提出了一种基于炉系参数预测模型的实时软测量方法

Jun-ling Yang, Yingying Su, Xianrong Liu, W. Ye
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引用次数: 0

摘要

在加热过程中,炉内参数复杂多变,难以进行在线测量。为了解决这一问题,利用预测模型探索了一种软测量方法,该方法仍然值得推广。本文首先建立了炉体控制器的预测模型,然后引入带指数遗忘因子的增广递推最小二乘算法对参数进行无偏估计。仿真结果表明,这种实时软测量方法可以很好地跟踪参数波动。该方法具有良好的鲁棒性,为炉内参数的在线测量提供了参考方法。
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A real-time soft measurement method based on the furnace system parameters of the forecast model
The complex and changing parameters in the furnace are difficult for online measurement in the heating process. To solve this problem, a soft measurement method was explored using the prediction model that is still worthy of being promoted. This paper gets started by constructing a forecast model for the furnace controller, and then the augmented recursive least squares algorithm with an exponential forgetting factor was introduced to perform an unbiased estimate on the parameters. Simulation results show that such a real-time soft measurement approach works well for tracking the parameter fluctuations. Its good robustness provides a reference method for on-line measurement of the furnace parameters.
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