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2006年07月12日

【期刊论文】Adaptive generalized generic model control and stability analysis

周东华, D. Wanga, D.H. Zhoua, b, *, Y.H. Jina, A.S. Morseb

Computers and Chemical Engineering 27(2003)1617-1629,-0001,():

-1年11月30日

摘要

In this article, an adaptive control method-adaptive generalized generic model control (AGGMC) is proposed for a class of nonlinear time-varying processes by use of a modified strong tracking filter (MSTF). It inherits all of the advantages of generic model control (GMC) and extends GMC to nonlinear time-varying processes with relative orders larger than ones. Sufficient conditions under which the MSTF is asymptotically convergent are first derived, then, with these conditions, the resultant closedloop system under the AGGMC is proved to be Lyapunov stable. Finally, simulation studies are provided to validate the effectiveness of the proposed approach.

Generic model control, Nonlinear systems, Time-varying systems, Strong tracking filter, Adaptive control, Stability analysis, Lyapunov stability

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2006年07月12日

【期刊论文】A frequencydomain approach to fault detection in sampled-data systems☆

周东华, P. Zhanga, S.X. Dingb, *, G.Z. Wanga, D.H. Zhoua

Automatica 39 (2003) 1303-1307,-0001,():

-1年11月30日

摘要

This paper deals with fault detection problems in sampled-data (SD) systems. A tool is 4rst introduced for the analysis of intersample behavior of SD systems in the frequency domain from the viewpoint of fault detection and isolation. Based on it, a direct design approach of fault detection systems for SD systems is proposed, and further the problem of full decoupling from unknown disturbances is studied.

Fault detection, Sampled-data systems, Residual generation, Frequency domain approach, Robustness

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2006年07月12日

【期刊论文】A strong tracking predictor for nonlinear processes with input time delay

周东华, D. Wanga, D.H. Zhoua, *, Y.H. Jina, S. Joe Qinb

Computers and Chemical Engineering 28(2004)2523-2540,-0001,():

-1年11月30日

摘要

Nonlinear state prediction is of crucial importance to design controllers for nonlinear processes with input time delay. In this paper, the extended nonlinear state predictor (ENSP) we proposed is first outlined, which is used to predict the future states of a class of nonlinear processes with input time delay. A new concept of strong tracking predictor (STP) is then proposed, and an rthogonality principle is given as a criterion to design the STP. On the basis of the orthogonality principle, the ENSP is modified, which results in a STP. After the detailed STP algorithm is presented, we prove that the STP is locally asymptotically convergent for a class of nonlinear deterministic processes if some sufficient conditions are satisfied. In the presence of measurement noise, it is further proved that the proposed STP is exponentially bounded under certain conditions. Finally, computer simulations with a MIMO nonlinear model are presented, which illustrate that the proposed STP can predict accurately the future states of a class of nonlinear time delay processes no matter whether the states change suddenly or slowly, in addition, it has definite robustness against model/plant mismatches.

Nonlinear processes, nput time delay, State predictor, Extended Kalman filter, Orthogonality principle, Strong tracking predictor, Convergence analysis

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2006年07月12日

【期刊论文】Estimation of time-varying time delay and parameters of a class of jump Markov nonlinear stochastic systems

周东华, Yan Lianga, De Xi Ana, Dong Hua Zhoua, *, Quan Panb

Computers and Chemical Engineering 27(2003)1761-1778,-0001,():

-1年11月30日

摘要

It is a challenging problem to estimate time-varying time delay and parameters, especially for systems subject to disturbances with unknown statistics in measurements. The desirable filter should be sensitive to unmodeled dynamics caused by random changes in time delay and parameters, and also be robust to disturbances. Recently, we proposed a finite-horizon robust Kalman filter (RKF) through designing and simultaneously minimizing the upper bounds of unknown covariances of prediction errors, filtering residuals and estimation errors. Unfortunately, unmodeled dynamics and disturbances must be hypothesized to be zero-mean white noises in the RKF. To cope with more general unmodeled dynamics and/or disturbances, a class of jump Markov stochastic systems (JMSS) subject to unmodeled dynamics and disturbances is considered in this article so that a priori system information, such as the value range of unknown and/or randomly changing parameters, can be introduced. Through combining the RKF with the interacting multiple model (IMM) estimation technique, a RKF/IMM algorithm is proposed for such JMSS. Then it is applied to estimate timevarying time delay and parameters of a continuous stirred tank reactor (CSTR) with sensors subject to Gaussian disturbances with unknown means and/or covariances. The RKF/IMM algorithm is compared with the extended Kalman filter (EKF), the strong tracking filter (STF) and the RKF through computer simulations. The results show that, in the case that measurement disturbances are zero-mean noise with unknown covariances, the RKF/IMM and RKF achieve almost the same accurate estimates, which are superior to those of the STF and EKF; in the case that such disturbances have unknown covariances and time-varying means, only the RKF/IMM remains the ability to estimate time-varying time delay and parameters. Furthermore the RKF/IMM has unique ability to identify the disturbance mean no matter whether it is constant or time-varying. Moreover, the RKF/IMM algorithm is shown having strong robustness against the a priori filter parameters, this may be attractive in practical applications.

Time delay estimation, Parameter estimation, Robust filters, Multiple model estimation, Stochastic systems

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2006年07月12日

【期刊论文】The modeling and estimation of asynchronous multirate multisensor dynamic systems

周东华, L.P. Yana, B.S. Liua, b, D.H. Zhoua, *

Aerospace Science and Technology 10(2006)63-71,-0001,():

-1年11月30日

摘要

An asynchronous data fusion problem based on a kind of multirate multisensor dynamic system is studied. The system is observed by multirate sensors independently, with the state model known at the finest scale. Under the assumption that the sampling rates of sensors decrease successively by any positive integers, the discrete dynamic system models are established based on each single sensor and an asynchronous multirate multisensor state fusion estimation algorithm is presented. Theoretically, the estimate is proven to be unbiased and the optimal in the sense of linear minimum covariance, the fused estimate is better than the Kalman filtering results based on each single sensor, and the accuracy of the fused estimate will decrease if any of the sensors' information is neglected. The feasibility and effectiveness of the algorithm are shown through simulations.

Asynchronous, Multirate, Multisensor, Kalman filter, Data fusion

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  • 周东华 邀请

    清华大学,北京

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