基于反馈动态神经网络的油田异常井诊断模型研究
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引用本文:李铁宁.基于反馈动态神经网络的油田异常井诊断模型研究[J].计算技术与自动化,2015,(2):114-116
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作者单位
李铁宁 (东北石油大学 计算机与信息技术学院黑龙江 大庆163318) 
中文摘要:针对油田异常井诊断的问题,提出基于反馈动态神经网络的模型,该模型具有适应性强、学习效率高等特点。结合粒子群算法弥补其训练速度慢和容易陷入局部最小的缺点,给出模型及算法的优化原则和实现技术。最后根据实际问题,进行油田异常井诊断模型的具体应用,实验结果证明模型对于异常井诊断具有较高准确性及可行性。
中文关键词:反馈动态神经网络  粒子群算法  异常井
 
Study on Diagnosis Modle of Oilfield Abnormal Well Based on Feedback Dynamic Neural Network
Abstract:According to oilfield abnormal well, this paper proposed a dynamic feedback neural network model, which has the characteristics of strong adaptability and higher learning efficiency. Combined with the particle swarm algorithm to compensate for its slow training speed and falling easily into local minimum points, it gave the principle of optimization model and algorithm and implementation technology. Finally, according to the actual problem, this papers carried on the concrete application of diagnosis model for oilfield abnormal well, and the experimental results show that the model for abnormal well has higher diagnostic accuracy and feasibility.
keywords:feedback dynamic neural network  particle swarm algorithm  abnormal well
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