Rule Formation Application based on C4.5 Algorithm for Household Electricity Usage Prediction

Authors

  • Firman Tempola Department of Informatics, Khairun University, North Maluku 97719, Indonesia
  • Miftah Muhammad Department of Informatics, Khairun University, North Maluku 97719, Indonesia
  • Abdul Kadir Maswara Department of Informatics, Khairun University, North Maluku 97719, Indonesia
  • Rosihan Rosihan Department of Informatics, Khairun University, North Maluku 97719, Indonesia

DOI:

https://doi.org/10.48048/tis.2022.2167

Keywords:

C4.5, Household electricity, Prediction, Electrical energy, Energy management system

Abstract

Electrical energy is one of the essential energies for the world due to the fast growth of the world population and houses. In Indonesia, 95 % of the energy used in the household in 2017 is electrical energy. Therefore, reducing the use of electricity in the household is crucial. In the past decades, customers have carried out several approaches to reduce the use of their electricity. One of the widely used methodologies is the EMS. However, the PDCA model has not been implemented in electricity consumption. Subsequently, this study applies such an approach focusing more on the planning stage and is implemented in Ternate City, North Maluku, Indonesia. The C4.5 algorithm is applied at the planning stage to form a rule in predicting household electricity consumption. Moreover, the system performance is tested using the confusion matrix. The data of electricity consumption is collected and the data is treated with a varying amount depending on the number of the training data applied. The results of the system performance test by applying the confusion matrix are 76.22, 90.3, and  74.4 % for the highest accuracy value, precision, recall, respectively with the number of rules formed by 14.

HIGHLIGHTS

  • The need for electrical energy in Indonesia continues to increase, especially the use of household electricity
  • To reduce the consumption of electrical energy, a plan-do-check-act model is used. The research focuses on the plan stage by applying the C4.5 algorithm
  • The highest system accuracy is 73.33 % with 14 rules formed


GRAPHICAL ABSTRACT

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References

T Jasiński. Modeling electricity consumption using nighttime light images and artificial neural networks. Energy 2019; 179, 831-42.

Ministry of Energy and Material Resources. Handbook of energy & economic statistics of Indonesia. Ministry of Energy and Material Resources, Jakarta, Indonesia, 2018, p. 21-40.

CY Lee, S Kaneko and A Sharifi. Effects of building types and materials on household electricity consumption in Indonesia. Sustain. Cities Soc. 2020; 54, 101999.

A Prashar. Adopting PDCA (Plan-Do-Check-Act) cycle for energy optimization in energy-intensive SMEs. J. Clean. Prod. 2017; 145, 277-93

JY Kim and SB Cho. Electric energy consumption prediction by deep learning with state explainable autoencoder. Energies 2019; 12, 739.

Z Zheng, H Chen and X Luo. Spatial granularity analysis on electricity consumption prediction using LSTM recurrent neural network. Energ. Proc. 2019; 158, 2713-8.

Z Chang, Y Zhang and W Chen. Electricity price prediction based on hybrid model of adam optimized LSTM neural network and wavelet transform. Energy 2019; 187, 115804.

A Saleh. Implementasi metode klasifikasi naïve bayes dalam memprediksi besarnya penggunaan listrik rumah tangga. Creativ. Inform. Tech. J. 2015; 2, 207-17.

X Meng, P Zhang, Y Xu and H Xie. Construction of decision tree based on C4.5 algorithm for online voltage stability assessment. Int. J. Electr. Power Energ. Syst. 2020; 118, 105793.

U.S. Department of Energy and SF Baldwin. Quadrennial techonology review: An assesment of energy techonolgies and research oppurtunities. U.S. Department of Energy, Washington DC, 2015.

U Surahman, J Maknun and E Krisnanto. Survey on household energy consumption of public apartments in Bandung City , Indonesia. In: Proceedings of the 8th International Conference on Architecture Research and Design, Surabaya, Indonesia. 2016, p. 181-7.

T Kubota, U Surahman and O Higashi. A comparative analysis of household energy consumption in Jakarta and Bandung. In: Proceedings of the 30th International Conference on Passive and Low Energy Architecture, Ahmedabad, India. 2014, p. 260-7

MA McNeil, N Karali and V Letschert. Forecasting Indonesia’s electricity load through 2030 and peak demand reductions from appliance and lighting efficiency. Energ. Sustain. Dev. 2019; 49, 65-77.

H Batih and C Sorapipatana. Characteristics of urban households’ electrical energy consumption in Indonesia and its saving potentials. Renew. Sustain. Energ. Rev. 2016; 57, 1160-73.

M Molina-Solana, M Ros, MD Ruiz, J Gómez-Romero and MJ Martin-Bautista. Data science for building energy management: A review. Renew. Sustain. Energ. Rev. 2017; 70, 598-609.

C Li, Z Ding, D hao, J Yi and G Zhang. Building energy consumption prediction: An extreme deep learning approach. Energies. 2017; 10, 1-20.

AZ Dobaev, MP Maslakov and AA Dedegkaeva. Development of decision support system for data analysis of electric power systems. In: Proceedings of the 2nd International Conference on Industrial Engineering, Applications and Manufacturing. Chelyabinsk, Russia, 2016, p. 1-4.

H Murata and T Onoda. Estimation of power consumption for household electric appliances. In: Proceedings of the 9th International Conference on Neural Information Processing. Singapore, 2002, p. 2299-303.

XM Zhang, K Grolinger, MAM Capretz and L Seewald. Forecasting residential energy consumption: Single household perspective. In: Proceedings of the 17th IEEE International Conference on Machine Learning and Applications. Orlando, USA, 2019, p. 110-7.

S Omran and EMF El-Houby. Prediction of electrical power disturbances using machine learning techniques J. Ambient Intell. Humaniz. Comput. 2020; 11, 2987-3003.

PV Ngoc, CVT Ngoc, TVT Ngoc and DN Duy. A C4.5 algorithm for english emotional classification. Evol. Syst. 2019; 10, 425-51.

CP Balasubramaniam and R Gunasundari. Improved C4.5: An agent-based supply chain management system. J. Theor. Appl. Inf. Technol. 2018; 96, 555-567.

BA Tama. Data mining for predicting customer satisfaction. J. Theor. Appl. Inf. Technol. 2015; 75, 3-7.

TM Ahmed. Using data mining to develop model for classifying diabetic patient control level based on historical medical records. J. Theor. Appl. Inf. Tech. 2016; 87, 316-23.

AH Mohammad. Comparing two feature selections methods (Information gain and gain ratio) on three different classification algorithms using arabic dataset. J. Theor. Appl. Inf. Tech. 2018; 96, 1561-9.

P Gu and Q Zhou. Student performances prediction based. Emerg. Comput. Inf. Technol. Educ. 2012; 146, 1-8.

J Quinlan. C4.5 : Programs for machine learning. Morgan Kaufmann, San Franscisco, 1993.

F Gorunescu. Data mining: Concepts, models and techniques. Springer, London, 2011, p. 319-30.

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Published

2022-01-20

How to Cite

Tempola, F. ., Muhammad, M. ., Maswara , A. K. ., & Rosihan, R. . (2022). Rule Formation Application based on C4.5 Algorithm for Household Electricity Usage Prediction. Trends in Sciences, 19(3), 2167. https://doi.org/10.48048/tis.2022.2167