학술논문

Redills: Deep Learning-Based Secure Data Analytic Framework for Smart Grid Systems
Document Type
Conference
Source
2020 IEEE International Conference on Communications Workshops (ICC Workshops) Communications Workshops (ICC Workshops), 2020 IEEE International Conference on. :1-6 Jun, 2020
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineering Profession
Fields, Waves and Electromagnetics
General Topics for Engineers
Photonics and Electrooptics
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Energy consumption
Predictive models
Load modeling
Home appliances
Load forecasting
Smart grids
Data models
Load Forecasting
LSTM
Deep Learning
Priority Analysis
Smart grid
Demand Response
Language
ISSN
2474-9133
Abstract
With the increasing demand for electricity and the smart grids (SG) systems, it becomes essential for them to realize the need for accurate energy demand at the demand response management (DRM). It directly impacts the consumer's lifestyle and also helps to reduce the electricity bill. Motivated from these facts, This paper proposes a priority analyzer to determine energy usage in the best time-slots. By employing a time-of-use (ToU) based data analytic approach, this paper predicts energy load expectation and gives analysis for the economical use of electrical appliances to reduce bills (Redills). The Redills offers a solution to the requirements of the user to save energy at the demand side and reduce energy production at the supply side of the DRM system. Redills accurately predicts the future load consumption based on the historical data using deep learning (DL)-based LSTM model, and then passes the prediction to the priority analyzer system to generate the monthly and season based priority list of ToU. Based on the time-slot priority list, the consumer can use the devices in the effective time slots for the economical use of the appliance. The simulation results show that Redills predicts energy consumption more accurately as compared to the state-of-art approaches.