Abstract

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.

Highlights

  • Drilling is an expensive and necessary operation for petroleum and gas exploration

  • The results indicate that artificial neural network (ANN), extreme learning machine (ELM), and USA models are all competent for rate of penetration (ROP) prediction, while both of the ELM and USA models have the advantage of faster learning speed and better generalization performance

  • Prediction performance is made between ANN, ELM, and USA models, while training time is recorded

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Summary

Introduction

Drilling is an expensive and necessary operation for petroleum and gas exploration. The ultimate aim in drilling operations is to increase drilling speed with less cost while maintaining safety. The way ELM trains SLFN is that it first randomly generates the weights of the hidden layer and calculates the weights of the output layer by solving a linear system using the least square method This learning algorithm is extremely fast and has good prediction accuracy. This paper concentrates on ROP estimation using bit type and its properties, mud type and mud viscosity, formation parameters such as rock strength, formation drillability, and formation abrasiveness, and some critical drilling equipment operational parameters such as pump pressure, WOB, and rotary speed based on the previous drilled wells data with the ELM and USA model. The developed ELM and USA model are shown to be efficient with respect to accuracy and running time compared to traditional ANN models They provide a more reliable and faster real-time tool for predicting ROP in new wells

Artificial Neural Networks and Extreme Learning Machines
Methodology of Extreme Learning Machines
Input Data Selection
Experimental Design
10 Data set Training Testing
Conclusions
Full Text
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