首页> 外国专利> HYDRAULIC FRACTURING OPERATION PLANNING USING DATA-DRIVEN MULTI-VARIATE STATISTICAL MACHINE LEARNING MODELING

HYDRAULIC FRACTURING OPERATION PLANNING USING DATA-DRIVEN MULTI-VARIATE STATISTICAL MACHINE LEARNING MODELING

机译:使用数据驱动的多变体统计机器学习建模的液压压裂操作规划

摘要

The disclosure is directed to methods to design and revise hydraulic fracturing (HF) job plans. The methods can utilize one or more data sources from public, proprietary, confidential, and historical sources. The methods can build mathematical, statistical, machine learning, neural network, and deep learning models to predict production outcomes based on the data source inputs. In some aspects, the data sources are processed, quality checked, and combined into composite data sources. In some aspects, ensemble modeling techniques can be applied to combine multiple data sources and multiple models. In some aspects, response features can be utilized as data inputs into the modeling process. In some aspects, time-series extracted features can be utilized as data inputs into the modeling process. In some aspects, the methods can be used to build a HF job plan prior to the start of work at a well site. In other aspects, the methods can be used to revise an existing HF job plan in real-time, such as after a treatment cycle, a pumping stage, or a time interval.
机译:本公开涉及设计和修改液压压裂(HF)工作计划的方法。该方法可以利用公共,专有,机密和历史来源的一个或多个数据来源。该方法可以构建数学,统计,机器学习,神经网络和深度学习模型,以预测基于数据源输入的生产结果。在一些方面,将数据源进行处理,质量检查,并组合成复合数据源。在一些方面,可以应用集合建模技术来组合多个数据源和多个模型。在一些方面,响应特征可以用作数据输入到建模过程中。在一些方面,时间序列提取的特征可以用作数据输入到建模过程中。在一些方面,该方法可用于在井网站开始工作之前建立HF工作计划。在其他方面,该方法可用于实时修改现有的HF工作计划,例如在治疗周期,泵浦阶段或时间间隔之后。

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