Performance and Emission Analysis an RCCI engine fueled with Gasoline-n Butanol and Biodiesel-Diesel Blends
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Abstract
Conventional compression ignition engines are widely used due to their high thermal efficiency
and reliability; however, they remain major contributors to nitrogen oxides (NOx), particulate
matter, and carbon dioxide (CO2), which contribute to air pollution and global climate change.
Growing concerns over fossil fuel depletion and environmental degradation intensified the search
for cleaner, renewable, and more sustainable fuel alternatives. Although reactivity-controlled
compression ignition (RCCI) combustion has emerged as a promising strategy for improving
engine efficiency and reducing emissions, several research gaps persist. These include challenges
in achieving stable combustion at higher loads, limited fuel flexibility, and insufficient exploration
of oxygenated biodiesel-alcohol fuel combinations. Moreover, there is a scarcity of optimization
based studies for determining optimal blends and operating conditions in RCCI combustion mode.
In response to these issues, the present study integrates Response surface methodology (RSM) and
Artificial neural networks (ANN) to optimize biodiesel production and its application in a RCCI
engine, using biodiesel-diesel blend as a high reactivity fuel and a gasoline-n-butanol blend as a
low reactivity fuel. Biodiesel was produced from cottonseed oil through the transesterification
process using methanol and a KOH catalyst, with RSM optimization identifying optimal conditions
that yielded of 94.80% biodiesel. The fuel’s chemical composition was validated through GC-MS
analysis. The RCCI engine experiments were carried out on a modified single-cylinder CI engine
at varying engine speeds and of gasoline- n-butanol blend ratios. The results demonstrated that
the B20+G50n-b50 blend produced the maximum cylinder pressure of 92.25 bar at 2800 rpm,
significantly outperforming the baseline fuel’s 57.24 bar. This blend also delivered the maximum
brake power of 4.35 kW. In contrast, the lowest NOx (150 ppm) and CO2 (3.7 vol%) emissions
were achieved using the B20+G25n-b75 blend at the same speed, while HC and CO emissions
were minimized with the B20+G75n-b25 blend. The RSM and ANOVA analysis confirmed strong
predictive capability for performance and emissions, with R2 values exceeding 97% for all key
parameters. The optimal operating condition was identified to be 2523 rpm with a 51.78% n
butanol ratio. Overall, this study demonstrates the effectiveness of RCCI combustion in reducing
emissions and enhancing performance, offering a viable pathway toward cleaner and more
sustainable engine technologies.
