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首页> 外文期刊>Chemical Engineering & Technology: Industrial Chemistry -Plant Equipment -Process Engineering -Biotechnology >Designing and Testing a Chemical Demulsifier Dosage Controller in a Crude Oil Desalting Plant: An Artificial Intelligence-Based Network Approach
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Designing and Testing a Chemical Demulsifier Dosage Controller in a Crude Oil Desalting Plant: An Artificial Intelligence-Based Network Approach

机译:在原油脱盐厂中设计和测试化学破乳剂剂量控制器:基于人工智能的网络方法

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摘要

The aim of this paper is to present an artificial neural network (ANN) controller trained on a historical data set that covers a wide operating range of the fundamental parameters that affect the demulsifier dosage in a crude oil desalting process. The designed controller was tested and implemented on-line in a gas-oil separation plant. The results indicate that the current control strategy overinjects chemical demulsifier into the desalting process whereas the proposed ANN controller predicts a lower demulsifier dosage while keeping the salt content within its specification targets. Since an on-line salt analyzer is not available in the desalting plant, an ANN based on historical measurements of the salt content in the desalting process was also developed. The results show that the predictions made by this ANN controller can be used as an on-line strategy to predict and control the salt concentration in the treated oil.
机译:本文的目的是提供一种在历史数据集上训练的人工神经网络(ANN)控制器,该控制器涵盖了影响原油脱盐过程中破乳剂用量的基本参数的广泛操作范围。设计的控制器已在瓦斯油分离厂进行了在线测试和实施。结果表明,当前的控制策略将化学破乳剂过多地注入到脱盐过程中,而拟议的ANN控制器预测了较低的破乳剂用量,同时将盐含量保持在其规格指标之内。由于在脱盐工厂中没有在线盐分析仪,因此还开发了基于脱盐过程中盐含量的历史测量值的ANN。结果表明,该ANN控制器所做的预测可以用作预测和控制处理后油中盐浓度的在线策略。

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