The question is,
How does a random effect structure handle correlation between observations?
The answer is revealed by analysing a simple example of the model you describe. It turns out the correlation does not depend on the time interval and therefore is unlikely to be appropriate in your application.
Consider a numeric response $Y$ for subject $j$ (with characteristics $\mathbf x_{j} = (x_{j1},x_{j2}, \ldots, x_{jp})$) at time $t_i.$ Model this as a sum of
fixed effects $\mathbf x_j\beta$ (for a constant but unknown parameter vector $\beta = (\beta_1,\beta_2,\ldots,\beta_p)^\prime)$),
a random effect $U_j$ varying among subjects, and
independent "error" $\varepsilon_{ij}$ associated with each observation of the response.
In mathematical notation this can be expressed as
$$Y_{ij} = \mathbf x_{j}\beta + U_j + \varepsilon_{ij}.$$
Standard assumptions are that all the random variables are uncorrelated and have constant variances and means so that (say)
$$\operatorname{Var}(U_j) = \tau^2$$
and
$$\operatorname{Var}(\varepsilon_{ij}) = \sigma^2.$$
(With no loss of generality, all means can be absorbed as an "intercept" in the fixed effect and thereby taken to be zero.)
Focus on a specific subject and compute the correlation among any two of its observations $(Y_{1j}, Y_{2j}, \ldots, Y_{nj})$ (which, with no loss of generality, we may take to be the first two). A standard formula uses the variance-covariance matrix, so let's begin there.
$$\operatorname{Var}(Y_{ij}) = \operatorname{Var}(\mathbf x_j \beta + U_j + \varepsilon_{ij}) = \tau^2 + \sigma^2$$
(because $U_j$ is assumed uncorrelated with $\varepsilon_{ij}$) and
$$\operatorname{Cov}(Y_{1j}, Y_{2j}) = \operatorname{Cov}(\mathbf x_j \beta + U_j + \varepsilon_{1j},\ \mathbf x_j \beta + U_j + \varepsilon_{2j}) = \tau^2$$
(because $U_j,$ $\varepsilon_{1j},$ and $\varepsilon_{2j}$ are uncorrelated).
Consequently the correlation between any two pairs of observations of the same subject is
$$\rho_j = \operatorname{Cor}(Y_{1j}, Y_{2j}) = \frac{\operatorname{Cov}(Y_{1j},Y_{2j})}{\sqrt{\operatorname{Var}(Y_{1j})\operatorname{Var}(Y_{2j})}} = \frac{\tau^2}{\tau^2 + \sigma^2}.$$
This does not depend on the time interval $\tau_2 - \tau_1$ and therefore does not depend on any time interval.
Notice, too, that this model implies strictly positive correlations among the observations of any given subject. Intuitively, this arises from the common (but random) influence $U_j$ pertaining to subject $j.$