Implementasi Predictive Modelling Dalam Memprediksi Besarnya Penggunaan Listrik Rumah Tangga (Studi Kasus: PLN Area Lubuk Pakam)

Authors

  • Ishak Iskandar STMIK Budi Darma Jln. Sisingamangaraja No. 338

DOI:

https://doi.org/10.30865/jurikom.v5i6.1206

Abstract

The role of electricity is very important for every level of society and even electricity is very much needed as a means of production and for everyday life, so the importance of the role of electricity certainly has an impact on increasing electricity demand but this is not linear with electricity that has not been able to meet demand the electricity is so big. To overcome this, there needs to be interference from the government and the community in using electricity wisely so that the electricity needs do not become greater than the electricity supply. Therefore every household must understand effective electricity use. The observation method taken by the author is to collect and collect data from PT. PLN Lubuk Pakam Area. In addition, the author collects data from books related to the discussion that the author wants to describe and conduct research at PT. The Lubuk Pakam Area PLN is concerned with the discussion. The author also reads several journals concerned with the discussion material. The application of the Predictive Modeling method is expected to be able to predict the amount of electricity usage per household so that it is easier to regulate electricity usage. household electricity use tested by the Predictive Modeling method, the percentage results obtained for the accuracy of predictions, where the data on household electricity usage tested contained data on household electricity usage that were successfully classified correctly.

References

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Additional Files

Published

2018-12-19

How to Cite

Iskandar, I. (2018). Implementasi Predictive Modelling Dalam Memprediksi Besarnya Penggunaan Listrik Rumah Tangga (Studi Kasus: PLN Area Lubuk Pakam). JURNAL RISET KOMPUTER (JURIKOM), 5(6), 621–628. https://doi.org/10.30865/jurikom.v5i6.1206