A Novel Application to Increase Energy Efficiency Using Artificial Neural Networks
Künye
BÜYÜK, Oğuzhan Oktay & Sevgi Nur BİLGİN. "A Novel Application to Increase Energy Efficiency Using Artificial Neural Networks". 4th International Istanbul Smart Grid Congress and Fair (ICSG), 2016.Özet
In this paper, a novel system application to recover
electricity losses using an unsupervised learning, self-learning
mapping mechanism is introduced. Actually, energy and its
transmission are becoming a vital issue for both the economy and
the environment. Considering many devices in our world run on
electricity, it is now important to keep up with how we can obtain
maximum energy efficiency in electricity transmission by reducing
losses and leakage. A new system application and module
approach can communicate with electricity transmission lines to
define and track energy losses. In this study, we examine how the
system uses unsupervised learning to find the best transmission
path to follow. This application is designed to interconnect with
electricity transmission line on smart grids. This system also has
critical recovering on CO2 emissions occurring on routing correct
plan, notification integration which may prepare a report to the
network nodes by itself.