Soft-Sensing Development Using Adaptive PSO Optimization Based Multi-Kernel ELM with Error Feedback

It is very hard to measure some process variables directly in actual industrial processes, so a soft senor model using adaptive particle swarm optimization (PSO) optimization based multi-kernel ELM with error feedback is proposed in this paper. Firstly, multi-kernel ELM is constructed by adding gaussian and polynomial kernel function to ameliorate the overfitting problem in traditional ELM. Secondly, we propose an adaptive PSO (APSO) for ameliorating the low efficiency problem in the later period of PSO method by adding mutation operator. When given parameter reaches a threshold, the mutation operator adaptively adjusts the position of the particle. Also, the proportion of two kernel functions and the kernel parameters in training process are obtained by APSO. In each iteration, the training error is back propagated to the hidden layer as the co-outputs of hidden layer for further improving the accuracy and stability of the model. Finally, a simulation experiment on the purified terephthalic acid (PTA) solvent system is made to verify the modeling accuracy and optimized performances. The evaluation result demonstrates that the proposed method can provide higher accuracy and a more reliable soft senor model compared with other method.

[1]  Yan-Lin He,et al.  An improved multi-kernel RVM integrated with CEEMD for high-quality intervals prediction construction and its intelligent modeling application , 2017 .

[2]  Zhiqiang Ge,et al.  Robust semi-supervised mixture probabilistic principal component regression model development and application to soft sensors , 2015 .

[3]  Saeid Shokri,et al.  High reliability estimation of product quality using support vector regression and hybrid meta-heuristic algorithms , 2014 .

[4]  Yan-Lin He,et al.  Soft sensor development for the key variables of complex chemical processes using a novel robust bagging nonlinear model integrating improved extreme learning machine with partial least square , 2016 .

[5]  Yan-Lin He,et al.  A Monte Carlo and PSO based virtual sample generation method for enhancing the energy prediction and energy optimization on small data problem: An empirical study of petrochemical industries , 2017 .

[6]  Chee Kheong Siew,et al.  Extreme learning machine: Theory and applications , 2006, Neurocomputing.

[7]  Chia-Feng Juang,et al.  On the hybrid of genetic algorithm and particle swarm optimization for evolving recurrent neural network , 2004, 2004 IEEE International Joint Conference on Neural Networks (IEEE Cat. No.04CH37541).

[8]  Jin Wang,et al.  Comparison of variable selection methods for PLS-based soft sensor modeling , 2015 .

[9]  Qin Hong Control of bromine content in acetic acid solvent system on PTA unit , 2001 .

[10]  Tianyou Chai,et al.  Data-Driven Soft-Sensor Modeling for Product Quality Estimation Using Case-Based Reasoning and Fuzzy-Similarity Rough Sets , 2014, IEEE Transactions on Automation Science and Engineering.

[11]  Yuan Lan,et al.  An extreme learning machine approach for speaker recognition , 2012, Neural Computing and Applications.

[12]  Yan-Lin He,et al.  An effective high-quality prediction intervals construction method based on parallel bootstrapped RVM for complex chemical processes , 2017 .

[13]  Dexian Huang,et al.  Data-driven soft sensor development based on deep learning technique , 2014 .

[14]  James Kennedy,et al.  Particle swarm optimization , 2002, Proceedings of ICNN'95 - International Conference on Neural Networks.

[15]  Gary Montague,et al.  Soft-sensors for process estimation and inferential control , 1991 .