MapReduce Implementation of Prestack Kirchhoff Time Migration (PKTM) on Seismic Data

N. B. Rizvandi, A. Boloori, N. Kamyabpour, Albert Y. Zomaya
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引用次数: 24

Abstract

The oil and gas industries have been great consumers of parallel and distributed computing systems, by frequently running technical applications with intensive processing of terabytes of data. By the emergence of cloud computing which gives the opportunity to hire high-throughput computing resources with lower operational costs, such industries have started to adopt their technical applications to be executed on such high-performance commodity systems. In this paper, we first give an overview of forward/inverse Prestack Kirchhoff Time Migration (PKTM) algorithm, as one of the well-known seismic imaging algorithms. Then we will explain our proposed approach to fit this algorithm for running on Google's MapReduce framework. Toward the end, we will analyse the relation between MapReduce-based PKTM completion time and the number of mappers/reducers on pseudo-distributed MapReduce mode.
地震数据叠前Kirchhoff时间偏移(PKTM)的MapReduce实现
石油和天然气行业一直是并行和分布式计算系统的主要消费者,因为它们经常运行需要大量处理tb级数据的技术应用程序。由于云计算的出现提供了以较低的运营成本雇用高吞吐量计算资源的机会,这些行业已经开始采用在此类高性能商品系统上执行其技术应用程序。本文首先概述了正逆叠前Kirchhoff时间偏移(PKTM)算法,这是一种著名的地震成像算法。然后,我们将解释我们提出的方法,以使该算法适合在谷歌的MapReduce框架上运行。最后,我们将分析伪分布式MapReduce模式下基于MapReduce的PKTM完成时间与MapReduce /reducers数量之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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