There are 3 known approaches to this:
In this model, you have a single table with all known columns, and allow them to be null for types that don't have that attribute. This gives you a simple database, and fairly simple SQL, but doesn't allow support for common features that relational databases give you, like insisting on non-null columns for a data type, or creating unique indices where that makes sense.
It also tends to lead to messy SQL, with developers forgetting over time what columns mean, so you could get a column being used for multiple purposes.
It does make it easy to join to other tables - so if you have an asset and a purchase related to that asset, the "purchase" table joins to the "asset" table on "assetID".
Table per subtype
In this case, you build a table for each subtype, and enforce the data characteristics of that subtype with not null, unique etc.
This creates a clearer separation of subtypes, and is less likely to degrade into big ball of mud, but makes joins very hard - to join from "purchase" to "asset", you have to know which table holds that particular asset.
Common table for common fields, table per subtype
In this model, you have a single table for the fields that are common between subtypes - you say you've identified this already - and have further tables for each subtype to store the unique attributes.
This solves the joining problem between "asset" and "purchase", keeps the data pretty self-describing.
It does mean client logic needs to implement the "join asset_master to asset_subtype" issue.
I prefer option 3 - it's the best trade-off between maintainability and managability.