Fault Detection in Grid-Connected Solar PV Inverters Utilizing Supervised Learning and Data-Oriented Approaches
Implementing Organization
Principal Investigator
Dr. Tadanki Vijay Muni
K L University, Andhra Pradesh
About
Grid-connected PV systems are gaining more and more attention as viable energy sources, so having a solar inverter that is both reliable and stable is more important than ever. A fault in an inverter can significantly impact the whole system, potentially jeopardizing the grid's safety. Therefore, developing a Fault Diagnostic Mechanism that can accurately detect and categorize failure situations is crucial. Therefore, a Fault Diagnostic Mechanism is required to detect and categorize failure situations. The proposed work presents a comprehensive fault detection and classification method for grid-connected single-phase PV inverters. The proposed approach employs four machine learning algorithms: Logistic Regression, k-Nearest Neighbors (kNN), Decision Trees, and Random Forest. The above suggested algorithms meets the need for a reliable diagnostic predictor for PV inverters linked to the grid, making green energy systems more stable and reliable.
Source
Source
Anusandhan National Research Foundation/Science and Engineering Research Board (SERB), DST 2023-24
Science and Engineering Research Board (SERB), New Delhi
Anusandhan National Research Foundation (ANRF)
Quick Information
Area of Research
Engineering Sciences
Start Year
2024
End Year
2027
Sanction Amount
₹ 27.34 L
Status
Ongoing
Contact
vijaymuni1986@gmail.com
Output
No. of Research Paper
00
Technologies (If Any)
00
No. of PhD Produced
00
No. of Patents
Filed :00
Grant :00
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