Neural Network Based Short Term Forecasting Engine to Optimize Energy and Big Data Storage Resources of Wireless Sensor Networks
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Energy efficient wireless networks is the primary
research goal for evolving billion device applications like IoT,
smart grids and CPS. Monitoring of multiple physical events
using sensors and data collection at central gateways is the
general architecture followed by most commercial, residential
and test bed implementations. Most of the events monitored at
regular intervals are largely redundant/minor variations leading
to large wastage of data storage resources in Big data servers and
communication energy at relay and sensor nodes. In this paper
a novel architecture of Neural Network (NN) based day ahead
steady state forecasting engine is implemented at the gateway
using historical database. Gateway generates an optimal transmit
schedules based on NN outputs thereby reducing the redundant
sensor data when there is minor variations in the respective
predicted sensor estimates. It is observed that NN based load
forecasting for power monitoring system predicts load with less
than 3% Mean Absolute Percentage Error (MAPE). Gateway
forward transmit schedules to all power sensing nodes day ahead
to reduce sensor and relay nodes communication energy. Matlab
based simulation for evaluating the benefits of proposed model
for extending the wireless network life time is developed and
confirmed with an emulation scenario of our testbed. Network
life time is improved by 43% from the observed results using
proposed model.