Assessment and Evaluation of Pongamia Pinnata Oil as an Alternative Fuel for Mine Equipment
Date
2023
Authors
K, Balaji Rao
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
The growing population has demanded to need more power generation. The present era relies
mainly on fossil fuels as solid and liquid power sources. The demand for more power can lead
to the exhaustion of fossil fuels. This also has given rise to a search for an alternative fuel
source. Liquid fuels can readily be supplemented using other alternative fuel sources, including
ethanol, natural gas, electricity, hydrogen, propane, methanol, P-series fuels, and biodiesel.
Biodiesel can be used as a supplement to diesel in the form of blends. Pongamia pinnata is one
of the most popular sources of biodiesel in South India.
In the present study, Pongamia pinnata is introduced as a biodiesel source in different forms,
namely raw form, ester form, and combined form. i.e., Raw pongamia oil (RPO), methyl ester
of Pongamia oil (MPO), a combinational form of methyl esters of Pongamia and waste cooking
oil (MPWO), methyl esters of Pongamia pinnata and waste cooking oil (MWO). Samples were
prepared with blends varying from 0% to 30% in increments of 5% volumetrically, and these
samples were referred to as base biodiesel blends. A similar set of samples were prepared with
an additional 10% volume of ethanol and acetone to the base biodiesel blends by reducing the
volumetric contribution of diesel. The total sample size was 75, including diesel.
For each prepared sample, property tests were performed to identify the density, kinematic
viscosity, and calorific value. A deviation was computed with reference to diesel. It was found
that the RPO showed the largest deviation as far as the properties were concerned, which were
found to be 1.66% lower, 13.24% lower, and 1.81% for density, Kinematic viscosity, and
calorific value, respectively.
Further, the engine test was carried out on a single-cylinder four-stroke diesel engine. The
engine speed was kept constant (1500 rpm), and the engine load varied from 5% to 100% in
increments of 25% of the engine load. i.e., the engine speed was maintained constant for each
engine load, and the same was followed for all 75 samples. The time taken for 10cc fuel
consumption and the corresponding emissions at each engine load was recorded. Four of the
emission parameters were observed, namely carbon monoxide (CO), Carbon dioxide (CO2),
unburnt hydrocarbons (UHC), and oxides of Nitrogen (NOx). The mass of fuel consumed
vi(MF), brake thermal efficiency (BTE), and brake-specific energy consumption (BSEC) were
calculated.
The effects of blending on the performance and emissions of the engine were evaluated by
plotting a scatter graph. The average deviations of performance and emission parameters were
found. The average deviations were measured by referencing each base biodiesel blend and its
ethanol and acetone additions. BTE and BSEC of diesel-ethanol (DE) were found to be near
to the BTE and BSEC of diesel, with deviations (higher) of 2.59% and 2.33%, respectively.
DE is considered the best alternative for diesel in terms of efficiency and energy consumption.
RPO is considered the poorest source regarding efficiency and energy consumption, with
deviations (Lower) of 32.73% and 4l.4%, respectively. All biodiesel blends showed lower CO
and UHC emissions, exhibiting higher CO2 and NOx. RPE (raw Pongamia-ethanol) blends
showed better CO and UHC with deviations (Lower) of 57.47% and 51.1% and poorer CO2
and NOx with deviations (higher) of 49.16% and 172.67%.
Statistical analysis was performed to predict the performance and emissions of the engine.
Regression modelling (multivariate) and ANOVA analysis were used to develop regression
equations and identify the significant parameters. The parameters blend, load, density,
kinematic viscosity, calorific value, and mass of the fuel consumed were considered input
parameters. The output parameters include BTE, BSEC, CO, CO2, UHC, and NOx. It was
observed that the regression models showed a performance of more than 70% R-squared values
at a confidence interval of 95% in predicting the performance and emissions of the engine.
Blend and load on the engine were considered the most significant parameters.
Prediction studies were also performed using the ANN technique. The number of neurons
varied from 4 -10, and a two-layered perceptron neural network was chosen for the analysis.
TRAINLM and LEARNGDM were used as training and learning algorithms. The Transfer
function is TRANSIG. Each neuron's Root mean squared error (RMSE) value was computed.
The best model was evaluated to be the one with the least RMSE. With 375 data sets, 263 were
used for training the model, and the remaining 112 were used for testing and validating the
model. 50% of the remaining data is shared equally for each testing and validation. An MLPNN
network, the optimised model for predicting BTE, BSEC, CO, and NOx, was found to have 6
viineurons. The best model for predicting the UHC and CO2 is the one with 5 neurons with R2
value of 0.99 for all training, testing, and validation.
Field studies were conducted in one of the esteemed Underground metal mines in southern
India. A mine Tipper was selected to conduct the test with 20% of the blends of base biodiesel.
Two conditions, idle and high idle, were implemented to study the variations. The four
emission parameters studied were NO, NO2, NOx, and CO. The observations were similar to
experimentation, and the deviations are estimated. RPO reduced CO emissions of the engine.
Alternatively, increasing nitrogen emissions. The deviations of RPO compared to diesel were
29.5% and 50.74%, with diesel at both idle and high idle conditions for CO, respectively. The
deviations measured are 29.5% and 33% at both idle and high idle conditions for NOx,
respectively.