首页> 外文会议>International Gas Union Research Conference >A Comprehensive Neural Network Model for Predicting Two-Phase liquid Holdup under Various Angles of Pipe Inclinations
【24h】

A Comprehensive Neural Network Model for Predicting Two-Phase liquid Holdup under Various Angles of Pipe Inclinations

机译:一种综合神经网络模型,用于在各种管倾斜角度下预测两相液体堆积

获取原文

摘要

Accurate prediction of liquid hotdup associated with multiphase flow is a critical element in the design and operation of modern production systems. This prediction is made difficult by the complexity of the distribution of the phases and the wide range of fluid properties encountered in production operations. Consequently, the performance of existing correlations is often inadequate in terms of desired accuracy and range of application. This investigation focuses on the development of a neural network model, a relatively new approach that has been successfully applied to a variety of complex engineering problems. 2292 data sets from five independent sources were used to develop a neural network for predicting liquid holdup in two-phase flow at all inclinations from upward(+90 degrees) to downward(-90 degree) flow. A three-layer back propagation neural network has utilized. Seven parameters including inclination from horizontal, gas and liquid superficial velocity, diameter, liquid viscosity, density and liquid surface tension are used as inputs to the network. A detailed comparison with Mukherjee et al. and Beggs et al. correlations which are applicable for whole range of inclinations reveals that the developed model provides belter accuracy and predicts liquid holdup in terms of the lowest absolute average percent error (9.407), the lowest standard deviation (8.544) and the highest correlation coefficient (0.9896).
机译:准确预测与多相流相关的液体热量是现代生产系统的设计和运行中的关键元件。通过在生产操作中遇到的阶段的分布和各种流体特性的复杂性难以实现这种预测。因此,就所需的准确性和应用范围而言,现有相关性的性能通常不足。本调查侧重于开发神经网络模型,这是一种相对较新的方法,已成功应用于各种复杂的工程问题。 2292来自五个独立源的数据集用于开发一个神经网络,用于在所有倾斜度从向上(+90度)到向下(-90度)流动的两相流中的液体持有。使用三层反向传播神经网络。包括水平,气体和液体浅表速度,直径,液体粘度,密度和液体表面张力的七个参数用作对网络的输入。与Mukherjee等人进行了详细的比较。并乞求等人。适用于整个倾斜度的相关性揭示了开发的模型提供了Belter精度,并在最低的绝对平均误差(9.407),最低标准偏差(8.544)和最高相关系数(0.9896)方面预测液体储存。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号