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Blood Glucose Prediction Using Convolutional Long Short-Term Memory Algorithms



Diabetes Mellitus is one of the preeminent causes of death to date. Effective procedures are necessary to prevent diabetes and avoid complications that may cause early death. A common approach is to control patient blood glucose, which necessitates a periodic measurement of blood glucose concentration. This study developed a blood glucose prediction system using a convolutional long short-term memory (Conv-LSTM) algorithm. Conv-LSTM is a variation of LSTM algorithms that are suitable for use in time series problems. Conv-LSTM overcomes the lack in the LSTM algorithm because the latter algorithm cannot access the content of previous memory cells when its output gate has closed. We tested the algorithm and varied the experiment to check the effect of the cross-validation ratio between 70:30 and 80:20. The study indicates that the cross-validation using a ratio of 70:30 data split is more stable compared to one with 80:20 data split. The best result shows a measure of 21.44 in RMSE and 8.73 in MAE. With the application of conv-LSTM using correct parameters and selected data split, our experiment attains accuracy comparable to the regular LSTM.


Ketersediaan

JKI7-008JKI V7N2 Oktober 2021Perpustakaan FT UPI YAITersedia

Informasi Detil

Judul Seri
Khazanah Informatika : Jurnal Ilmu Komputer dan Informatika
No. Panggil
JKI V7N2 Oktober 2021
Penerbit Universitas Muhammadiyah Surakarta : Surakarta.,
Deskripsi Fisik
hlm : 90-95
Bahasa
English
ISBN/ISSN
2621-038X
Klasifikasi
JKI
Tipe Isi
-
Tipe Media
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Tipe Pembawa
-
Edisi
Volume 7 Nomor 2 Oktober 2021
Subyek
Info Detil Spesifik
-
Pernyataan Tanggungjawab

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