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Unbiased parameter estimation of continuous-time system based on modulating functions with input and output white noises

Unbiased parameter estimation of continuous-time system based on modulating functions with input and output white noises
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摘要 An efficient unbiased estimation method is proposed for the direct identification of linear continuous-time system with noisy input and output measurements.Using the Gaussian modulating filters,by numerical integration,an equivalent discrete identification model which is parameterized with continuous-time model parameters is developed,and the parameters can be estimated by the least-squares (LS) algorithm.Even with white noises in input and output measurement data,the LS estimate is biased,and the bias is determined by the variances of noises.According to the asymptotic analysis,the relationship between bias and noise variances is derived.One equation relating to the measurement noise variances is derived through the analysis of the LS errors.Increasing the degree of denominator of the system transfer function by one,an extended model is constructed.By comparing the true value and LS estimates of the parameters between original and extended model,another equation with input and output noise variances is formulated.So,the noise variances are resolved by the set of equations,the LS bias is eliminated and the unbiased estimates of system parameters are obtained.A simulation example by comparing the standard LS with bias eliminating LS algorithm indicates that the proposed algorithm is an efficient method with noisy input and output measurements. An efficient unbiased estimation method is proposed for the direct identification of linear continuous-time system with noisy input and output measurements. Using the Gaussian modulating filters, by numerical integration, an equivalent discrete identification model which is parameterized with continuous-time model parameters is developed, and the parameters can be estimated by the least-squares (LS) algorithm. Even with white noises in input and output measurement data, the LS estimate is biased, and the bias is determined by the variances of noises. According to the asymptotic analysis, the relationship between bias and noise variances is derived. One equation relating to the measurement noise variances is derived through the analysis of the LS errors. Increasing the degree of denominator of the system transfer function by one, an extended model is constructed, By comparing the true value and LS estimates of the parameters between original and extended model, another equation with input and output noise variances is formulated. So, the noise variances are resolved by the set of equations, the LS bias is eliminated and the unbiased estimates of system parameters are obtained. A simulation example by comparing the standard LS with bias eliminating LS algorithm indicates that the proposed algorithm is an efficient method with noisy input and output measurements.
出处 《Journal of Central South University》 SCIE EI CAS 2011年第3期773-781,共9页 中南大学学报(英文版)
基金 Project(50875028) supported by the National Natural Science Foundation of China
关键词 连续时间系统 输出噪声 无偏估计 参数估计 白噪声 输入 调节功能 LS估计 continuous-time system unbiased parameter modulating functions noise
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参考文献11

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