QMSys GUM Enterprise 4.9 Build (14.01.19)

Using this application you can analyze physical measurements and display the correlations

Using this application you can analyze physical measurements and display the correlations and various other statistical parameters



Software Specs

Publisher:............ Qualisyst Ltd.

License:............... Trial

Price:................... $1.00

File size:.............. 16.6 MB

Downloads:.........

Release date:...... 18 Feb 2014

Last update:........ 15 Feb 2015

Publisher review for QMSys GUM Enterprise 4.9 Build (14.01.19):

Review by: Qualisyst Ltd.
The QMSys GUM Enterprise application was developed to be the ultimate software tool for analysis of the measurement uncertainty, using the two most powerful methods to calculate the measurement uncertainty - the GUM uncertainty framework and the Monte-Carlo method.



The QMSys GUM Enterprise program is using since its first release the two most powerful methods to calculate the measurement uncertainty. The first method implements the uncertainty propagation described extensively in the GUM uncertainty framework.



You can explore the correlation and validity of the measurements in various distribution graphs or histograms.



The GUM uncertainty framework has some limitations and is suitable only for linear and quasilinear models. The second method is an implementation of the Monte-Carlo method detailed in the first GUM Supplement.



The Monte-Carlo method is the only reliable and easy to use method for the evaluation of the measurement uncertainty, which is suitable for all linear and non-linear models of the measurement process.



Requirements:


Operating system:
Windows 8, Windows 7, Windows Vista, Windows XP, Windows 2000, Windows 98

Download QMSys GUM Enterprise 4.9 Build (14.01.19)

QMSys GUM Enterprise screenshots:

QMSys GUM Enterprise 4.9 Build (14.01.19) screenshot. Click to enlarge!

QMSys GUM Enterprise download tags:

Copyright information:

Copyright (c) 2024 ++ win7dwnld.com - All rights reserved. - 0.0116 s