Cloud-Based Platform for Photovoltaic Assets Diagnosis and Maintenance
Abstract
:1. Introduction
2. Materials and Methods
- Data quality analysis;
- Out-of-normality analysis;
- Inverter and solar field analysis;
- Energy loss analysis and plant status.
2.1. Data Extraction Process, Gathering, Storage and Sharing of Data
- Upload and extract amounts of data from source (e.g., data center, BigQuery data warehouse);
- Upload the data to Cloud Storage;
- Transform data if needed;
- Load data into BigQuery using the Data Transfer Service.
2.2. Data Quality Analysis
2.3. Out-of-Normality Analysis
2.4. Inverter and Solar Field Analysis
2.5. Energy Loss Analysis and Plant Status
- Inverter (indicating the inverter code);
- Subsystem, which states the component in which the fault or incidence is present, and depends on the monitoring system level;
- Detected incident (specifying the issue or problem that was detected);
- Start and end date (stating the date in which the problem was identified and date that the issue was resolved);
- Number of days after the start date in which the problem has not been solved; and
- Criticality (the value that was extracted from the table for criticality assignation using KPI).
- “Recognized”; this flag indicates that operators are working on the detected issues suggested by the recommendation tool;
- “Solved”; this flag indicates that the fault was resolved; and
- “Additional info”; this section provides access to additional information regarding the problem and allows end users to provide feedback about the recommendations.
2.6. Cloud-Based Platform Development
2.7. Validation
3. Results and Discussion
3.1. Data Quality Analysis
- Communication errors: with the plant, inverter and/or a sensor;
- Saturation: when the sensor has a limit value within the operating range of the variable it measures;
- Frozen: when the sensor remains constant within the precision range with which the measurement is taken or stored;
- Inverter and stringbox coherence: the DC current and power are compared between the input of the inverter and the aggregation at the output of its solar field; and
- Tracker blocking in the cells of the meteorological station: the measured irradiance describes a daily curve analogous to a blockage of trackers in the solar field.
3.2. Out-of-Normality Analysis
3.3. Inverter and Solar Field Analysis
3.4. Energy Loss Analysis and Plant Status
3.5. Test Scenario—Recoverable Energy
3.6. Discussion and Future Research Directions
- The data issues (which were common and the most difficult to solve) included communication errors with the plant/inverter and sensors (e.g., irradiance and temperature) faulty operation. The data quality issues mainly occurred in March–April 2021 and September–December 2021. Overall, the quality of the data was good (93.08% of the given data points were classified as good quality), with just two main periods with a severe lack of data (i.e., null values/cells), representing a total of 15 days approximately over the entire year (4.04% of the total number of data points). This indicates a high-quality data acquisition system [5]. During the abovementioned periods (March–April 2021 and September–December 2021), as the irradiance data were missing, no results of the energy balance could be derived. The faulty irradiance sensor results are also in line with the findings of [6], where the authors stated that 35% of the investigated plants (75 in total from random geographically diverse utility-scale solar plants with a total capacity of 1.2 GW) had faulty irradiance sensors. On average there are three faulty sensors in each plant (27% of the sensors) [6].
- Over the evaluation period, the performance of solar field at the inverter level ranged from 92.48% to 94.68%, while the efficiency of each inverter ranged from 94.78% to 98.03%. The obtained results were a bit lower with respect to the manufacturer’s specifications (97% and 98.70%, respectively).
- Different underperformance issues were detected in the test PV plant by applying outlier detection, ML, and comparative algorithms. The detected issues were attributed to different solar-field- and inverter-related problems.
- The main energy losses occurred in the solar field, accounting for 1464 MWh (or 90.5% of the total losses) of lost energy. Conversely, inverter-related losses accounted for 153.5 MWh (or equivalent to 9.5%). These findings are in line with reports and articles published in the literature [6,19] that state that most of the technical issues that affect PV plant power production are PV-module-related problems and failures.
- The main underperformance incidents detected in the test PV plant over the reporting period were string and inverter shutdowns, accounting for 244.5 MWh (or 1.67% of the total energy production) of lost energy. According to [6], 55% of the investigated plants had inverters operating below their specifications, and on average, there are 20 inverters below the Euro Efficiency spec (17% of the inverters) in a typical plant of 16.10 MWp. Furthermore, 65% of the investigated plants had disconnected strings, and on average, there are 11 disconnected strings in each plant (0.7% of the strings) [6].
- The inverters exhibited PR values higher than 0.80, with an average PR value of 0.88 during the test period. The extracted average PR value is within the expected limits and indicates the high-performance of the test PV plant [43]. PR values reported in the literature varied between 0.50 and 0.75 in the late 1980s, via 0.70 and 0.80 in the 1990s, to higher than 0.80 today. There is a clear upward trend towards a better PR for the newer PV installations (reaching PR values up to 0.95 [41]) compared to the early PV systems.
- The test PV plant produced 12,586 MWh (85.70%) over the 1-year evaluation period, while the detected incidents (i.e., inverter failures, PV module faults and string disconnections) accounted for 2100 MWh (14.30%) of lost energy. Similar results were obtained in [35], in which the stochastic simulations using the System Advisor Model’s (SAM’s) PV Reliability and Performance Model (PV-RPM) [44,45] resulted in a 0.13 fraction of energy lost.
- The test scenario revealed that approximately 7% of lost energy production could be recovered by performing corrective actions. This is in line with the results published in a recent industry benchmark study [6] that demonstrated that the average recoverable energy of a PV plant is 5.27%.
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AE | Absolute Error |
API | Application Programming Interface |
AI | Artificial Intelligence |
CSV | Comma-Separated Values |
DSS | Decision Support System |
ETL | Extract, Transform and Load |
FMECA | Failure Mode, Effects and Criticality Analysis |
GCP | Google Cloud Platform |
IGBT | Insulated-Gate Bipolar Transistor |
KPI | Key Performance Indicators |
LCOE | Levelized Cost of Electricity |
ML | Machine Learning |
O&M | Operation and Maintenance |
PR | Performance Ratio |
PV-RPM | Photovoltaic Reliability and Performance Model |
PV | Photovoltaic |
SaaS | Software as a Service |
STC | Standard Test Conditions |
SQL | Structured Query Language |
SCADA | Supervisory Control and Data Acquisition |
SAM’s | System Advisor Model’s |
TL | Threshold Level |
VM | Virtual Machines |
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Livera, A.; Tziolis, G.; Franquelo, J.G.; Bernal, R.G.; Georghiou, G.E. Cloud-Based Platform for Photovoltaic Assets Diagnosis and Maintenance. Energies 2022, 15, 7760. https://doi.org/10.3390/en15207760
Livera A, Tziolis G, Franquelo JG, Bernal RG, Georghiou GE. Cloud-Based Platform for Photovoltaic Assets Diagnosis and Maintenance. Energies. 2022; 15(20):7760. https://doi.org/10.3390/en15207760
Chicago/Turabian StyleLivera, Andreas, Georgios Tziolis, Jose G. Franquelo, Ruben Gonzalez Bernal, and George E. Georghiou. 2022. "Cloud-Based Platform for Photovoltaic Assets Diagnosis and Maintenance" Energies 15, no. 20: 7760. https://doi.org/10.3390/en15207760
APA StyleLivera, A., Tziolis, G., Franquelo, J. G., Bernal, R. G., & Georghiou, G. E. (2022). Cloud-Based Platform for Photovoltaic Assets Diagnosis and Maintenance. Energies, 15(20), 7760. https://doi.org/10.3390/en15207760