1. In particular l_obs looks very strange. There is something funny going on in your data. If you look at autocorrelation plots of your data, there seem to be periodic spikes. It could also be that the data has been seasonally adjusted, but the one outlier you have (I guess Great Recession) messes up the adjustment.
2. Priors are chosen before seeing the data. Good priors typically are somewhat diffuse and put a high probability on shock sizes around 1 percent. For measurement error, there is less good guidance. Which graphs are jagged? The
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mode_check
-plots? And where does the warning appear? If at the beginning of mode-finding, then it is ok.
3. Your observation equations looked OK. What you should try to do is simulate data from you model calibrated to sensible values and then compare the simulated data to the actual data. It should be similar in mean and variance.