2009 American Control Conference 2009
DOI: 10.1109/acc.2009.5159945
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Stochastic adaptive learning rate in an identification method: An approach for on-line drilling processes monitoring

Abstract: On-line drilling processes monitoring is an essential task in enhancing their performances. In oilfield industry, dysfunctions that might occur have to be detected at the earliest possible stage in order to preserve drilling efficiency. This paper deals with a methodology for drilling processes monitoring by identifying time varying parameters. The basic idea behind the proposed algorithm is to improve the tracking ability of parameters change by means of an identification method using a new approach to adjust… Show more

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Cited by 3 publications
(3 citation statements)
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References 9 publications
(14 reference statements)
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“…We trained Unet for N e = 100 epochs epochs with Adam [8], with a constant learning rate of 3 × 10 −4 , a weight decay parameter of 0.1 and a batch size of 12 on a single Tesla V100. The learning rate was unchanged during training to ensure parameter space exploration, using an analoguous reasoning to the one provided in [15].…”
Section: Setting Of Model Parametersmentioning
confidence: 99%
“…We trained Unet for N e = 100 epochs epochs with Adam [8], with a constant learning rate of 3 × 10 −4 , a weight decay parameter of 0.1 and a batch size of 12 on a single Tesla V100. The learning rate was unchanged during training to ensure parameter space exploration, using an analoguous reasoning to the one provided in [15].…”
Section: Setting Of Model Parametersmentioning
confidence: 99%
“…The experiments in this paper are implemented in a deep learning framework (i.e., PyTorch) on an Nvidia GeForce RTX 2080Ti GPU. We choose the Adam algorithm [66] to optimise our model. The initial learning rate, batch size, and epochs are set as 0.01, 24, and 200.…”
Section: Implementation Detailsmentioning
confidence: 99%
“…In Majeed et al [11] a black-box identificaton (Box-Jenkins) was done for rotary drilling laboratory prototype. Ba et al [12] proposed a methodology for drilling processes monitoring by identifying time varying parameters, where a simple linear system was considered in the identification process.…”
Section: T G Ritto (And)mentioning
confidence: 99%