Is there any rationale behind numpy-ndarray? There is no info for it and I can hardly imagine a numpy question that does not deal with NDArrays to some extent. There are other tags referring to specific aspects of NumPy, numpy-broadcasting, numpy-einsum, numpy-ufunc and numpy-memmap, but I wouldn't be able to tell what kind of questions should be tagged with numpy-ndarray (and a quick look at some of the tagged questions did not make it clearer). I think it can be replaced with numpy in all cases, or if someone has an actual use for it maybe it could be added to the tag info.
As a numpy gold badger and one of the top answerers in the tag, I don't think the numpy-ndarray tag is useful. I can imagine a use for a tag for questions going in-depth in the ndarray representation - stuff like memory layout, memory ownership, endianness, etc., maybe call it numpy-array-internals - but a tag just for questions involving ndarrays isn't much good, and this tag invites usage for any question with arrays in it.