Dear all,
I am at a very early stage in amateur HI radio astronomy and have been trying to move away from the usual heuristics I often see (fixed numbers of integrations, “rule-of-thumb” observing times, etc.), which I find hard to justify quantitatively when planning observations with small instruments.
As an exercise, I have been working through a simple, iterative planning approach based on the measured RMS of pilot observations and the radiometer equation. In essence, the idea is to (i) measure the RMS after baseline removal in line-free regions, (ii) compare the observed RMS with the expected thermal RMS to check whether the system is still in a thermally dominated regime, and (iii) only scale integration time according to the law while that condition holds. When the RMS stops decreasing efficiently and appears to asymptotically approach a constant value, this is treated as an instrumental/systematic floor and used as a practical stopping criterion, rather than continuing to integrate blindly.
I am not claiming any novelty here; this is mainly an attempt to formalize, in a transparent way, decisions that are often made implicitly. I would very much appreciate feedback from the community on whether this conceptual approach makes sense in practice, what assumptions might be too optimistic for small-dish / SDR-based setups, and whether there are known statistical or instrumental pitfalls (e.g. correlated noise, baseline effects, RFI handling) that tend to invalidate this kind of RMS-based planning if one is not careful.
Comments on how applicable (or not) this framework is across different receivers, backends, or observing strategies would also be extremely helpful. I am very open to corrections and criticism, as this is primarily a learning exercise.
Best regards,
Tiago Baroni

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Hello Alex, hello Wolfgang,
Thanks again for the comments and figures. They help a lot in connecting “on-paper” planning with real observing practice, especially for small systems.
Based on your experience, I would like to ask a few technical questions to better understand how RMS-based planning behaves in real small-dish / SDR setups:
(1) For small dishes and SDRs, when the behavior breaks down, do you more often see baseline effects (standing waves, ripple) or temporal gain instabilities (Allan time / drift) dominating the practical noise floor?
(2) Regarding the use of “line-poor” sky regions (e.g. RA ~11–13 h, Dec ~+30–+60° as mentioned by Alex), do you typically treat them only as qualitative reference fields, or do you also use them quantitatively to estimate RMS/Tsys for planning? Are there specific caveats when extrapolating that RMS to other sky regions?
(3) On calibration: when regions like S7 are not well suited for small dishes, do you consider beam-matched reference spectra from simulations sufficient for sensitivity planning (even with ~10–20% uncertainty), or do you still prefer experimental methods (hot/cold, loads) whenever feasible?
(4) Finally, for integration-time planning, do you find a purely spectral metric (line-free RMS after baseline) more robust, or can integrated scalar metrics (e.g. power sum) be useful to detect diminishing returns earlier? Or does this depend strongly on backend and system stability?
The goal behind these questions is to better understand where RMS-based planning works well in practice and where it needs to be complemented by additional observational or instrumental criteria.
Many thanks in advance for any comments or practical examples you may be willing to share.
Best regards,
Tiago Baroni.





Hello Alex,
Thanks for the figures and the detailed explanation, they make the background-drift issue in total-power measurements very clear. I fully agree that, in small systems, these variations can easily exceed the HI line amplitude and make total-power-based metrics unreliable for planning or diagnostics.
Just to be completely clear about my intent: the approach I am exploring does not rely on total-power metrics as a primary criterion. The RMS I refer to is strictly spectral, computed in line-free regions after sub-integration combination and baseline removal, precisely to separate background drift and other systematics from the spectral signal of interest.
In that sense, I see spectral analysis not merely as a processing step, but as the key mechanism for identifying when the system departs from an approximately thermal regime and becomes dominated by drift, ripple, or other instabilities, at which point further integration ceases to be efficient.
Your demonstration that regions such as Dec +45°, RA ~12 h remain stable on average across different beam widths is particularly useful, as it reinforces the idea of a practical “cold sky” reference for planning in small systems, without any claim of absolute calibration.
Thanks again for sharing these practical examples, they help a lot in aligning the conceptual model with real instrumental limitations.
Best regards,
Tiago Baroni