AI Article Synopsis

  • Virtual sensing techniques allow for estimating measurements at locations where direct sensing is not possible, making them useful for monitoring the condition of industrial equipment under cyclic loads.
  • The study tests three algorithms for strain estimation—two deterministic (Direct Strain Observer and Least-Squares Strain Estimation) and one stochastic (Static Strain Kalman Filter)—using data from a scaled press prototype equipped with strain gauges.
  • The findings indicate that virtual sensing can provide accurate strain estimations with fewer strain gauges and can also help in detecting the initiation of fatigue cracks at critical structural points.

Article Abstract

The techniques that allow one to estimate measurements at the unsensed points of a system are known as virtual sensing. These techniques are useful for the implementation of condition monitoring systems in industrial equipment subjected to high cyclic loads that can cause fatigue damage, such as industrial presses. In this article, three different virtual sensing algorithms for strain estimation are tested using real measurement data obtained from a scaled bed press prototype: two deterministic algorithms (Direct Strain Observer and Least-Squares Strain Estimation) and one stochastic algorithm (Static Strain Kalman Filter). The prototype is subjected to cyclic loads using a hydraulic fatigue testing machine and is sensorized with strain gauges. Results show that sufficiently accurate strain estimations can be obtained using virtual sensing algorithms and a reduced number of strain gauges as input sensors when the monitored structure is subjected to static and quasi-static loads. Results also show that is possible to estimate the initiation of fatigue cracks at critical points of a structural component using virtual strain sensors.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11174725PMC
http://dx.doi.org/10.3390/s24113354DOI Listing

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