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Introduction of Steam-Assisted Gravity-Drainage Oil Rate Prediction Usingthe 5-LINE Model

机译:使用5线模型引入蒸汽辅助重力排放油速率预测

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Steam-assisted gravity drainage(SAGD)is the preferred thermal recovery method used to produce bitumenfrom Athabasca deposits in Alberta,Canada.SAGD operation is experiencing five stages:ramp-up,initial plateau,full-length plateau,wind-down and coalescence.The physics controlling the productionmechanisms in each stage is different.Ramp-up is controlled by sweeping and injection pressure and watermobility are the most important factors.In initial plateau and full-length plateau,the chamber growthand bitumen viscosity-temperature dependency are the main controllers.Wind-down initiates as heat-lossovercomes the input enthalpy,and production controls by reduction of heated front close to steam front.Finally,coalescence is a result of reduction of oil availability at the edge of steam chamber.Such reductionis modeled with linearly reducing oil pathway as chambers are coalescing.Butler's model commonly used for history matching and prediction of SAGD oil rate is mainly meant tomodel the full-length plateau stage and that is why it is over-predicting the ramp-up stage and not estimatingthe oil rate trend in wind-down and coalescence.This work is a continuation of a previous part discussingthe predicve model for SAGD process(Irani,2019).The purpose of this work is to create an end-life stage:winddown and coalescence;and then use the decision tree to optimize the solution.The model that includesramp-up,early plateau,plateau,wind-down and coalescence is called 5-LINE model is a mechanistic modelthat controls main physic on each stage.Although the 5-LINE model is mainly derived based on physicscontrolling each stage,it has enough flexibility to match different geological characteristics.The 5-LINEmodel is structured in regression tree to minimize the error and then a decision-tree(DT)learning thatbranches from it to honour dynamics that cannot be honoured by 5-LINE model.This model is tested vs.oil production results of Suncor/MacKay River and Devon/Jackfish,as a result the final predictive modelcan predict oil rate reasonably good enough that can compete with results of dynamic reservoir numericalsimulation.
机译:蒸汽辅助重力排水(SAGD)是用于在加拿大艾伯塔省的Athabasca沉积物生产沥青的首选热回收方法.SAGD运营正在经历五个阶段:RAMP-UP,初始高原,全长高原,减风和聚结。控制每个阶段的生产机制的物理是不同的。通过扫描和注射压力来控制巨大的控制,并且脱脂是最重要的因素。在初始高原和全长高原中,腔室的生长和沥青粘度温度依赖性是主要控制器。风向下启动作为热量造成的输入焓,并通过减少加热前部靠近蒸汽前线的生产控制。最后,聚结是蒸汽室边缘在蒸汽室边缘降低油可用性的结果.Such RealseIS模型,用线性减少模型。作为腔室的石油途径是合并的。常用于历史匹配和索拉油速率预测的宾尔的模型主要是Tome-长度高原阶段,这就是为什么它过度预测斜坡阶段,而不是估计有关逆向和聚结的油速率趋势。这项工作是前一部分的延续,讨论了SAGD过程的初始模型(Irani,2019) 。这项工作的目的是创造一个终身阶段:风轮和聚结;然后使用决策树优化解决方案。包括横向,早高原,高原,绕组和聚结的模型称为5 -line模型是一种机制模型,控制每个阶段的主要物理。虽然5线模型主要基于每个阶段的物理控制,但它有足够的灵活性来匹配不同的地质特征。5-LineModel在回归树中结构,以最小化误差然后是一个决策树(DT)从中学习纪念ThenBranches,以荣誉不能被5行模型所兑现的动态。这个模型是测试了Suncor / Mackay River和Devon / Jackfish的vs.oil生产结果鳍AL预测模型可预测油速度足够好,可以与动态储层数值刺激的结果竞争。

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