AN ARTIFICIAL NEURAL NElWORK BASED PREESTIMATION FILTER FOR BAD DATA DETECTION, IDENTIFICATION AND ELIMINATION IN STATE ESTIMATION

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چکیده

State estimators are vitally important in energy control centers. The measurements that come from control system are generally analysed by a state estimator. Since there can al\V<1ysbe bad measurements in the system, estimated value and the true value of the state estimator can be far from each other. In this paper, by using an artificial neural network (ANN), a bad data detection, identification and then elimination preestimation filter is outlined.

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تاریخ انتشار 2009