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A dynamic all parameters adaptive BP neural networks model and its application on oil reservoir prediction

机译:动态全参数自适应BP神经网络模型及其在油藏预测中的应用

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In this paper, a dynamic all parameters adaptive BP neural networks model is proposed by fusing genetic algorithms (GAs), simulated annealing (SA) and error back propagation neural network (BPNN) to offset the demerits of one paradigm by the merits of another. Adopting multi-encoding, the model can optimize the input nodes, hidden nodes, transfer function, weights and bias of BP networks dynamically and adaptively. Under accurate premise, the simple architecture (less input and hidden nodes) of network model is constructed in order to improve networks’ adaptation and generalization ability, and to greatly reduce the subjective choice of structural parameters. The results of application on oil reservoir prediction show that the proposed model with comparatively simple structure can meet the precision request and enhance the generalization ability.
机译:通过融合遗传算法,模拟退火算法和误差反向传播神经网络,提出一种动态全参数自适应BP神经网络模型,以弥补一个范例的弊端。该模型采用多重编码,可以动态,自适应地优化BP网络的输入节点,隐藏节点,传递函数,权重和偏差。在准确的前提下,构建网络模型的简单架构(较少的输入和隐藏节点),以提高网络的适应性和泛化能力,并大大减少结构参数的主观选择。在油藏预测中的应用结果表明,所提出的结构相对简单的模型可以满足精度要求,增强了泛化能力。

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