基于NN-MIV的高斯过程回归模型在海洋酶发酵过程中的应用

P. Yang, Yuhan Ding, Guohai Liu, C. Mei, Xu Chen, Hui Jiang
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引用次数: 1

摘要

针对海洋酶发酵软测量模型中存在的冗余变量多、训练时间长、预测精度低等问题,提出了一种基于NN-MIV的高斯过程回归(GPR)模型,称为GPR- nnmiv软测量模型。首先,将神经网络(NN)和平均影响值(MIV)相结合的NN-MIV变量选择方法,综合考虑内部贡献率和外部贡献率,得到最适合且贡献率最高的输入变量,减少了变量数量,简化了软测量模型;其次,在NN-MIV方法的基础上,提出了一种新的高斯过程回归模型,该模型不仅给出了软测量结果,同时也给出了相应的不确定性。结果表明,与单一高斯过程模型相比,所提出的GPR-NNMIV软测量模型具有较高的结果精度和较小的置信区间。
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Application of Gauss process regression modeling based on NN-MIV for marine enzyme fermentation process
To overcome the problems of variable redundancy, long training time and low prediction accuracy in the soft sensing model for marine enzyme fermentation, a Gauss process regression (GPR) model based on NN-MIV is presented, which is named as GPR-NNMIV soft sensing model. Firstly, the NN-MIV variable selection method, combining neural network (NN) and mean impact value (MIV), takes into account both the internal contribution rate and the external contribution rate to get the most suitable input variables with the highest contribution rate, and reduces the number of variables and simplifies soft sensing model. Secondly, based on the NN-MIV method, a new Gauss process regression model is proposed, which does not only give out the soft sensing results but also gives the corresponding uncertainty simultaneously. Results show that the proposed GPR-NNMIV soft sensing model has higher accuracy of results and small confidence intervals compared with single Gauss process model.
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