Research Article |
Short Term Load Forecasting of Residential and Commercial Consumers of Karnataka Electricity Board using CFNN
Author(s) : Zahira Tabassum1 and B.S. Chandrasekar Shastry2
Published In : International Journal of Electrical and Electronics Research (IJEER) Volume 10, Issue 2, Special Issue on IEEE-SD
Publisher : FOREX Publication
Published : 30 June 2022
e-ISSN : 2347-470X
Page(s) : 347-352
Abstract
Electricity use and its access are correlated in the economic development of any country. Economically, electricity cannot be stored, and for stability of an electrical network a balance between generation and consumption is necessary. Electricity demand depends on various factors like temperature, everyday activities, time of day, days of the week days/Holidays. These parameters have led to price volatility and huge spikes in electricity prices. The research work proposes a short term Load prediction Model for LT2 (residential consumers), LT3 (Commercial Consumers) of Karnataka State Electricity Board using Cascaded Feed Forward Neural Network (CFNN). MATLAB software is utilized to design and test the forecasting model for predicting the power consumption. Furthermore, a shallow feed forward neural network-based prediction model is constructed and evaluated for performance comparison. The Performance metrics include Mean Absolute Percentage Error (MAPE) and Mean Squared Error (MSE). The suggested STLF CFNN prediction model outperformed shallow feed forward networks on both performance metrics with prediction errors of less than 1%.
Keywords: Absolute error
, Demand Side Management
, Mean Square Error
, Power Consumption
, Shallow ANN
Zahira Tabassum, Associate Professor, HKBKCE, Research Scholar, Electronics Engineering, Jain University, India; Email: zahirat.ec@hkbk.edu.in
B.S. Chandrasekar Shastry, Dean, PG Studies, FET Jain (Deemed to be) University, JP Nagar, India; Email: cshastry2@gmail.com
[1] Gajowniczek and T. Ząbkowski, "Electricity forecasting on the individual household level enhanced based on activity patterns", PLOS ONE, vol. 12, no. 4, p. e0174098, 2017. Available: 10.1371/journal.pone.0174098 [Accessed 26 July 2021]. [Cross Ref]
[2] T. Hong, P. Pinson and S. Fan, "Global Energy Forecasting Competition 2012", International Journal of Forecasting, vol. 30, no. 2, pp. 357-363, 2014. Available: 10.1016/j.ijforecast.2013.07.001.[Cross Ref]
[3] M. Beaudin and H. Zareipour, "Home energy management systems: A review of modelling and complexity", Renewable and Sustainable Energy Reviews, vol. 45, pp. 318-335, 2015. Available: 10.1016/j.rser.2015.01.046.[Cross Ref]
[4] G. Gross and F. Galiana, "Short-term load forecasting", Proceedings of the IEEE, vol. 75, no. 12, pp. 1558-1573, 1987. Available: 10.1109/proc.1987.13927.[Cross Ref]
[5] R. Weron, Modelling and forecasting electricity loads and prices. Chichester: J. Wiley & Sons, 2007.[Cross Ref]
[6] P. Brockwell and R. Davis, Introduction to time series and forecasting. New York: Springer, 2010.[Cross Ref]
[7] K. Song, Y. Baek, D. Hong and G. Jang, "Short-Term Load Forecasting for the Holidays Using Fuzzy Linear Regression Method", IEEE Transactions on Power Systems, vol. 20, no. 1, pp. 96-101, 2005. Available: 10.1109/tpwrs.2004.835632.[Cross Ref]
[8] S.Vasantha swaminathan, J.Surendiran, B.P.Pradeep kumar ,”Design and Implementation of Kogge Stone adder using CMOS and GDI Design: VLSI Based”, International Journal of Engineering and Advanced Technology (IJEAT) ISSN: 2249 – 8958, Volume-8 Issue-6S3, September 2019[Cross Ref]
[9] Marinescu, A.; Harris, C.; Dusparic, I.; Clarke, S.; Cahill, V. "Residential electrical demand forecasting in very small scale: An evaluation of forecasting methods.", in 2nd International Workshop on Software Engineering Challenges for the Smart Grid (SE4SG), San Francisco, CA, USA, 2013.[Cross Ref]
[10] H. Quan, D. Srinivasan and A. Khosravi, "Short-Term Load and Wind Power Forecasting Using Neural Network-Based Prediction Intervals", IEEE Transactions on Neural Networks and Learning Systems, vol. 25, no. 2, pp. 303-315, 2014. Available: 10.1109/tnnls.2013.2276053. [Cross Ref]
[11] Lago, J.; de Ridder, F.; de Schutter, B. Forecasting spot electricity prices: Deep learning approaches and empirical comparison of traditional algorithms. Appl. Energy 2018, 221, 386–405. [Cross Ref]
[12] G. Saritha, T. Saravanan, K. Anbumani, J. Surendiran,”Digital elevation model and terrain mapping using LiDAR,”Materials Today: Proceedings,Volume 46, Part 9,2021,Pages 3979-3983,ISSN 2214-7853[Cross Ref]
[13] B. Warsito, R. Santoso, Suparti and H. Yasin, "Cascade Forward Neural Network for Time Series Prediction", Journal of Physics: Conference Series, vol. 1025, p. 012097, 2018. Available: 10.1088/1742-6596/1025/1/012097 [Accessed 27 July 2021].[Cross Ref]
[14] J. Moon, S. Park, S. Rho, and E. Hwang, “A comparative analysis of artificial neural network architectures for building energy consumption forecasting,” International Journal of Distributed Sensor Networks, vol. 15, no. 9, p. 155014771987761, 2019.[Cross Ref]
[15] A. S. Talhar and S. B. Bodkhe, “Study and Analysis of Dynamic Pricing in India and Proposing for Residential Consumers in Maharashtra,” Helix, vol. 9, no. 2, pp. 4870–4877, 2019.[Cross Ref]
[16] Aniruddha Bhattacharya, Madhusudan Singh (2021), Implementation of GF-HOG Technique for Effective Commercial and Industrial Load Clustering and Classification for Better Demand Response. IJEER 9(3), 66-75. DOI: 10.37391/IJEER.090307.[Cross Ref]
[17] Durga Prasad Ananthu and Prof. Neelashetty K (2021), Electrical Load Forecasting using ARIMA, Prophet and LSTM Networks. IJEER 9(4), 114-119. DOI: 10.37391/IJEER.090404.[Cross Ref]
[18] Sachin B. Shahapure, Vandana A. Kulkarni (Deodhar) and Sanjay M. Shinde (2022), A Technology Review of Energy Storage Systems, Battery Charging Methods and Market Analysis of EV Based on Electric Drives. IJEER 10(1), 23-35. DOI: 10.37391/IJEER.100104.[Cross Ref]
Zahira Tabassum and B.S. Chandrasekar Shastry (2022), Short Term Load Forecasting of Residential and Commercial Consumers of Karnataka Electricity Board using CFNN. IJEER 10(2), 347-352. DOI: 10.37391/IJEER.100247.