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Ultrasonic level sensors for flowmetering of non-Newtonian fluids in open Venturi channels: Using data fusion based on Artificial Neural Network and Support Vector Machines

机译:用于开放文丘里通道中非牛顿流体流量计的超声波液位传感器:使用基于人工神经网络和支持向量机的数据融合

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In drilling operations related to oil & gas or geothermal applications, the improved monitoring and control of the flowrate of drilling fluid is important. This will help in reducing cost as well as improving system and Health, Safety and Environmental (HSE) performances. A relatively accurate and low-cost flow monitoring system functioning as a supervisory unit for the drilling fluid in the return path would be useful for this purpose. Inclusion of appropriate sensors and modifying the geometry of an already existing open channel in the transport of drilling fluids are possible approaches for estimating the flowrate of the drilling fluid. Forming a Venturi flume in the already existing open channel structure of the transporting conduit for the drilling fluid offers some interesting possibilities. Using a set of three ultrasonic level meters for determining the levels at various points in the open channel and fusing the data from other sensors in the test loop, the flow rate in a Venturi channel is successfully estimated. Two different empirical models using Artificial Neural Network (ANN) and Support Vector Machine (SVM) are used as alternatives to the mass balance approach. For the flowrate of drilling fluid in the range of (250-550) kg/min, the performances of ANN and SVM models are much better than that of the mechanistic model. The sampling rate for SVM is about 90 times more than that of the mechanistic model. Whereas, the sampling rate of ANN is about 100 times more than that of the SVM model. The Mean Absolute Percentage Error (MAPE) for both empirical models is less than 2%.
机译:在与油气或地热应用有关的钻井作业中,改善对钻井液流量的监控非常重要。这将有助于降低成本,并改善系统以及健康,安全和环境(HSE)的性能。用作返回路径中的钻井液的监控单元的相对准确且低成本的流量监控系统对于此目的将是有用的。包括适当的传感器并在钻井液的运输中修改已经存在的明渠的几何形状是用于估计钻井液的流量的可能方法。在已经存在的用于钻井液的输送管道的明渠结构中形成文丘里管槽提供了一些有趣的可能性。使用一组三个超声波液位计来确定明渠中各个点的液位并融合测试回路中其他传感器的数据,即可成功估算文丘里通道中的流速。使用人工神经网络(ANN)和支持向量机(SVM)的两种不同的经验模型被用作质量平衡方法的替代方法。对于(250-550)kg / min范围内的钻井液流量,ANN和SVM模型的性能远优于机械模型。 SVM的采样率大约是机械模型的采样率的90倍。而ANN的采样率大约是SVM模型的100倍。两种经验模型的平均绝对百分比误差(MAPE)均小于2%。

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