Comparative Assessment to Predict and Forecast Water-Cooled Chiller Power Consumption Using Machine Learning and Deep Learning Algorithms
Abstract
:1. Introduction
2. Methods
2.1. Overview of Proposed Approach
2.2. The Basic Concepts of Machine Learning and Deep Learning
2.3. Power Consumption Prediction Model
2.3.1. Thermodynamic Model
2.3.2. Multi-Layer Perceptron (MLP)
2.4. Time-Series Forecasting Models
2.4.1. Multi-Layer Perceptron (MLP)
2.4.2. One-Dimensional Convolutional Neural Network (1D-CNN)
2.4.3. Long-Short Term Memory (LSTM)
2.5. Performance Evaluation
3. Experiments and Result
3.1. Physical Equipment
3.2. Software and Hardware
3.3. Data Description
3.4. Power Consumption Prediction
3.4.1. Thermodynamic Model
3.4.2. Multi-layer Perceptron (MLP)
3.4.3. Power Consumption Prediction Model Performance Comparison
3.5. Time-Series Forecasting Model
3.5.1. Three Deep Learning Algorithms
3.5.2. Time-series Forecasting Model Performance Comparison
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
AI | Artificial intelligence |
ANN | Artificial neural network |
COP | Coefficient of performance |
HVAC | Heating, ventilating and air conditioning |
LR | Linear regression |
LSTM | Long short-term memory |
MAE | Mean absolute error |
MLR | Multi-variable linear regression |
MSE | Mean squared error |
ReLU | Rectifier linear unit |
RMSE | Root mean square error |
RNN | Recurrent neural network |
SSE | Sum of square error |
SVM | support vector machine |
SVR | Support vector regression |
1D-CNN | One-dimensional convolutional neural network |
α | Alpha |
β | Beta |
Bias | |
Bias for represent candidate for cell state | |
Bias for forget gate | |
Bias for input gate neurons | |
Bias for output gate neurons | |
Cell state (memory) | |
Cell state (memory) from the previous block | |
Represent candidate for cell state at timestamp | |
Nonlinear activation function | |
Forget gate | |
Hidden state at time | |
Output from the previous block | |
Input gate | |
Number of samples | |
Output gate | |
Compressor energy usage | |
Predictive value | |
Evaporator load | |
R2 | Coefficient of determination |
Standard deviation | |
Evaporator water return temperature | |
Chilled water supply temperature | |
Condenser water return temperature | |
Condenser water supply temperature | |
Evaporator water velocity | |
Condenser water velocity | |
Weight for represent candidate for cell state | |
Weight for forget gate neurons | |
Weight at the recurrent neuron | |
Weight at the output neuron | |
Weight for input gate neurons | |
Weight for output gate neurons | |
Weight at the input neuron | |
Weight for neurons | |
Weight indicates the slope value | |
Weight indicates the intercept value | |
Input at current step | |
Independent variable | |
Input variable | |
Observed data | |
Sample mean | |
Largest value of observed data | |
Smallest value of observed data | |
Normalized data | |
Standardized data | |
Measured value | |
Output state | |
Average measured value | |
Dependent variable or neuron output | |
Measured value in observation | |
Predicted value for observation | |
Sigmoid function |
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Compressor Specifications | |
---|---|
Compressor model | S6F-30.2 |
Refrigerant | R22 |
Power Supply | 230V–3–60Hz |
Cooling Capacity | 31.7 kW |
Model | R2 | MAE (kW) | RMSE (kW) | |
---|---|---|---|---|
Thermodynamic | Training | 0.935 | 1.429 | 1.818 |
Test | 0.916 | 1.556 | 1.954 | |
MLP | Training | 0.988 | 0.559 | 0.770 |
Test | 0.971 | 0.743 | 1.157 |
Model | R2 | MAE (kW) | RMSE (kW) | |
---|---|---|---|---|
MLP | Training | 0.984 | 0.693 | 2.563 |
Test | 0.980 | 0.666 | 2.631 | |
1D-CNN | Training | 0.993 | 0.520 | 1.661 |
Test | 0.993 | 0.491 | 1.541 | |
LSTM | Training | 0.994 | 0.267 | 1.489 |
Test | 0.994 | 0.233 | 1.415 |
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Chaerun Nisa, E.; Kuan, Y.-D. Comparative Assessment to Predict and Forecast Water-Cooled Chiller Power Consumption Using Machine Learning and Deep Learning Algorithms. Sustainability 2021, 13, 744. https://doi.org/10.3390/su13020744
Chaerun Nisa E, Kuan Y-D. Comparative Assessment to Predict and Forecast Water-Cooled Chiller Power Consumption Using Machine Learning and Deep Learning Algorithms. Sustainability. 2021; 13(2):744. https://doi.org/10.3390/su13020744
Chicago/Turabian StyleChaerun Nisa, Elsa, and Yean-Der Kuan. 2021. "Comparative Assessment to Predict and Forecast Water-Cooled Chiller Power Consumption Using Machine Learning and Deep Learning Algorithms" Sustainability 13, no. 2: 744. https://doi.org/10.3390/su13020744
APA StyleChaerun Nisa, E., & Kuan, Y. -D. (2021). Comparative Assessment to Predict and Forecast Water-Cooled Chiller Power Consumption Using Machine Learning and Deep Learning Algorithms. Sustainability, 13(2), 744. https://doi.org/10.3390/su13020744