Chhantyal Khim, Viumdal Håkon, Mylvaganam Saba
Faculty of Technology, Natural Sciences, and Maritime Sciences, University College of Southeast Norway, Kjølnes Ring 56, 3918 Porsgrunn, Norway.
Sensors (Basel). 2017 Oct 26;17(11):2458. doi: 10.3390/s17112458.
In oil and gas and geothermal installations, open channels followed by sieves for removal of drill cuttings, are used to monitor the quality and quantity of the drilling fluids. Drilling fluid flow rate is difficult to measure due to the varying flow conditions (e.g., wavy, turbulent and irregular) and the presence of drilling cuttings and gas bubbles. Inclusion of a Venturi section in the open channel and an array of ultrasonic level sensors above it at locations in the vicinity of and above the Venturi constriction gives the varying levels of the drilling fluid in the channel. The time series of the levels from this array of ultrasonic level sensors are used to estimate the drilling fluid flow rate, which is compared with Coriolis meter measurements. Fuzzy logic, neural networks and support vector regression algorithms applied to the data from temporal and spatial ultrasonic level measurements of the drilling fluid in the open channel give estimates of its flow rate with sufficient reliability, repeatability and uncertainty, providing a novel soft sensing of an important process variable. Simulations, cross-validations and experimental results show that feedforward neural networks with the Bayesian regularization learning algorithm provide the best flow rate estimates. Finally, the benefits of using this soft sensing technique combined with Venturi constriction in open channels are discussed.
在石油和天然气以及地热设施中,采用先通过明渠再经筛网去除钻屑的方式来监测钻井液的质量和数量。由于流动条件各异(如波浪状、湍流状和不规则状)以及存在钻屑和气泡,钻井液流速难以测量。在明渠中设置文丘里管段,并在其上方靠近文丘里收缩段及收缩段上方的位置布置一系列超声波液位传感器,可获取明渠中钻井液的不同液位。利用该系列超声波液位传感器的液位时间序列来估算钻井液流速,并与科里奥利流量计的测量结果进行比较。将模糊逻辑、神经网络和支持向量回归算法应用于明渠中钻井液的时空超声波液位测量数据,能够以足够的可靠性、可重复性和不确定性给出其流速估计值,从而实现对一个重要过程变量的新型软测量。仿真、交叉验证和实验结果表明,采用贝叶斯正则化学习算法的前馈神经网络能提供最佳的流速估计值。最后探讨了在明渠中结合文丘里收缩段使用这种软测量技术的益处。