首页> 外文会议>European Association of Geoscientists Engineers conference exhibition >Application of Artificial Intelligence in Gas Storage Management
【24h】

Application of Artificial Intelligence in Gas Storage Management

机译:人工智能在储气管理中的应用

获取原文

摘要

An approach is investigated, to reduce the amount of CPU time needed to execute a numerical full field model in an optimization loop. To demonstrate the power of this approach, a real life example is presented. Data from a gas storage reservoir have been used to setup a single tank material balance program. Then, a limited number of simulation runs is carried out. These simulation runs are intended to span over the whole range of input parameter variation (app. 25 runs). In a next step, a Neural Network (NN) model is setup. By training a Neural Network on the so gained simulation outputs, a model, which is able to interpolate between the individual simulation scenarios is created. In this way, a large variety of different scenarios can be represented with a limited amount of model runs. The trained Neural Network model is used as a proxy function for an optimization routine. The trained Neural Network has been used as fitness function for the Genetic Algorithm to minimize the output parameter, which is in this example the RMS-error of measured and calculated tank pressure. Due to the very low CPU consumption of the Neural Network, a large number of realisations can be calculated in a short amount of time. By this, the absolute minimum of the desired output parameter (in this case the RMS-error) can be evaluated in a few seconds. The Genetic Algorithm has succeeded to find a minimum, which is located very close to the absolute minimum of all possible solutions.
机译:研究了一种方法,以减少在优化循环中执行数值全场模型所需的CPU时间量。为了证明这种方法的力量,提出了一个现实生活的例子。来自储气储存器的数据已被用于设置单个油箱材料平衡程序。然后,执行有限数量的模拟运行。这些仿真运行旨在跨越整个输入参数变化范围(应用程序。25运行)。在下一步中,设置了神经网络(NN)模型。通过培训上所获得的模拟输出上的神经网络,创建了一种能够在各个模拟场景之间插入的模型。以这种方式,各种不同的场景可以用有限量的模型运行表示。培训的神经网络模型用作优化例程的代理功能。训练有素的神经网络已被用作遗传算法的健身功能,以最小化输出参数,这在该示例中测量和计算的罐压的RMS误差。由于神经网络的CPU消耗量非常低,可以在短时间内计算大量的实现。由此,可以在几秒钟内评估所需输出参数的绝对最小值(在这种情况下RMS错误)。遗传算法成功地找到了最小值,该最小值非常接近所有可能的解决方案的绝对最小值。

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