Publication | Closed Access
Rough-Set-Based Feature Selection and Classification for Power Quality Sensing Device Employing Correlation Techniques
55
Citations
22
References
2012
Year
EngineeringPower Optimization (Eda)Feature SelectionEmbedded SystemsEnergy MonitoringData ScienceData MiningPattern RecognitionSystems EngineeringPic24f Series MicrocontrollerRough SetElectric Power QualityRough-set-based Feature SelectionPower SystemsElectrical EngineeringComputer EngineeringPower Quality DisturbancesSignal ProcessingMicrocontroller-based Embedded SystemSmart GridPower Quality
In this paper, we present a scheme of rough-set-based minimal set of feature selection and classification of power quality disturbances that can be implemented in a general-purpose microcontroller for embedded applications. The developed scheme can efficiently sense the power quality disturbances by the features extracted from the cross-correlogram of power quality disturbance waveforms. In this paper, a stand-alone module, employing microcontroller-based embedded system, is devised for efficiently sensing power quality disturbances in real time for in situ applications. The stand-alone module is developed on a PIC24F series microcontroller. Results show that the accuracy of the proposed scheme is comparable to that obtained in offline analysis using a computer. The method stated here is generic in nature and can be implemented for other microcontroller-based applications for topologically similar problems.
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