Control of deviations and prediction of surface roughness from micro machining of THz waveguides using acoustic emission signals
Author
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Griffin, James M.
Author
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Díaz, Fernanda
Author
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Geerling, Edgar
Author
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Clasing, Matías
Author
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Ponce, Vicente
Author
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Taylor, Chris
Author
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Turner, Sam
Author
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Michael, Ernest
Author
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Mena Mena, Fausto Patricio
Author
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Bronfman Aguiló, Leonardo
Admission date
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2019-05-29T13:10:29Z
Available date
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2019-05-29T13:10:29Z
Publication date
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2017
Cita de ítem
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Mechanical Systems and Signal Processing 85 (2017) 1020–1034
Identifier
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10961216
Identifier
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08883270
Identifier
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10.1016/j.ymssp.2016.09.016
Identifier
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https://repositorio.uchile.cl/handle/2250/168821
Abstract
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By using acoustic emission (AE) it is possible to control deviations and surface quality during micro milling operations. The method of micro milling is used to manufacture a submillimetre waveguide where micro machining is employed to achieve the required superior finish and geometrical tolerances. Submillimetre waveguide technology is used in deep space signal retrieval where highest detection efficiencies are needed and therefore every possible signal loss in the receiver has to be avoided and stringent tolerances achieved. With a sub-standard surface finish the signals travelling along the waveguides dissipate away faster than with perfect surfaces where the residual roughness becomes comparable with the electromagnetic skin depth. Therefore, the higher the radio frequency the more critical this becomes. The method of time frequency analysis (STFT) is used to transfer raw AE into more meaningful salient signal features (SF). This information was then correlated against the measured geometrical deviations and, the onset of catastrophic tool wear. Such deviations can be offset from different AE signals (different deviations from subsequent tests) and feedback for a final spring cut ensuring the geometrical accuracies are met. Geometrical differences can impact on the required transfer of AE signals (change in cut off frequencies and diminished SNR at the interface) and therefore errors have to be minimised to "within 1 mu m. Rules based on both Classification and Regression Trees (CART) and Neural Networks (NN) were used to implement a simulation displaying how such a control regime could be used as a real time controller, be it corrective measures (via spring cuts) over several initial machining passes or, with a micron cut introducing a level plain measure for allowing setup corrective measures (similar to a spirit level).