TY - JOUR
T1 - Identification of Representative Wind Power Fluctuation Patterns for Water Electrolysis Device Stress Testing
T2 - A Data Mining Approach
AU - Choi, Kyong Jin
AU - Kim, Sanghoon
AU - Kwon, Yongchai
AU - Sim, Min Kyu
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Korean Institute of Chemical Engineers, Seoul, Korea 2024.
PY - 2024/11
Y1 - 2024/11
N2 - Wind power generation is expected to greatly contribute to the future of humanity as a promising source of renewable energy. However, the high variability inherent in wind is a challenge that hinders stable power generation. To utilize wind power as a primary energy source, integration with a polymer electrolyte membrane water electrolysis (PEMWE) system is proposed. Yet, PEMWE is known to suffer from degradation when exposed to input power patterns with high variability. This poses challenges to its commercialization. This necessitates stress testing with various wind power fluctuations during the production process of the devices. This study investigates representative patterns of wind power fluctuation so that these patterns can be used for the stress testing process. We employ data-mining techniques, including the swing door algorithm and k-means clustering, to identify these patterns by analyzing wind power generation data at a 10-s interval. As a result, the five most representative wind power ramps are presented. This study provides practical guidelines for the development process of expensive devices for wind power generation, thereby promoting the active utilization of wind power generation.
AB - Wind power generation is expected to greatly contribute to the future of humanity as a promising source of renewable energy. However, the high variability inherent in wind is a challenge that hinders stable power generation. To utilize wind power as a primary energy source, integration with a polymer electrolyte membrane water electrolysis (PEMWE) system is proposed. Yet, PEMWE is known to suffer from degradation when exposed to input power patterns with high variability. This poses challenges to its commercialization. This necessitates stress testing with various wind power fluctuations during the production process of the devices. This study investigates representative patterns of wind power fluctuation so that these patterns can be used for the stress testing process. We employ data-mining techniques, including the swing door algorithm and k-means clustering, to identify these patterns by analyzing wind power generation data at a 10-s interval. As a result, the five most representative wind power ramps are presented. This study provides practical guidelines for the development process of expensive devices for wind power generation, thereby promoting the active utilization of wind power generation.
KW - Stress testing
KW - Swing door algorithm
KW - Wind power fluctuation
KW - Wind power generation
KW - k-means clustering
UR - https://www.scopus.com/pages/publications/85204526658
U2 - 10.1007/s11814-024-00286-z
DO - 10.1007/s11814-024-00286-z
M3 - Article
AN - SCOPUS:85204526658
SN - 0256-1115
VL - 41
SP - 3251
EP - 3262
JO - Korean Journal of Chemical Engineering
JF - Korean Journal of Chemical Engineering
IS - 12
ER -