Prediksi Pola Konsumsi Energi Listrik Menggunakan Support Vector Machine Untuk Manajemen Energi Listrik Di PT Olifant

Authors

  • Sutriyono Universitas Pamulang

Keywords:

Klasifikasi, Prediksi, Perencanaan Energi, Machine Learning, Support Vector Machine

Abstract

PT Olifant, as a company operating in the manufacturing sector, has its address in Pasir Jaya village, Jatiuwung District, Tangerang City, carries out energy management in the form of energy usage planning, namely the process of predicting energy usage using average values from historical data. However, it turns out that it does not have high accuracy, especially if there are data anomalies within that period. To get better accuracy, it is necessary to classify the reference data (training data) so that it can be sorted out which data needs to be used and which data is not necessary. This classification process can be done with Support Vector Machine (SVM), which is one application of Machine Learning. By using SVM, it is proven to have good capabilities on limited historical data. The steps that will be used in this research are collecting electricity consumption data through literature studies of documents or energy consumption records and field observations. The data obtained will be processed using the Support Vector Machine (SVM) method which consists of 2 phases; First, the Training Phase to recognize energy consumption patterns from historical data. The input data will be classified and will be represented in a formula. Second, the Testing Phase is for applying the formula from the training phase to actual data on electrical energy consumption. Predicted data will be tested with actual data to see any deviations that occur. This is a measure of success that is monitored, namely the level of accuracy in predicting electrical energy consumption patterns resulting from the introduction of electrical energy consumption patterns in the training phase.

References

Vapnik, Vladimir N., The Nature Of Statistical Learning Theory Second Edition, Springer-Verlag New York, Inc, ISBN 0-387-98780-0, pdf version, 2000

Charles H., Eccleston, Frederic March, Timothy Cohen, Inside Energy : Developing and Managing an ISO 50001 Energy Management System, CRC Press, 2012

www.esdm.go.id, Peraturan Pemerintah Republik Indonesia Nomor 70 Tahun 2009 Tentang Konservasi Energi, website address : www.esdm.go.id/batubara/doc.../996-peraturan-pemerintah-no70-tahun-2009.html, pdf link version, 2009

www.esdm.go.id, Kajian Indonesia Energy Outlook 2012, website address : www.esdm.go.id/batubara/doc.../1443-kajian-indonesia-energy-outlook.html, pdf link version, 2012

www.esdm.go.id, Peraturan Pemerintah Republik Indonesia Nomor 70 Tahun 2014 Tentang Kebijakan Energi Nasional, website address : prokum.esdm.go.id/pp/2014/PP%20Nomor%2079%202014.pdf, pdf link version, 2014

Department of Energy (DOE) / Energy Information Adminsitration (EIA), The International Energy Outlook 2013, website address : www.eia.gov/forecasts/ieo/pdf/0484(2013), pdf link version, July 2013

J. Susukh; S. Premrudeepreechacharn; Tirapong. Kasirawat, Power Quality Problem Classification Using Support Vector Machine, Electrical Engineering/Electronics, Computer, Telecommunications and Information Technology. ECTI-CON 2009, 6th International Conference, Volume: 01 Pages: 58 - 61, DOI: 10.1109/ECTICON.2009.5136965, IEEE Conference Publications, 2009

K. Shu; L. Jing; L. Mei; Z. Xin, Prediction Based On Support Vector Machine For Travel Choice Of High-Speed Railway passenger in China, International Conference Management Science and Engineering (ICMSE), Pages: 28 - 33, DOI: 10.1109/ICMSE.2011.6069938, IEEE Conference Publications, 2011

D. Xinhui; W. Liang; S. Jiancheng; Z. Yan, Application of Neural Network and Support Vector Machines to Power System Short-term Load Forecasting, Computational Aspects of Social Networks (CASoN), International Conference Pages: 729 - 732, DOI: 10.1109/CASoN.2010.167 Cited by: Papers (1), IEEE Conference Publications, 2010

S. Tuntisak; S. Premrudeepreechacharn, Harmonic Detection in Distribution Systems Using Wavelet Transform and Support Vector Machine, Power Tech, , IEEE Lausanne Pages: 1540 - 1545, DOI: 10.1109/PCT.2007.4538544 Cited by: Papers (2), Papers (1), IEEE Conference Publications, 2007

A. Khashman; N. I. Nwulu, Intelligent Prediction of Crude Oil Price Using Support Vector Machines, Applied Machine Intelligence and Informatics (SAMI), IEEE 9th International Symposium Pages: 165 - 169, DOI: 10.1109/SAMI.2011.5738868 Cited by: Papers (5), IEEE Conference Publications, 2011

H. Liu; C. Xu; X. Wang; T. Wang, Identification of Oil/Gas and Water Zones in Geological Logging With Support-Vector Machine, Cognitive Informatics & Cognitive Computing (ICCI*CC), IEEE 11th International Conference Pages: 279 - 282, DOI: 10.1109/ICCI-CC.2012.6311161, IEEE Conference Publications, 2012

Y. Zhang; X. Ma; Y. Zhang; J., Support Vector Machine of The Coal Mine Machinery Equipment Fault Diagnosis, Information and Automation (ICIA), IEEE International Conference Pages: 1141 - 1146, DOI: 10.1109/ICInfA.2013.6720467, IEEE Conference Publications, 2013

Published

2024-07-19

How to Cite

Sutriyono. (2024). Prediksi Pola Konsumsi Energi Listrik Menggunakan Support Vector Machine Untuk Manajemen Energi Listrik Di PT Olifant . BINER : Jurnal Ilmu Komputer, Teknik Dan Multimedia, 2(2), 220–229. Retrieved from https://journal.mediapublikasi.id/index.php/Biner/article/view/4385