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Development and analyses of data-driven models for predicting the bed depth profile of solids flowing in a rotary kiln

机译:数据驱动模型的开发与分析,用于预测旋转窑流动的固体床深度剖面

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Soft computing data-driven modeling (DDM) techniques have attracted the attention of many researchers across the globe as they do not require deep knowledge of the complex physical process. In the present research, data-driven based models have been developed using support vector regression (SVR), multilayer perceptron neural network (MLP), radial basis function neural network (RBFNN) and general regression neural networks (GRNN) techniques for predicting the bed depth profile of solids flowing in a rotary kiln. The performances of the developed models were compared and evaluated against the experimental results in terms of statistical measures such as coefficient of determination (R-2), and average absolute relative error (AARE). The obtained results and findings from this research have revealed that data-driven models can predict the bed depth profile of solids flowing in a rotary kiln quite accurately. The SVR-based model exhibited the lowest AARE value of 1.72% and highest R-2 value of 0.9981 while GRNN, RBFNN, and MLP models gave corresponding values of AARE as 3.69%, 55.13%, 98.15% and those of R-2 as 0.9898, 0.0052 and 0.0081, respectively. Moreover, the developed DDM-based models i.e. GRNN, RBFNN, and MLP models overcame the limitations of the existing solutions which involved iterative numerical procedure entailing high degree of computational complexity. (C) 2019 The Society of Powder Technology Japan. Published by Elsevier B.V. and The Society of Powder Technology Japan. All rights reserved.
机译:软计算数据驱动建模(DDM)技术引起了全球许多研究人员的注意,因为它们不需要深入了解复杂的物理过程。在本研究中,已经使用支持向量回归(SVR),多层的Perceptron神经网络(MLP),径向基函数神经网络(RBFNN)和一般回归神经网络(GRNN)技术开发了基于数据驱动的模型,用于预测床的技术在回转窑中流动的固体深度曲线。比较开发模型的性能,并根据统计措施(R-2)系数(R-2)和平均绝对相对误差(AARE)对实验结果进行评估。该研究的获得结果和结果揭示了数据驱动的模型可以精确地预测旋转窑中的固体的床深度轮廓。基于SVR的模型表现出最低的AARE值为1.72%,最高的R-2值为0.9981,而GRNN,RBFNN和MLP模型将相应的AARE值为3.69%,55.13%,98.15%和R-2的相应值。 0.9898,00052和0.0081分别。此外,基于DDM的基于DDM的模型I. .. GNN,RBFNN和MLP模型克服了现有解决方案的限制,这些解决方案涉及迭代数值的迭代数值涉及高度计算复杂度。 (c)2019年日本粉末技术学会。由elsevier b.v发表。和日本粉末科技会。版权所有。

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