遗传算法优化神经网络在高含水油藏单井产量预测中的应用

Lei Zhang, Hongen Dou, Hongliang Wang, Yi Peng, Shaojing Zheng, Chenjun Zhang
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引用次数: 1

摘要

准确的单井产量预测对油田的高效开发具有重要意义。目前,传统方法的平均预测精度在70%左右。现有的数据驱动模型虽然提高了预测精度,但通常考虑的参数较少。以某水驱油田为例,综合考虑地质、开发、工程三个控制因素,选取影响油井月产量的10个因素,利用遗传算法优化的GRU-FNN神经网络建立单井月产量预测模型,并分析模型结构对预测精度的影响。研究表明,与传统神经网络方法相比,GRU-FNN模型具有更高的预测精度和更低的训练成本。研究结果可为储层动态分析提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Optimized by Genetic Algorithm for Predicting Single Well Production in High Water Cut Reservoir
Accurate production prediction of single well is of great significance for efficient development of oilfield. At present, the average prediction accuracy of the traditional methods is about 70%. Although the prediction accuracy of the existing data-driven models is improved, they generally take less parameters into consideration. Taking a water-flooding oilfield as an example, this study selects 10 factors that affect the monthly production of oil Wells by comprehensively considering the three control factors of geology, development, and engineering, and establishes a prediction model of the monthly production of a single oil well by using the GRU-FNN neural network optimized by GA algorithm, and analyzes the influence of the model structure on the prediction accuracy. The research shows that compared with the traditional neural network method, the GRU-FNN model has higher prediction accuracy and lower training cost. The research results can provide reference for reservoir performance analysis.
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