SAMPLING Sampling Requirements: 1) Instrument of Measurement

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Presentation transcript:

SAMPLING Sampling Requirements: 1) Instrument of Measurement 2) Scales to Measure

Should produce reliable and useful data 1) Instrument of Measurement Should produce reliable and useful data Accuracy vs. Precision     true repeatable ☼ ☼ ☼ ☼ ☼ ☼ ☼ ☼ ☼ ☼ Precise but not accurate! (repeatable)

2) Scales to Measure Measurements should be collected often enough in space and time to resolve the phenomenon of interest t, x u

Sampling Interval  Choice of sampling increment t or x is essential.  Sample often enough to capture the highest frequency of variability of interest, but not oversample  For any t the highest frequency we can hope to resolve is 1/(2 t) Nyquist Frequency (fN) fN = 1/(2 t) ; if t = 0.5 hrs  fN = 1 cycle per hour (cph)

This means that it takes at least 2 sampling intervals (or 3 data points) to resolve a sinusoidal-type of oscillation with period 1/ fN if 1/ fN = 12 hrs, then t = 6 hrs, i.e., t = T/2 u t 12 hrs t

In practice f = 1/(3 t) due to noise and measurement error. If there is a lot of variability at frequencies greater than f we cannot resolve such variability  aliasing For example,  sampling every month regardless of the tidal cycle sampling for tidal currents every 13 hours sampling for waves every 5-10 seconds Then, we should measure frequently!

Sampling duration We should sample to resolve the fundamental frequency (fF) fF = 1/(N t) = 1/T  We should sample long and often!

Continuous sampling vs. Burst sampling Continuous sampling mode: at equally spaced intervals 0 2 4 6 8 10 12 hrs Burst sampling mode: burst embedded within each regularly spaced time interval

Regularly vs. Irregularly sampled data Regular if unknown distributions Irregular if looking for specific features

Independent Realizations If correlated  not independent do not contribute to statistical significance of measurements