Abstract

The measurement of water content in crude oil based on method of dielectric coefficient is affected by multi-factor, including temperature, salinity content, flow states of oil/water mixture and output characteristic of measuring-sensor, is regarded as a multi-input and single-output nonlinear system with time-variance, strong uncertainty and randomicity. In this paper, a measuring system based on multi-sensor is designed for experiment of oil/water two-phase flow, the influence relationship and complexity of multi-factor in the parameter detection of oil/water mixture is developed by numerical simulation combined with theoretical computation. Moreover, a multi-sensor data fusion method based on artificial neural network is presented to establish a prediction model for water content in crude oil, the simulation result shows this method is effective to deal with the influence of nonlinear characteristic of measuring-sensor, temperature and salinity on measurement of water content in crude oil, evidently improving the measuring accuracy of water content.

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