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What might have happened without lockdowns?

Coronavirus (Covid-19) forecast slide decks are provided below, to explore what might have happened under a ‘no lockdown’ scenario; where voluntary social distancing occurs, but without a forced lockdown. Included below are detailed assumption notes and a forecast per country 365 days ahead (starting with the day of the first case).

Why forecast under a no lockdown scenario?

  1. Allows a more accurate estimate of the eventual number of official cases, actual infections and fatalities; since the data is not distorted by the impact of an artificial lockdown (which in turn distorts estimates of model parameters).
  2. Provides an indication of when the number of new daily cases would have peaked without a lockdown, allowing a comparison with the eventual reality.

Coronavirus Forecast assumption Notes – May 2020

Forecast slide decks by country

The primary impact, under the no lockdown scenario, is that the speed at which infections spread is greater, and so the peak is reached more quickly.

The forecasts below give an indication of what might have happened if voluntary social distancing had been the only non-medical intervention. The models are estimated based on actual data prior to a lockdown. The ‘official’ daily new case data was pre-processed. To improve the accuracy of the forecasts the official daily new case data was adjusted to estimate the actual number of new infections each day.  This was further adjusted to account for the number who are currently infectious (contagious) using a moving window. The two days prior to the lockdown were excluded from the data used to fit models (in each country) since some may have changed behaviour in anticipation of a lockdown.

South Africa





United States