Machine Learning Prediction of Time Series Covid-19 Data in West Java, Indonesia

Authors

  • Intan Nurma Yulita Universitas Padjadjaran
  • Afrida Helen Universitas Padjadjaran
  • Mira Suryani Universitas Padjadjaran

DOI:

https://doi.org/10.23887/janapati.v12i2.58505

Keywords:

COVID-19, Machine Learning, Indonesia, Artificial Intelligence, Artificial Neural Network

Abstract

In 2019, the COVID-19 pandemic appeared. There have been several efforts to curb the spread of this virus. West Java, Indonesia, employs social restrictions to prevent the spread of this disease. However, this method destroyed the economy of the people. If no instances were detected in the region, the World Health Organization (WHO) authorized the social restrictions to be relaxed. If the government lifts the social limitation, the decision must also consider the potential of future confirmed instances. By utilizing machine learning, it is possible to forecast future data. This work utilized the following algorithms: linear regression (LR), locally weighted learning (LWL), multi-layer perceptron (MLP), radial basis function regression (RBF), and support vector machine (SVM). The study investigated daily new instances of COVID-19 in West Java, Indonesia, from March 2, 2020, to October 15, 2020. The RBF algorithm was the best in this investigation. Mean absolute error (MAE), root mean squared error (RMSE), mean absolute percentage error (MAPE), and relative absolute error (RAE) were 48.85, 89.73, 88.67, 62.99, and 60.88, respectively. The RBF prediction model may be proposed to the government of West Java for assessing data on COVID-19 instances, particularly in social restriction management. It is anticipated that West Java would have a minimum of 275 new cases every day for the following 30 days beginning on October 16, 2020. Consequently, the easing of societal limitations requires careful consideration.

References

D. Kang, H. Choi, J. H. Kim, and J. Choi, “Spatial epidemic dynamics of the COVID-19 outbreak in China,” International Journal of Infectious Diseases, vol. 94, 2020, doi: 10.1016/j.ijid.2020.03.076.

F. Reyes-Santias, I. Barrachina-Martinez, and D. Vivas-Consuelo, “Predictions of FluSurge 2.0 methodology on hospital utilization during the Covid-19 outbreaks in several countries,” International Journal of Engineering Business Management, vol. 13, 2021, doi: 10.1177/18479790211020530.

İ. Yalçın, N. Can, Ö. Mançe Çalışır, S. Yalçın, and B. Çolak, “Latent profile analysis of COVID-19 fear, depression, anxiety, stress, mindfulness, and resilience,” Current Psychology, vol. 41, no. 1, 2022, doi: 10.1007/s12144-021-01667-x.

J. R. Hargreaves and C. H. Logie, “Lifting lockdown policies: A critical moment for COVID-19 stigma,” Global Public Health, vol. 15, no. 12. 2020. doi: 10.1080/17441692.2020.1825771.

J. Adhani, I. N. Yulita, A. Sholahuddin, M. N. Ardisasmita, and D. Agustian, “COVID-19 Social Safety Nets Sentiment Analysis on Twitter Using Gated Recurrent Unit (GRU) Method,” in 2021 International Conference on Artificial Intelligence and Big Data Analytics, ICAIBDA 2021, 2021. doi: 10.1109/ICAIBDA53487.2021.9689737.

N. Prawoto, E. P. Purnomo, and A. A. Zahra, “The impacts of Covid-19 pandemic on socio-economic mobility in Indonesia,” International Journal of Economics and Business Administration, vol. 8, no. 3, 2020, doi: 10.35808/ijeba/486.

R. Singh and K. Sharma, “Impact of lockdown measures in abating the COVID-19 pandemic: Lessons from India’s phased approach,” Eur J Public Health, vol. 30, no. Supplement_5, 2020, doi: 10.1093/eurpub/ckaa165.430.

I. N. Yulita, A. S. Abdullah, A. Helen, S. Hadi, A. Sholahuddin, and J. Rejito, “Comparison multi-layer perceptron and linear regression for time series prediction of novel coronavirus covid-19 data in West Java,” in Journal of Physics: Conference Series, 2021, vol. 1722, no. 1. doi: 10.1088/1742-6596/1722/1/012021.

I. Rodríguez-Rodríguez, J. V. Rodríguez, D. J. Pardo-Quiles, P. Heras-González, and I. Chatzigiannakis, “Modeling and forecasting gender-based violence through machine learning techniques,” Applied Sciences (Switzerland), vol. 10, no. 22, 2020, doi: 10.3390/app10228244.

C. Matava, E. Pankiv, L. Ahumada, B. Weingarten, and A. Simpao, “Artificial intelligence, machine learning and the pediatric airway,” Paediatric Anaesthesia, vol. 30, no. 3. 2020. doi: 10.1111/pan.13792.

M. Woschank, E. Rauch, and H. Zsifkovits, “A review of further directions for artificial intelligence, machine learning, and deep learning in smart logistics,” Sustainability (Switzerland), vol. 12, no. 9, 2020, doi: 10.3390/su12093760.

S. C. Yip, K. S. Wong, W. P. Hew, M. T. Gan, R. C. W. Phan, and S. W. Tan, “Detection of energy theft and defective smart meters in smart grids using linear regression,” International Journal of Electrical Power and Energy Systems, vol. 91, 2017, doi: 10.1016/j.ijepes.2017.04.005.

T. Fang and R. Lahdelma, “Evaluation of a multiple linear regression model and SARIMA model in forecasting heat demand for district heating system,” Appl Energy, vol. 179, 2016, doi: 10.1016/j.apenergy.2016.06.133.

D. Bhuriya, G. Kaushal, A. Sharma, and U. Singh, “Stock market predication using a linear regression,” in Proceedings of the International Conference on Electronics, Communication and Aerospace Technology, ICECA 2017, 2017, vol. 2017-January. doi: 10.1109/ICECA.2017.8212716.

N. Chen, J. Dai, X. Yuan, W. Gui, W. Ren, and H. N. Koivo, “Temperature Prediction Model for Roller Kiln by ALD-Based Double Locally Weighted Kernel Principal Component Regression,” IEEE Trans Instrum Meas, vol. 67, no. 8, 2018, doi: 10.1109/TIM.2018.2810678.

A. Raza and M. Zhong, “Hybrid artificial neural network and locally weighted regression models for lane-based short-term urban traffic flow forecasting,” Transportation Planning and Technology, vol. 41, no. 8, 2018, doi: 10.1080/03081060.2018.1526988.

I. N. Yulita, R. Rosadi, S. Purwani, and M. Suryani, “Multi-Layer Perceptron for Sleep Stage Classification,” in Journal of Physics: Conference Series, 2018, vol. 1028, no. 1. doi: 10.1088/1742-6596/1028/1/012212.

P. C. Mukesh Kumar and R. Kavitha, “Prediction of nanofluid viscosity using multilayer perceptron and Gaussian process regression,” J Therm Anal Calorim, vol. 144, no. 4, 2021, doi: 10.1007/s10973-020-09990-4.

M. A. F. B. Lima et al., “Radial basis function for solar irradiance forecasting in equatorial areas,” Renewable Energy and Power Quality Journal, vol. 17, 2019, doi: 10.24084/repqj17.288.

S. F. Ardabili et al., “COVID-19 outbreak prediction with machine learning,” Algorithms, vol. 13, no. 10, 2020, doi: 10.3390/a13100249.

P. Wang, X. Zheng, J. Li, and B. Zhu, “Prediction of epidemic trends in COVID-19 with logistic model and machine learning technics,” Chaos Solitons Fractals, vol. 139, 2020, doi: 10.1016/j.chaos.2020.110058.

A. Ahmad, S. Garhwal, S. K. Ray, G. Kumar, S. J. Malebary, and O. M. Barukab, “The Number of Confirmed Cases of Covid-19 by using Machine Learning: Methods and Challenges,” Archives of Computational Methods in Engineering, vol. 28, no. 4, 2021, doi: 10.1007/s11831-020-09472-8.

C. Sbarufatti, M. Corbetta, M. Giglio, and F. Cadini, “Adaptive prognosis of lithium-ion batteries based on the combination of particle filters and radial basis function neural networks,” J Power Sources, vol. 344, 2017, doi: 10.1016/j.jpowsour.2017.01.105.

B. M. Henrique, V. A. Sobreiro, and H. Kimura, “Stock price prediction using support vector regression on daily and up to the minute prices,” Journal of Finance and Data Science, vol. 4, no. 3, 2018, doi: 10.1016/j.jfds.2018.04.003.

S. K. Shevade, S. S. Keerthi, C. Bhattacharyya, and K. R. K. Murthy, “Improvements to the SMO algorithm for SVM regression,” IEEE Trans Neural Netw, vol. 11, no. 5, 2000, doi: 10.1109/72.870050.

Downloads

Published

2023-07-31

How to Cite

Yulita, I. N., Afrida Helen, & Mira Suryani. (2023). Machine Learning Prediction of Time Series Covid-19 Data in West Java, Indonesia. Jurnal Nasional Pendidikan Teknik Informatika : JANAPATI, 12(2), 174–183. https://doi.org/10.23887/janapati.v12i2.58505

Issue

Section

Articles