Sains Malaysiana 51(11)(2022): 3785-3793
http://doi.org/10.17576/jsm-2022-5111-22
Peramalan Kualiti Udara menggunakan Kaedah Pembelajaran Mendalam Rangkaian Perlingkaran Temporal (TCN)
(Air Quality Forecasting using Temporal Convolutional Network (TCN) Deep
Learning Method)
MOHD AFTAR ABU
BAKAR*, NORATIQAH MOHD ARIFF, SAKHINAH ABU BAKAR, GOH PEI CHI &
RAMYAH RAJENDRAN
Jabatan Sains Matematik, Fakulti Sains dan Teknologi, Universiti Kebangsaan Malaysia, 43600 UKM Bangi,
Selangor Darul Ehsan, Malaysia
Diserahkan: 13 Mac 2022/Diterima:
4 Julai 2022
Abstrak
Kajian ini bertujuan untuk membina model kualiti udara untuk meramalkan kepekatan bahan pencemar udara di Malaysia. Kaedah peramalan yang dipilih dalam kajian ini adalah suatu teknik pembelajaran mendalam iaitu Rangkaian Perlingkaran Temporal
(TCN). Set data yang digunakan adalah siri masa zarahan terampai bersaiz diameter lebih kecil atau sama dengan 10 mikrometer (PM10) yang diperoleh daripada Jabatan Alam Sekitar Malaysia dari 5 Julai 2017 hingga 31 Januari 2019. Data daripada lima stesen pemantauan kualiti udara di Semenanjung Malaysia dipilih untuk kajian ini. Bagi tujuan perbandingan, kaedah rangkaian memori jangka pendek panjang (LSTM) juga digunakan dalam kajian ini yang mana ketepatan antara kedua-dua model dibandingkan. Secara amnya, nilai model ramalan daripada kedua-dua model adalah menghampiri data asal. Walau bagaimanapun, model yang dibina dengan kaedah TCN adalah lebih baik berbanding model LSTM dari segi ketepatan nilai ramalan. Kajian ini menunjukkan bahawa TCN merupakan teknik yang sesuai digunakan dalam peramalan data siri masa bagi kualiti udara di Semenanjung Malaysia.
Kata kunci: Kualiti udara; pembelajaran mendalam;
PM10; Rangkaian Perlingkaran Temporal (TCN)
Abstract
This study aims to build an
air quality model to predict pollutant concentrations in Malaysia. The method
chosen in this study is one of the deep learning techniques which is the
temporal convolution network (TCN). The data set used is particulate matter
with diameter of 10 micrometers or less (PM₁₀) time series which is
obtained from the Department of Environment Malaysia from 5th July
2017 to 31st January 2019. Data from five air quality monitoring
stations in Peninsular Malaysia were selected for this study. The long-short
term memory network (LSTM) is also used in this study for the purpose of
accuracy comparison between the two models. Overall, the forecast values from
both models are approximately close to the original data. However, the TCN
model is better in terms of the forecast accuracy. This study shows that TCN is
a suitable technique that can be used for forecasting air quality time series
data in Peninsular Malaysia.
Keywords: Air quality; deep learning; PM10; Temporal
Convolutional Network (TCN)
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*Pengarang untuk surat-menyurat; email:
aftar@ukm.edu.my