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Predicting Recovery Boiler Performance and Exploiting Data Visualization for the Critical Variables

机译:预测恢复锅炉性能和利用临界变量的数据可视化

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To analyze steam production, the techniques for variable selection via stepwise regression and genetic algorithms showed the best results as compared to the method using principal components. The variables selected for steam prediction by the neural networks were the outflow of the black liquor, the percentage of dry solids and the pressure in the steam drum. It is worthwhile to keep in mind that this result was obtained for operational data of the factory under study and that any result should be validated by specialists of the area, whether engineers or researchers. Due to the huge number of variables and of possible relationships among the variables of the processes, the techniques for variable selection and for data visualization are useful to help the operator make decisions, by selection of the relevant variables and allowing the work in a smaller space, and by allowing the visualization of the relationships among variables, respectively. The advantage is greater facility in manipulation as well as physical interpretation of the phenomena. This research will also be developed for the efficiency reduction and emissions.
机译:为了分析蒸汽生产,通过逐步回归和遗传算法的变量选择的技术显示出与使用主成分的方法相比的最佳效果。选择用于神经网络的蒸汽预测的变量是黑液流出,干燥固体的百分比和蒸汽鼓中的压力。值得注意的是,在研究中的工厂的运营数据获得此结果,并且任何结果应由该地区的专家验证,无论是工程师还是研究人员。由于该过程的变量之间的变量数量和可能的关系,可变选择和数据可视化的技术对于帮助操作员通过选择相关变量并允许在较小的空间中的工作来帮助操作员进行决策是有用的,并分别允许分别在变量之间的关系。优点是操纵中的更大设施以及对该现象的物理解释。该研究还将用于减少效率和排放。

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