Short-Term Load Forecasting With Long Short-Term Memory: A Case Study of Java-Bali System
Penulis/Author
MUHAMMAD FADHIL AINURI (1); Prof. Ir. Sarjiya, S.T., MT., Ph.D., IPU. (2); Dr.Eng. Ir. Igi Ardiyanto, S.T., M.Eng. (3)
Tanggal/Date
1 2020
Kata Kunci/Keyword
Abstrak/Abstract
Short-term Load Forecasting (STLF) plays an important role in power system operation. It will be used for manage power balance between the dynamic power demand and power supply. This research presents a Long Short-term Memory (LSTM) and Recurrent Neural Network (RNN) for short-term load forecasting Java-Bali power system. We compare the performance of these network architecture models using Mean Average Percentage Error (MAPE) and Root Mean Squared Error (RMSE) to choose the best models for development Java-Bali power system operationalization in the future. The result show LSTM can forecast better than RNN due to vanishing and exploding gradient condition. The best LSTM model has MAPE 5,67% and RMSE 1683,09MW.
Level
Internasional
Status
Dokumen Karya
No
Judul
Tipe Dokumen
Aksi
1
Short-Term Load Forecasting with Long Short-Term Memory.pdf
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2
Similarity Short-Term Load Forecasting with Long Short-Term Memory_ A Case Study of Java-Bali System.pdf