Competitive Knowledge Transfer–Enhanced Surrogate-Assisted Search for Production Optimization

IF 3.2 3区 工程技术 Q1 ENGINEERING, PETROLEUM
SPE Journal Pub Date : 2024-03-01 DOI:10.2118/219732-pa
Chenming Cao, Xiaoming Xue, Kai Zhang, Linqi Song, Liming Zhang, Xia Yan, Yongfei Yang, Jun Yao, Wensheng Zhou, Chen Liu
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Abstract

Production optimization is a crucial component of closed-loop reservoir management, which typically aims to search for the best development scheme for maximum economic benefit. Over the decades, a large body of algorithms have been proposed to address production optimization problems, among which the surrogate-assisted evolutionary algorithm (SAEA) gained much research popularity due to its problem information-agnostic implementation and strong global search capability. However, existing production optimization methods often optimize individual tasks from scratch in an isolated manner, ignoring the available optimization experience hidden in previously optimized tasks. The incapability of transferring knowledge from possibly related tasks makes these algorithms always require a considerable number of simulation runs to obtain high-quality development schemes, which could be computationally prohibitive. To address this issue, this paper proposes a novel competitive knowledge transfer (CKT) method to leverage the knowledge from previously solved tasks toward enhanced production optimization performance. The proposed method consists of two parts: (1) similarity measurement that uses both reservoir features and optimization data for identifying the most promising previously solved task and (2) CKT that launches a competition between the development schemes of different tasks to decide whether to trigger the knowledge transfer. The efficacy of the proposed method is validated on a number of synthetic benchmark functions as well as two production optimization tasks. The experimental results demonstrate that the proposed method can significantly improve production optimization performance and achieve better optimization results when certain helpful previously optimized tasks are available.
用于生产优化的竞争性知识转移--增强型代用辅助搜索
生产优化是闭环油藏管理的重要组成部分,其目的通常是寻找最佳开发方案,以获得最大经济效益。几十年来,人们提出了大量算法来解决生产优化问题,其中代理辅助进化算法(SAEA)因其与问题信息无关的实现方式和强大的全局搜索能力而备受研究青睐。然而,现有的生产优化方法往往以孤立的方式从零开始优化单个任务,忽略了隐藏在先前优化任务中的可用优化经验。由于无法从可能相关的任务中转移知识,这些算法总是需要大量的仿真运行才能获得高质量的开发方案,这在计算上可能是难以承受的。为了解决这个问题,本文提出了一种新颖的竞争性知识转移(CKT)方法,利用以前已解决任务中的知识来提高生产优化性能。该方法由两部分组成:(1) 相似性测量,使用油藏特征和优化数据来识别最有前途的先前已解决任务;(2) CKT,在不同任务的开发方案之间展开竞争,以决定是否触发知识转移。我们在一些合成基准函数和两个生产优化任务上验证了所提方法的有效性。实验结果表明,所提出的方法能显著提高生产优化性能,并在某些有用的先前优化任务可用时取得更好的优化结果。
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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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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