My default position is to try to use strong types to add constraints to values - where you know those in advance. Thus in your example, it may be preferable to use byte dayOfWeek because it is closer to your desired value range.
Here is my reasoning; with the example of storing and passing a year-part of a date. The year part - when considering other parts of the system that include SQL Server DateTimes, is constrained to 1753 through to 9999 (note C#'s possible range for DateTime is different!) Thus a short covers my possible values and if I try to pass anything larger the compiler will warn me before the code will compile. Unfortunately, in this particular example, the C# DateTime.Year property will return an int - thus forcing me to cast the result if I need to pass e.g. DateTime.Now.Year into my function.
This starting-position is driven by considerations of long-term storage of data, assuming 'millions of rows' and disk space - even though it is cheap (it is far less cheap when you are hosted and running a SAN or similar).
In another DB example, I will use smaller types such as byte (SQL Server tinyint) for lookup ID's where I am confident that there will not be many lookup types, through to long (SQL Server bigint) for id's where there are likely to be more records. i.e. to cover transactional records.
So my rules of thumb:
- Go for correctness first if possible. Use DayOfWeek in your example, of course :)
- Go for a type of appropriate size thus making use of compiler safety checks giving you errors at the earliest possible time;
- ...but offset against extreme performance needs and simplicity, especially where long-term storage is not involved, or where we are considering a lookup (low row count) table rather than a transactional (high row count) one.
In the interests of clarity, DB storage tends not to shrink as quickly as you expect by shrinking column types from bigint to smaller types. This is both because of padding to word boundaries and page-size issues internal to the DB. However, you probably store every data item several times in your DB, perhaps through storing historic records as they change, and also keeping the last few days of backups and log backups. So saving a few percent of your storage needs will have long term savings in storage cost.
I have never personally experienced issues where the in-memory performance of bytes vs. ints has been an issue, but I have wasted hours and hours having to reallocate disk space and have live servers entirely stall because there was no one person available to monitor and manage such things.