基于粗糙集的地球科学数据规则归纳方法

T. Hossain, J. Watada, M. Hermana, Siti Rohkmah Bt M Shukri, H. Sakai
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引用次数: 4

摘要

油气储层的特征和评价通常是通过结合地震和井数据来实现的。因此,必须对这两种数据类型进行很好的校准,以纠正和解释地震数据是在几十米尺度上测量的,而井数据是在几十厘米尺度上测量的。此外,地震数据的处理可能很差;有些测井曲线可能被泥浆滤液侵入或完全丢失而损坏。本研究提出了一种基于粗糙集理论的方法,用于从不一致的信息系统中生成重要规则,该信息系统由分层随机抽样方法收集的地质数据中预处理的地震和测井数据组成。地球科学研究经常遇到不准确、不确定或模糊的数据。粗糙集理论(RST)是一种处理不确定性和模糊性的工具,最早由Zdzisław I. Pawlak提出。RST在处理规则提取、聚类和分类等数据挖掘任务方面非常有效。在RST中,可用的数据用于执行计算。RST通过利用数据的粒度结构来工作。在数据上应用RST,它会生成一组重要的规则。这些规则可能有助于世界各地的地球科学家了解数据的行为,使他们能够了解从测井中获得的岩石物理性质与从地震属性中获得的弹性性质之间的依赖关系,从而提高数据的准确性。
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A Rough Set Based Rule Induction Approach to Geoscience Data
Characterization and evaluation of (oil and gas) reservoirs is typically achieved using a combination of seismic and well data. It is therefore critical that the two data types are well calibrated to correct and account for the fact that seismic data are measured at a scale of tens of meters while well data at a scale of tens of centimeters. In addition, seismic data can be poorly processed; some well logs can be damaged, affected by mud filtrate invasion or completely missing. This research proposes an approach based on rough set theory for generating significant rules from a not consistent information system that consists of the preprocessed seismic and well log data collected from geological data using stratified random sampling method. It is often that Geosciences’ researches encountering inexact, uncertain, or vague data. Rough Set Theory (RST), originally put forward by Zdzisław I. Pawlak, is a tool for dealing with uncertainty and vagueness. RST is very effective to address data mining tasks like rule extraction, clustering and classification. In RST the available data are used for performing the computations. RST works by utilizing the granularity structure of the data. Applying the RST on the data it generates a set of significant rules. These rules are likely to be supportive to the Geoscientists around the world to know the data behavior, which will enable them to know the dependency of the petro-physical properties obtained from well log and elastic properties which can be derived from seismic attributes and to improve the accuracy of the Data.
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