摘要
LM-BP网络对其初始权值和阈值敏感,泛化能力不强,针对该缺点,采用遗传算法(GA)对其初始权阈值进行优化,在一定程度上能提高LM-BP网络的泛化能力。为进一步扩展GA初始种群的覆盖范围,进一步提高LM-BP网络的泛化能力,采用多次随机产生初始种群多次优化的方法。以伦河孝感段氟化物含量为实例,建立随机GA的LM-BP网络模型,对原始数据进行拟合及测试,结果表明该方法基本能100%拟合,测试误差不超过2.3%。经过对比实验,证明了该方法的有效性。
The LM-BP neural network was sensitive to its initial weight values and threshold, and it had bad generalization ability. In view of its shortcomings, the initial weights and threshold of LM-BP neural network were optimized with GA. The generalization of LM -BP neural network was improved to a certain extent. To expand the coverage of initial population, the initial populations were randomly generated iteratively and the network was optimized multi times. Thus, the generalization of LM-BP network was further improved. Take the content of fluorine in Lun River from Xiaogan as an example, the LM-BP neural network model based on random GA was estab- lished, and the raw data were fitted and tested. The results showed that the accordance of fitting data is approximately 100%, and the tes- ting errors were less than 2.3 %. Through contrast experiments, the validity of this method was proved.
出处
《计算机技术与发展》
2014年第1期105-108,共4页
Computer Technology and Development
基金
湖北省教育科研计划重点项目(D20122606)
湖北工程学院项目(Z2011009)
关键词
随机遗传算法
神经网络
测试误差
泛化能力
random genetic algorithm
neural network
test error
generalization capability