Volume 6 - Issue 1
Conserving Energy Through Neural Prediction of Sensed Data
- Siamak Aram
Politecnico di Torino, Turin, Italy
siamak.aram@polito.it
- Ikramullah Khosa
Politecnico di Torino, Turin, Italy
ikramullah.khosa@polito.it
- Eros Pasero
Politecnico di Torino, Turin, Italy
eros.pasero@polito.it
Keywords: Wireless sensor networks, Neural networks, Data prediction, Power Consumption
Abstract
The constraint of energy consumption is a serious problem in wireless sensor networks (WSNs).
In this regard, many solutions for this problem have been proposed in recent years. In one line of
research, scholars suggest data driven approaches to help conserve energy by reducing the amount
of required communication in the network. This paper is an attempt in this area and proposes that
sensors be powered on intermittently. A neural network will then simulate sensors’ data during their
idle periods. The success of this method relies heavily on a high correlation between the points making
a time series of sensed data. To demonstrate the effectiveness of the idea, we conduct a number
of experiments. In doing so, we train a NAR network against various datasets of sensed humidity
and temperature in different environments. By testing on actual data, it is shown that the predictions
by the device greatly obviate the need for sensed data during sensors’ idle periods and save over 65
percent of energy.