Study and Optimization of Ethanol (LRF) Juliflora Biodiesel (HRF) Fuelled RCCI Engine with and without EGR System

Manivannan Ramachandran, Neelakrishnan Subramanyan
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Abstract

: Over the past few decades, the use of non-renewable energy has progressively expanded, harming the environment. In this investigation, 4-stroke single-cylinder Reactivity Controlled Compression Ignition (RCCI) engine performance and emission behaviour are reduced with the help of running fuel. 20% Juliflora biodiesel and 80% diesel are used as high-reactive fuel (HRF) and Ethanol is used as the low-reactive fuel (LRF). The RCCI engine is evaluated at different input conditions by varying engine load from 0 to 100 (0, 25, 50, 75, and 100%) and LRF percentage from 30 to 60 (30, 40, 50 and 60%). Additionally Exhaust Gas Recirculation (EGR) is used to enhance the RCCI engine emission behaviour and performance.The studied output performance of RCCI engine are cylinder pressure (CP), brake thermal efficiency (BTE), heat release rate (HRR), and brake-specific fuel consumption (BSFC) respectively. Also, unburned hydrocarbon (HC), carbon monoxide (CO), nitrogen oxides (NO X ), and smoke opacity (SO) are calculated on the RCCI engine for all input condition. The test results are further optimized with the help of hybrid deep belief neural network based Aquila optimization method. The proposed hybrid DBN-AO has performed better than conventional DBN method.The predicted optimal value is obtained from the regression and average regression coefficients of 0.99961. The predicted optimum values are load 80%, LRF60%, and EGR 15%, respectively. The confirmatory error analysis has shown BTE (3.7%), BSFC (4%), SO (4.7%), HC (7.775%), CO (3.44%) and NOx (3.46%) respectively. The EGR application reduces the RCCI engine emission behaviour in loading condition.
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有无 EGR 系统的乙醇(LRF)钜花生物柴油(HRF)RCCI 发动机研究与优化
:过去几十年来,不可再生能源的使用逐渐扩大,对环境造成了危害。在这项研究中,四冲程单缸反应控制压缩点火(RCCI)发动机在运行燃料的帮助下降低了性能和排放表现。20% 的茱莉花生物柴油和 80% 的柴油被用作高反应燃料 (HRF),乙醇被用作低反应燃料 (LRF)。在不同的输入条件下对 RCCI 发动机进行评估,将发动机负荷从 0 变为 100(0、25、50、75 和 100%),将低反应燃料百分比从 30 变为 60(30、40、50 和 60%)。所研究的 RCCI 发动机输出性能分别为气缸压力 (CP)、制动热效率 (BTE)、热释放率 (HRR) 和制动特定燃料消耗量 (BSFC)。此外,还计算了所有输入条件下 RCCI 发动机的未燃烧碳氢化合物(HC)、一氧化碳(CO)、氮氧化物(NO X )和烟雾不透明度(SO)。在基于混合深度信念神经网络的 Aquila 优化方法的帮助下,测试结果得到进一步优化。拟议的混合 DBN-AO 比传统的 DBN 方法表现更好。预测的最佳值是通过回归得到的,平均回归系数为 0.99961。预测的最佳值分别为负载 80%、LRF60% 和 EGR 15%。确认误差分析表明,BTE(3.7%)、BSFC(4%)、SO(4.7%)、HC(7.775%)、CO(3.44%)和 NOx(3.46%)分别为最佳。EGR 的应用减少了 RCCI 发动机在加载条件下的排放行为。
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