I always think that a table should be ordered by its most common queries or performance hitters, therefore the clustered index of a table should be in line with the most difficult or common query.
The primary key does not have to be a clustered index so I know you might be wondering where I am going with this but my concern is more about the clustered index than the primary key (and let’s be honest, they normally follow each other).
So the initial question for me is not "should I have a surrogate primary key on the fact table?" but more like "should I have a clustered index on the fact table?" I think the answer is yes you should have one (and yes there are other posts on this site covering this question but I still think it’s worth mentioning in here just in case this is the question people are really asking despite wording it wrong)
There are times you want a surrogate key but I would heartedly recommend that the surrogate is NOT the table’s clustered index. Doing so would order the table in line with the meaningless surrogate key. (Often people add a surrogate identity column to a table and make it the primary key and also the clustered index by default)
So what columns to make the clustered index on? Personally I like date for fact tables and to this you might add some other dimension’s FK for uniqueness but this will increase size and possibly not provide any benefit as in order for the index to be useful the relevant dimensions would have to be referenced (in the order of importance that the key was generated with).
To get around this (and the reason I answer this here) I think you SHOULD add a surrogate and then create the clustered index on the date key and followed by the surrogate (in that order). I do this because the date alone is not going to make a unique row but adding the surrogate will. This keeps the data ordered by date which helps all other non-clustered indexes and also keeps the clustered index size reasonable.
Additionally as the data grows, you may want to partition it in which case you will need a partition key which will invariably be date. Building the clustered index with date as the primary part of key makes this easier. With partitioning you can now use sliding window technique to archive old data or in loading.