2023
DOI: 10.1007/s00170-023-12721-2
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Exogenous input autoregressive model based on mixed variables for offline prediction thermal errors of CNC Swiss lathes

Shan Wu,
Lingfei Kong,
Aokun Wang
et al.

Abstract: Accurate prediction models of thermal errors are very useful for improving the machining accuracy of machine tools; it is also the core of thermal error compensation technology. Often, it is preferable to predict thermal deformation using a dynamic model, as opposed to computational inaccuracy and non-robustness existing in the static model. Autoregressive models are one of the most commonly used dynamic models. However, the autoregressive model needs to measure the thermal error online, which can be intrusive… Show more

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