棕榈仁油生物柴油计算机辅助放大生产技术经济参数的人工神经模糊智能预测

Olajide Olukayode Ajala , Emmanuel Olusola Oke , Oludare Johnson Odejobi , Babatunde Kazeem Adeoye , Joel Olatunbosun Oyelade
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引用次数: 1

摘要

棕榈仁油(PKO)是一种很有前途的生物柴油生产原料。PKO大规模生产生物柴油的经济可行性恰好是主要挑战,因为投资者在做出决策之前希望了解总体成本效益值。因此,本研究开发了用于预测总体成本效益值的人工智能(AI)技术经济模型,为潜在投资者提供基本的投资决策。本研究中使用的两种人工智能技术是人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)。建模的投入产出数据来自以前的工作,该工作仅基于用于生物柴油生产的PKO的实验设计。输入变量为甲醇:油比、温度、催化剂用量、停留时间和催化剂煅烧温度,而投资回报率(ROI)、投资回收期(PBT)、净现值(NPV)和生产能力(PC)是响应。模型实现采用了MATLAB R2013a中的人工神经网络和模糊逻辑工具箱。使用决定系数(R2)和均方根误差(RMSE)等统计指标对所开发的模型进行了评估。结果表明,基于trimf的ANFIS模型(ROI-R2:0.999;RMSE:7.39×10−7;PBT-R2:0.9999;RMSE:5.32×10−7%;NPV-R2:0.0999;RMSE:5.89×10‑7;PC-R2:0.9999;RMSE:5.89×,基于灵敏度分析的输入参数的相对显著性显示催化剂煅烧温度(CT)是最显著的输入参数。这些发现表明,ANFIS和ANN模型在预测技术经济参数方面都是有效的。
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Artificial neuro-fuzzy intelligent prediction of techno-economic parameters of computer-aided scale-up for palm kernel oil based biodiesel production

Palm kernel oil (PKO) is one of the promising starting materials for biodiesel production. Economic viability of large-scale biodiesel production from PKO happens to be the major challenge, as investors would like to know the overall cost-benefit value before making decisions. Therefore, this study develops artificial intelligence (AI) techno-economic models for predicting overall cost-benefit value which will provide fundamental investment decisions for potential investors. The two AI techniques used in this study were artificial neural networks (ANN) and adaptive neuro-fuzzy inference system (ANFIS). The input-output data for modelling was gotten from a previous work which based solely on experimental design for PKO for biodiesel production. The input variables are Methanol:oil ratio, temperature, catalyst quantity, residence time and catalyst calcination temperature, while return on investment (ROI), payback time (PBT), net present value (NPV) and production capacity (PC) are the responses. ANN and Fuzzy Logic Toolboxes in MATLAB R2013a were used for model implementation. The developed models were appraised using statistical indices such as coefficient of determination (R2) and root mean square error (RMSE). The results showed that, trimf based ANFIS models (ROI- R2: 0.9999; RMSE: 7.39 × 10−7; PBT- R2: 0.9999; RMSE: 5.32 × 10−7; NPV- R2: 0.9999; RMSE: 5.89 × 10−7; PC- R2: 0.9999; RMSE: 5.89 × 10−7) performed marginally better than ANN models (ROI- R2: 0.9496; RMSE: 0.0599; PBT- R2: 0.9945; RMSE: 0.0373; NPV- R2: 0.9957; RMSE: 0.0384; PC- R2: 0.9959; RMSE: 0.0376). Also, the relative significance of input parameters based on sensitivity analysis showed catalyst calcination temperature (CT) as the most significant input parameter. These findings show that both the ANFIS and ANN models are effective in predicting techno-economic parameters.

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