WOB Estimation during Ultra-deep Ocean Drilling by Use of Recurrent Neural Networks

T. Kaneko, R. Wada, M. Ozaki, Tomoya Inoue
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引用次数: 2

Abstract

Ultra-deep ocean drilling is expected to develop to deeper and deeper fields. Such drilling has some problems. One of them is that weight on bit (WOB) can not be measured in real time, that is important for drilling operation. Therefore, simulation models estimating WOB are needed. However, previous studies have shown insufficient accuracy of physics-based models. In this research, we introduced a black box model with recurrent neural networks for WOB estimation. We revealed such black box model has applicability to ultra-deep ocean drilling systems, but it has low adaptability to extrapolation. In order to compensate a black box model and a physics-based model, by combining both of them we created a new model called grey box model. This grey box model was revealed to have high accuracy. This research is expected to be a guideline of grey box model with neural networks.
基于递归神经网络的超深海钻井钻压估算
超深海钻探有望向越来越深的油田发展。这样的钻探存在一些问题。其中之一是钻压(WOB)无法实时测量,这对钻井作业至关重要。因此,需要估算钻压的仿真模型。然而,以往的研究表明,基于物理的模型的准确性不足。在本研究中,我们引入了一种基于递归神经网络的黑盒模型用于WOB估计。结果表明,该模型适用于超深海钻井系统,但外推适应性较差。为了弥补黑盒模型和基于物理的模型,我们将两者结合起来创建了一个新的模型,称为灰盒模型。结果表明,该灰盒模型具有较高的精度。本研究对神经网络灰盒模型的研究具有一定的指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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