Prevention of PID Phenomenon for Solar Panel Based on Mathematical Data Analysis Models
Abstract
:1. Introduction
1.1. Basic Knowledge Related and Research Motivation of the Study
1.2. Shortcomings and Contributions of Previous Studies and Research Purposes of This Study
1.3. Novelty and Contribution of the Study
2. Literature Review
2.1. PID Phenomenon with a Testing Application Case
2.2. Different Testing Methods and Prevention Applications
- (1)
- Large-module testing the most time- and cost-consumption: As mentioned earlier, most studies addressing the PID phenomenon have focused on packaging solar panels into large modules [30] for further study, although packaging in solar module panels requires coordinating with automatic and semi-automatic machines from the packaging factory; it generally consumes a lot of materials and production costs, including module glass, copper band (ribbon), EVA, waterproof backbone, solar cell panels, and module aluminum frames for packaging testing.
- (2)
- Mini-module testing with higher costs: In line with current conservation efforts in solar cell factories, PID verification is carried out by saving on material size of the module packaging. This involves downscaling from a large-module board to a single-piece module (i.e., mini module) plate [26] for testing in general factories; although it undoubtedly saves on cost, the tested mini-module board gets discarded without reuse, which is still a cost burden. This real case exposes practical shortcomings of costs in the solar energy industry. In addition, due to the artificial welding, material cutting, and component assembly that mini modules require, it is easy to cause testing measurement errors because of labor operation omissions. Furthermore, the most widely adopted PID test method in practice is the use of mini-module boards, which control the temperature of the test sample at 60 °C, the relative humidity at 85%, and the test time at 96 h, to comply with the IEC62804 standard test regulation [31].
- (3)
- Solar cell testing with reduced time and cost consumption: Since there is a lack with its the extended testing time and the mass production from solar cell manufacturing line pose a challenge for quickly identifying the quality of the batteries currently produced in regard to their resistance to the PID problem. Thus, the development of a good simulation test should be carried out directly at the solar cell production end, and the use of an effective PID test for solar cell [25] is relatively important in order to meet the requirements of the industry.
- (4)
- A valuable model with minimal time and cost consumption: In a review of previous studies [4,14], they mainly focused on the differences of high-power point endured by the solar module ends to induce the battery decay phenomenon. To achieve this, a power supply of −1000 volts was used to simulate a series of high-power points for the differences carried out by practical data collection from solar power factories. The interconnected resistance was measured alongside the results in order to conduct the analysis of PID using industry data analysis [18]. Testing with this method, such as a settling time approach and a mathematical NN method, in data applications yields rich insights for a visually oriented effective analysis. This not only can save on cost of the testing, but also can get the testing results faster.
3. Materials and Methods
3.1. Mini-Module Testing
- (1)
- Suppose that the number of large-module tests is , while the percentage of the large module in the pass of PID test is called and the percentage of the large module in the failure of PID test is called That is, . Similarly, the number of mini-module tests is , while the percentage of mini modules in the passed PID test is called , and the percentage of the mini modules in the failure of PID test is called Then, .
- (2)
- When or , it is identified that the testing result of large module and mini module exhibits a positive correlation.
- (3)
- In the comparison result, if the large module has a positive correlation with the mini-module, the mini-module testing results can be used to analyze, thereby reducing the testing cost of time.
3.2. Solar Cell Testing
- (1)
- First, when the parallel resistance is less than 100 ohms, it is determined to be a PID failure case.
- (2)
- Accordingly, this experiment uses the approach of several solar cells for PID testing [25], and the PID testing cells with each group of different RI values are divided into two groups: Group1 and Group2. In order to achieve the experimental target, we increase the number of sample tests for a single PID testing, and each set of testing samples for the different RI values are the numbers that Group1 and Group2 take slices continuously at different production time points. To improve testing accuracy, we take the same number of cells that the testing is performed on, in order to create the same conditions for a second test. In other words, in each group of RIs, single PID testing is divided into two groups, or Group1 and Group2. Doubling the test number ensures that the experimental planning aligns with the current situation, and data from Group1 and Group2 are continuously obtained at different production times for the two sets of data.
- (3)
- The number of solar cells in PID testing is called , and the percentage of the pass case of PID testing is called ; similarly, the number of mini-module tests is also called , and the percentage of mini modules in the pass of the PID testing is called . When , it is known as that the testing result of a solar cell is positively related to the mini-module testing result.
- (4)
- It is assumed that the solar cell and mini module for the PID testing results are positively correlated, and the solar cell can replace mini modules for PID testing, thereby reducing production costs.
3.3. A Settling Time
- (1)
- First, assume that the measured solar sequential impedance database is defined as , resistance value is defined as and . is a natural number and is a time interval, is defined as sequential resistance data. The sequence database is cut, and the data of is obtained. The training data of solar cells with PID is defined as . The testing data of solar cells mixed with PID and without PID are defined as .
- (2)
- Second, the starting time point of the parallel resistance measured by the PID simulation tester is defined as ; its initial value is defined as the end detection time point is defined as with a chips, and the final resistance value is defined as . In addition, assuming that is a steady-state time point, the corresponding measurement value is . and are calculated by the testing data of each solar cell. The average steady-state time value of the steady-state time point is defined as . The flow chart for calculating the settling time model is shown in Figure 4, and its training process is described as the following pseudo-codes example.
Algorithm 1: Settling time model |
1. Input: Resistance sequence database S 2. Output: Settling time model with PID test 3. Method: 4. = find all seqeunces_PID(S) 5. for each { 6. ; 7. ; 8. ; 9. find from 10. add to ; 11. } 12. ; //Settling time of PID |
- (3)
- Third, after receiving the average steady-state time value , it searches all the corresponding resistance values in the testing data and calculates the average resistance value. Then, it can be used to judge the threshold value. The mathematical formula is formatted as follows: , is a rational number. The flow chart for optimizing the steady-state time threshold of solar cells is shown in Figure 5.
Algorithm 2: Global optimum threshold function of solar cells |
1. , target(S) 2. is a resistance value 3. Method: 4. for each { 5. for each { 6. if (){ 7. predictvalue=PID; 8. 9. predictvalue=NoPID;} 10. add predictvalue to predict; 11 } 12. 13. add Error to GlobalError; 14. } 15. Optimize //global optimize threshold value |
- (4)
- Finally, the followed experiment uses the testing data. As long as the impedance in the average steady-state time is lower than the threshold of the , it is determined that the test on solar cells has the PID phenomenon. The flow chart for calculating the steady-state test of solar cells is shown in Figure 6 in detail.
3.4. A Mathematical Neural Network
- (1)
- (a) First, in the training stage with the study example, the parallel resistance data obtained from the solar cell through the PID simulation tester is used as input layer for input . For each sampling time in seconds, the number measuring impedance value is defined as , the resistance values from the first to n will be inputted to the nth neurons of input layer.(b) Under the premise of the initial weight value and the partial weight of the given network, the input value is led to the output layer. Each solar panel is given a set of input and output data.(c) Not every training stage can achieve the ideal network weight immediately, and it is necessary that the weight of each connection be constantly adjusted. Therefore, this study uses supervised learning to judge and correct the weight value. Then, we use back propagation neural network (BPNN) [39] to adjust the weight until it can get the result whether there is a PID phenomenon or not.
- (2)
- In the validation stage, part of the data defined as is provided to verify the appropriateness of the parameters and architecture of the training stage. We selected the most suitable neural network architecture as the testing stage of model.
- (3)
- During the testing stage, the trained and validated mathematical neural network is evaluated using the testing data to assess its suitability for real-world industry applications.
4. Empirical Results of Industry Data Analysis
4.1. Results and Discussions on Mini-Module Testing
- (1)
- When RI is 2.16, the number of tests for the large module is 10 and the number of tests passed by PID is 10, then = 100%. The number of tests for the mini module is 10, and the number of passed PID tests is also 10, = 100%, − = 0% < +10%. That is to say, the large module and the mini module are positively related to the PID test at RI = 2.16.
- (2)
- When RI is 2.10, the number of tests for the large module is 10, and the number of pass tests in the PID test is 5,= 50%. The number of tests for the mini module is also 10, and the number of pass tests in the PID test is 5, = 50%, = 0 < +10%. That is also to say, the large module and the mini module are positively related to the PID test at RI = 2.10.
- (3)
- When RI is 2.00, the number of tests for the large module is 10, and the number of pass tests in the PID test is 0, = 0. The number of tests for the mini module is 10, and the number of pass tests in the PID test is 0, = 0, and = 0 < +10%. That is to say, the large module and the mini module also have a positive relation to the PID test at RI = 2.00.
- (4)
- Moreover, in this study, 30 pieces of large modules and 30 pieces of mini modules are used for PID validation of three different RI values. In accordance with the IEC62804 standard specification, both sets of testing results are positively correlated. Therefore, the test cost can be initially recognized as successfully reducing material consumption. This has a cost saving effect on the PID test of solar cells.
- (1)
- In the group of RI = 2.16 from Figure 10a, all the EL images show that there is no obvious difference in the images before and after the test.
- (2)
- In the group of RI = 2.10 from Figure 10b, it is found that when the module is passed through the PID test, some dark shadows appear on the EL image after the test; however, the image of PID failure cases can be clearly detected as black-shade blocks.
- (3)
- In the group of RI = 2.00 from Figure 10c, because this group is a failure case for the whole number on the testing of the PID, a clear black area is also found in the image of the EL. This image result matches with the previously referenced literature review.
- (4)
- Finally, with the help of experts, the large module and the mini module perform at different RI values for the PID test, and the testing results are positively related; thus, it is also found out that we can replace the large-module testing with the mini-module PID testing when using the EL image measurements.
4.2. Results and Discussions on Solar Cell Testing
- (1)
- When RI is 2.16, the number of tests for the solar cell is 20, and the number of passing the PID test is also 20, that is = 100%. The number of tests for the mini module is 10 and the number of passing the PID test is 10, = 100%, and −= 0% < 10%. That is, the solar cell and the mini module have a positive relation to the test at RI = 2.16.
- (2)
- When RI is 2.10, the number of tests for the solar cell is 20, and the number of passing the PID test is 10, = 50%. The number of tests for the mini module is 10, and the number of passing the PID test is 5, = 50%, −= 0% < 10%. That is to say, the solar cell and the mini module are positively related to the test at RI = 2.10.
- (3)
- When RI is 2.00, the number of tests for the solar cell is 20, and the number of passing the PID test is 0, = 0%. The number of tests for the mini module is 10, and the number of passing the PID test is 0, = 0%, −= 0% < 10%. That is to say, the solar cell and the mini module are positively related to the test at RI = 2.00.
- (4)
- By utilizing the simulated testing apparatus provided in the referenced materials and performing the PID verification on solar cells with the same RI value as the solar cell test, this method can successfully show that the solar cell simulation test and the mini module test have positive correlation. This result not only reduces the cost of the PID test but also eliminates testing errors caused by manual operations during the encapsulation of solar cell for solar modules.
4.3. Results and Discussions on the Settling Time
- (1)
- 48 pieces of solar cells are randomly picked up from the 70 pieces with a PID case, and 30 pieces of solar cells are randomly selected from the 48 pieces as training data.
- (2)
- Accordingly, perform the above step to replace the testing data repeatedly 10 times, which can find out the average steady-state time point .
- (3)
- In order to find the threshold, 70 pieces of solar cells are selected randomly from 118 pieces, which have mixed with/without a PID problem. Then, 30 pieces are randomly selected from these 70 pieces to use and perform the threshold retrieval. Next, 30 of the remaining 40 pieces are selected at random to test and predict the given data.
- (4)
- Finally, the previous 3 steps are executed repeatedly 10 times to achieve better prediction accuracy.
4.4. Results and Discussions on the Mathematical Neural Network
5. Conclusions and Future Research
- (1)
- For solving the existing shortcomings of previous studies: In order to effectively reduce energy costs, the continuous development of various alternative energies is focused, particularly for solar energy as the most readily available alternative. To provide stable and continuously effective solar energy under the drawbacks of the increasing cost of electricity, it is the first lesson to avoid solar cells with PID phenomenon. Early studies have focused on improving the structure of general modules and the production conditions of solar cells during the manufacturing process. The costly solar cell modules still require verification of the PID phenomenon, which is a heavy cost burden for both solar-cell manufacturers and solar-module manufacturers. Interestingly, most of the methods used to solve PID were to change the material, material size, or thickness to reduce the PID phenomenon; there were no scholars using effective testing methods to reduce material costs and time costs for testing PID. This study has solved these existing gaps in previous studies.
- (2)
- For showing the numerical results of empirical studies: For the empirical results of real cases, there are five key outcomes achieved. Table 1 lists the empirical results, including time, rank of cost, accuracy, and limitations of the four methods. (a) This study further used 30 large modules and 30 mini modules for PID authentication under three different RI values. In accordance with the IEC62804 standard normative test, the two sets are positively correlated from the testing results; thus, we can replace the large module with a time-consuming test with the mini module with a time-saving test, thereby simultaneously reducing the consumption of material and time in the PID test cost initially. (b) In addition, by referring to the data provided by the PID simulation tester, it is found that mini modules and solar cells test also have a positive correlation in a IEC62804 standard test, and they use the same RI values and successfully performed the PID authentication. This not only reduces of the cost of the PID testing but also avoids the error in the test caused by manual operation of the single solar module packaging. (c) In accordance with the standard test specification, the 96-h test is still a time-consuming cost, so we use the settling time analysis model for the solar cell in the PID test with a change of time and parallel resistance; we used the testing data of 118 solar cells to make further verification. As a result, we obtained an average of about 14 h for testing results with an accuracy rate of 94%, which is far less than the time of the standard PID testing regulation 96 h. (d) We then use the mathematical neural network model to make a PID prediction. According to the results of the experiment, it is shown that under the architecture of the five neurons of mathematical neural networks in hidden layers, about 80% of the prediction accuracy can be achieved within two hours. More importantly, for solar power plant and for the developer, the early testing of product design will save more than 90% of the testing time. (e) From Table 1, in the testing time of numerical results, Method-4 (96 h) → Method-3 (24 h) → Method-2 (14 h) → Method-1 (2 h). Method-1 is best for using testing time less. In the rank of cost of numerical results, Method-4 → Method-3 → Method-2 → Method-1. Method-1 is also best for spending material cost less. In the accuracy of numerical results, Method-4 (100%) → Method-3 (100%) → Method-2 (94%) → Method-1 80%). Method-3 and Method-4 are best for achieving the most accuracy. As for the limitations of the four methods used, the four descriptions are “Test in the high-cost equipment with complicated environment”, “Simpler equipment for a solar cell”, “The equipment with timely data record collected”, and “The equipment with a shorter time data record collected”, for Method-1–Method-4, respectively.Thus, this method can facilitate development and production of solar cells method based on the above empirical results.
- (3)
- For reaching a novel technical contribution: This study proposes a hybrid model to integrate a four-method testing of the PID problem. This hybrid model has not yet been proposed for the solar power industry. Moreover, since the proposed Method-3 and used Method-4 are not seen in reviewing the limited literature to effectively identifying the PID problem, this study thus has a valuable contribution for benefiting a technological application innovation.
- (4)
- For reaching an industrial application contribution: From the study results, these four methods highlight the key components for cost reduction of materials and testing time during the manufacturing process of solar panels in practice. Given the real industrial values, the study has achieved an industrial application contribution of green energy technology with some advanced advantages.
- (5)
- For doing the future research: Although the empirical results with remarkable advantages of the study have identified many research benefits, it is still necessary to further make more rooms to improve the proposed hybrid method in the near future. Thus, the research direction in the future can be focused on collecting more data or applying other classification methods of artificial intelligence (AI) to analyze the PID phenomenon on solar cells. Then, searching for better algorithms or models, we can achieve better prediction accuracy and shorter test time to reduce PID testing time and increase test accuracy for exceeding 94% accuracy within 14 h or 80% accuracy within 2 h in the future. It is expected that the improvements offer useful references to subsequent researchers and practitioners for pacing a small stone for solar power industry.
Evaluation Item | Method-1 | Method-2 | Method-3 | Method-4 |
---|---|---|---|---|
Time | 96 h | 24 h | 14 h | 2 h |
Rank of cost | 4 * | 3 | 2 | 1 |
Accuracy | 100% | 100% | 94% | 80% |
Limitation | Test in the high-cost equipment with complicated environment | Simpler equipment for a solar cell | The equipment with timely data record collected | The equipment with a shorter time data record collected |
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Chen, Y.-S.; Hung, Y.-H.; Lin, Y.-S.; Chang, J.-R.; Lo, C.-H.; You, H.-K. Prevention of PID Phenomenon for Solar Panel Based on Mathematical Data Analysis Models. Mathematics 2023, 11, 4044. https://doi.org/10.3390/math11194044
Chen Y-S, Hung Y-H, Lin Y-S, Chang J-R, Lo C-H, You H-K. Prevention of PID Phenomenon for Solar Panel Based on Mathematical Data Analysis Models. Mathematics. 2023; 11(19):4044. https://doi.org/10.3390/math11194044
Chicago/Turabian StyleChen, You-Shyang, Ying-Hsun Hung, Yu-Sheng Lin, Jieh-Ren Chang, Chi-Hsiang Lo, and Hong-Kai You. 2023. "Prevention of PID Phenomenon for Solar Panel Based on Mathematical Data Analysis Models" Mathematics 11, no. 19: 4044. https://doi.org/10.3390/math11194044
APA StyleChen, Y. -S., Hung, Y. -H., Lin, Y. -S., Chang, J. -R., Lo, C. -H., & You, H. -K. (2023). Prevention of PID Phenomenon for Solar Panel Based on Mathematical Data Analysis Models. Mathematics, 11(19), 4044. https://doi.org/10.3390/math11194044