TY - JOUR
T1 - Support-vector-machine-enhanced markov model for short-term wind power forecast
AU - Yang, Lei
AU - He, Miao
AU - Zhang, Junshan
AU - Vittal, Vijay
N1 - Publisher Copyright:
© 2010-2012 IEEE.
PY - 2015/7/1
Y1 - 2015/7/1
N2 - Wind ramps introduce significant uncertainty into wind power generation. Reliable system operation, however, requires accurate detection and forecast of wind ramps, especially at high penetration levels. In this paper, to deal with the wind ramp dynamics, a support vector machine (SVM)-enhanced Markov model is developed for short-term wind power forecast, based on one key observation from the measurement data that wind ramps often occur with specific patterns. Specifically, using the historical data of the wind turbine power outputs recorded at an actual wind farm, data analytics-based finite-state Markov models are first developed to model the normal fluctuations of wind generation, while taking into account the diurnal nonstationarity and the seasonality of wind generation. Next, the forecast by the SVM is integrated cohesively into the finite-state Markov models. Based on the SVM-enhanced Markov model, both short-term distributional forecasts and point forecasts are then derived. Numerical test results, using real wind generation data traces, demonstrate the significantly improved accuracy of the proposed forecast approach.
AB - Wind ramps introduce significant uncertainty into wind power generation. Reliable system operation, however, requires accurate detection and forecast of wind ramps, especially at high penetration levels. In this paper, to deal with the wind ramp dynamics, a support vector machine (SVM)-enhanced Markov model is developed for short-term wind power forecast, based on one key observation from the measurement data that wind ramps often occur with specific patterns. Specifically, using the historical data of the wind turbine power outputs recorded at an actual wind farm, data analytics-based finite-state Markov models are first developed to model the normal fluctuations of wind generation, while taking into account the diurnal nonstationarity and the seasonality of wind generation. Next, the forecast by the SVM is integrated cohesively into the finite-state Markov models. Based on the SVM-enhanced Markov model, both short-term distributional forecasts and point forecasts are then derived. Numerical test results, using real wind generation data traces, demonstrate the significantly improved accuracy of the proposed forecast approach.
KW - Distributional forecast
KW - Markov chain
KW - point forecast
KW - short-term wind power forecast
KW - support vector machine (SVM)
KW - wind farm
UR - http://www.scopus.com/inward/record.url?scp=85027956105&partnerID=8YFLogxK
U2 - 10.1109/TSTE.2015.2406814
DO - 10.1109/TSTE.2015.2406814
M3 - Article
AN - SCOPUS:85027956105
SN - 1949-3029
VL - 6
SP - 791
EP - 799
JO - IEEE Transactions on Sustainable Energy
JF - IEEE Transactions on Sustainable Energy
IS - 3
M1 - 7081774
ER -