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A Support Vector machine-Based method for parameter estimation of an electric arc furnace model

机译:基于支持向量机的电弧炉型参数估计方法

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摘要

In the iron and steel industry, electric arc furnaces (EAFs) are used in the melting and refining process of metals. They are known to demand large amounts of reactive power and cause significant power quality (PQ) problems due to their highly non-linear time varying voltage-current characteristic. Several EAF models have been proposed with the purpose to predict the voltage and current waveforms, to assess the performance of different compensating devices such as static var compensator, synchronous static compensator, active power filters, and -still under study- energy storage systems, and also for planning the installation of iron and steel facilities considering existing real data from similar facilities. An important aspect of these models is related to the estimation of their parameters. This paper presents a new method to estimate the parameters of an EAF model. The method utilizes a multiple-input multiple-output regressor based on support vector machine, that maps from voltage characteristics of the electric arc to the values of the model parameters. The multidimensional support vector regressor (M-SVR) is designed in the training phase, using data from several simulations of the EAF model. These simulations are carried out adjusting the parameters of the model within the search space, and considering the real arc current as input to the model. Then, in the validation phase, for the real voltage waveform, the estimated parameters are obtained using each regressor of the M-SVR. The proposed method is validated by the comparison between the waveforms obtained using the EAF model with actual data from a steel plant. Results show that the relative error between the fundamental component of the current and voltage, for real and simulated waveforms, are 2.1% and 6.3% respectively.
机译:在钢铁工业中,电弧炉(EAF)用于金属的熔化和精炼过程中。已知他们需要大量的无功功率并且由于其高度非线性时间变化电压电流特性而导致显着的功率质量(PQ)问题。已经提出了几种EAF模型,目的是预测电压和电流波形,以评估不同补偿装置的性能,例如静态VAR补偿器,同步静电补偿器,有源电力滤波器,以及在研究 - 能量存储系统下的速率,以及还要计划考虑来自类似设施的现有数据的钢铁设施的安装。这些模型的一个重要方面与其参数的估计有关。本文提出了一种估算EAF模型参数的新方法。该方法利用基于支持向量机的多输入多输出回归,从电弧的电压特性映射到模型参数的值。多维支持向量回归(M-SVR)在训练阶段设计,使用来自EAF模型的多个模拟的数据。这些模拟正在调整搜索空间内的模型的参数,并将实际电弧电流视为模型的输入。然后,在验证阶段,对于实际电压波形,使用M-SVR的每个regrardOR获得估计的参数。通过使用EAF模型与来自钢铁厂的实际数据获得的波形之间的比较来验证所提出的方法。结果表明,实际和模拟波形的电流和电压的基本组件之间的相对误差分别为2.1%和6.3%。

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