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ARTIFICIAL NEURAL NETWORKS FOR ESTIMATION OF KINETIC ANALYTICAL PARAMETERS

机译:人工神经网络,用于估算运动学分析参数

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摘要

The suitability of artificial neural networks for estimating kinetic analytical parameters for first-order reactions by using real kinetic data acquired after a short reaction time is demonstrated. The optimal reaction time region and its associated number of inputs are the two key parameters for obtaining as suitable network as possible. Noise in the transient signal was found to affect the performance of the neural network as well as the size of the training set. The trained network estimated kinetic analytical parameters with a % SEP of 2.14, which is much smaller than those provided by parametric methods such as NLR and PCR.
机译:证明了人工神经网络适用于通过使用短反应时间后获得的真实动力学数据估算一级反应动力学分析参数的适用性。最佳反应时间区域及其相关的输入数量是获得尽可能合适的网络的两个关键参数。发现瞬态信号中的噪声会影响神经网络的性能以及训练集的大小。经过训练的网络估算的动力学分析参数的SEP%为2.14,远小于参数方法(例如NLR和PCR)提供的动力学分析参数。

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