An Empirically Constrained Forecasting Strategy for Induced Earthquake Magnitudes Using Extreme Value Theory

J. Verdon, Leo Eisner
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Abstract

Induced seismicity magnitude models seek to forecast upcoming magnitudes of induced earthquakes during the operation of subsurface industries such as hydraulic fracturing, geothermal stimulation, wastewater disposal (WWD), and carbon capture and storage. Accurate forecasting models could guide operational decision making in real time; for example, operations could be reduced or paused if forecast models indicate that magnitudes may exceed acceptable levels. Robust and transparent testing of forecasting models is required if they are to be adopted by operators and regulators of such industries. We develop and test a suite of models based on extreme value estimators to forecast the magnitudes of upcoming induced seismic events based on observed seismicity. We apply these models to multiple induced seismicity cases from WWD in Oklahoma and in western Texas, as well as other cases of seismicity caused by subsurface fluid injection in North America, Europe, and China. In total, our testing dataset consists of >80 individual sequences of induced seismicity. We find that all the models produce strong correlation between observed and modeled magnitudes, indicating that the forecasting provides useful information about upcoming magnitudes. However, some models are found to systematically overpredict the observed magnitudes, whereas others tend to underpredict. As such, the combined suite of models can be used to define upper and lower estimators for the expected magnitudes of upcoming events, as well as empirically constrained statistical expectations for how these magnitudes will be distributed between the upper and lower values. We conclude by demonstrating how our empirically constrained distribution can be used to produce probabilistic forecasts of upcoming induced earthquake magnitudes, applying this approach to two recent cases of induced seismicity.
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利用极值理论对诱发地震震级进行经验约束预测的策略
诱发地震震级模型旨在预测水力压裂、地热激发、废水处理(WWD)以及碳捕获与封存等地下工业运行期间即将发生的诱发地震震级。准确的预测模型可以实时指导运营决策;例如,如果预测模型显示震级可能超过可接受的水平,则可以减少或暂停运营。如果要让这些行业的运营商和监管机构采用预测模型,就必须对其进行可靠、透明的测试。我们开发并测试了一套基于极值估计器的模型,以根据观测到的地震活动预测即将发生的诱发地震事件的震级。我们将这些模型应用于俄克拉荷马州和德克萨斯州西部 WWD 的多个诱发地震案例,以及北美、欧洲和中国由地下流体注入引起的其他地震案例。我们的测试数据集总共包括超过 80 个诱发地震序列。我们发现,所有模型都能在观测震级和模型震级之间产生很强的相关性,这表明预报能提供有关即将发生的震级的有用信息。然而,我们发现一些模型系统地高估了观测到的震级,而另一些模型则倾向于低估震级。因此,综合模型套件可用于定义即将发生事件的预期震级的上下限估计值,以及这些震级如何在上下限值之间分布的经验约束统计预期。最后,我们将把这种方法应用于最近的两个诱发地震案例,展示如何利用我们的经验约束分布来对即将发生的诱发地震震级进行概率预测。
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