# Adaptive model for rate of penetration prediction based on the dynamic correlation of influencing factors

**Authors:** Yonggang Deng, Xiaojing Zhou, Zixuan Feng, Xin Li, Hui Li

PMC · DOI: 10.3389/fdata.2025.1676054 · Frontiers in Big Data · 2026-01-05

## TL;DR

This paper introduces an adaptive model for predicting drilling rates that adjusts to changing conditions during drilling operations.

## Contribution

The novel contribution is an adaptive model that dynamically identifies and updates parameter correlations for improved rate of penetration prediction.

## Key findings

- The model dynamically selects key parameters based on depth-varying correlations.
- Prediction accuracy in 93% of rounds exceeded traditional fixed-parameter models.
- Dynamic correlations significantly deviate from overall correlations in different well sections.

## Abstract

Accurately predicting the rate of penetration (ROP) is a critical benchmark for evaluating operational efficiency in drilling operations, and it is necessary to optimize the drilling parameters and construct an accurate ROP prediction model. At present, the correlations between drilling operation parameters and the ROP are commonly evaluated using a static assessment, which overlooks dynamic changes in parameter correlations during drilling processes.

An adaptive ROP prediction model that incorporates depth-varying correlations of influential parameters is constructed. This model can automatically identify the dynamic correlations of the modeling parameters at different depths of well sections, and the optimal modeling parameters for adaptive training are selected based on the ranking of the correlation coefficients.

An analysis of 33 drilling parameters across 4,837 datasets collected from 4 wellbores in Sichuan. The comparison analysis revealed that at different well sections, the dynamic correlation coefficient of each parameter deviates significantly from the overall correlation coefficient. According to the proposed model, it can dynamically select key parameters and achieve self-update based on real-time data streams, avoiding the defect of traditional fixed-parameter models that ignore the dynamic changes of well sections.

Modeling comparison analysis revealed that in multiple rounds of prediction based on dynamic correlations, the prediction accuracy in 93% of the prediction rounds exceeded that of the overall correlation, indicating that the adaptive ROP prediction model with dynamic correlations has high application value.

## Full-text entities

- **Genes:** C1QTNF3 (C1q and TNF related 3) [NCBI Gene 114899] {aka C1ATNF3, CORCS, CORS, CORS-26, CORS26, CTRP3}
- **Diseases:** XL (MESH:D000080345), ROP (MESH:D015807), HL (MESH:C538324)
- **Chemicals:** oil (MESH:D009821)
- **Species:** Bacillus sp. AT (species) [taxon 1196779]

## Full text

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## Figures

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## References

19 references — full list in the complete paper: https://tomesphere.com/paper/PMC12812677/full.md

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Source: https://tomesphere.com/paper/PMC12812677