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首页> 外文期刊>International Journal of Coal Science & Technology >Prediction of coal ash fusion temperatures using computational intelligence based models
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Prediction of coal ash fusion temperatures using computational intelligence based models

机译:使用基于计算智能的模型预测粉煤灰熔融温度

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In the coal-based combustion and gasification processes, the mineral matter contained in the coal (predominantly oxides), is left as an incombustible residue, termed ash . Commonly, ash deposits are formed on the heat absorbing surfaces of the exposed equipment of the combustion/gasification processes. These deposits lead to the occurrence of slagging or fouling and, consequently, reduced process efficiency. The ash fusion temperatures (AFTs) signify the temperature range over which the ash deposits are formed on the heat absorbing surfaces of the process equipment. Thus, for designing and operating the coal-based processes, it is important to have mathematical models predicting accurately the four types of AFTs namely initial deformation temperature , softening temperature, hemispherical temperature, and flow temperature . Several linearonlinear models with varying prediction accuracies and complexities are available for the AFT prediction. Their principal drawback is their applicability to the coals originating from a limited number of geographical regions. Accordingly, this study presents computational intelligence (CI) based nonlinear models to predict the four AFTs using the oxide composition of the coal ash as the model input. The CI methods used in the modeling are genetic programming (GP), artificial neural networks , and support vector regression . The notable features of this study are that the models with a better AFT prediction and generalization performance, a wider application potential, and reduced complexity, have been developed. Among the CI-based models, GP and MLP based models have yielded overall improved performance in predicting all four AFTs.
机译:在以煤为基础的燃烧和气化过程中,煤中所含的矿物质(主要是氧化物)被留为不可燃残渣,称为灰烬。通常,在燃烧/气化过程的暴露设备的吸热表面上形成灰烬沉积物。这些沉积物导致结渣或结垢的发生,并因此降低了工艺效率。灰烬熔化温度(AFT)表示在过程设备的吸热表面上形成灰烬沉积物的温度范围。因此,对于设计和运行基于煤的工艺,重要的是要有数学模型来准确预测四种类型的AFT,即初始变形温度,软化温度,半球温度和流动温度。具有变化的预测精度和复杂度的几种线性/非线性模型可用于AFT预测。它们的主要缺点是它们适用于来自有限地理区域的煤炭。因此,本研究提出了基于计算智能(CI)的非线性模型,以煤灰的氧化物成分作为模型输入来预测四个AFT。建模中使用的CI方法是遗传编程(GP),人工神经网络和支持向量回归。这项研究的显着特点是,已经开发出具有更好的AFT预测和泛化性能,更广阔的应用潜力以及降低的复杂度的模型。在基于CI的模型中,基于GP和MLP的模型在预测所有四个AFT方面都取得了整体上的改进。

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