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Intelligent control for modeling of real-time reservoir operation, part Ⅱ: artificial neural network with operating rule curves

机译:实时油藏运行建模的智能控制,第二部分:具有运行规则曲线的人工神经网络

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摘要

To bridge the gap between academic research and actual operation, we propose an intelligent control system for reservoir operation. The methodology includes two major processes, the knowledge acquired and implemented, and the inference system. In this study, a genetic algorithm (GA) and a fuzzy rule base (FRB) are used to extract knowledge based on the historical inflow data with a design objective function and on the operating rule curves respectively. The adaptive network-based fuzzy inference system (ANFIS) is then used to implement the knowledge, to create the fuzzy inference system, and then to estimate the optimal reservoir operation. To investigate its applicability and practicability, the Shihmen reservoir, Taiwan, is used as a case study. For the purpose of comparison, a simulation of the currently used M-5 operating rule curve is also performed. The results demonstrate that (1) the GA is an efficient way to search the optimal input-output patterns, (2) the FRB can extract the knowledge from the operating rule curves, and (3) the ANFIS models built on different types of knowledge can produce much better performance than the traditional M-5 curves in real-time reservoir operation. Moreover, we show that the model can be more intelligent for reservoir operation if more information (or knowledge) is involved.
机译:为了弥补学术研究与实际操作之间的差距,我们提出了一种用于油藏操作的智能控制系统。该方法包括两个主要过程,即获取和实施的知识以及推理系统。在这项研究中,使用遗传算法(GA)和模糊规则库(FRB)分别基于具有设计目标函数的历史流入数据和操作规则曲线提取知识。然后,使用基于自适应网络的模糊推理系统(ANFIS)来实现知识,创建模糊推理系统,然后估算最佳储层运行状况。为了研究其适用性和实用性,以台湾石门水库为例。为了进行比较,还对当前使用的M-5操作规则曲线进行了模拟。结果表明:(1)遗传算法是一种搜索最佳输入输出模式的有效方法;(2)FRB可以从操作规则曲线中提取知识;(3)基于不同类型知识的ANFIS模型与传统的M-5曲线相比,在实时油藏操作中可以产生更好的性能。此外,我们表明,如果涉及更多信息(或知识),则该模型对于水库运营可以更加智能。

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