2023
DOI: 10.3390/ma16196474
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Modeling and Machine Learning of Vibration Amplitude and Surface Roughness after Waterjet Cutting

Michał Leleń,
Katarzyna Biruk-Urban,
Jerzy Józwik
et al.

Abstract: This study focused on analyzing vibrations during waterjet cutting with variable technological parameters (speed, vfi; and pressure, pi), using a three-axis accelerometer from SEQUOIA for three different materials: aluminum alloy, titanium alloy, and steel. Difficult-to-machine materials often require specialized tools and machinery for machining; however, waterjet cutting offers an alternative. Vibrations during this process can affect the quality of cutting edges and surfaces. Surface roughness was measured … Show more

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Cited by 2 publications
(1 citation statement)
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References 39 publications
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“…Sepasdar [19] Convolutional Neural Networks (CNN) Nonlinear stress distribution and failure modes in microstructure characterization of composite materials Nguyen [20] Random Forest (RF) Maximum displacement of three pendulum isolation system Nguyen [21] Random Forest (RF) Peak lateral displacement of an isolation system under earthquake action Zhou [22] Random Forest (RF) Assess the liquefaction potential of soil Lele ń [23] Linear Regression (LR) Prediction of vibration amplitude and surface roughness after water jet cutting Ahmed [24] Random Forest (RF) Predict the strength of self-compacting mortar samples…”
Section: Authors Machine Learning Model Used Application Scenariomentioning
confidence: 99%
“…Sepasdar [19] Convolutional Neural Networks (CNN) Nonlinear stress distribution and failure modes in microstructure characterization of composite materials Nguyen [20] Random Forest (RF) Maximum displacement of three pendulum isolation system Nguyen [21] Random Forest (RF) Peak lateral displacement of an isolation system under earthquake action Zhou [22] Random Forest (RF) Assess the liquefaction potential of soil Lele ń [23] Linear Regression (LR) Prediction of vibration amplitude and surface roughness after water jet cutting Ahmed [24] Random Forest (RF) Predict the strength of self-compacting mortar samples…”
Section: Authors Machine Learning Model Used Application Scenariomentioning
confidence: 99%