Presentation + Paper
20 September 2020 A spatial time series forecasting for mapping the risk of COVID-19 pandemic over Bandung Metropolitan Area, West Java, Indonesia
Author Affiliations +
Abstract
West Java is in the five line on the list of provinces in Indonesia with the most COVID-19 cases, as Bandung Metropolitan Area (BMA) is the second most densely populated showing the highest number after Jakarta Greater Area. Bandung Metropolitan Area consist of Bandung City, Cimahi City, Bandung Regency, and West Bandung Regency. Then, an intense movement of people created between the connected city and regency. Bandung City became the epicenter of movement BMA, since it is the province capital city, business, and education center. This fact, putting BMA at the highest risk not only for the pandemic but also socioeconomic issues. The spatial time series risk forecasting information is an essential for the decision-maker to develop a day by day policy aimed for combating the COVID-19 pandemic issue. In this study, the pandemic risk is calculated by combining vulnerability, hazard, and geodemography information. Infimap provides the People in Pixels geodemographic data, added not only the exposure of population distribution to COVID-19 but also the ratio of age. Beside those data, the daily distribution of COVID-19 cases, network data, business point, health facility point, residentials area, geodemographic (People in Pixels), and daily COVID-19 Community Mobility Reports is also been used in this study. The daily vulnerability and hazard data created since the first case on March 4th until August 21st. The hazard area is create based on the expected travel area of positive COVID- 19 patient. While the vulnerability area is create using Spatial Multi Criteria Analysis (SMCA) of following data: service area of hospital, groceries (local market), and workspace. Further, the time series data of hazard and vulnerability area was inputted to develop the forecasting model based on the machine learning pipeline of Gaussian algorithm. As a result, this study shows the possibility to predict the future risk area of COVID-19 until the next 100 days condition, based on spatial timeseries forecasting model.
Conference Presentation
© (2020) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Masita Dwi Mandini Manessa, Ridwan Kamil, Setiaji Setiaji, Ida Ningrum, Weling Suseno, Ira Rahmayanti, Faris Zulkarnain, Ardiansyah Ardiansyah, Indah Lesmini, Rahmat Hidayatulloh Tasdiq, and Idham Riyando Moe "A spatial time series forecasting for mapping the risk of COVID-19 pandemic over Bandung Metropolitan Area, West Java, Indonesia", Proc. SPIE 11534, Earth Resources and Environmental Remote Sensing/GIS Applications XI, 115340P (20 September 2020); https://doi.org/10.1117/12.2572536
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KEYWORDS
Data modeling

Java

Data analysis

Databases

Analytical research

Data acquisition

Motion estimation

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