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An Efficient Approach for Real-Time Prediction of Rate of Penetration in Offshore Drilling

机译:近海钻井渗透率实时预测的高效方法

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摘要

Predicting the rate of penetration (ROP) is critical for drilling optimization because maximization of ROP can greatly reduce expensive drilling costs. In this work, the typical extreme learning machine (ELM) and an efficient learning model, upper-layer-solution-aware (USA), have been used in ROP prediction. Because formation type, rock mechanical properties, hydraulics, bit type and properties (weight on the bit and rotary speed), and mud properties are the most important parameters that affect ROP, they have been considered to be the input parameters to predict ROP. The prediction model has been constructed using industrial reservoir data sets that are collected from an oil reservoir at the Bohai Bay, China. The prediction accuracy of the model has been evaluated and compared with the commonly used conventional artificial neural network (ANN). The results indicate that ANN, ELM, and USA models are all competent for ROP prediction, while both of the ELM and USA models have the advantage of faster learning speed and better generalization performance. The simulation results have shown a promising prospect for ELM and USA in the field of ROP prediction in new oil and gas exploration in general, as they outperform the ANN model. Meanwhile, this work provides drilling engineers with more choices for ROP prediction according to their computation and accuracy demand.
机译:预测渗透率(ROP)对于钻井优化至关重要,因为ROP的最大化可以大大减少昂贵的钻井成本。在这项工作中,典型的极端学习机(ELM)和高效的学习模型,上层解决方案感知(美国)已被用于ROP预测。由于形成型,岩石机械性能,液压,位类型和性能(钻头和旋转速度的重量),并且泥浆属性是影响ROP的最重要的参数,它们被认为是预测ROP的输入参数。预测模型已经使用了从渤海湾,中国渤海湾的油藏收集的工业储层数据集。与常用的传统人工神经网络(ANN)进行了评估和比较模型的预测精度。结果表明,ANN,ELM和USA模型都是ROP预测的能力,而榆树和美国模型则具有更快的学习速度和更好的泛化性能的优势。仿真结果对新石油和天然气勘探的ROP预测领域的ELM和美国有着希望的前景,因为它们优于ANN模型。同时,这项工作为钻探工程师提供了根据其计算和准确性需求的ROP预测的更多选择。

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