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Physics-informed neural network-based petroleum reservoir simulation with sparse data using domain decomposition
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作者 Jiang-Xia Han Liang Xue +4 位作者 yun-sheng wei Ya-Dong Qi Jun-Lei Wang Yue-Tian Liu Yu-Qi Zhang 《Petroleum Science》 SCIE EI CAS CSCD 2023年第6期3450-3460,共11页
Recent advances in deep learning have expanded new possibilities for fluid flow simulation in petroleum reservoirs.However,the predominant approach in existing research is to train neural networks using high-fidelity ... Recent advances in deep learning have expanded new possibilities for fluid flow simulation in petroleum reservoirs.However,the predominant approach in existing research is to train neural networks using high-fidelity numerical simulation data.This presents a significant challenge because the sole source of authentic wellbore production data for training is sparse.In response to this challenge,this work introduces a novel architecture called physics-informed neural network based on domain decomposition(PINN-DD),aiming to effectively utilize the sparse production data of wells for reservoir simulation with large-scale systems.To harness the capabilities of physics-informed neural networks(PINNs)in handling small-scale spatial-temporal domain while addressing the challenges of large-scale systems with sparse labeled data,the computational domain is divided into two distinct sub-domains:the well-containing and the well-free sub-domain.Moreover,the two sub-domains and the interface are rigorously constrained by the governing equations,data matching,and boundary conditions.The accuracy of the proposed method is evaluated on two problems,and its performance is compared against state-of-the-art PINNs through numerical analysis as a benchmark.The results demonstrate the superiority of PINN-DD in handling large-scale reservoir simulation with limited data and show its potential to outperform conventional PINNs in such scenarios. 展开更多
关键词 Physical-informed neural networks Fluid flow simulation Sparse data Domain decomposition
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页岩气井间干扰分析及井距优化 被引量:11
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作者 陈京元 位云生 +4 位作者 王军磊 于伟 齐亚东 吴建发 罗万静 《天然气地球科学》 CAS CSCD 北大核心 2021年第7期931-940,共10页
页岩气井距设计与优化是评价页岩气开发效果的重要指标。在理论认识的基础上,根据类比法、数值模拟、经济评价方法论证,形成了从井间干扰模拟、动态数据诊断到多井生产模拟、井距优化的完整工作流程:①通过建立压力探测边界传播模型,模... 页岩气井距设计与优化是评价页岩气开发效果的重要指标。在理论认识的基础上,根据类比法、数值模拟、经济评价方法论证,形成了从井间干扰模拟、动态数据诊断到多井生产模拟、井距优化的完整工作流程:①通过建立压力探测边界传播模型,模拟不同连通条件下井间干扰响应程度;②基于井间干扰响应规律,根据气井生产动态数据演绎识别、诊断井间干扰;③以地质解释和动态分析结果为基础参数,建立气藏体积压裂多井数值模型,模拟气田生产动态,结合净现值模型优化井距。以长宁国家级页岩气示范区宁201井区为例,模拟表明,减小井距可使得井间干扰提前发生,同时也提高区块整体采收率;基于目前的压裂规模和参数体系,300~400 m井距可进一步优化至260~320 m,单位面积内井数增加20%~30%,区块储量采收率提高10%左右;区块整体净现值随着生产年限不断增加,但对应的最优井距结果不随生产周期的改变而改变。 展开更多
关键词 分段压裂水平井 裂缝连通 井间干扰 井距优化 净现值模型
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