Multinodal load forecasting for distribution systems using a fuzzy-artmap neural network

Abstract This work proposes a predictor system (multinodal forecasting) considering several points of an electrical network, such as substations, transformers, and feeders, based on an adaptive resonance theory (ART) neural network family. It is a problem similar to global forecasting, with the main difference being the strategy to align the input and output of the data with several parallel neural modules. Considering that multinodal prediction is more complex compared to global prediction, the multinodal prediction will use a fuzzy-ARTMAP neural network and a global load participation factor. The advantages of this approach are as follows: (1) the processing time is equivalent to the processing required for global forecasting (i.e., the additional time processing is quite low); and (2) Fuzzy-ARTMAP neural networks converge significantly faster than backpropagation neural networks (improved benchmark in precision). The preference for neural networks of the ART family is due to the characteristic stability and plasticity that these architectures have to provide results in a fast and precise way. To test the proposed forecast system, the results are presented for nine substations from the database of an electrical company.

[1]  Suci Dwijayanti,et al.  Short Term Load Forecasting Using a Neural Network Based Time Series Approach , 2013, 2013 1st International Conference on Artificial Intelligence, Modelling and Simulation.

[2]  K. Nose-Filho,et al.  Short-Term Multinodal Load Forecasting Using a Modified General Regression Neural Network , 2011, IEEE Transactions on Power Delivery.

[3]  Gwo-Ching Liao,et al.  Application of a fuzzy neural network combined with a chaos genetic algorithm and simulated annealing to short-term load forecasting , 2006, IEEE Transactions on Evolutionary Computation.

[4]  P. Werbos,et al.  Beyond Regression : "New Tools for Prediction and Analysis in the Behavioral Sciences , 1974 .

[5]  M. K. Soni,et al.  Artificial neural network based peak load forecasting using Levenberg-Marquardt and quasi-Newton methods , 2002 .

[6]  Carlos R. Minussi,et al.  Sensitivity analysis by neural networks applied to power systems transient stability , 2007 .

[7]  K. Lang,et al.  Learning to tell two spirals apart , 1988 .

[8]  Huaguang Zhang,et al.  A Comprehensive Review of Stability Analysis of Continuous-Time Recurrent Neural Networks , 2014, IEEE Transactions on Neural Networks and Learning Systems.

[9]  Chris Beaumont,et al.  Short-Term Forecasting: An Introduction to the Box-Jenkins Approach , 1983 .

[10]  Christof Teuscher,et al.  Reservoir Computing: Quo Vadis? , 2016, NANOCOM.

[11]  Heidar A. Malki,et al.  Short-term electric power load forecasting using feedforward neural networks , 2004, Expert Syst. J. Knowl. Eng..

[12]  Thomas G. Dietterich Adaptive computation and machine learning , 1998 .

[13]  G. Gross,et al.  Short-term load forecasting , 1987, Proceedings of the IEEE.

[14]  J. C. Hwang,et al.  The application of artificial neural networks to substation load forecasting , 1996 .

[15]  Cem Kocak,et al.  ARMA(p, q) type high order fuzzy time series forecast method based on fuzzy logic relations , 2017, Appl. Soft Comput..

[16]  Navneet Kumar Singh,et al.  Neural Network based short-term electricity demand forecast for Australian states , 2016, 2016 IEEE 1st International Conference on Power Electronics, Intelligent Control and Energy Systems (ICPEICES).

[17]  Robin Girard,et al.  Long Term Forecast of Local Electrical Demand and Evaluation of Future Impacts on the Electricity Distribution Network , 2017 .

[18]  S. Pandian,et al.  Fuzzy approach for short term load forecasting , 2006 .

[19]  June Ho Park,et al.  Comparative Study of Short-Term Electric Load Forecasting , 2014, 2014 5th International Conference on Intelligent Systems, Modelling and Simulation.

[20]  Robert J. Marks,et al.  Electric load forecasting using an artificial neural network , 1991 .

[21]  Carlos R. Minussi,et al.  Electric load forecasting using a fuzzy ART&ARTMAP neural network , 2005, Appl. Soft Comput..

[22]  M. Lopes,et al.  Application of the Fuzzy ART & ARTMAP Neural Network to the Electrical Load Forecasting Problem , 2010 .

[23]  Donald F. Specht,et al.  A general regression neural network , 1991, IEEE Trans. Neural Networks.

[25]  Dong Li,et al.  Short-term load prediction method for power distributing method based on back-propagation neural network , 2017, 2017 12th IEEE Conference on Industrial Electronics and Applications (ICIEA).

[26]  Saifur Rahman,et al.  Analysis and Evaluation of Five Short-Term Load Forecasting Techniques , 1989, IEEE Power Engineering Review.

[27]  Thomas M. O'Donovan,et al.  Short term forecasting: An introduction to the Box-Jenkins approach , 1983 .

[28]  M. M. Elkateb,et al.  Hybrid adaptive techniques for electric-load forecast using ANN and ARIMA , 2000 .

[29]  Stephen Grossberg,et al.  Adaptive Resonance Theory: How a brain learns to consciously attend, learn, and recognize a changing world , 2013, Neural Networks.

[30]  Seyed Saeed Madani,et al.  Electric Load Forecasting Using an Artificial Neural Network , 2013 .

[31]  Alireza Mehridehnavi,et al.  Deep neural network in QSAR studies using deep belief network , 2018, Appl. Soft Comput..

[32]  Robert LIN,et al.  NOTE ON FUZZY SETS , 2014 .

[33]  E. H. Barakat,et al.  Forecasting monthly peak demand in fast growing electric utility using a composite multiregression-decomposition model , 1989 .

[34]  Stephen Grossberg,et al.  Fuzzy ART: Fast stable learning and categorization of analog patterns by an adaptive resonance system , 1991, Neural Networks.

[35]  Simon Haykin,et al.  Neural Networks and Learning Machines , 2010 .

[36]  Tsuneyo Sano,et al.  Load current forecasting using statistical analysis , 2017 .

[37]  Mathieu David,et al.  Nonlinear Models for Short-time Load Forecasting , 2012 .

[38]  Takaaki Ohishi,et al.  A short-term bus load forecasting system , 2010, 2010 10th International Conference on Hybrid Intelligent Systems.

[39]  Chia-Yon Chen,et al.  Regional load forecasting in Taiwanapplications of artificial neural networks , 2003 .

[40]  R. Buizza,et al.  Neural Network Load Forecasting with Weather Ensemble Predictions , 2002, IEEE Power Engineering Review.

[41]  Hongseok Kim,et al.  Deep neural network based demand side short term load forecasting , 2016, 2016 IEEE International Conference on Smart Grid Communications (SmartGridComm).

[42]  Hongseok Kim,et al.  Deep Neural Network Based Demand Side Short Term Load Forecasting , 2016 .