论文标题
被动学习以解决虚拟流量计量应用程序中的非平稳性
Passive learning to address nonstationarity in virtual flow metering applications
论文作者
论文摘要
由于计算复杂性低以及模型开发和维护成本,稳态过程模型在虚拟流量计应用中很常见。然而,由于正在建模的基础过程的固有非平稳性,稳态模型的预测性能通常会随着时间而变化。很少有研究研究如何应用学习方法来维持稳态虚拟流量计的预测准确性。本文探讨了被动学习,其中经常将模型校准为新数据,以解决非组织性并改善长期绩效。被动学习的优势是它与行业中使用的模型兼容。使用两种被动学习方法,即定期批处理学习和在线学习,以不同的校准频率应用于训练虚拟流量计。六种不同的模型类型,从数据驱动到第一原理范围,对10石油井的历史生产数据进行了培训。结果是两倍:首先,在经常到达测量的情况下,频繁更新的模型随着时间的推移具有出色的预测性能;其次,在间歇性和不经常到达测量的情况下,除了利用专家知识外,还要频繁更新对于提高性能准确性至关重要。对于为非组织过程(例如虚拟流量计)开发软传感器的专家,调查可能引起了人们的关注。
Steady-state process models are common in virtual flow meter applications due to low computational complexity, and low model development and maintenance cost. Nevertheless, the prediction performance of steady-state models typically degrades with time due to the inherent nonstationarity of the underlying process being modeled. Few studies have investigated how learning methods can be applied to sustain the prediction accuracy of steady-state virtual flow meters. This paper explores passive learning, where the model is frequently calibrated to new data, as a way to address nonstationarity and improve long-term performance. An advantage with passive learning is that it is compatible with models used in the industry. Two passive learning methods, periodic batch learning and online learning, are applied with varying calibration frequency to train virtual flow meters. Six different model types, ranging from data-driven to first-principles, are trained on historical production data from 10 petroleum wells. The results are two-fold: first, in the presence of frequently arriving measurements, frequent model updating sustains an excellent prediction performance over time; second, in the presence of intermittent and infrequently arriving measurements, frequent updating in addition to the utilization of expert knowledge is essential to increase the performance accuracy. The investigation may be of interest to experts developing soft-sensors for nonstationary processes, such as virtual flow meters.