First, welcome to the community. As usual, Pete's comments are right on. I'll add some thoughts:
1. What is the intent of this exercise? Is this a real situation or purely academic? Why would you remove data form the data set? You might be removing the most informative information. How adequate is the measurement system?
2. What is your definition of "steady state"? I don't see any steady state in the picture you attached. I see what appears to be 3 groups of data with large gaps in the data. There is a group that forms a fairly straight line, but without context, that is meaningless (and a really small data set at that).
3. If your question is what outlier tests could you do, there are many. Which you use depends on how the data was acquired. You could use time series tests, multivariate tests, residual plots, leverage plots, etc.
4. Realize R^2 is just one statistic. Whether it is a good indicator of your models adequacy depends on how the data was acquired. A better use of R^2 in model building is the examine the delta between the R^2 and the R^2 adjusted. Large deltas are indicators of over-specified models. You might want to consider RMSE, p-values along with residuals plots.
"All models are wrong, some are useful" G.E.P. Box