Real Time Monitoring of Battery State of Charge using Artificial Neural Networks
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Sai Vasudeva Bhagavatula | Venkata Rupesh Bharadwaj Yellamraju | Karthik Chandra Eltem | P. B. Bobba | Satyanarayana Kosaraju | PN Shashank | Naveen Kumar Marati
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