An Intelligent Management Mechanism for Residential Power Under Software Defined Network

The residential power is the lifeblood of the national economy, and its efficient management is of great significance. Precise prediction of the residential power demand has always been a most important concern of management mechanism which can be carried by a software defined network (SDN) platform. However, existing methods are heavily reliable on data with multiple features and high dimensions, failing to discovering sequential characteristics from simple and sparse data. In this paper, we develop a residual correction-based grey prediction model for residential power management under SDN. In detail, the residual function is used to correct the prediction value of the traditional gray model, so that prediction accuracy can be improved. Besides, a set of computational experiments are carried out on real-world business data to assess precision accuracy of the proposed model. It is concluded through experiments that the proposed model can better predict residential power demand.

[1]  M. Mao,et al.  Application of grey model GM(1, 1) to vehicle fatality risk estimation , 2006 .

[2]  Jan Palczewski,et al.  Monte Carlo Simulation , 2008, Encyclopedia of GIS.

[3]  Yagang Zhang,et al.  GM(1,1) grey prediction of Lorenz chaotic system , 2009 .

[4]  Wei Zhou,et al.  Generalized GM (1, 1) model and its application in forecasting of fuel production , 2013 .

[5]  Xinping Xiao,et al.  Error and its upper bound estimation between the solutions of GM(1, 1) grey forecasting models , 2014, Appl. Math. Comput..

[6]  Hyojoo Son,et al.  Forecasting Short-term Electricity Demand in Residential Sector Based on Support Vector Regression and Fuzzy-rough Feature Selection with Particle Swarm Optimization , 2015 .

[7]  Jian Jiao,et al.  Error correction method based on data transformational GM(1, 1) and application on tax forecasting , 2015, Appl. Soft Comput..

[8]  Reinaldo Castro Souza,et al.  Modelling and Forecasting the Residential Electricity Consumption in Brazil with Pegels Exponential Smoothing Techniques , 2015, ITQM.

[9]  Vivek Srikumar,et al.  Predicting electricity consumption for commercial and residential buildings using deep recurrent neural networks , 2018 .

[10]  Saeed Ur Rehman,et al.  Prediction of Electricity Consumption for Residential Houses in New Zealand , 2018, SmartGIFT.

[11]  W. Pizer,et al.  Chinese residential electricity consumption: Estimation and forecast using micro-data , 2017, Resource and Energy Economics.

[12]  Xin Ma,et al.  A novel power-driven fractional accumulated grey model and its application in forecasting wind energy consumption of China , 2019, PloS one.

[13]  Lifeng Wu,et al.  Using FGM(1,1) model to predict the number of the lightly polluted day in Jing-Jin-Ji region of China , 2019, Atmospheric Pollution Research.

[14]  Yi-Chung Hu,et al.  Energy demand forecasting using a novel remnant GM(1,1) model , 2020, Soft Comput..

[15]  Kevin I-Kai Wang,et al.  Deep-Learning-Enhanced Human Activity Recognition for Internet of Healthcare Things , 2020, IEEE Internet of Things Journal.

[16]  Zheng-xin Wang,et al.  Model comparison of GM(1,1) and DGM(1,1) based on Monte-Carlo simulation , 2020 .

[17]  Jianhua Ma,et al.  Variational LSTM Enhanced Anomaly Detection for Industrial Big Data , 2021, IEEE Transactions on Industrial Informatics.

[18]  Qun Jin,et al.  Academic Influence Aware and Multidimensional Network Analysis for Research Collaboration Navigation Based on Scholarly Big Data , 2021, IEEE Transactions on Emerging Topics in Computing.

[19]  Keping Yu,et al.  Robust Spammer Detection Using Collaborative Neural Network in Internet-of-Things Applications , 2021, IEEE Internet of Things Journal.

[20]  Yue Li,et al.  CNN-RNN Based Intelligent Recommendation for Online Medical Pre-Diagnosis Support , 2020, IEEE/ACM Transactions on Computational Biology and Bioinformatics.

[21]  Zhiwei Guo,et al.  A Deep Graph Neural Network-Based Mechanism for Social Recommendations , 2021, IEEE Transactions on Industrial Informatics.