion (DX) Cooling System for Multiple Research Use Cases. Sustainability 2020, 12, 8738. https://doi.org/10.3390/su12208738
Joe J, Im P, Dong J. Empirical Modeling of Direct Expansion (DX) Cooling System for Multiple Research Use Cases. Sustainability. 2020; 12(20):8738. https://doi.org/10.3390/su12208738
Chicago/Turabian StyleJoe, Jaewan, Piljae Im, and Jin Dong. 2020. "Empirical Modeling of Direct Expansion (DX) Cooling System for Multiple Research Use Cases" Sustainability 12, no. 20: 8738. https://doi.org/10.3390/su12208738
APA StyleJoe, J., Im, P., & Dong, J. (2020). Empirical Modeling of Direct Expansion (DX) Cooling System for Multiple Research Use Cases. Sustainability, 12(20), 8738. https://doi.org/10.3390/su12208738