Abstract

In the process of fault diagnosis and the health and safety operation evaluation of modern industrial processes, it is crucial to measure important state variables, which cannot be directly detected due to limitations of economy, technology, environment and space. Therefore, this paper proposes a data-driven soft sensor approach based on an echo state network (ESN) optimized by an improved genetic algorithm (IGA). Firstly, with an ESN, a data-driven model (DDM) between secondary variables and dominant variables is established. Secondly, in order to improve the prediction performance, the IGA is utilized to optimize the parameters of the ESN. Then, the immigration strategy is introduced and the crossover and mutation operators are changed adaptively to improve the convergence speed of the algorithm and address the problem that the algorithm falls into the local optimum. Finally, a soft sensor model of an ESN optimized by an IGA is established (IGA-ESN), and the advantages and performance of the proposed method are verified by estimating the alumina concentration in an aluminum reduction cell. The experimental results illustrated that the proposed method is efficient, and the error was significantly reduced compared with the traditional algorithm.

Highlights

  • For industrial enterprises, energy-saving, cost reduction and efficiency increase are the foundation of their development

  • A soft sensor method based on an echo state network parameter model, improved genetic algorithm (IGA)-ESN, was proposed

  • This method uses an improved genetic algorithm to optimize the key parameters of ESN, introduces an immigration strategy and adaptively changes the crossover and mutation frequency to improve the soft sensor accuracy

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Summary

Introduction

Energy-saving, cost reduction and efficiency increase are the foundation of their development. Several key contributions of this paper can be summarized as follows: (1) Task oriented: as the key variables of industrial systems are difficult to measure in a direct and timely manner, we propose a new data-driven soft sensor, named the IGA-ESN model, which is established by ESN; the reservoir parameters are optimized by IGA to maximize the estimation accuracy and improve the convergence speed.

ESN Characterization
Typical
Development of the ESN Soft Sensor Model
Basic ESN
IGA-ESN
Individual Coding
Fitness Function Design
Selection Operation
Crossover and Mutation
Experiment
Application Background
Internal
Data Acquisition and Processing
In aluminum
Experimental Results of the Soft Sensor Model Based on IGA-ESN
Figures and
Comparison with Typical Methods
Conclusions
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