As the fourth industrial revolution and information and communication technology base are growing and the Internet of Things is distributed, a newly set goal is to use the energy of various industries efficiently. This paper is a study to solve the energy consumption problem and to use it efficiently. Specifically, sensors inside the device and ARM embedded boards are used to identify energy usage, store energy efficiency in real time in cloud services, Amazon Web Services (AWS), and leverage Grafana, a data analytics tool to visualize and present to users. It also provides intelligent energy data to people, providing them with the ability to use energy more effectively than traditional methods. Through this process, energy information is identified in real life by mobile and Personal Computer (PC) and prevent and monitor energy consumption that is not efficient.
[1]
Wei Wang,et al.
Node Identification in Wireless Network Based on Convolutional Neural Network
,
2018,
2018 14th International Conference on Computational Intelligence and Security (CIS).
[2]
Valeria Costantini,et al.
The causality between energy consumption and economic growth: A multi-sectoral analysis using non-stationary cointegrated panel data
,
2010
.
[3]
Uri Weiser,et al.
Spatial Correlation and Value Prediction in Convolutional Neural Networks
,
2018,
IEEE Computer Architecture Letters.
[4]
Anna Corinna Cagliano,et al.
Current trends in Smart City initiatives: some stylised facts
,
2014
.