Optimizing ultrasonic reactor operating variables using intelligent soft computing models for increased biodiesel production

Mohammad Ashad Ghani Nasim , Osama Khan , Mohd Parvez , Bhupendra Kumar Bhatt
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引用次数: 5

Abstract

Extensive benefits of biodiesel amalgamation with diesel engine have prompted several researches towards suitable optimization of operating parameters of production process. Ultrasonic reactors are acclaimed instruments in generating biodiesel from raw oil. The contemporary research has varied the operating parameters of the ultrasonic reactor for maximum yield with the aid of artificially intelligent software’s. Eucalyptus oil combined with ethanol and sulphuric acid were used as reactants to generate biodiesel. Prime input factors considered in this study comprises of reaction time, molar ratio, frequency, power and temperature. The study’s results are analysed and compared with models created using intelligent hybrid prediction approaches including adaptive neuro-fuzzy inference system (ANFIS), response surface methodology (RSM) - genetic algorithm (GA). The parameters were varied and optimized for maximum biodiesel yield by employing best operating conditions for ultrasonic reactor, furnished by ANFIS and GA in MATLAB software and RSM in Minitab software. All the models performed exceptionally well, with ANFIS performing slightly better with RSME value of 0.0017 while RSM achieved a RSME value of 0.0023. Combining the precision of ANFIS’s prediction with the efficiency of GA-optimization gives a reliable and thorough evaluation. Enhancing the efficiency of biodiesel production can decrease the world’s fuel consumption by reducing the reliance on fossil fuels and concurrently reducing the carbon footprint by vehicles.

利用智能软计算模型优化超声波反应器操作变量,提高生物柴油产量
生物柴油与柴油机相结合的广泛优点促使人们对生产工艺操作参数的适当优化进行了研究。超声波反应器是利用原油生产生物柴油的著名仪器。当代的研究已经在人工智能软件的帮助下改变了超声波反应器的操作参数以获得最大产量。以桉树油、乙醇和硫酸为原料制备生物柴油。本研究中考虑的主要输入因素包括反应时间、摩尔比、频率、功率和温度。分析了研究结果,并将其与使用智能混合预测方法创建的模型进行了比较,这些方法包括自适应神经模糊推理系统(ANFIS)、响应面方法(RSM)-遗传算法(GA)。采用MATLAB软件中的ANFIS和GA以及Minitab软件中的RSM提供的超声波反应器的最佳操作条件,对参数进行了变化和优化,以获得最大的生物柴油产量。所有模型的表现都非常好,ANFIS的表现略好,RSME值为0.0017,而RSM的RSME值则为0.0023。将ANFIS的预测精度与遗传算法优化的效率相结合,给出了可靠而全面的评价。提高生物柴油生产效率可以减少对化石燃料的依赖,同时减少汽车的碳足迹,从而降低世界燃料消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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