scispace - formally typeset
Open AccessJournal Article

Modeling of soft sensor for chemical process

TLDR
The relationship between soft sensing modeling and identification and nonlinear modeling is presented in this paper, where the advantages and disadvantages of the proposed methods are analyzed, and the applications of these methods are shown.
Abstract
In the commercial chemical process,many primary product variables cannot be measured online,and soft sensor is an important means to solve this problem.Soft sensing modeling is the core issue of soft sensor.The relationship between soft sensing modeling and identification and nonlinear modeling is presented.The dynamic relationship between quality variables and variables that are easy to measure exists between the increments,and identification depends on incremental data,while soft sensing modeling depends on the measured data to get the relationship.Nonlinear modeling establishes the static relationship between these variables,ignoring the dynamic characteristics,which soft sensing modeling should take into account.With deeper understanding of the chemical process properties,the types and structures of soft sensing model have undergone a great change in the last decades,and soft sensing modeling method evolves from mechanism modeling to data-driven modeling,from linear modeling to nonlinear modeling,and from static modeling to dynamic modeling.The development of the soft sensing modeling method is reviewed.The advantages and disadvantages of the proposed methods are analyzed,and the applications of these methods are shown.In the end,the hot issues and the directions of development of soft sensing modeling method are presented.

read more

Citations
More filters
Journal ArticleDOI

Enhancing Dynamic Soft Sensors based on DPLS: a Temporal Smoothness Regularization Approach

TL;DR: The concept of temporal smoothness is introduced as a novel approach to DPLS-based dynamic soft sensor modeling to not only include historical process data but also impose smoothness regularization on proximal dynamic parameters.
Journal ArticleDOI

Hybrid intelligent control of substrate feeding for industrial fed-batch chlortetracycline fermentation process.

TL;DR: A hybrid intelligent control method is proposed to enable automatic substrate feeding that consists of a presetting module for providing initial set-points; a predictive module for estimating substrate concentration online based on a new time interval-varying soft sensing algorithm; and a feedback compensator using expert rules.
Journal ArticleDOI

Adaptive Soft Sensor Development for Multi-Output Industrial Processes Based on Selective Ensemble Learning

TL;DR: An adaptive localization approach is developed for dealing with the process nonlinearity based on the statistical hypothesis testing theory, which can construct redundancy-free local model set for multi-outputs (SEL-MO).
Journal ArticleDOI

Modeling for soft sensor systems and parameters updating online

TL;DR: In this paper, a kind of soft sensor model consisting of a dynamic model in cascade with a static one is proposed, and two improved Gauss-Newton recursive algorithms, which avoid nonsingular covariance matrix, are proposed for time-invariant and time-variant soft sensor systems.
Journal ArticleDOI

SDAE-BP Based Octane Number Soft Sensor Using Near-infrared Spectroscopy in Gasoline Blending Process

Ying Tian, +2 more
- 18 Dec 2018 - 
TL;DR: A novel deep learning based soft sensor strategy, by using the near-infrared (NIR) spectroscopy obtained in the gasoline blending process, is proposed as a novel method for rapid and efficient determination of octane number in the fuel blending process.
Related Papers (5)