An interpretable Neural Network and Its Application in Inferring Inter-well Connectivity

Huaqing Zhang, Yunqi Jiang, Jian Wang, Kaixiang Zhang, N. Pal
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Abstract

The demand for understandable and accountable machine learning models is becoming more and more important with time. In this paper, we propose a sparsity-based inter-pretable neural network model and a constrained interpretable neural network model. Both of them are simple and easier to interpret, providing more accurate and comprehensive overview of the relationships between the inputs and the outputs of the network model. We use some effective evaluation measures to assess the contribution from each input to each output. Clear interpretations of the learned models are revealed, along with intuitive heat-maps for visualization of the connection weights. Furthermore, the proposed methods are applied to infer the inter-well connectivity between the injectors and the producers in reservoir engineering. After training the networks by water injection rate and liquid production rate data, the reservoir connectivity is efficiently characterized with dynamic parameters. To our knowledge, this is the first time to emphasize on special interpretable neural networks to handle this problem. The empirical results demonstrate the effectiveness of the proposed methods and validate their interpretations.
可解释神经网络及其在井间连通性推断中的应用
随着时间的推移,对可理解和负责任的机器学习模型的需求变得越来越重要。本文提出了一种基于稀疏的可解释神经网络模型和一种约束可解释神经网络模型。它们都很简单,更容易解释,对网络模型的输入和输出之间的关系提供了更准确和全面的概述。我们使用一些有效的评估方法来评估每个投入对每个产出的贡献。揭示了对学习模型的清晰解释,以及用于可视化连接权重的直观热图。此外,该方法还可用于油藏工程中注采井间连通性的推断。利用注水速率和产液速率数据对网络进行训练后,可以有效地用动态参数表征储层连通性。据我们所知,这是第一次强调用特殊的可解释神经网络来处理这个问题。实证结果证明了所提方法的有效性,并验证了其解释。
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