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Advantages of 3D vision systems over sieving for particle size measurement

Date post: 12-Apr-2017
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3D Image Analysis Systems Versus Sieving For particle size measurement
Transcript

3D Image Analysis Systems

Versus Sieving

For particle size measurement

Sieving

Sieving is an ancient size measurement technique dating back to Roman times.

It has a number of disadvantages when compared to a modern 3D image analysis system.

• Sieves are 1 dimensional: i.e. only measure 1 parameter which is width/length in a specific orientation

• Results are also given in a single distribution of mass %

• Sieve analysis is time consuming – 15 to 30 minutes (Not including result calculation)

• Operator error is common with such a repetitive task

– Sieve fractions not being collected correctly

– Misweighing of size fractions

– Data transposition errors

– Miscalculating of size distribution

• Sieves are unreliable – worn sieves result in finer distributions

– Certification and/or replacement can be costly and is seldom done in the recommended time frame

3D Image Analysis

• 3D Image Analysis is a fast and efficient method of measuring particle size distribution, and has a number of key advantages over sieving.

• Huge range of particle sizes can be measured visually

– 4 microns up to well over 120mm

• Shape parameters are recorded in addition to size

– 32 different parameters recorded in total

– Previously run samples can be remeasured with different parameters

• 3D measurement gives length, width and thickness

• It is possible to do online analysis

• System is extremely reliable due to simple construction

• Slurries and wet suspensions are also able to be analysed

• Analysis is typically 5 to 10x faster than sieving

• Full automation ensures little to no operator error

• Automatic calibration is performed to ensure good results

• Every particle is measured separately

• Data is easily correlated and displayed as sieve fractions if required

• Data reporting can be customised for size and shape parameters, for example:

– Sintered pellets: Need sphericity in addition to size

– Granular fertiliser: Need sphericity and surface roughness in addition to size

– Reflective glass beads – Needs circularity, transparency, and curvature in addition to very accurate size classes.

Go to

www.impautomation.com

For more information


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