Abstract: The wireless communication network is developing
rapidly, thus the wireless security becomes more and more important.
Specific emitter identification (SEI) is an vital part of wireless
communication security as a technique to identify the unique
transmitters. In this paper, a SEI method based on multiscale
dispersion entropy (MDE) and refined composite multiscale dispersion
entropy (RCMDE) is proposed. The algorithms of MDE and RCMDE
are used to extract features for identification of five wireless
devices and cross-validation support vector machine (CV-SVM)
is used as the classifier. The experimental results show that the
total identification accuracy is 99.3%, even at low signal-to-noise
ratio(SNR) of 5dB, which proves that MDE and RCMDE can
describe the communication signal series well. In addition, compared
with other methods, the proposed method is effective and provides
better accuracy and stability for SEI.
Abstract: SVM ( Support Vector Machine ) is a new method in the artificial neural network ( ANN ). In the steel making, how to use computer to predict the end point of BOF accuracy is a great problem. A lot of method and theory have been claimed, but most of the results is not satisfied. Now the hot topic in the BOF end point predicting is to use optical way the predict the end point in the BOF. And we found that there exist some regular in the characteristic curve of the flame from the mouse of pudding. And we can use SVM to predict end point of the BOF, just single spectrum intensity should be required as the input parameter. Moreover, its compatibility for the input space is better than the BP network.