Historical seismograms: Preserving an endangered species

GeoResJ Pub Date : 2015-06-01 DOI:10.1016/j.grj.2015.01.007
Emile A. Okal
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引用次数: 16

Abstract

The youth of seismology as a science, compared to the typical duration of seismic cycles, results in a relative scarcity of records of large earthquakes available for processing by modern analytical techniques, which in turn makes archived datasets of historical seismograms extremely valuable in order to enhance our understanding of the occurrence of large, destructive earthquakes. Unfortunately, the value of these datasets is not always perceived adequately by decision-making administrators, which has resulted in the destruction (or last-minute salvage) of irreplaceable datasets.

We present a quick review of the nature of the datasets of seismological archives, and of specific algorithms allowing their use for the modern retrieval of the source characteristics of the relevant earthquakes. We then describe protocols for the transfer of analog datasets to digital support, including by contact-less photography when the poor physical state of the records prevents the use of mechanical scanners.

Finally, we give some worldwide examples of existing collections, and of successful programs of digital archiving of these valuable datasets.

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历史地震仪:保护濒危物种
与地震周期的典型持续时间相比,地震学作为一门科学还很年轻,这导致可以用现代分析技术处理的大地震记录相对稀缺,这反过来又使得历史地震记录的存档数据集非常有价值,以增强我们对大地震发生的理解,破坏性地震。不幸的是,决策管理者并不总是充分认识到这些数据集的价值,这导致了不可替代的数据集的破坏(或最后一刻的抢救)。我们快速回顾了地震档案数据集的性质,以及允许它们用于相关地震震源特征的现代检索的特定算法。然后,我们描述了将模拟数据集转换为数字支持的协议,包括当记录的不良物理状态阻止使用机械扫描仪时,通过非接触式摄影。最后,我们给出了一些世界范围内现有馆藏的例子,以及对这些有价值的数据集进行数字化存档的成功项目。
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