COVID-19 is a virus that has emerged since the end of 2019. Its rapid spread has caused almost all countries affected by the virus. In order to prevent the spread from spreading further, government of the whole countries have restricted the movement of people during the COVID-19 Pandemic, including the Indonesia’s Government. During the COVID-19 Pandemic, the Government launch some policy that restrict the movement of people like PSBB and PPKM, especially in Bandung. In order to know the effectiveness of government policy in restricting the movement in Bandung, Google Maps can be used to find out the congestion pattern in Bandung before and during COVID-19. The purpose of this study is to know congestion patterns in Bandung before and during COVID-19 period. The research method used consists of 3 (three) stages, namely determining which roads will be reviewed for traffic, collecting traffic data by recapitulating the amount of smooth traffic, heavy traffic, and congested traffic based on Google Maps, and analyzing congestion patterns. The data was processed by quantitative descriptive methods, and the congestion patterns in this study were classified on weekdays and weekends. Based on the results of data collection and analysis, it is known that each road has different congestion characteristics. The road that connecting Bandung City and other district has higher proportion of congestion than other roads. The government’s policy to restrict the people movement during COVID-19 has caused a decrease congestion pattern in Bandung compared to before the COVID-19 Pandemic in 2018. Based on this, it can be concluded that the majority of people have followed the government’s policy not to travel and only travel when important.

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