Author:
Hu Ying,Sun Li Min,Yu Sheng Chen,Huang Jiang Lan,Wang Xiao Ju,Guo Hui
Abstract
In order to improve the detection rate of intruders in coal mine disaster warning internet of things, and to solve the problem that the back propagate neural network (BPNN) is invalid when these initial weight and threshold values of BPNN are chosen impertinently, Genetic Algorithms (GA) s characteristic of getting whole optimization value was combined with BPNNs characteristic of getting local precision value with gradient method. After getting an approximation of whole optimization value of weight and threshold values of BPNN by GA, the approximation was used as first parameter of BPNN, to train (educate) the BPNN again (in other words, learning). The educated BPNN was used to recognize intruders in internet of things. Experiment results shown that this method was useful and applicable, and the detection right rate of intruders was above 95% for the KDD CUP 1999 data set.
Publisher
Trans Tech Publications, Ltd.
Reference3 articles.
1. Biswanath Mukherjee, N. Levitt: Network Intrusion Detection. IEEE Networks, 24(3) ( 2008), P. 26-29.
2. YU Sheng-chen: Solution to Character Compression of Intrusion Detection System in Controllable and Trusted Networks. ITESS'2008), 2008, pp.704-710.
3. Chen Guoliang: The genetic algorithm and applies. Beijing: People's posts and telecommunications publishing press, 2007. 37-38.
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