Bedi Punam, Dhiman Shivani, Gole Pushkar, Gupta Neha, Jindal Vinita
Department of Computer Science, University of Delhi, Delhi, India.
Keshav Mahavidyalaya, University of Delhi, Delhi, India.
SN Comput Sci. 2021;2(3):224. doi: 10.1007/s42979-021-00598-5. Epub 2021 Apr 20.
Since the beginning of COVID-19 (corona virus disease 2019), the Indian government implemented several policies and restrictions to curtail its spread. The timely decisions taken by the government helped in decelerating the spread of COVID-19 to a large extent. Despite these decisions, the pandemic continues to spread. Future predictions about the spread can be helpful for future policy-making, i.e., to plan and control the COVID-19 spread. Further, it is observed throughout the world that asymptomatic corona cases play a major role in the spread of the disease. This motivated us to include such cases for accurate trend prediction. India was chosen for the study as the population and population density is very high for India, resulting in the spread of the disease at high speed. In this paper, the modified SEIRD (susceptible-exposed-infected-recovered-deceased) model is proposed for predicting the trend and peak of COVID-19 in India and its four worst-affected states. The modified SEIRD model is based on the SEIRD model, which also uses an asymptomatic exposed population that is asymptomatic but infectious for the predictions. Further, a deep learning-based long short-term memory (LSTM) model is also used for trend prediction in this paper. Predictions of LSTM are compared with the predictions obtained from the proposed modified SEIRD model for the next 30 days. The epidemiological data up to 6th September 2020 have been used for carrying out predictions in this paper. Different lockdowns imposed by the Indian government have also been used in modeling and analyzing the proposed modified SEIRD model.
自2019年冠状病毒病(COVID-19)疫情开始以来,印度政府实施了多项政策和限制措施以遏制其传播。政府及时做出的决策在很大程度上有助于减缓COVID-19的传播速度。尽管有这些决策,疫情仍在继续蔓延。对疫情传播的未来预测有助于未来的政策制定,即规划和控制COVID-19的传播。此外,全世界都观察到无症状冠状病毒病例在疾病传播中起着重要作用。这促使我们将此类病例纳入以进行准确的趋势预测。之所以选择印度进行这项研究,是因为印度的人口和人口密度非常高,导致疾病高速传播。本文提出了改进的SEIRD(易感-暴露-感染-康复-死亡)模型,用于预测印度及其四个受影响最严重的邦的COVID-19趋势和峰值。改进的SEIRD模型基于SEIRD模型,该模型在预测中还使用了无症状但具有传染性的暴露人群。此外,本文还使用了基于深度学习的长短期记忆(LSTM)模型进行趋势预测。将LSTM的预测结果与所提出的改进SEIRD模型在未来30天内获得的预测结果进行比较。本文使用了截至2020年9月6日的流行病学数据进行预测。印度政府实施的不同封锁措施也被用于对所提出的改进SEIRD模型进行建模和分析。