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Modeling of true vapor pressure of petroleum products using ANFIS algorithm

机译:使用ANFIS算法对石油产品的真实蒸气压进行建模

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摘要

The aim of this contribution was to develop a simple tool based on fuzzy logic concepts to predict true vapor pressure of volatile petroleum products. In this regard, the adaptive neuro fuzzy inference system was evolved to estimate the true vapor pressure of volatile petroleum products as function of temperature and Reid vapor pressure. In addition, to determine optimal membership function parameters, the particle swarm optimization as an amazing evolutionary algorithm was applied. This predictive tool is suggested as a precise technique to measure the true vapor pressures of typical liquefied petroleum gases, natural gasoline, and motor fuel components at broad ranges of temperatures. This technique was trained and tested by 156 set of data points collected from the reference. The temperature range is 253-373K and the range of Reid vapor pressure is 35-250KPa. Results obtained from the present tool found to be in acceptable agreement with the actual reported data in the literature. The values of root mean square error and regression coefficient obtained 5.34 and 0.9975, respectively.
机译:该贡献的目的是开发一种基于模糊逻辑概念的简单工具,以预测挥发性石油产品的真实蒸气压。在这方面,进化了自适应神经模糊推理系统以估计挥发性石油产品的真实蒸气压与温度和里德蒸气压的关系。此外,为了确定最佳隶属函数参数,应用了粒子群优化算法作为一种惊人的进化算法。建议将该预测工具作为一种精确的技术,用于在宽泛的温度范围内测量典型的液化石油气,天然汽油和汽车燃料成分的真实蒸气压。通过从参考中收集的156组数据点对这种技术进行了培训和测试。温度范围是253-373K,里德蒸气压的范围是35-250KPa。发现从本工具获得的结果与文献中的实际报道数据是可以接受的。均方根误差和回归系数的值分别为5.34和0.9975。

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