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A neural network to correct mass flow errors caused by two-phase flow in a digital coriolis mass flowmeter

机译:一种神经网络,以纠正数字科里奥利质量流量计中两相流引起的质量流量误差

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摘要

Coriolis mass flow meters provide accurate measurement of single-phase flows, typically to 0.2%. However gas-liquid two-phase flow regimes may cause severe operating difficulties as well as measurement errors in these flow meters. As part of the Sensor Validation (SEVA) research at Oxford University a new fully digital coriolis transmitter has been developed which can operate with highly aerated fluids. This paper describes how a neural network has been used to correct the mass flow measurement for two-phase flow effects, based entirely on internally observed parameters, keeping errors to within 2%. The correction strategy has been successfully implemented on-line in the coriolis transmitter. As required by the SEVA philosophy, the quality of the corrected measurement is indicated by the on-line uncertainty provided with each measurement value.
机译:科里奥利质量流量计提供精确测量单相流量,通常为0.2%。然而,气液两相流动制度可能导致严重的操作困难以及这些流量计中的测量误差。作为牛津大学的传感器验证(SEVA)研究的一部分,已经开发出一种新的全数字科里奥利发射器,其可以用高充气的流体操作。本文介绍了神经网络如何用于校正两相流效应的质量流量测量,完全在内部观察到的参数上,将误差保持在2%以内。校正策略已在Coriolis发射器中在线成功实现。根据SEVA哲学所要求的,校正测量的质量由每个测量值提供的在线不确定性表示。

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