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Estimation of coal proximate analysis factors and calorific value by multivariable regression method and adaptive neuro-fuzzy inference system (ANFIS)

机译:用多变量回归方法和自适应神经模糊推理系统(ANFIS)估算煤炭的近因和发热量

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The proximate analysis is the most common form of coal evaluation and it reveals the quality of a coal sample. It examines four factors including the moisture, ash, volatile matter (VM), and fixed carbon (FC) within the coal sample. Every factor is determined through a distinct experimental procedure under ASTM specified conditions. These determinations are time consuming and require a significant amount of laboratory equipment. The calorific value is one of the most important properties of a solid fuel and its experimental determination requires special instrumentation and highly trained analyst to operate it. This paper develops mathematical and ANFIS models for estimation of two factors of proximate analysis based on the other two factors. Furthermore, the estimation of calorific value of coal samples based on proximate analysis factors is performed using multivariable regression, the Minitab 16 software package, and the ANFIS, Matlab software package. The results indicate that ANFIS is a more powerful tool for estimation of proximate analysis factors and calorific value than multivariable regression method. The following equation estimates the calorific value of coal samples with high precision: Calorific value (btu/lb)= 12204 - 170 Moisture + 46.8 FC - 127 Ash
机译:最接近的分析是煤炭评估的最常见形式,它揭示了煤炭样品的质量。它检查了四个因素,包括煤样中的水分,灰分,挥发性物质(VM)和固定碳(FC)。在ASTM指定的条件下,通过不同的实验程序确定每个因素。这些确定很耗时,并且需要大量的实验室设备。热值是固体燃料最重要的特性之一,其实验测定需要特殊的仪器和训练有素的分析人员来操作。本文开发了数学模型和ANFIS模型,用于基于其他两个因素来估计邻近分析的两个因素。此外,使用多变量回归,Minitab 16软件包和ANFIS,Matlab软件包,根据最近的分析因素估算煤样品的热值。结果表明,与多变量回归方法相比,ANFIS是一种更强大的工具来估计附近的分析因子和热值。以下方程式可高精度估算煤样品的热值:热值(btu / lb)= 12204-170水分+ 46.8 FC-127灰分

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