Syntax Literate: Jurnal Ilmiah Indonesia
Jurnal Ilmiah Indonesia

Hybrid KNN-LSTM Modeling for Short-Term Feeder Peak Load Forecasting

Muhammad, Yasyfin Nur (Unknown)
Kartini, Unit Three (Unknown)
Peni, Hapsari (Unknown)



Article Info

Publish Date
04 Apr 2025

Abstract

Load forecasting is important in power system planning and management. Accurate forecasting is key in maintaining the balance of energy supply and demand. This research develops a hybrid KNN-LSTM method for load forecasting using historical load and voltage data. KNN is used in finding local patterns and LSTM is used in capturing long-term patterns. The result is that the KNN-LSTM method provides MSE 30289.4952, RSME 174.0387, and MAE 98.9081. These results are better than the KNN and LSTM methods alone. In addition, by adding the voltage feature, the prediction result increases by 50.5%. Keywords: Load forecasting, KNN, LSTM, KNN-LSTM

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Journal Info

Abbrev

syntax-literate

Publisher

Subject

Humanities Education Environmental Science Law, Crime, Criminology & Criminal Justice Social Sciences Other

Description

Syntax Literate: Jurnal Ilmiah Indonesia is a peer-reviewed scientific journal that publishes original research and critical studies in various fields of science, including education, social sciences, humanities, economics, and engineering. The journal aims to provide a platform for researchers, ...