Modeling and Analysis Framework for Investigating the Impact of Dust and Temperature on PV Systems’ Performance and Optimum Cleaning Frequency
Abstract
:1. Introduction
2. Experimental Setup and Data Collection
- Training and validation sets of data: 80% of the overall data (i.e., 143 data points) is selected randomly for the purpose of building the prediction models. Among these, 70% and 30% of data points are further selected randomly, internally by the ANN and ELM models, for the purpose of training and optimizing the prediction models, respectively;
- Test set of data: the remaining 20% (i.e., 36 data points) is used to evaluate the prediction performance of the proposed prediction models with respect to those previously proposed and developed in Hammad et al. [54]. This set of data was never introduced to the prediction models during the training phase.
3. Methodology
3.1. Multivariate Linear Regression (MLR) Model
3.2. Artificial Neural Network (ANN) Model
- the input layer receives the -th data point () that comprises the dust accumulation in terms of exposure days () and the average daily ambient temperature values () (i.e., ), ;
- the hidden layer manipulates them through the so-called hidden neuron activation function, , to define the output of each -th hidden neuron, , based on the received inputs;
- the output layer receives the processed information and provides the -th daily system conversion efficiency (i.e., ) by the following equation [62]:
3.3. Extreme Learning Machine (ELM)
3.4. Performance Metrics
- The coefficient of determination () (Equation (4)) and adjusted coefficient of determination () (Equation (5)), which describe the variability in the dependent (output) variable provided by the prediction models caused by the two independent (input) variables only. Specifically, 100% values of these metrics entail that the variability in the output variable can be fully explained by the two considered input variables (i.e., the dust accumulation and the ambient temperature), whereas values less than 100% entail that there are other independent variables that can affect the output variable but have not been taken into account during the development of the prediction models:
- Accuracy () (Equation (6)) describes the match between the true and the predicted daily system conversion efficiency obtained by the prediction models. Indeed, higher accuracy values entail that the predictions match the actual conversion efficiency and, thus, the prediction model is effectively capable of capturing the hidden mathematical relationship between the independent and dependent variables, and vice versa:
- Mean square error () (Equation (7)) describes the mismatch between the true and the predicted daily system conversion efficiency obtained by the prediction models (i.e., opposite to the metric). Apparently, small values are desired:
4. Results and Discussion
4.1. The MLR Model
- Assumption validation: the validity and significance of the model have been examined based on some assumptions, such as residuals being normally distributed and having constant variance;
- Multicollinearity: this indicates the near-linear dependencies among the regression variables, which can lead to misleading results. To examine whether the multicollinearity does not exist in the obtained model, large variation inflation factors (VIFs) have been calculated;
- Independency of variables: to examine the correlation between the systems’ conversion efficiency and the two predictors (the dust exposure days and the average daily ambient temperature), the correlation matrix has been calculated;
- Goodness-of-fit: to verify whether the model reasonably represent the behavior of the data, the and its adjusted value have been computed;
- Analysis of model coefficient signs: due to the fact that the dust accumulation and the increase in the ambient average temperature will lead to a decrease in the performance of the PV system, the signs of the models’ coefficients have been verified to be negative;
- Best subsets regression: this identifies whether the obtained model can predict the conversion efficiency accurately by including all of the necessary independent variables. To this end, the metric has been calculated and found to achieve the highest value among the whole subset model candidates.
4.2. The Optimum Architecture of the ANN Model
4.3. The Optimum Architecture of the ELM Model
4.4. Application Results
- The predicted values using all models are reasonably close to the measured values for the whole study period;
- In particular, the MLR model seems to provide less accurate predictions despite its easiness and flexibility compared to the other prediction models. In fact, all performance metrics values obtained by the MLR model are worse than for the other models. This can be justified by the fact that the behavior of the PV daily system conversion efficiency as a function of dust accumulation and ambient temperature is not strictly linear; thus, it cannot be accurately captured by the inherently linear MLR model, unlike the other nonlinear models (i.e., ANN and ELM);
- The effectiveness of having an optimum version of the ANN model is apparent in the four performance metrics compared to the two hidden layer ANN model proposed in [54];
- Furthermore, the effectiveness of the ELM model with respect to the other models is proved by all performance metrics. For instance, the optimum ELM model provides an enhancement in the conversion efficiency predictions compared to the MLR model with around 6.18%, 6.4%, 0.3%, and 42.92% for the , , , and performance metrics.
5. Cleaning of the PV System
5.1. Losses and Dust Effects
5.2. Optimal Cleaning Frequency
5.3. Investigation of Different Scenarios (Sensitivity Analysis)
- As the cleaning cost increases, the optimum cleaning frequency increases, at the same electricity tariffs;
- As the electricity tariffs increase, the optimum cleaning frequency decreases at the same cleaning cost.
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
Acronyms | |
PV | Photovoltaic |
MLR | Multivariate linear regression |
ANN | Artificial neural network |
BP | Back-propagation |
ELM | Extreme learning machine |
VIFs | Variation inflation factors |
HU | The Hashemite University |
Notations | |
Dust accumulation in terms of exposure days (days) | |
Average daily ambient temperature (°C) | |
Daily system conversion efficiency (%) | |
Number of available data points of the PV system | |
Index of number of data point, | |
Regression model intercept | |
Regression coefficients | |
The -th exposure day, | |
The -th average daily ambient temperature, | |
The -th true daily system conversion efficiency, | |
The -th predicted daily system conversion efficiency, | |
The -th error of the daily system conversion efficiency prediction, | |
Number of input layer’s neurons | |
Number of hidden layer’s neurons | |
Number of output layer’s neurons | |
Input vector of the prediction models | |
The hidden-output weight vector of the -th neuron, | |
The input-hidden weight vector of the -th neuron, | |
The bias of the -th neuron, | |
ELM/ANN neuron activation function | |
h | Index of number of ELM/ANN hidden neurons |
Coefficient of determination performance metric | |
Adjusted coefficient of determination performance metric | |
Mean square error performance metric | |
Accuracy performance metric | |
Root mean square Error |
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Training and Validation Data (143 Data Points) | Test Data (36 Data Points) | |||||||
---|---|---|---|---|---|---|---|---|
MLR | 87.7 | 87.5 | 98.4 | 0.066 | 86.8 | 86.4 | 98.7 | 0.048 |
Two hidden layer ANN | 90 | 89.9 | 98.6 | 0.057 | 89.2 | 88.9 | 98.8 | 0.042 |
Optimized ANN | 90.69 | 90.63 | 98.71 | 0.0502 | 90.55 | 90.27 | 98.87 | 0.0331 |
Optimized ELM | 91.42 | 91.35 | 98.74 | 0.0462 | 92.16 | 91.93 | 98.99 | 0.0274 |
Model | Average Efficiency Drop (%/day) | Energy Loss (kWh/m2) | Energy Loss (kWh) | Economic Loss (US$/m2) | Economic Loss (US$) | Average Economic Loss (US$/day) |
---|---|---|---|---|---|---|
MLR | 0.768 | 10.282 | 504.445 | 3.76 | 184.627 | 1.03 |
Two hidden layer ANN | 0.607 | 8.140 | 399.342 | 2.98 | 146.159 | 0.82 |
Optimized ANN | 0.593 | 7.862 | 385.711 | 2.877 | 141.170 | 0.789 |
Optimized ELM | 0.615 | 8.329 | 408.652 | 3.049 | 149.567 | 0.836 |
Price | Description | |
---|---|---|
Electricity tariffs (US$/kWh) | 0.114 | Small industrial companies |
0.241 | Commercial companies | |
0.366 | Residential buildings | |
Cleaning costs (US$/kWp) | 0.212 | Wet cleaning with simple tools for ground-mounted or roof-top systems (easy access) |
0.952 | Wet cleaning with simple machinery (moderate access) | |
1.690 | Wet cleaning with cranes and vehicles for solar car parking and solar canopies (difficult access) |
Scenario [Electricity Tariff, Cleaning Cost] | Optimal Cleaning Frequency (days) |
---|---|
[0.114, 0.212] | 26 |
[0.114, 0.952] | 55 |
[0.114, 1.69] | 60 |
[0.241, 0.212] | 18 |
[0.241, 0.952] | 38 |
[0.241, 1.69] | 50 |
[0.366, 0.212] | 14 |
[0.366, 0.952] | 31 |
[0.366, 1.69] | 41 |
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Al-Kouz, W.; Al-Dahidi, S.; Hammad, B.; Al-Abed, M. Modeling and Analysis Framework for Investigating the Impact of Dust and Temperature on PV Systems’ Performance and Optimum Cleaning Frequency. Appl. Sci. 2019, 9, 1397. https://doi.org/10.3390/app9071397
Al-Kouz W, Al-Dahidi S, Hammad B, Al-Abed M. Modeling and Analysis Framework for Investigating the Impact of Dust and Temperature on PV Systems’ Performance and Optimum Cleaning Frequency. Applied Sciences. 2019; 9(7):1397. https://doi.org/10.3390/app9071397
Chicago/Turabian StyleAl-Kouz, Wael, Sameer Al-Dahidi, Bashar Hammad, and Mohammad Al-Abed. 2019. "Modeling and Analysis Framework for Investigating the Impact of Dust and Temperature on PV Systems’ Performance and Optimum Cleaning Frequency" Applied Sciences 9, no. 7: 1397. https://doi.org/10.3390/app9071397
APA StyleAl-Kouz, W., Al-Dahidi, S., Hammad, B., & Al-Abed, M. (2019). Modeling and Analysis Framework for Investigating the Impact of Dust and Temperature on PV Systems’ Performance and Optimum Cleaning Frequency. Applied Sciences, 9(7), 1397. https://doi.org/10.3390/app9071397