I think what most of the commenters are missing is actually pretty crucial to your question - the idea that you're working with domain experts to build an implementation of their model to test their theories.
Most software engineering stuff out there is not about this regime - and like you say, this is just qualitiatively different than implementing some buisness process or building a server that has to implement RFCxxxx.
There are people working on this from both ends -- trying to teach scientists about the very basics of responsible software engineering (eg, Greg Wilson's Software Carpentry) and teaching software engineering people about large-scale computational science (eg, Steve Easterbrook's very interesting blog, from which this is particularly relevent). Why things are as primitive as they are on this front, I have no idea. Both have links to relevent colleagues on their blogrolls.
There are a number of important differences in this regime from stuff you may have been taught. For one, the overall structure of scientific software is generally quite simple, but the subtlety is quite high - each line of numerics may be the result of 10 years of scientific literature in a number of fields. Secondly, the whole idea of specifications kind of gets flipped on its head -- the specification is "accurately models reality" and what the scientist has is a model that they hope does that. In a way, scientific code development is both implementing a draft specification and groping around for the real specification.
@vfilby sort of has the right idea - continuous customer involvement - but it's a little more than that. For this to work, you are going to get put into the science loop - instead of the cycle being scientist → theory → test → interpretation → update theory, it's going to be scientist → theory → you code → you and scientist both interpret your own parts → update theory and/or implementation. The domain scientists aren't going to know as well as you how to best implement what they want, or how to disentangle the results of their model from the results of your implementation of the model; on the other hand, they're going to understand the implications of the model much much better than you and how to update the theory.
This is a hard balancing act to get right. For it to work, both sides have to (a) respect the others domain of expertise, (b) learn a little bit of that other field, and (c) be invested in the project as a whole working. These sorts of cross-disciplinary projects break down more often then they succeed, but they are vitally important. I really wish I had some easy, guaranteed-to-work tips for you.