I'm trying to find where the error is coming from in my experiments. But I have multiple points where errors can occur. Is there a way to determine which part of my experiment is responsible for the most error? I have attached an example which has three sources of error: Experiment, sample and measurement. All of these contribute to the differences in the value I receive. I'm hoping for an explanation or maybe a script on how I can set up an analysis looking at the source of error. Thank you.
Dear @wyler0 ,
I'm not sure whether I interprete your data right,
you have 16 measurements,
done with
and you expect the same value for each?
May be you want to have a look at the variability platform, with variance components, see screenshot.
It looks that your repeatability is very poor, it accounts for 75 % of the variations.
See the manual and script for the analysis attached:
So you have to find other sources or a suitable measurement first.
Variability Chart(
Y( :Value ),
X( :Experiment, :Sample, :Measurement ),
Model( "Main Effect" ),
Variance Components( 1 ),
SendToReport(
Dispatch( {}, "Variability Gauge", OutlineBox, {SetHorizontal( 1 )} )
)
)
Dear @wyler0 ,
I'm not sure whether I interprete your data right,
you have 16 measurements,
done with
and you expect the same value for each?
May be you want to have a look at the variability platform, with variance components, see screenshot.
It looks that your repeatability is very poor, it accounts for 75 % of the variations.
See the manual and script for the analysis attached:
So you have to find other sources or a suitable measurement first.
Variability Chart(
Y( :Value ),
X( :Experiment, :Sample, :Measurement ),
Model( "Main Effect" ),
Variance Components( 1 ),
SendToReport(
Dispatch( {}, "Variability Gauge", OutlineBox, {SetHorizontal( 1 )} )
)
)
Thank you Georg, this is exactly what I was looking for.