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Energy ratio of produced biodiesel in hydrodynamic cavitation reactor equipped with LabVIEW controller and artificial intelligence

机译:具有LabVIEW控制器的流体动力空化反应器中产生的生物柴油的能量比和人工智能

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This research utilized a combined hydrodynamic cavitation reactor to produce biodiesel. The reactor worked automatically with the help of a controller designed by LabVIEW. For this purpose, rapeseed oil (0.5?L per experiment) and methanol alcohol with the sodium hydroxide catalyst were used for biodiesel production. The important factors of the study were: 1.pump flow rate (three levels of 1.4, 2 and 2.6?L/min); 2.the molar ratio of methanol to oil (4:1, 6:1 and 8:1); 3.the rotational speed of the reactor (8000, 12000 and 16000 rpm), and 4.circulation time (2, 4 and 6 min). The study analyzed the energy ratio (output energy/input energy) of the produced biodiesel to evaluate the system and modeled the performance of the system to obtain the best-operating conditions of the reactor. In this respect the adaptive neuro-fuzzy inference system (ANFIS), artificial neural network (ANN) and response surface methodology (RSM) methods were employed. The average energy ratio was obtained 1.205, and the Rsup2/sup of the best ANFIS, ANN and RSM models were 0.989, 0.966, and 0.990, respectively, and MSE?was calculated at 0.0005, 0.0015 and 0.00003. The results revealed that the RSM and ANFIS models were preferred to the neural network model in terms of better performance, simplicity, and high processing speed. In general, the RSM model functioned better than the ANFIS model. Accordingly, the best reactor settings to obtain the maximum energy ratio (1.35) and biodiesel yield (91.87 %) was when the circulation time, the rotational speed, the pump flow rate and the molar ratio were set at 2 min, 8000 rpm, 1.4?L/min and 4, respectively.
机译:该研究利用组合的流体动力空化反应器来产生生物柴油。反应器在LabVIEW设计的控制器的帮助下自动使用。为此目的,用氢氧化钠催化剂的油菜籽油(0.5μl)和甲醇醇用于生物柴油生产。该研究的重要因素是:1.Pump流量(1.4,2和2.6?L / min的三级); 2.甲醇与油的摩尔比(4:1,6:1和8:1); 3.反应器(8000,12000和16000rpm)的转速和4.循环时间(2,4和6分钟)。该研究分析了生产的生物柴油的能量比(输出能量/输入能量),以评估系统并建模了系统的性能,以获得反应器的最佳操作条件。在这方面,采用了自适应神经模糊推理系统(ANFIS),人工神经网络(ANN)和响应表面方法(RSM)方法。获得的平均能量比1.205,最佳ANFIS,ANN和RSM模型的R 2 分别为0.989,0.966和0.990,MSEα,MSE为0.0005,00.0015和0.00003。结果表明,在更好的性能,简单性和高处理速度方面,RSM和ANFIS模型是优选的神经网络模型。通常,RSM模型功能比ANFIS模型更好。因此,获得最大能量比(1.35)和生物柴油产量(91.87%)的最佳反应器设置是在2分钟,8000rpm,1.4的循环时间,转速,泵流量和摩尔比时设定?L / min和4分别。

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