The invention discloses a micro-seismic
signal identification method based on a quasi-optimal
Gaussian kernel multi-classification
support vector machine, and belongs to the field of
machine learningand
data mining. The method comprises the following steps: firstly, dividing micro-seismic data according to channels, and performing
data format conversion; secondly, performing
feature extraction oneach piece of
channel data according to a mean value and a variance, combining all channels of the same sample to form a new feature, and performing
feature selection on the synthesized data by utilizing an optimal
Gaussian kernel-like multi-classification
support vector machine to generate a dimensionality-reduced unbalanced training sample set; thirdly, determining an under-sampling rate according to the non-equilibrium rate of the training sample, and carrying out under-sampling on the large class of samples; and finally, a multi-classification
support vector machine is adopted to construct a
microseism signal classifier after dimension reduction. According to the method, the influence of redundant features on classification can be effectively reduced; double
dimensionality reduction is carried out on the channel characteristics and the combined characteristics, so that the microseismic
signal dimensionality is effectively reduced, the accuracy and timeliness of a microseismic signal classifier are improved, and the accuracy of
rock burst disaster early warning is improved.