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A New Approach For Function Approximation In Boiler Combustion Optimization Based On Modified Structural Aosvr

机译:基于改进结构Aosvr的锅炉燃烧优化中函数逼近的新方法

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In the scheme of boiler combustion optimization, a group of optimal controller settings is found to provide recommendations to balance desired thermal efficiency and lowest emissions limit. Characteristic functions between particular objectives and controlling variables can be approximated based on data sets obtained from field tests. These relationships can change with variations in coal quality, slag/soot deposits and the condition of plant equipment, which can not be sampled on-line. Thus, approximation relationships based on test conditions could have little applicability for on-line optimization of the combustion process. In this paper, a new approach is proposed to adaptively perform function approximation based on a modified accurate on-line support vector regression method. Two modified criteria are proposed for selection of the unwanted trained sample to be removed. A structural matrix is used to process and save the model parameters and training data sets, which can be adaptively regulated by the online learning method. The proposed method is illustrated with an example and is also applied to real boiler data successfully. The results reveal their validity in the prediction of NO_x emissions and function approximation, which can correctly be adapted to actual variable operating conditions in the boiler.
机译:在锅炉燃烧优化方案中,发现一组最佳控制器设置可提供建议,以平衡所需的热效率和最低排放限值。特定目标和控制变量之间的特征函数可以根据从现场测试获得的数据集进行近似估算。这些关系会随煤质量,炉渣/烟灰沉积物和工厂设备状况的变化而变化,而这些变化无法在线采样。因此,基于测试条件的近似关系可能很少适用于燃烧过程的在线优化。本文提出了一种基于改进的精确在线支持向量回归方法自适应地执行函数逼近的新方法。提出了两个修改的标准,用于选择要删除的不需要的训练样本。结构矩阵用于处理和保存模型参数和训练数据集,可以通过在线学习方法进行自适应调节。举例说明了该方法,并成功应用于实际锅炉数据。结果揭示了它们在预测NO_x排放和函数逼近方面的有效性,可以正确地适应锅炉中的实际可变工况。

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