Department of Mechanical Engineering, Haramaya Institute of Technology, Haramaya University, Dire Dawa, Ethiopia.
Department of Mechanical Engineering, Easa College of Engineering and Technology, Coimbatore, India.
Environ Sci Pollut Res Int. 2019 Feb;26(5):4833-4841. doi: 10.1007/s11356-018-3979-6. Epub 2018 Dec 19.
The present study aims to investigate the optimum condition of stationary diesel engine's operating parameters to obtain better performance and emission level, where the diesel engine is fueled with different concentrations of soybean biodiesel (SB), water, and alumina (Al) nanoadditive. Taguchi method coupled with gray relational analysis has been implemented in this study to obtain the optimum concentration of SB, water, and Al nanoparticle, and statistical analysis of variance (ANOVA) is applied to obtain the individual response of operating parameters on overall engine performance and emission level. Various concentration of SB (10%, 20%, and 30%), water (10%, 20%, and 30%), and Al nanoparticle (50 ppm, 100 ppm, and 150 ppm) are mixed with base diesel (BD) by mechanical agitation and followed by an ultra-sonication process. The fuel properties are measured based on EN590 standards, and the experiments are conducted in a single-cylinder, four-stroke, natural aspirated stationary diesel engine based on an L orthogonal array fuel combination. From the obtained gray relational co-efficient (GRC) and signal-to-noise (S/N) ratio, the optimum concentration of SB, water, and nanoadditive are identified as 20%, 10%, and 100 ppm, respectively, and a confirmation experiment has also been carried out to confirm the improvements at optimum condition. The ANOVA results imply that water concentration (WC) has the maximum influence on overall diesel engine's performance and emission level followed by nanoparticle and SB concentrations. Overall, it can be concluded that the engine exhibits better performance and greener emissions at optimal condition.
本研究旨在探讨定置式柴油机运行参数的最佳条件,以获得更好的性能和排放水平,其中柴油机使用不同浓度的大豆生物柴油(SB)、水和氧化铝(Al)纳米添加剂作为燃料。本研究采用田口法结合灰色关联分析来获得 SB、水和 Al 纳米颗粒的最佳浓度,并应用方差分析(ANOVA)来获得运行参数对发动机整体性能和排放水平的个别响应。不同浓度的 SB(10%、20%和 30%)、水(10%、20%和 30%)和 Al 纳米颗粒(50ppm、100ppm 和 150ppm)通过机械搅拌与基础柴油(BD)混合,然后进行超声处理。根据 EN590 标准测量燃料特性,并在基于 L 正交数组燃料组合的单缸、四冲程、自然吸气式定置式柴油机上进行实验。从获得的灰色关联系数(GRC)和信噪比(S/N)比中,确定了 SB、水和纳米添加剂的最佳浓度分别为 20%、10%和 100ppm,并且还进行了确认实验以确认最佳条件下的改进。ANOVA 结果表明,水浓度(WC)对柴油机整体性能和排放水平的影响最大,其次是纳米颗粒和 SB 浓度。总的来说,可以得出结论,发动机在最佳条件下表现出更好的性能和更环保的排放。