New Machine Learning Algorithm Predicts Inverter Failures in Utility-Scale PV Plants, Portugal

Date:

Researchers at the University of Lisbon in Portugal have developed a new machine learning algorithm that can predict failures in the inverter subsystems of utility-scale PV plants. The algorithm monitors the inverter subsystems and sends alarms when maximum and minimum values are reached, thereby providing early warnings of potential failures.

The algorithm works by analyzing data and categorizing variables based on historic values. It identifies different types of failures, including grid faults, overvoltage and undervoltage issues, AC overcurrent, grid power failure, excessive stray current, and more. By monitoring these variables and detecting abnormalities, the algorithm can predict when failures may occur.

To test the effectiveness of the algorithm, researchers applied it to two ground-mounted PV systems with capacities of 140 kW and 590 kW. Both systems used inverters from German manufacturer SMA. The algorithm successfully analyzed the variables and identified failures related to inverter errors.

The classification and prediction models used in the algorithm are based on tree-based models, which divide the feature space into smaller, non-overlapping regions with similar response values. This approach allows for the identification of seasonal variations in inverter failures, providing valuable insights for reliability analysis.

Additionally, the researchers suggest using clamp circuits to the resonant capacitance in parallel to automatically protect inverters from inrush and overcurrent. This can enhance power-conversion efficiency by regenerating the clamp current to the input voltage source.

Overall, the newly developed algorithm offers a data-driven evaluation of inverter subsystems and their failure modes. By accurately predicting failures and identifying variations in their occurrence, it can help utility-scale PV plants improve reliability and maintenance strategies.

See also  ChatGPT-Powered AI Aiding Education During Difficult Times

The research conducted by the University of Lisbon highlights the potential of machine learning algorithms in the renewable energy sector. By harnessing the power of data analysis and predictive models, researchers and industry professionals can optimize the performance and efficiency of PV plants, ultimately contributing to the development of a more sustainable energy landscape.

Frequently Asked Questions (FAQs) Related to the Above News

What is the new machine learning algorithm developed by researchers at the University of Lisbon?

The algorithm developed by researchers at the University of Lisbon is designed to predict failures in the inverter subsystems of utility-scale PV plants.

How does the algorithm work?

The algorithm analyzes data and categorizes variables based on historic values. It identifies different types of failures in the inverter subsystems and sends alarms when maximum and minimum values are reached, providing early warnings of potential failures.

What types of failures can the algorithm detect?

The algorithm can detect failures such as grid faults, overvoltage and undervoltage issues, AC overcurrent, grid power failure, excessive stray current, and more.

How effective is the algorithm?

The algorithm has been successfully tested on two ground-mounted PV systems with capacities of 140 kW and 590 kW, using inverters from SMA, a German manufacturer. It accurately analyzed the variables and identified failures related to inverter errors.

What models are used in the algorithm?

The algorithm uses tree-based models for classification and prediction. These models divide the feature space into smaller regions with similar response values, allowing for the identification of seasonal variations in inverter failures.

What additional suggestion did the researchers make?

The researchers suggest using clamp circuits connected to the resonant capacitance in parallel to protect inverters from inrush and overcurrent. This can enhance power-conversion efficiency by regenerating the clamp current to the input voltage source.

What benefits does the algorithm offer for utility-scale PV plants?

The algorithm provides a data-driven evaluation of inverter subsystems and their failure modes. By accurately predicting failures and identifying variations in their occurrence, it can help improve reliability and maintenance strategies for utility-scale PV plants.

How does the research conducted by the University of Lisbon contribute to the renewable energy sector?

The research highlights the potential of machine learning algorithms in the renewable energy sector. By harnessing the power of data analysis and predictive models, researchers and industry professionals can optimize the performance and efficiency of PV plants, contributing to the development of a more sustainable energy landscape.

Please note that the FAQs provided on this page are based on the news article published. While we strive to provide accurate and up-to-date information, it is always recommended to consult relevant authorities or professionals before making any decisions or taking action based on the FAQs or the news article.

Share post:

Subscribe

Popular

More like this
Related

WhatsApp Unveils New AI Feature: Generate Images of Yourself Easily

WhatsApp introduces a new AI feature, allowing users to easily generate images of themselves. Revolutionizing the way images are interacted with on the platform.

India to Host 5G/6G Hackathon & WTSA24 Sessions

Join India's cutting-edge 5G/6G Hackathon & WTSA24 Sessions to explore the future of telecom technology. Exciting opportunities await! #IndiaTech #5GHackathon

Wimbledon Introduces AI Technology to Protect Players from Online Abuse

Wimbledon introduces AI technology to protect players from online abuse. Learn how Threat Matrix enhances player protection at the tournament.

Hacker Breaches OpenAI, Exposes AI Secrets – Security Concerns Rise

Hacker breaches OpenAI, exposing AI secrets and raising security concerns. Learn about the breach and its implications for data security.