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Unsupervised Machine Learning to Extract Dominant Geothermal Attributes in Hawaii Island Play Fairway Data

机译:无监督机器学习在夏威夷岛播放航道数据中提取主导地热属性

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Geothermal has potential to be a major renewable energy source in Hawaii, with hot spot volcanism as the primary heat source. Yet the Hawaiian Islands remain largely underexplored from a geothermal perspective. The nearly complete Play Fairway Analysis (PFA) has provided a major step forward; however, this project did not attempt to identify robust relations between different attributes in the PFA data. To discover dominant geothermal attributes and signatures, an unsupervised machine learning (ML) method is used to analyze geothermal PFA data of the Big Island, Hawaii. The dataset includes 12 geothermal attributes at 5,00 locations. The applied unsupervised ML is based on non-negative matrix factorization with customized k-means clustering, called NMFk. This technique accelerates discovery of hidden signals from the complex PFA data, which is difficult with traditional data analytics tools. Through this ML-enhanced PFA study, we have identified signatures and dominant attributes in data to define the type of geothermal system (e.g., low/moderate/high temperature resource). These dominant attributes reveal characteristics of the geothermal system while hidden signatures allow us to intelligently guide data acquisition at new locations. The discovered geothermal features/signals are primarily characterized by hydraulic conductivity, fault, Cl cation. Through ML, we will discover overall dominant attributes in the Hawaii PFA, which was not performed previously. This combination of dominant signals and attributes can be applied to identify favorable data sources to explore new hidden geothermal resources.
机译:地热有可能成为夏威夷的主要可再生能源,热点火山作为主要热源。然而,夏威夷群岛在地热视角仍然望而轻松。几乎完整的游戏通道分析(PFA)向前迈出了重要的一步;但是,该项目没有尝试识别PFA数据中不同属性之间的强大关系。为了发现主导地热属性和签名,无监督的机器学习(ML)方法用于分析夏威夷大岛的地热PFA数据。 DataSet在5,00个位置包括12个地热属性。所应用的无监督ML基于非负矩阵分解,具有定制的K-Means聚类,称为NMFK。该技术加快了来自复杂的PFA数据的隐藏信号的发现,这很难与传统的数据分析工具很难。通过该ML增强的PFA研究,我们已经确定了数据中的签名和主导属性以定义地热系统的类型(例如,低/中/高温资源)。这些主导属性揭示了地热系统的特征,而隐藏的签名允许我们智能地指导新位置的数据采集。发现的地热特征/信号主要是液压导电性,故障,CL阳离子的特征。通过ML,我们将在夏威夷PFA中发现整体主导属性,这是之前未进行的。可以应用主导信号和属性的组合来识别有利的数据源,以探索新的隐藏地热资源。

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