Affiliation:
1. Shandong Academy of Science
2. China Geological Survey
Abstract
Geological data with phyletic and various, huge and complex data format, the analysis of geological data processing is mainly divided into three parts: Mines forecast, mine evaluation and mine positioning. Traditional geological data analysis model is limited by limited storage space and computational efficiency, and cannot meet the needs of a large number of geological data fast operations. "Big data technology" provides the ideal solution to the vast amounts of geological data management, information extraction, and comprehensive analysis. For mass storage capacity and high-speed computing power that the "big data technology" need, we built an intelligence systems applied to the analysis of geological data based on MapReduce and GPU double parallel processing cloud computing model. For a large number of geological data, using hadoop cluster system to solve the problem of large amounts of data storage, and designing efficient parallel processing method based on GPU (Graphics Processing Units: calculation of Graphics Processing unit), the method was applied to MapReduce framework, finally completing MapReduce and GPU double parallel processing cloud computing model to improve the operation speed of the system. Through theoretical modeling and experimental verification, indicating that the system can meet the analysis of geological data operation precision, the operation data amount and the operation speed.
Publisher
Trans Tech Publications, Ltd.
Reference6 articles.
1. White T. Hadoop: the definitive guide. O'Reilly, (2012).
2. Aarnio T. Parallel data processing with MapReduce. TKK T-110. 5190, Seminar on Internetworking. (2009).
3. Owens J D, Houston M, Luebke D, et al. GPU computing. Proceedings of the IEEE, 2008, 96(5): 879-899.
4. Pu L P, Zhao P D, Hu G D, et al. Joint Area Mineral Resources Potential Assessment Method of Grid-Units-Based Aggregated Form with Disaggregated Form. Earth Science/Diqiu Kexue, 2011, 36(4).
5. He B, Fang W, Luo Q, et al. Mars: a MapReduce framework on graphics processors. Proceedings of the 17th international conference on Parallel architectures and compilation techniques. ACM, 2008: 260-269.
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献