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Modeling of Thermal Cracking Furnaces Via Exergy Analysis Using Hybrid Artificial Neural Network-Genetic Algorithm

机译:基于混合神经网络遗传算法的火用热裂解炉建模

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In this study, we try to make an exergy analysis of an olefin cracking furnace more understandable by coupling it with the use of an artificial neural network-generic algorithm (ANN-GA) modeling. The presented method permits to provide an energy diagnosis of the process under a wide range of operating conditions. As a case study, one of the petrochemical complexes in Iran has been considered. The Petrosim process simulator software was used to obtain thermodynamic properties of the process streams and to perform exergy balances. The results are validated with industrial data obtained from the plant. The exergy destruction and exergetic efficiency for the main system components and the entire system were calculated. The simulation results reveal that the exergetic loss of the process increases with increasing steam ratio (SR) and decreases with coil outlet temperature (COT) and residence time (RT). The results show that the overall exergetic efficiency of the system is about 65%. The recorded and calculated data have been used as inputs for the neural network. The results show that ANN-GA is a highly effective method to optimize the performance of the neural networks, predicting the overall exergy efficiency. Comparing to phenomenological modeling based on the detailed knowledge of the furnace condition, the use of the introduced ANN-GA model saves significant amount of the time needed for the performance prediction of cracking furnaces.
机译:在这项研究中,我们尝试通过将其与人工神经网络-通用算法(ANN-GA)建模相结合,使对烯烃裂化炉的火用分析更易于理解。提出的方法允许在广泛的操作条件下提供过程的能量诊断。作为案例研究,已经考虑了伊朗的一种石化联合体。 Petrosim过程模拟器软件用于获得过程物流的热力学性质并执行火用平衡。通过从工厂获得的工业数据验证了结果。计算了主要系统组件和整个系统的火用破坏力和能效。仿真结果表明,该过程的能量损失随蒸汽比(SR)的增加而增加,随盘管出口温度(COT)和停留时间(RT)的降低而减小。结果表明,该系统的整体能量效率约为65%。记录和计算的数据已用作神经网络的输入。结果表明,ANN-GA是一种优化神经网络性能,预测总体火用效率的高效方法。与基于对炉子状态的详细了解的现象学模型相比,引入的ANN-GA模型的使用节省了裂解炉性能预测所需的大量时间。

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