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Prediction model of reservoir fluids properties using Sensitivity Based Linear Learning method

机译:基于灵敏度线性学习方法的储层流体性质预测模型

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This paper presented a new prediction model for Pressure-Volume-Temperature (PVT) properties based on the recently introduced learning algorithm called Sensitivity Based Linear Learning Method (SBLLM) for two-layer feedforward neural networks. PVT properties are very important in the reservoir engineering computations. The accurate determination of these properties such as bubble-point pressure and oil formation volume factor is important in the primary and subsequent development of an oil field. In this work, we develop Sensitivity Based Linear Learning method prediction model for PVT properties using two distinct databases, while comparing forecasting performance, using several kinds of evaluation criteria and quality measures, with neural network and the three common empirical correlations. Empirical results from simulation show that the newly developed SBLLM based model produced promising results and outperforms others, particularly in terms of stability and consistency of prediction.
机译:本文基于最近引入的两层前馈神经网络基于灵敏度的线性学习方法(SBLLM)学习算法,提出了一种压力-温度-温度(PVT)特性的新预测模型。 PVT属性在油藏工程计算中非常重要。诸如起泡点压力和油形成体积因子之类的这些特性的准确确定在油田的最初和随后的开发中很重要。在这项工作中,我们使用两个不同的数据库为PVT属性开发了基于灵敏度的线性学习方法预测模型,同时使用几种评估标准和质量度量,神经网络和三种常见的经验相关性比较了预测性能。仿真的经验结果表明,新开发的基于SBLLM的模型产生了令人鼓舞的结果,并且优于其他模型,特别是在预测的稳定性和一致性方面。

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