Hierarchical Data-Driven Protection for Microgrid with 100% Renewable Penetration: Preprint
The accurate detection and isolation of faults is critical for the reliable operation of microgrids (MGs). Traditional protection approaches are even more challenged for 100% renewable MGs because inverter-based resources (IBRs) are the only sources for fault current which are usually low and unpredictable/non-uniform. This calls for new protection scheme that can identify IBR fault responses and detect faults in MGs. Data-driven based protection can learn the pattern of IBR fault responses and make the correct decision to identify faults. Therefore, this paper presents a data-driven approach for fault localization in island MGs. The approach builds a training dataset of comprehensive fault scenarios that can be used to learn fault characteristics from processed measurements. The localization task is modeled as a binary classification problem at each relay, which simplifies the learning process. Then, a hierarchical decision mechanism is used to identify the fault location. The proposed approach is assessed using an exemplary MG with several grid-forming (GFM) and grid-following (GFL) inverters, where accurate estimation of fault location is achieved. The data-driven based protection approach developed in this paper provides a generic framework and useful guidance for power system protection engineers to achieve reliable protection for MGs with 100% renewables.
Citation Formats
TY - DATA
AB - The accurate detection and isolation of faults is critical for the reliable operation of microgrids (MGs). Traditional protection approaches are even more challenged for 100% renewable MGs because inverter-based resources (IBRs) are the only sources for fault current which are usually low and unpredictable/non-uniform. This calls for new protection scheme that can identify IBR fault responses and detect faults in MGs. Data-driven based protection can learn the pattern of IBR fault responses and make the correct decision to identify faults. Therefore, this paper presents a data-driven approach for fault localization in island MGs. The approach builds a training dataset of comprehensive fault scenarios that can be used to learn fault characteristics from processed measurements. The localization task is modeled as a binary classification problem at each relay, which simplifies the learning process. Then, a hierarchical decision mechanism is used to identify the fault location. The proposed approach is assessed using an exemplary MG with several grid-forming (GFM) and grid-following (GFL) inverters, where accurate estimation of fault location is achieved. The data-driven based protection approach developed in this paper provides a generic framework and useful guidance for power system protection engineers to achieve reliable protection for MGs with 100% renewables.
AU - Zamzam, Ahmed
A2 - Wang, Jing
DB - C-MIX - Community Microgrid Information Exchange
DP - Open EI | National Laboratory of the Rockies
DO -
KW - Solar
KW - Photovoltaics
KW - PV
KW - Power electronics and inverters
KW - Power electronics
KW - Inverters
KW - Battery energy storage
KW - Diesel generators
KW - Other liquid-fuel generators
KW - Standards
KW - Interconnection
KW - Protection
KW - Maintenance and operations
KW - Operations
KW - Maintenance
KW - Commissioning
KW - Workforce development
KW - Training
LA - English
DA - 2023/11/01
PY - 2023
PB - NLR
T1 - Hierarchical Data-Driven Protection for Microgrid with 100% Renewable Penetration: Preprint
UR - https://cmix.openei.org/submissions/27
ER -
Zamzam, Ahmed, and Jing Wang. Hierarchical Data-Driven Protection for Microgrid with 100% Renewable Penetration: Preprint. NLR, 1 November, 2023, C-MIX - Community Microgrid Information Exchange. https://cmix.openei.org/submissions/27.
Zamzam, A., & Wang, J. (2023). Hierarchical Data-Driven Protection for Microgrid with 100% Renewable Penetration: Preprint. [Data set]. C-MIX - Community Microgrid Information Exchange. NLR. https://cmix.openei.org/submissions/27
Zamzam, Ahmed and Jing Wang. Hierarchical Data-Driven Protection for Microgrid with 100% Renewable Penetration: Preprint. NLR, November, 1, 2023. Distributed by C-MIX - Community Microgrid Information Exchange. https://cmix.openei.org/submissions/27
@misc{CMIX_Dataset_27,
title = {Hierarchical Data-Driven Protection for Microgrid with 100\% Renewable Penetration: Preprint},
author = { Zamzam, Ahmed and Wang, Jing },
abstractNote = {The accurate detection and isolation of faults is critical for the reliable operation of microgrids (MGs). Traditional protection approaches are even more challenged for 100\% renewable MGs because inverter-based resources (IBRs) are the only sources for fault current which are usually low and unpredictable/non-uniform. This calls for new protection scheme that can identify IBR fault responses and detect faults in MGs. Data-driven based protection can learn the pattern of IBR fault responses and make the correct decision to identify faults. Therefore, this paper presents a data-driven approach for fault localization in island MGs. The approach builds a training dataset of comprehensive fault scenarios that can be used to learn fault characteristics from processed measurements. The localization task is modeled as a binary classification problem at each relay, which simplifies the learning process. Then, a hierarchical decision mechanism is used to identify the fault location. The proposed approach is assessed using an exemplary MG with several grid-forming (GFM) and grid-following (GFL) inverters, where accurate estimation of fault location is achieved. The data-driven based protection approach developed in this paper provides a generic framework and useful guidance for power system protection engineers to achieve reliable protection for MGs with 100\% renewables.},
url = {https://cmix.openei.org/submissions/27},
year = {2023},
howpublished = {C-MIX - Community Microgrid Information Exchange, NLR, https://cmix.openei.org/submissions/27},
note = {Accessed: 2026-06-18}
}
Details
Data from Nov 1, 2023
Last updated Mar 30, 2026
Submitted Jun 2, 2026
Organization
NLR
Contact
Jing Wang

