The invention discloses an IMABC optimized
support vector machine-based
transformer fault diagnosis method. The method comprises the steps of 1, dividing a collected sample set S={(x1,x2),(x2,y2)...(xn,yn)}, with class tags, of an oil-immersed
transformer into training samples and test samples, wherein xi represents sample attributes including five attributes of
hydrogen,
methane, ethane, ethyleneand
acetylene, yi represents the class tags, and 1, 2, 3, 4, 5 and 6 correspond to a
normal state, middle temperature overheat, high temperature overheat, local
discharge,
spark discharge and arc
discharge respectively; 2, proposing an improved
artificial bee colony algorithm, fusing
population classification and
gene mutation in the
artificial bee colony algorithm, and optimizing parameters of asupport vector
machine; and 3, taking Ci and sigma i as the optimized parameters of the
support vector machine, building a multilevel
support vector machine fault diagnosis model, and performing
transformer fault diagnosis by utilizing data in the step 1. According to the transformer fault diagnosis method, the parameters of the support vector
machine can be effectively optimized, so that the accuracy of
binary classification is improved.