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An adaptive learning method with dynamic error transfer factor for batch processes modeling

机译:批处理流程造型动态误差传输因子的自适应学习方法

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Many batch processes can be considered as a class of control affine nonlinear systems. In this paper, a novel adaptive learning approach for batch process modeling is developed. By introducing dynamic error transfer factor associated with mean squared error and using extended recursive least squares approach, the proposed approach can offer an effective fuzzy T-S predication model, resolve the conflicting problem of convergence speed and osciallation existed in recursive least squares method. The proposed modeling scheme is illustrated on a semi-batch reactor, and simulation results show its effectiveness and accuracy.
机译:许多批处理可以被认为是一类控制仿射非线性系统。在本文中,开发了一种新的批处理建模的自适应学习方法。通过引入与均方误差相关的动态误差传输因子并使用扩展的递归最小二乘法方法,所提出的方法可以提供有效的模糊T-S预测模型,解决递归最小二乘法中存在的收敛速度和偏离的冲突问题。所提出的建模方案在半批量反应器上示出,仿真结果表明其有效性和准确性。

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