Analisis Pertambahan Pasien COVID-19 di Indonesia Menggunakan Metode Rantai Markov

Authors

  • Kinley Aritonang Universitas Katolik Parahyangan
  • Alfian Tan Universitas Katolik Parahyangan
  • Cherish Ricardo Universitas Katolik Parahyangan
  • Dedy Surjadi Universitas Katolik Parahyangan
  • Hanky Fransiscus Universitas Katolik Parahyangan
  • Loren Pratiwi Universitas Katolik Parahyangan
  • Marihot Nainggolan Universitas Katolik Parahyangan
  • Sugih Sudharma Universitas Katolik Parahyangan
  • Yani Herawati Universitas Katolik Parahyangan

DOI:

https://doi.org/10.26593/jrsi.v9i2.3998.69-76

Abstract

COVID-19 is a new disease that is affecting almost all of the world. Until now there has not been a single drug (vaccine) that can be used to cure it. Many attempts were made to prevent the spread of this disease but COVID-19 patients are increasing every day, although at the same time some are recovering. This study will calculate the probability of additional patients occurring over a long period of time, referred as a steady state state condition, using the Markov chain method. Nine states have been formed to represent the daily increase ranges of COVID-19 patients number. The calculation results show that the possibility of additional patient number between 1 to 91, 92 to 182, 182 to 272, 273 to 363, 364 to 454, 455 to 545, 546 to 636, 637 to 727, or greater than 728 people a day are 0.21197, 0.05644, 0.08408, 0.16337, 0.13999, 0.14512, 0.07189, 0.07695, and 0.05014, respectively.

Author Biography

Marihot Nainggolan, Universitas Katolik Parahyangan

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Published

2020-07-27