We present an approach for interpreting a black-box alarming system for forecasting accidents and anomalies during the drilling of oil and gas wells. The interpretation methodology aims to explain the local behavior of the accident predictive model to drilling engineers. The explanatory model uses Shapley additive explanations analysis of features, obtained through Bag-of-features representation of telemetry logs used during the drilling accident forecasting phase. Validation shows that the explanatory model has 15% precision at 70% recall, and overcomes the metric values of a random baseline and multi-head attention neural network. These results justify that the developed explanatory model is better aligned with explanations of drilling engineers, than the state-of-the-art method. The joint performance of explanatory and Bag-of-features models allows drilling engineers to understand the logic behind the system decisions at the particular moment, pay attention to highlighted telemetry regions, and correspondingly, increase the trust level in the accident forecasting alarms.
翻译:我们提出了一个方法,用于解释在油气井钻探期间预测事故和异常现象的黑盒警报系统。解释方法旨在向钻探工程师解释事故预测模型的当地行为。解释模型使用钻探事故预测阶段通过遥测日志的“功能包”获得的对特征的沙普利添加解释分析。验证表明解释模型精确度为70%,超过了随机基线和多头注意神经网络的衡量值。这些结果证明,开发的解释模型与钻探工程师的解释更加一致,而不是最先进的方法。解释模型和“功能包”模型的共同性能使得钻探工程师在特定时刻能够理解系统决定背后的逻辑,注意突出的遥测区域,并相应地提高事故预报警报中的信任度。