基于长短期记忆和贝叶斯优化的深煤层甲烷井产量预测

IF 3.2 3区 工程技术 Q1 ENGINEERING, PETROLEUM SPE Journal Pub Date : 2024-04-01 DOI:10.2118/219749-pa
Danqun Wang, Zhiping Li, Yingkun Fu
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引用次数: 0

摘要

本研究分析了在鄂尔多斯盆地完成的六口深层煤层气井(>1980 米)的生产行为,并提出了一种机器学习方法来预测六口目标井的产气量。目标井的生产行为特点是几个月内压力迅速下降,随后几年内气率和压力趋于稳定。生产数据分析表明,在原地条件下,煤层中存在相对大量的游离气(但游离水有限)。生产机制一般从早期的游离气体膨胀和裂缝/裂隙闭合到后期的气体解吸。我们将目标井的生产数据视为时间序列数据,并在目标井上应用长短期记忆(LSTM)模型进行瓦斯率预测。我们还采用了贝叶斯-概率方法来优化 LSTM 模型(BO-LSTM)。我们的结果表明,BO-LSTM 模型在目标井气率预测方面具有稳健性。此外,将套管压力和液面作为输入,足以使 BO-LSTM 模型达到可靠的产量预测。这项研究为利用地面速率和压力数据预测深层煤层气井的产气量提供了一种很有前景的工具。本研究的发现可为深层煤层气储层的储层管理和开发战略优化提供指导。
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Production Forecast of Deep-Coalbed-Methane Wells Based on Long Short-Term Memory and Bayesian Optimization
This study analyzes the production behaviors of six deep coalbed-methane (CBM) wells (>1980 m) completed in the Ordos Basin and presents a machine-learning method to predict gas production for six target wells. The production behaviors of target wells are characterized with several months of rapidly declining pressure, following by several years of stabilized gas rate and pressure. Production data analysis suggests a relatively large amount of free gas (but limited free water) in coal seams under in-situ condition. The production mechanisms generally transit from free-gas expansion and fracture/cleat closure at early stage to gas desorption at later stage. We treated the target wells’ production data as time-series data and applied the Long Short-Term Memory (LSTM) model on the target wells for gas-rate predictions. We also employed a Bayesian-probabilistic method to optimize the LSTM model (BO-LSTM). Our results demonstrate the BO-LSTM model’s robustness in gas-rate predictions for target wells. Also, treating casing pressure and liquid level as inputs is sufficient for the BO-LSTM model to reach a reliable production forecast. This study provides a promising tool to forecast the gas production of deep-CBM wells using surface rates and pressure data. The findings of this study may guide the reservoir management and development-strategy optimizations of deep-CBM reservoirs.
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来源期刊
SPE Journal
SPE Journal 工程技术-工程:石油
CiteScore
7.20
自引率
11.10%
发文量
229
审稿时长
4.5 months
期刊介绍: Covers theories and emerging concepts spanning all aspects of engineering for oil and gas exploration and production, including reservoir characterization, multiphase flow, drilling dynamics, well architecture, gas well deliverability, numerical simulation, enhanced oil recovery, CO2 sequestration, and benchmarking and performance indicators.
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