Prior-knowledge-based feedforward network simulation of true boiling point curve of crude oil

Chong-wei Chen, De-zhao Chen
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引用次数: 13

Abstract

Theoretical results and practical experience indicate that feedforward networks can approximate a wide class of functional relationships very well. This property is exploited in modeling chemical processes. Given finite and noisy training data, it is important to encode the prior knowledge in neural networks to improve the fit precision and the prediction ability of the model. In this paper, as to the three-layer feedforward networks and the monotonic constraint, the unconstrained method, Joerding's penalty function method, the interpolation method, and the constrained optimization method are analyzed first. Then two novel methods, the exponential weight method and the adaptive method, are proposed. These methods are applied in simulating the true boiling point curve of a crude oil with the condition of increasing monotonicity. The simulation experimental results show that the network models trained by the novel methods are good at approximating the actual process. Finally, all these methods are discussed and compared with each other.

原油真沸点曲线的先验知识前馈网络模拟
理论结果和实践经验表明,前馈网络可以很好地逼近广泛的函数关系。这一性质被用于化学过程的建模。在训练数据有限且有噪声的情况下,对神经网络中的先验知识进行编码以提高模型的拟合精度和预测能力是非常重要的。本文针对三层前馈网络和单调约束,首先分析了无约束法、Joerding罚函数法、插值法和约束优化法。在此基础上,提出了指数权重法和自适应方法。应用这些方法模拟了单调性增加条件下的原油真沸点曲线。仿真实验结果表明,该方法训练的网络模型能较好地逼近实际过程。最后,对这些方法进行了讨论和比较。
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