油气勘探中的机器学习:地质风险评估的新方法

F. Silva, S. Fernandes, J. Casacão, C. Libório, J. Almeida, S. Cersósimo, C. Mendes, R. Brandão, Renato Cerqueira
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引用次数: 6

摘要

在风险评估过程中,勘探地球科学家通常会对各个单独的风险部分进行评估,以估计给定远景区的成功机会。通常,这种估计是基于主观性,无意识的偏见,可能导致不一致的评估。在这个研究项目中,目标是使用认知顾问来约束这些偏见,在机器学习算法的支持下,克服频繁的主观性,并获得公平的前景排名。这种新方法基于一种新的度量标准——知识水平(LoK),它依赖于现有数据和地质模型来描述给定的勘探区。这个参数固定在一个强大的信息源——知识库——一个数据库,它将同行评审的输入和其他非结构化信息(如研究论文或报告)结构化,为地球科学家提供更准确的建议。总体结果显示了测试人员的积极响应,它确定了在可用知识和经验(LoK)上具有标准化度量的价值,作为对他们的成功概率评估进行一致和公平评估的基础。随着系统的不断培训,整合该系统的油气公司将受益于一致的投资组合管理,从而支持勘探策略。
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Machine-Learning in Oil and Gas Exploration: A New Approach to Geological Risk Assessment
Summary During risk assessment, exploration geoscientists routinely evaluate various individual risk segments to estimate the chance of success of a given prospect. Usually, this estimation is based on subjectivity, unconscious biases that may lead to inconsistent evaluations. In this research project, the goal is to constrain these biases using cognitive advisors, supported by machine learning algorithms, to overcome the frequent subjectivity and have a fair prospect ranking. This new methodology is based on a new metric – the Level of Knowledge (LoK) – that relies on the available data and geological model to characterize a given prospect. This parameter is anchored to a powerful source of information – the Knowledge Base – a database that structures peer-reviewed inputs and other unstructured information, such as research papers or reports, giving more accurate advices to geoscientists. Overall results show a positive response by testers, which identify the value of having a normalized metric on available knowledge and experience (LoK), as the base for having consistent and fair assessments on their Probability of Success evaluations. As the system is continuously trained, oil and gas companies that integrate this system would benefit of having a consistent portfolio management, thus, supporting exploration strategies.
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