Andrews Ballard, Chakrabarti Aditi, Dauphin Mathieu, Speck Andrew
Schlumberger-Doll Research, Cambridge, MA 02139, USA.
Sensors (Basel). 2023 Dec 18;23(24):9898. doi: 10.3390/s23249898.
Methane leaks are a significant component of greenhouse gas emissions and a global problem for the oil and gas industry. Emissions occur from a wide variety of sites with no discernable patterns, requiring methodologies to frequently monitor these releases throughout the entire production chain. To cost-effectively monitor widely dispersed well pads, we developed a methane point instrument to be deployed at facilities and connected to a cloud-based interpretation platform that provides real-time continuous monitoring in all weather conditions. The methane sensor is calibrated with machine learning methods of Gaussian process regression and the results are compared with artificial neural networks. A machine learning approach incorporates environmental effects into the sensor response and achieves the accuracies required for methane emissions monitoring with a small number of parameters. The sensors achieve an accuracy of 1 part per million methane (ppm) and can detect leaks at rates of less than 0.6 kg/h.
甲烷泄漏是温室气体排放的一个重要组成部分,也是石油和天然气行业面临的全球性问题。甲烷排放源广泛且无明显规律,这就需要采用各种方法对整个生产链中的这些排放进行频繁监测。为了经济高效地监测广泛分布的井场,我们开发了一种甲烷定点仪器,可部署在设施上,并连接到基于云的解释平台,该平台能在所有天气条件下提供实时连续监测。甲烷传感器采用高斯过程回归的机器学习方法进行校准,并将结果与人工神经网络进行比较。机器学习方法将环境影响纳入传感器响应,只需少量参数就能达到甲烷排放监测所需的精度。这些传感器的精度达到百万分之一甲烷(ppm),能够检测出速率低于0.6千克/小时的泄漏。