If the interest is in comparing the decrease of total annual sales, I agree with @dale_lehman that you have already done it using the graph.
But there are other hypotheses that you may come up with. You have mentioned: multiple notifications, multiple items, and "the number of notifications are different between month and years for the same store, and between stores for the same time period". So, for example, are the decrease of total annual sales of individual items comparable similarly like those from entire store sales, are the individual item sales within/between stores got impacted similarly, or differently? Then you may calculate the quantities at individual item level, and compare those quantities.
What interests me in the plot is that a homogeneous Poisson process (HPP) model might be appropriate. You drew cumulative quantities, but you mentioned "the number of notifications are different between month and years for the same store, and between stores for the same time period".
Regardless how irregular the number of notifications came in, the cumulative quantities look straight for 2019, and piece-wise linear for 2020. That is a hint for me that an HPP model is a good candidate for 2019. And you can compare recurrence rates (a proxy for monthly sales) between the stores.
Meanwhile, more interesting to me are the curves for 2020, though they are not straight for the entire year, they appear piece-wise linear to me, and I mark them up using numbers in the following screenshot. Now look closer, period 1 has a slight uptick, comparing to the same period in 2019, which means a higher recurrence rate, comparing to the same period in 2019. That is a possible hypothesis for testing. Next, period 3 has a slight off (versus completely parallel to) the same period in 2019, which means a lower recurrence rate, comparing to the same period in 2019. Another hypothesis. No doubt, period 2 indicates that Store A almost shut down. Now look at period 4, which may suggest a hypothesis whether Store B started 2020 at the same sales performance as what was in 2019. Period 5 suggests an impact, but not as bad as what happened to Store A. Another hypothesis. Period 6, I see a slight uptick comparing to the same period in 2019 for Store B (later in 2020 Store B was doing better than the same period in 2019), even just very slightly, but that suggests a hypothesis as well. To fit HPP, you need to use Recurrence platform.