Please use this identifier to cite or link to this item:
http://essuir.sumdu.edu.ua/handle/123456789/49082
Or use following links to share this resource in social networks:
Tweet
Recommend this item
Title | Modelling of Random Textured Tandem Silicon Solar Cells Characteristics: Decision Tree Approach |
Authors |
Kamath, R.S.
Kamat, R.K. |
ORCID | |
Keywords |
Silicon Solar Cell Decision Tree Efficiency Rattle |
Type | Article |
Date of Issue | 2016 |
URI | http://essuir.sumdu.edu.ua/handle/123456789/49082 |
Publisher | Sumy State University |
License | |
Citation | R.S. Kamath, R.K. Kamat, J. Nano- Electron. Phys. 8 No 4(1), 04021 (2016) |
Abstract |
We report decision tree (DT) modeling of randomly textured tandem silicon solar cells characteristics.
The photovoltaic modules of silicon-based solar cells are extremely popular due to their high efficiency and
longer lifetime. Decision tree model is one of the most common data mining models can be used for predictive
analytics. The reported investigation depicts optimum decision tree architecture achieved by tuning
parameters such as Min split, Min bucket, Max depth and Complexity. DT model, thus derived is easy to
understand and entails recursive partitioning approach implemented in the “rpart” package. Moreover the
performance of the model is evaluated with reference Mean Square Error (MSE) estimate of error rate.
The modeling of the random textured silicon solar cells reveals strong correlation of efficiency with “Fill
factor” and “thickness of a-Si layer” |
Appears in Collections: |
Журнал нано- та електронної фізики (Journal of nano- and electronic physics) |
Views
Australia
1
Canada
1
China
1
France
1
Germany
2
Greece
1
Ireland
226641
Italy
1
Lithuania
1
Netherlands
3121
Singapore
1
Ukraine
2565851
United Kingdom
1289166
United States
34440505
Unknown Country
2565850
Vietnam
35352
Downloads
Canada
731917
China
34440506
France
34440503
Germany
27754506
India
122685
Ireland
453279
Japan
122680
Lithuania
1
Morocco
1
Poland
1
Singapore
27754510
South Africa
27754505
Ukraine
7696534
United Kingdom
1
United States
27754508
Unknown Country
49
Vietnam
1
Files
File | Size | Format | Downloads |
---|---|---|---|
Kamath_Kamat.pdf | 283.57 kB | Adobe PDF | 189026187 |
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.