For predicting the key technology index of electroslag remelting (ESR) process (the melting rate and cone purification coefficient of the consumable electrode), a radial basis function (RBF) neural network soft-sensor model optimized by the artificial fish swarm algorithm (AFSA) is proposed. Based on the technique characteristics of ESR production process, the auxiliary variables of soft-sensor model are selected. Then the AFSA is adopted to train the RBF neural network prediction model in order to realize the nonlinear mapping between input and output variables. Simulation results show that the model has better generalization and prediction accuracy, which can meet the online soft sensing requirement of ESR process real-time control. 1. Introduction Electroslag remelting (ESR) process is an advanced smelting method to make purified steels based on rudiment steel in order to reduce impurity and get the high-quality steel which is uniformity, density, and crystal in vertical [1]. The main purpose of ESR process is to purify metal and get the ingot with uniform density crystallization. The steel undergoing the ESR process has many advantages, such as high-purity, lower sulfur and inclusion of nonmetal, smooth surface of the ingot, the uniform density crystallization, and the uniform metal structure and chemical composition. The metal bars as consumable electrodes are inserted into the liquid slag. The current goes through the consumable electrodes and the slag resistance heat appears in the slag pool to melt the metallic electrode to produce metallic droplets. Then the metallic droplets undergo the physical and chemical reaction by the way of dripping in the slag pool and are cooled and recrystallized in the compendium. The quality of the electricity slag ingots depends on the proper ESR technique and the effective control methods. From the control point of view, ESR process is a typical complex controlled object, which has multivariable, distributed parameters and nonlinear and strong coupling features. During the early stage of research, the normal control methods include voltage swings, constant current, constant voltage, and descending power. The voltage swing control method is adopted to adjust the voltage swing amplitude in order to control the electrode movements and maintain the stability of slag resistance [2]. The key technology of melting speed control system and the mathematical model of the time-variant system is discussed, but not analyzing the fundamental reasons causing voltage fluctuation at the expense of the current control accuracy in
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