2020 5th International Conference on Communication and Electronics Systems (ICCES) 2020
DOI: 10.1109/icces48766.2020.9138049
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Modelling Logistic Growth Model for COVID-19 Pandemic in India

Abstract: An early analysis of growth dynamics for infectious diseases, like COVID-19, is needed to dissect the crucial driving factors that result in rapid disease transmission, refine the measures taken to control the pandemic and improve disease forecast. The phenomenological models are used to identify the initial climbing growth period of COVID-19 outbreak in India and have modelled 3 major epidemic growth models: Generalized logistic growth, Logistic growth and Generalized growth, to predict the growth in the tota… Show more

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Cited by 13 publications
(12 citation statements)
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“…The models predict exponential and subexponential spread rate in the number of positive cases in India in April 2020. The findings proved that significant measures are required to control the transmission rate of the virus in the India [4].…”
Section: Literature Surveymentioning
confidence: 89%
“…The models predict exponential and subexponential spread rate in the number of positive cases in India in April 2020. The findings proved that significant measures are required to control the transmission rate of the virus in the India [4].…”
Section: Literature Surveymentioning
confidence: 89%
“…In [9] Dhahi Alshammari, Nourah Alqahtani, Dabiah Alboaneen, Bernardi Pranggono, and Raja A lyaffer the authors utilizes the Logistic Growth model with high expectations contrasted with others.…”
Section: Existing Workmentioning
confidence: 99%
“…The primary preferred position of Conditional Random Field over Markov's shrouded models is its restrictive nature, which prompts the unwinding of the autonomous intuition needed by Hidden Marko Models to guarantee an unmistakable pattern. Conditional Random Fields evades the issue of name inclination, shortcomings distinguished by very good quality entropy models Markov and another contingent Markov Model dependent on focused [1,9,12]: MLP is an idea moved by the regular tangible framework, which estimates information like the brain. The basic part of this is the new structure of the information ready system.…”
Section: B Pre-processingmentioning
confidence: 99%
“…Konstruksi model pertumbuhan logistik dapat menunjukkan pertumbuhan dan penurunan jumlah kasus. Jika pada tahap awal kurva logistik konvergen maka pandemic dapat dikendalikan dan sebaliknya [6]. Pertumbuhan logistik menggunakan parameter yang diestimasi dengan metode non-linear least squares (NLS) untuk memodelkan dan menganalisis data time-series [7] Model logistik yang dipengaruhi oleh awal jumlah populasi, laju pertumbuhan, dan daya tampung (carrying capacity) sebagai ukuran populasi maksimum yang dapat ditampung oleh suatu lingkungan tertentu tanpa ada pertambahan atau penurunan ukuran populasi selama periode waktu relatif lama.…”
Section: Pendahuluanunclassified