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Optimizing mixture properties of biodiesel production using genetic algorithm-based evolutionary support vector machine

机译:基于遗传算法的进化支持向量机优化生物柴油生产的混合性能

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摘要

Nowadays, biodiesel is used as one of the alternative renewable energy due to the increasing energy demand. However, optimum production of biodiesel still requires a huge number of expensive and time-consuming laboratory tests. To address the problem, this research develops a novel Genetic Algorithm-based Evolutionary Support Vector Machine (GA-ESIM). The GA-ESIM is an Artificial Intelligence (AI)-based tool that combines K-means Chaotic Genetic Algorithm (KCGA) and Evolutionary Support Vector Machine Inference Model (ESIM). The ESIM is utilized as a supervised learning technique to establish a highly accurate prediction model between the input--output of biodiesel mixture properties; and the KCGA is used to perform the simulation to obtain the optimum mixture properties based on the prediction model. A real biodiesel experimental data is provided to validate the GA-ESIM performance. Our simulation results demonstrate that the GA-ESIM establishes a prediction model with better accuracy than other AI-based tool and thus obtains the mixture properties with the biodiesel yield of 99.9%, higher than the best experimental data record, 97.4%.
机译:如今,由于能源需求的增加,生物柴油已被用作替代可再生能源之一。然而,生物柴油的最佳生产仍然需要大量昂贵且费时的实验室测试。为了解决该问题,本研究开发了一种新颖的基于遗传算法的进化支持向量机(GA-ESIM)。 GA-ESIM是一种基于人工智能(AI)的工具,结合了K均值混沌遗传算法(KCGA)和进化支持向量机推理模型(ESIM)。 ESIM作为一种有监督的学习技术,可以在生物柴油混合物特性的输入-输出之间建立高度准确的预测模型;基于预测模型,使用KCGA进行仿真以获得最佳混合性能。提供了真实的生物柴油实验数据以验证GA-ESIM的性能。我们的仿真结果表明,GA-ESIM建立了比其他基于AI的工具更好的准确性的预测模型,从而获得了混合特性,生物柴油的产率为99.9%,高于最佳实验数据记录的97.4%。

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