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基于支持向量机的传感器非线性动态补偿方法
引用本文:汪晓东,张浩然,张长江,汪金山,蒋敏兰,武林.基于支持向量机的传感器非线性动态补偿方法[J].测试技术学报,2006,20(2):184-188.
作者姓名:汪晓东  张浩然  张长江  汪金山  蒋敏兰  武林
作者单位:浙江师范大学,信息科学与工程学院,浙江,金华,321004
摘    要:提出了应用支持向量机(LS-SVM)实现传感器非线性动态补偿方法.LS-SVM的训练过程遵循的是结构风险最小化原则,而不是通常神经网络的经验误差最小化,可获得更好的泛化性能,不易发生局部最优及过拟合现象,因此可弥补应用人工神经网络进行传感器非线性动态补偿的缺陷.通过实例验证了该方法的可行性,结果表明,即使当传感器动态模型存在严重非线性,且有测量噪声存在,该方法也仍然有效.

关 键 词:传感器  非线性  动态补偿  最小二乘支持向量机
文章编号:1671-7449(2006)02-0184-05
收稿时间:2005-02-09
修稿时间:2005年2月9日

Nonlinear Dynamic Compensation of Sensors Based on Least Squares Support Vector Machines
WANG Xiao-dong,ZHANG Hao-ran,ZHANG Chang-jiang,WANG Jin-shan,JIANG Min-lan,WU Lin.Nonlinear Dynamic Compensation of Sensors Based on Least Squares Support Vector Machines[J].Journal of Test and Measurement Techol,2006,20(2):184-188.
Authors:WANG Xiao-dong  ZHANG Hao-ran  ZHANG Chang-jiang  WANG Jin-shan  JIANG Min-lan  WU Lin
Abstract:The least squares support vector machine(LS-SVM) is proposed for nonlinear dynamic compensation of sensors based on the structural risk minimization principle rather than the empirical error minimization principle commonly implemented in the neural networks,the LS-SVM can achieve higher generalization performance,the local minima and over fitting are unlikely to occur.Therefore,the LS-SVM can overcome the shortcomings of neural networks in nonlinear dynamic compensation of sensors.The feasibility of the method is demonstrated by applying it to a practical example.The experimental results show that the method is still effective even if the sensor's dynamic model is of high nonlinearity and there exists additive measuring noise.
Keywords:sensor  nonlinearity  dynamic compensation  least squares support vector machines
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