The question really asks for sample of data _from a source_ with a known entropy _rate_.

I suggest to start with the simplest: a source with zero entropy rate. The bytes of $\pi$ will do. Or iterating SHA-256. Or /dev/random modified to replace the input of the built-in PRNG with zeroes. NIST SP 800-90B won't help distinguish any of these from a source with some entropy. That illustrates it (or any similar test) can't reliably detect even a total lack of entropy, unless some hypothesis is made on the nature of the source.

We can use a lightly conditioned source. It's easy to make one from a microphone in front of something emitting noise (a fan will do), sampled by an ADC (sound input of a PC will do), and the bytes from some number of samples fed thru some light conditioning (like: group $n$ 16-bit samples and output the sum modulo 256 of the $2n$ bytes). That's a better fit for what NIST SP 800-90 is designed to work on. It'll be interesting to see how $n$ influences the results. This source doesn't have a know entropy rate, though.

We can manufacture a source with independent bytes with a known biased distribution leading to (at most) a certain known entropy. One way is to take /dev/urandom (or any source which output can't be discerned from that of a perfect true random source), group bytes by two to form an integer in $[0\ldots2^{16})$, and output the high-order byte of that unless the integer is less than $k$, for some parameter $k\in[0\ldots2^8]$. This leads to a source with byte zero having probability $(2^8-k)/(2^{16}-k)$, and the others $2^8/(2^{16}-k)$. Entropy in bit/byte is easy to compute as a function of $k$, and goes (for $k$ up to $100$):
[![Entropy in bit/byte][1]][1]

  [1]: https://i.sstatic.net/VxHZM.png