3.1. Air Pollutant Emission Projections
The projections of the Brazilian electricity generation are the first results of this study, considering the information obtained in [
30,
31], respectively.
Table 3 and
Table 4 show the values obtained for the installed capacity projections. It is noted that the total installed capacity for the year 2019 in Data Set A differs from the current one [
30]. Therefore, this study endeavored to obtain a new way of estimating installed capacity over the same period considering the actual installed capacity shown in
Table 1. This is the Data Set B. From the procedure described in the last section and considering the Data Set A and B obtained the energy productions from 2019 to 2027, presented in
Figure 1: Projection 1 (a) and Projection 2 (b), were obtained respectively.
The energy production from oil, biomass and natural gas sources is lower in Projection 1 than in Projection 2. However, the energy production from hydro, wind and solar sources in Projection 1 is greater than in Projection 2. Thus, it is possible to conclude that the real energy expansion has more non-renewable energy sources participation when compared to the planning (Projection 1), because Projection 2 initiates from the current Brazilian electricity mix.
Both projections indicate a reduction in the percentage of participation for hydro and oil sources in the energy generation, with an increase in the percentage of participation for wind and solar sources along the years. Despite the previously mentioned changes, the Brazilian electricity mix maintains the predominance of renewable sources in its composition, with a percentage greater than 80% through the years.
It is important to mention that electricity production from renewable sources is supported by Brazilian governmental incentives. The Alternative Energy Sources Incentive Program (AESIP), established in 2002, obliges the consumer to purchase energy from wind, biomass and small hydroelectric plants at prices above the marginal cost of expanding the source. These costs are set by the Ministry of Mines and Energy [
37]. The transmission and distribution taxes of energy produced from small hydroelectric, wind and solar power plants also have a minimum discount of 50%, called the Incentivized Sources Subsidy. In 2018, the Incentivized Sources Subsidy totaled about US
$910 million [
38].
After the energy projections, using the values from
Table 2, it is possible to establish minimum and maximum values of GHG, NO
x, and SO
2 emissions per source. In
Figure 2, the minimum and maximum of the total GHG, NO
x, and SO
2 emissions for Projections 1 and 2 are presented. It is worth to mention that the emissions for Projection 2 are always greater than the ones for Projection 1, due to the greater presence of oil and coal sources in the former. These sources present the highest values of air pollutants, as shown in
Table 2.
In
Figure 2a, it is important to mention that the GHG emission values increase up to the year 2024, then, they decrease slightly and increase again from 2026. It is important to note that the solar and wind sources increase their participation in the production of energy from the year 2024, helping in the decreases of the emission of GHG. The increase can be explained by the installed capacity expansion, with small growths from some sources such as natural gas. However, in 2024, a reduction in the energy provided by oil source is observed.
It is possible to verify in
Figure 2b that NO
x emission values present an increase along the years, which corresponds to the installed capacity expansion.
Figure 2c presents an increase of SO
2 emissions until the year 2023, but they decrease considerably from 2024. Similar to the GHG analysis, this increase can be explained by the installed capacity expansion, and the reduction happens with the decrement of the installed capacity of oil sources.
In
Table 9 and
Table 10 the percentage participation of each air pollutant per source in total emissions, and the percentage composition of the electricity mix, for Projection 1 and 2, are presented respectively. The results show that in both projections, natural gas source is the major factor responsible for GHG emissions, followed by oil and coal sources.
Considering the NO
x emissions, the natural gas, oil, coal, and biomass sources stand out in percentage participation in both projections. For SO
2 emissions, oil source is the main pollutants for all cases. Indeed, from
Table 2 it is noted that oil source presents the highest emission rates of SO
2 among all energy sources for both, minimum and maximum limits. Therefore, although oil source has a low percentage of total electricity production (from 1.84 to 3.14%, see
Table 9 and
Table 10), in terms of SO
2 it corresponds to the huge majority of emissions for minimum limit and almost 50% of emissions for the maximum limit. However, Brazilian electricity authorities are looking to implement initiatives addressing this issue.
As presented in [
31], installed capacity expansion plan from 2019 to 2027 indicates a substitution of thermal oil power plants by natural gas ones in order to reduce operational costs and decrease SO
2 emissions. The intention of Brazilian energy planners is to substitute the offer of almost 3000 MW of thermal electricity from oil source to natural gas one [
31]. The natural gas, oil, coal, and biomass sources represent less than 30% of the installed capacity, but they have a large participation in emissions. On the other hand, the hydro, nuclear, wind, and solar sources present low participation in emission for all cases even though they represent more than 70% of the installed capacity. This fact reinforces the importance of reducing the use of thermoelectric plants in the generation of electric energy, in order to reduce air pollution.
3.2. Monte Carlo Simulation
As the maximum and minimum values of GHG, NOx and SO2 emissions have a large amplitude, a Monte Carlo simulation was performed considering that the emission values of the pollutants follow a normal distribution, as explained in the previous section. For this, simulation software and 80% of the most frequent values were used to set the narrower emission bounds, considering 100,000 evaluations. This procedure was performed for each year from 2019 to 2027 for both projections and each pollutant. Then, the set of values in the 10% histogram point produce the lower bound, and the ones from 90% histogram point make the upper bound, considering the same pollutant and projection. There were 54 histograms.
Figure 3 shows the results of the histogram of the Monte Carlo simulation for Projection 1, year 2027, and GHG emissions
Figure 3a and for the Projection 2, year 2027 and GHG emissions
Figure 3b. In both pictures, the lower bound (10%) and the upper bound (90%) are marked. It is possible to observe that these bounds are narrower than the minimum and maximum values previously obtained. Therefore, the Monte Carlo simulation bound values allow better characterization of the reality because they consider the most likely emission values not only the extreme cases.
In
Figure 4,
Figure 5 and
Figure 6, it is possible to verify the upper and lower emission bounds obtained for each pollutant along the years provided by Monte Carlo simulation. They represent a range of most likely values of the GHG, NO
x, and SO
2 emission occurrence. It is observed that the simulation obtained the same tendency of emissions that was already identified by the minimum and maximum values: The GHG emission values increase up to the year 2024, decrease slightly from 2024 and increase again from 2026, the NO
x emission values present an increase along the years, and SO
2 emission values increase up to the year 2023 and decrease considerably from 2024 to 2027.
As in the simulation only the most probable values of GHG emission were considered, the range of values presented in
Figure 4 is on average 72% narrower for Projections 1 and 2, when compared to those in
Figure 2a. For the range of NO
x emission values, the reduction is around 73% when compared to
Figure 2b. Considering these values, it is worth highlighting that the average values for the lower and upper bounds are closer to the reality than the others because they were obtained based on the most likely values from Monte Carlo simulation.
In
Figure 6, it is possible to see the bounds obtained by the simulation for the SO
2 emissions. They presented a reduction of 77% and 76% for the Projections 1 and 2, respectively, when compared to those from
Figure 2c. Therefore, Monte Carlo simulation allows incorporating variations in the emission rates with the definition of more restricted emission limits considering the probability of occurrence. Similarly to GHG and NO
x, lower and upper bounds obtained from Monte Carlo simulation for SO
2 emissions facilitate result interpretation. Indeed, the tendency of SO
2 emission reduction after 2023 discussed in
Section 3.1 based on
Figure 2c is much more evident in
Figure 6 thanks to the lower and upper bounds defined from simulation results.
The observed SO
2 emission reduction attests the effectivity of the Brazilian electricity authority strategy of substituting thermal energy generation from oil by natural gas to achieve a decrease in emissions of this pollutant, as discussed in
Section 3.1.
However, it is important to emphasize that in
Table 2, natural gas source results in lower SO
2 emissions and higher GHG and NO
x emissions than oil source, considering the maximum rates. Therefore, on the one hand, a simple substitution of oil source by natural gas without any other change in the electricity mix could lead to SO
2 emission reductions. On the other hand, this strategy could promote an increase in GHG and NO
x releases. This behavior seems to be exactly what is observed in
Table 11, which presents the variation of emissions for each pollutant per MWh of electricity generated from 2019 to 2027. From
Table 11 it is noted a considerable reduction of SO
2 emissions from 2019 to 2017, whereas GHG and NO
x emissions increase in general. However, it is noted that SO
2 emissions presented a higher reduction than the increase in GHG and NO
x emissions. For the minimum NO
x emission in Projection 2 there was a reduction because the minimum emission rate for natural gas is smaller than the one from oil.
As discussed in
Section 3.1, reducing the use of thermoelectric plants in the electricity generation by replacing them with renewable sources will decrease air pollution. Indeed, an important strategy is presented in Brazilian electricity plan in order to reduce emissions: The increase in the electricity production from solar and wind sources, as both are low intensive in GHG and NO
x emissions, as provided in
Table 2. In fact, from
Table 3 and
Table 4 it is noted that year after year solar and wind sources together present a continuous growth in their share in installed capacity changing from 10% or 11% in 2019 to 17% or 18% in 2027, according to the considered projection.
The average values of kilograms of the pollutants emitted per MWh considering annual emissions during the horizon planning (2019 to 2027) obtained in this work are presented in
Table 12. The values presented for GHG are lower than the world average emissions in 2017, 484 kg per MWh [
1], but in general, they are greater than the Brazilian average from the year 2017, 104 kg per MWh [
24].
No reference values of world average emissions of NO
x and SO
2 from electricity generation were found. Considering only the USA context, from data provided in [
34], average values of NO
x and SO
2 from electricity production in 2017 are 0.37 kg per MWh and 0.41 kg per MWh, respectively. Compared to the USA, the lower bound of Brazilian NO
x emissions is quite similar to the USA one in both projections, but considering upper bound results, Brazil shows a much higher emission rate than the USA for this pollutant. Concerning SO
2, in general, Brazil presents lower emission rates than the USA in both projections even for upper bounds.
3.3. Comparison of Brazilian Electricity Generation Emissions with Other Countries
In order to conclude the presentation of the results,
Table 13 shows the average kilograms of emissions for each pollutant per MWh considering energy production from the year 2017 for Brazil, France, China, and the USA.
Brazil, whose electricity is based on hydropower, and France, whose electric energy is focused on nuclear generation, have lower emission rates among the assessed countries. On the contrary, American and Chinese electricity mix, both with a fossil fuel-based system, generate much higher emissions than Brazil and France for minimum and maximum emission levels of the pollutants considered. These results were expected as nuclear, and hydropower energy source is acknowledged as a system with low air pollutant emission rates, whereas fossil fuel combustion systems present high emission levels of GHG, NOx, and SO2.
The only exception of this pattern is for the minimum level of SO
2 emissions, whose value for Brazil is equal to this one of China and higher than the one of the USA. This occurs because the percentage of oil energy source in Brazil is higher than that of China and USA and the minimum SO
2 emission limit for oil (0.85 kgSO
2/MWh,
Table 2) is much higher than those of other energy sources. Therefore, globally, fossil fuel-intensive systems were clearly the ones with the worse results in terms of pollutant emissions from electricity generation. Thus, considering the pollutants investigated, Brazil has an affordable electricity mix in terms of air pollutant emissions control.