• CN:11-2187/TH
  • ISSN:0577-6686

›› 2014, Vol. 50 ›› Issue (18): 29-35.

• 论文 • 上一篇    下一篇

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Gamma Test噪声估计的Kalman神经网络在动态工业过程建模中的应用

李太福;侯杰;姚立忠;易军;辜小花;游勇涛   

  1. 重庆科技学院电气与信息工程学院;大连理工大学先进控制研究所;重庆大学自动化学院
  • 发布日期:2014-09-20

Kalman Artificial Neural Network with Measurable Noise Estimation by Gamma Test for Dynamic Industrial Process Modeling

LI Taifu; HOU Jie; YAO Lizhong; YI Jun; GU Xiaohua; YOU Yongtao   

  1. Department of Electrical and Information Engineering, Chongqing University of Science and Technology;School of Control Science and Engineering, Dalian University of Technology;College of Automation, Chongqing University
  • Published:2014-09-20

摘要: Kalman神经网络以其良好的自适应非线性逼近能力,被广泛用于复杂非线性动态工业过程建模。传统噪声估计方法难以得到观测噪声不确定动态工业过程的噪声估计值,因而常将观测噪声估计值置零以进行Kalman神经网络建模,影响Kalman神经网络的建模效果,限制了Kalman神经网络在观测噪声不确定动态工业过程建模中的应用。有效利用观测输入输出数据,提出样本有效噪声估计(Gamma test, GT)改进的Kalman神经网络建模方法。采用衰减记忆的GT对输入输出数据进行实时估计,得到准确的观测噪声估计值,再利用Kalman神经网络实现精确建模。验证结果表明,该方法对EKF神经网络模型和UKF神经网络模型均有很好的改善作用,有效解决观测噪声不确定引起的Kalman神经网络模型发散问题,为采用Kalman神经网络建立噪声不确定动态工业过程的精确模型提供了一条有效途径。

关键词: 卡尔曼滤波;神经网络;观测噪声;动态工业过程建模

Abstract: Kalman filter neural network(KFNN) have been widely used in modeling for complex industrial process, because they have abilities to adaptive approximate the nonlinear and dynamic properties of the process. However, the performances of KFNN will diverge because it can’t get accurate statistics of unmeasurable noise by traditional noise estimation methods. A new KFNN with gamma test(GT) is proposed for industrial process modeling with the unmeasurable noise. The moving window idea is introduced to GT algorithm, and the improved GT is used to track the changes of the observable noise covariance in real time because it can get the accurate statistics of the unmeasurable noise only use the input-output data. Then the covariance in the traditional KFNN is replaced by real-time estimation from the improved GT algorithm. In this way, the KFNN is enhanced by the GT algorithm. In order to verify, the proposed KFNN is used to model the industrial process. The efficiency of the new KFNN is verified by complex hydrocyanic acid(HCN) industrial process. Verification show that the performance of the proposed KFNN model superior to those of the traditional KFNN, e.g. the extended Kalman filter artificial neural network(EKFNN) and the unscented Kalman filter artificial neural network(UKFNN). Therefore, the proposed method provides a new solution to get the accurate model of the industrial process with unmeasurable noise.

Key words: Kalman filter;artificial neural network;measurement noise;dynamic industrial process modeling

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