I'm not sure normalization of data will help. Presumably, you're approaching this by getting registered birth names by year with the separate corresponding years of hurricanes by name. If this is a one-off deal (i.e. you don't need ongoing updates and new inputs) just transform the spreadsheets into a simple tabular setup that can be converted to arrays (using smart CSV outputting from Excel). Then make the array of hurricanes (much simpler) and for each name, trend from the first array by name for your whole data set and add a key point for the hurricane year. What you'll get is a trend line of name popularity with a fix position for the hurricane, and the visualization of data will be self explanatory.
If, however, you want to make a system to do this, then you will need to get that data into some online storage device (MySQL or MongoDB for example) and build your charts using ajax queries. This will be more work, but it's much more elegant (since you'll programmatically be calling for names and minimizing hard-coded data in array formats.
All things being equal, I'd recommend an non-normalized set of tables since this isn't a very complicated data structure and fully normalizing these tables doesn't really provide any logical or organizational benefits. I'm not saying normalization is wrong - it will still work fine. It just seems like unnecessary work for this specific use case.