基于粒度和形状特征的级联多标签智能分类系统

H. Izadi, Morteza Roostaei, M. Soroush, M. Mohammadtabar, S. A. Hosseini, Mahdi Mahmoudi, J. Leung, Vahidoddin Fattahpour
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引用次数: 0

摘要

智能系统在石油工业中越来越受欢迎。基于筛分粒度的粒度分布(PSD)是松散/弱胶结砂岩地层的关键特征,通常是防砂设计的主要参数。由于现有广泛的PSD测量技术和大量的测量数据,特别是对于水平井,因此有必要在进一步分析防砂设计之前对PSD进行分类。另一方面,PSD分析不足以进行防砂设计,还需要考虑颗粒形状。为了上述目的,一个成功的聚类算法需要是一个级联、多标签、无监督和自适应的方法,因为粒子可以被分配到多个组,并且在聚类过程之后应该形成多少个簇是没有事先的想法的。此外,由于筛网粒度和形状特征的差异,应分别使用它们进行颗粒聚类。在目前的研究中,采用级联方法对粒子进行聚类。在级联的第一级,引入了一种基于筛粒度特征的无监督自适应算法。该算法通过自适应和增量的方式优化聚类数量。本文提出的聚类方法使用最小相似阈值(δ)作为唯一的输入参数来启动聚类,并在聚类过程中尽量减少聚类的数量。在级联的第二级,测量每个簇中所有粒子与其相应簇中心之间的相似性,并将那些在形状相似性方面不符合δ的粒子移出簇。该方法的新颖性体现在三个方面。第一个是提供一个粒子聚类算法,该算法基于整个尺寸和形状描述符的范围,而不是专注于尺寸图中的某些点(d值)。二是聚类的动态性,它倾向于在聚类过程中优化聚类的数量。第三个原因是我们使用了级联方法来涉及聚类的大小和形状参数。该方法可用于井下监测和防砂筛管设计的现场应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent System for Multi-Label Classification Based on Particle Size and Shape Features using a Cascade Approach
Intelligent systems are becoming more and more popular in the petroleum industry. Particle Size Distribution (PSD) based on sieve size is a key signature of the unconsolidated/weakly consolidated sandstone formations and is commonly the main parameter in the sand control design. With available extensive PSD measurement techniques and a large number of measurements, especially for horizontal wells, it is necessary to classify the PSDs prior to further analysis for the sand control design. On the other hand, PSD analysis is not enough for sand control design, and particle shapes need to be taken into account as well. A successful clustering algorithm for the mentioned purposes needs to be a cascade, multi-label, unsupervised and self-adaptive approach since the particles can be assigned to more than one group and there is no prior idea on how many clusters should be formed after the clustering process. Besides, due to the differences between sieve size and shape features, they should be used separately for clustering the particles. In the current study, a cascade approach is used for clustering the particles. In the first level of the cascade, an unsupervised and self-adaptive algorithm is introduced based on the sieve size features. The algorithm optimizes the number of clusters through a self-adaptive and incremental approach. The proposed clustering method uses a minimum similarity threshold (δ) as the only input parameter to start the clustering and tries to minimize the number of clusters during the clustering. In the second level of the cascade, the similarity between all particles in each cluster with their corresponding cluster-center is measured, and those particles that do not respect the δ in terms of the shape similarity, are moved out of the cluster. The novelty of the proposed method is in three folds. The first one is to provide a particle clustering algorithm, which works based on the whole range of the sizes and shape descriptors rather than focusing on certain points in the size graph (D-values). The second one is the dynamic nature of the clustering, which tends to optimize the number of clusters during the clustering process. The third one is that we have used a cascade approach for involving both size and shape parameters for the clustering. Our proposed method can be applied in field application for downhole monitoring and sand screen design.
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