Boosting Biodiesel Production from Dairy-Washed Scum Oil Using Beetle Antennae Search Algorithm and Fuzzy Modelling

IF 3.6 Q2 ENVIRONMENTAL SCIENCES
Tareq Salameh, Hegazy Rezk, Usama Issa, Siti Kartom Kamarudin, Mohammad Ali Abdelkareem, Abdul Ghani Olabi, Malek Alkasrawi
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引用次数: 0

Abstract

The major goal of this study was to develop a robust fuzzy model to mimic the generation of biodiesel from the transesterification of dairy-washed milk scum (DWMS) oil. Four process parameters were considered: the molar ratio of methanol to oil, the concentration of KOH, the reaction temperature, and the reaction time. The proposed technique was divided into two steps: fuzzy modelling and optimum parameter identification. The capability of fuzzy tools to capture and make use of linguistic variables and fuzzy sets is one of their main benefits. This means that fuzzy logic allows for the representation and manipulation of values that fall across a continuum rather than merely relying on crisp values or binary categories. When dealing with non-linear relationships, this is especially helpful since it gives a more accurate and nuanced depiction of the underlying data. As a result, an accurate fuzzy model was initially built based on collected data to simulate the biodiesel production in terms of the molar ratio of methanol to oil, the concentration of KOH, the temperature of the reaction, and the reaction duration. In the second phase, the beetle antennae search (BAS) algorithm was applied to identify the optimal values of the process parameters to boost the production of biodiesel. The BAS algorithm draws inspiration from beetle behavior, particularly how they navigate using their antennae. It employs a swarm-intelligence method by deploying virtual beetles that swarm over the problem area in search of the best solution. One of its main features is the BAS algorithm’s capacity to balance exploration and exploitation. This is accomplished through the algorithm’s adaptable step-size mechanism during the search phase. As a result, the algorithm can first investigate a large portion of the problem space before gradually moving closer to the ideal answer. Compared with ANOVA, and thanks to fuzzy, the RMSE decreased from 7 using ANOVA to 0.73 using fuzzy (a decrease of 89%). The predicted R2 increased from 0.8934 using ANOVA to 0.9614 using fuzzy (an increase of 7.6). Also, the optimisation results confirmed the superiority of the BAS algorithm. Biodiesel production increased from 92% to 98.16%.
利用甲虫天线搜索算法和模糊建模提高乳洗渣油生物柴油产量
本研究的主要目标是建立一个强大的模糊模型来模拟从奶洗奶渣(DWMS)油的酯交换生成生物柴油。考察了甲醇与油的摩尔比、KOH浓度、反应温度和反应时间等4个工艺参数。该方法分为模糊建模和最优参数辨识两个步骤。模糊工具捕获和利用语言变量和模糊集的能力是它们的主要优点之一。这意味着模糊逻辑允许表示和操作跨越连续体的值,而不仅仅依赖于清晰的值或二元类别。在处理非线性关系时,这尤其有用,因为它可以更准确、更细致地描述底层数据。基于收集到的数据,初步建立了一个精确的模糊模型,以甲醇与油的摩尔比、KOH浓度、反应温度和反应时间为参数,模拟生物柴油的生产过程。在第二阶段,采用甲虫天线搜索(BAS)算法确定工艺参数的最优值,以提高生物柴油的产量。BAS算法的灵感来自甲虫的行为,尤其是它们如何使用触角导航。它采用了一种群体智能方法,部署了虚拟甲虫,这些甲虫成群结队地在问题区域寻找最佳解决方案。其主要特点之一是BAS算法能够平衡探索和利用。这是通过算法在搜索阶段的自适应步长机制来实现的。因此,该算法可以先研究很大一部分问题空间,然后逐渐接近理想答案。与方差分析相比,由于模糊,RMSE从使用方差分析的7减少到使用模糊的0.73(减少89%)。方差分析的预测R2从0.8934增加到模糊分析的0.9614(增加7.6)。优化结果也证实了BAS算法的优越性。生物柴油产量从92%提高到98.16%。
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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来源期刊
Resources
Resources Environmental Science-Nature and Landscape Conservation
CiteScore
7.20
自引率
6.10%
发文量
0
审稿时长
11 weeks
期刊介绍: Resources (ISSN 2079-9276) is an international, scholarly open access journal on the topic of natural resources. It publishes reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and methodical details must be provided so that the results can be reproduced. There are, in addition, unique features of this journal: manuscripts regarding research proposals and research ideas will be particularly welcomed, electronic files or software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. Subject Areas: natural resources, water resources, mineral resources, energy resources, land resources, plant and animal resources, genetic resources, ecology resources, resource management and policy, resources conservation and recycling.
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