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Application of artificial neural networks coupled with sequential pseudo-uniform design to optimization of membrane reactors for hydrogen production

机译:人工神经网络结合顺序伪均匀设计在优化膜反应器生产氢气中的应用

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摘要

Fuel cells with on board reforming require compact and lightweight components. A membrane reactor (MR) that combines hydrogen permeable membranes with a methanol steam reformer promises considerable weight and space savings. Its dense metal membranes produce high purity hydrogen over a wide range of pressure and load. For a real application of MR, there is much incentive to determine optimal operating conditions of a membrane reactor without resorting to the time consuming knowledge-based modeling work. In this work, a Pd membrane reactor (PMR) for carrying out the methanol steam reforming was simulated and adopted as the test process for verification of the applicability of the proposed optimization method. The artificial neural networks (ANN) with back propagation algorithms coupled with the sequential pseudo-uniform design (SPUD) was applied and demonstrated successfully to the modeling of the PMR system using limited but adequate experimental data. The optimum operating conditions determined from the identified ANN model were applied precisely.
机译:车载重整的燃料电池需要紧凑轻巧的组件。将氢可渗透膜与甲醇蒸汽重整器结合在一起的膜反应器(MR)有望显着节省重量和空间。它的致密金属膜可在很宽的压力和负载范围内产生高纯度的氢气。对于MR的实际应用,在不依靠费时的基于知识的建模工作的情况下,有很多动机来确定膜反应器的最佳运行条件。在这项工作中,对进行甲醇蒸汽重整的钯膜反应器(PMR)进行了模拟,并将其用作测试过程,以验证所提出的优化方法的适用性。结合反向传播算法和顺序伪均匀设计(SPUD)的人工神经网络(ANN)被应用,并使用有限但足够的实验数据成功地证明了PMR系统的建模。精确地应用了从识别出的ANN模型确定的最佳运行条件。

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