TY - JOUR
T1 - Modal analysis of an operational offshore wind turbine using enhanced Kalman filter-based subspace identification
AU - van Vondelen, Aemilius A.W.
AU - Iliopoulos, Alexandros
AU - Navalkar, Sachin T.
AU - van der Hoek, Daan C.
AU - van Wingerden, Jan Willem
PY - 2023
Y1 - 2023
N2 - Operational modal analysis (OMA) is an essential tool for understanding the structural dynamics of offshore wind turbines (OWTs). However, the classical OMA algorithms require the excitation of the structure to be stationary white noise, which is often not the case for operational OWTs due to the presence of periodic excitation caused by rotor rotation. To address this issue, several solutions have been proposed in the literature, including the Kalman filter-based stochastic subspace identification (KF-SSI) method which eliminates harmonics through estimation and orthogonal projection. In this paper, an enhanced version of the KF-SSI method is presented that involves a concatenation step, allowing multiple datasets with similar environmental conditions to be used in the identification process, resulting in higher precision. This enhanced framework is applied to an operational OWT and compared to other OMA methods, such as the modified least-squares complex exponential and PolyMAX. Using field data from a multi-megawatt operational OWT, it is shown that the enhanced framework is able to accurately distinguish the first three bending modes with more stable estimates and lower variance compared to the original KF-SSI algorithm and follows a similar trend compared to other approaches.
AB - Operational modal analysis (OMA) is an essential tool for understanding the structural dynamics of offshore wind turbines (OWTs). However, the classical OMA algorithms require the excitation of the structure to be stationary white noise, which is often not the case for operational OWTs due to the presence of periodic excitation caused by rotor rotation. To address this issue, several solutions have been proposed in the literature, including the Kalman filter-based stochastic subspace identification (KF-SSI) method which eliminates harmonics through estimation and orthogonal projection. In this paper, an enhanced version of the KF-SSI method is presented that involves a concatenation step, allowing multiple datasets with similar environmental conditions to be used in the identification process, resulting in higher precision. This enhanced framework is applied to an operational OWT and compared to other OMA methods, such as the modified least-squares complex exponential and PolyMAX. Using field data from a multi-megawatt operational OWT, it is shown that the enhanced framework is able to accurately distinguish the first three bending modes with more stable estimates and lower variance compared to the original KF-SSI algorithm and follows a similar trend compared to other approaches.
KW - damping
KW - harmonics
KW - Kalman filter
KW - offshore wind turbine
KW - operational modal analysis
KW - stochastic subspace identification
UR - http://www.scopus.com/inward/record.url?scp=85165016695&partnerID=8YFLogxK
U2 - 10.1002/we.2849
DO - 10.1002/we.2849
M3 - Article
AN - SCOPUS:85165016695
SN - 1095-4244
VL - 26
SP - 923
EP - 945
JO - Wind Energy
JF - Wind Energy
IS - 9
ER -