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Articles by S.N. Deepa
Total Records ( 2 ) for S.N. Deepa
  Naraina Avudayyappan and S.N. Deepa
  In the modern market of power system, obtaining an optimal placement and setting up the FACTS devices epitomizes an onerous optimization problem. This is due to its cogent objective function along with multimodal nature. This study presents a solution methodology for optimal placement of Thyristor Controlled Series Capacitor (TCSC) and Static VAR Compensator (SVC) as FACTS devices in transmission system. This multi objective function is solved by employing a hybrid Fruit Fly Firefly Algorithm (FFFA) based optimization technique. The proposed model is demonstrated using IEEE30 bus system and the results obtained are validated by comparing the obtained result with existing optimization approaches. The results indicate that the proposed algorithm is capable of finding best location for placing TCSC and SVC.
  M. Madhiarasan and S.N. Deepa
  This study is intended to propose new criteria to decide appropriate hidden layer neuron numbers in Recursive Radial Basis Function Networks (RRBFN) and successfully applied to the wind speed forecasting application in renewable energy system. Purpose of the proposed methodology eliminate both either over fitting or under fitting issues. The proper hidden layer neuron numbers is evolved through the presented 150 various criteria. Exact modeling of recursive radial basis function networks possess with three input variables using the proposed new determining criteria are validated by means of the convergence theorem. In order to verify effectiveness and generalization capability of the proposed methodology, computer simulation is carried out on two real-time data sets and selection of data influence on the results are analyzed with various training and testing data. Experiment results confirmed that the proposed criteria result better framework for recursive radial basis function networks with reduced statistical errors compared with other previous methodologies.
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