1. Introduction
Climate change has come to the fore and merits serious global attention as it dramatically affects human health and global food security. It stems from CO
2 emissions, which account for the majority of greenhouse gas emissions [
1,
2]. China is the world’s greatest CO
2 emitter, accounting for 32.8% of total CO
2 emissions, followed by the US (12.7%), the European Union (EU) countries (7.4%), India (6.9%), and Japan (0.3%) [
3]. CO
2 emissions related to energy rose by 60% from 20.5 Gt in 1990 to 33.0 Gt in 2021 [
3].
Climate change brought on by burning fossil fuels and forest fires can result in environmental degradation, which serves as a barrier to sustainable development. Climate change and consequent global warming occur when CO2 is released into the atmosphere. Global warming can negatively affect natural resources, leaving governments and policymakers baffled about how to address the problem. Some suggest that we formulate policies to lower CO2 emissions, suggesting that production may be cut, which brings up another issue: sluggish economic growth. This is due to the fact that every drop in CO2 emissions also results in a decrease in energy use. Energy is indispensable for producing output and thus providing job opportunities. This is why some government initiatives fail to protect the environment, which presents a considerable obstacle to sustainable development.
The effect of energy use on CO
2 emissions has been studied in a wide range of earlier research, such as [
4,
5], etc. Only a few studies looked specifically at energy use by sector. For instance, Shaari et al. [
1] concentrated on agriculture, while Solaymani [
6] investigated the connection between Malaysia’s transportation industry and CO
2 emissions. This current research will fill the gap by examining the effects of energy consumption in the industrial, transportation, and agriculture sectors on CO
2 emissions. The industrial sector makes up a bigger share of Malaysia’s total GDP than the agricultural and transportation sectors. It uses various non-renewable sources, such as coal and oil, which pose an increasing threat to the environment.
FDI inflows, which can also serve as a determinant of CO
2 emissions, refer to the value of cross-border transactions involving direct investment during a specific period, establishing a close relationship between different economies. FDI inflows play an important role in boosting economic growth in most developing countries, especially Malaysia. This is due to the fact that technology transfer stemming from FDI inflows can help increase productivity. However, this is a topic that sparks debate as to whether technology transfer can reduce or aggravate environmental degradation. Hence, previous studies obtained mixed results on the relationship between FDI inflows and CO
2 emissions. Some ascertained that FDI could be harmful to the environment as higher production ensues, which can release more CO
2 into the air [
7,
8]. More non-renewable energy sources, such as oil and coal, are required to produce output, culminating in greater environmental degradation. However, some found that FDI can conserve the environment as more FDI inflows bring green technology that can reduce CO
2 emissions [
9,
10]. The mixed findings pave the way for this study to re-examine the matter in a bid to reach a conclusion on whether FDI inflows can mitigate or aggravate environmental degradation. Therefore, this study aims to investigate the impact of energy consumption by sector and FDI on CO
2 emissions in Malaysia.
Malaysia was chosen for this study as it is still developing and is anticipated to transition from an upper middle-income economy to a high-income economy. Certainly, more energy is needed during the transition to support the local economy. As a result, policies to reduce energy consumption can be detrimental.
Figure 1 shows an upward trend of energy consumption in Malaysia for 35 years, from 1984 to 2019. During this period, the highest energy consumption was recorded in 2019 at 66,484 Ktoe, and it decreased by 2.67% in 2009 due to an economic recession, suggesting that higher economic growth reflects higher energy consumption. As economic growth decreases, less energy is needed. Thus, it is expected that CO
2 emissions will also decline; hence,
Figure 2 shows a drop in CO
2 emissions in the same year. Malaysia uses coal to produce power and energy, emitting a significant amount of CO
2 into the atmosphere. Transportation accounted for the largest share of total energy consumption in 2018 (36.4%), followed by industry (29.5%), non-energy usage (20.5%), residential and commercial (12%), and agriculture (1.6%).
Net FDI inflows are shown in
Figure 3 from 1984 to 2018 as a share of Malaysia’s GDP. Although FDI plays a crucial role in fostering economic growth, creating job opportunities, and bringing new technology, the trend in FDI inflows remained uncertain over the period. Malaysia experienced the biggest FDI inflows, at 8.76%, in 1992, and the lowest, at 0.06%, in 2009, during the American financial crisis. Malaysia’s economy saw a marked decrease in economic growth and was plunged into a recession. If we compare the trend in FDI inflows and CO
2 emissions, it is difficult to infer whether FDI might reduce or decrease environmental degradation. However, during Malaysia’s economic recession in 2009 and 2020, FDI inflows dropped markedly. At the same time, we can observe a drop in CO
2 emissions, implying a positive relationship between FDI inflows and CO
2 emissions. Technology brought into the country due to FDI inflows, which emitted CO
2, was affected during the two years.
Figure 1.
Total Energy Consumption from 1984 to 2018. Source: Malaysia Energy Commission. Malaysia Energy Statistics Handbook [
11].
Figure 1.
Total Energy Consumption from 1984 to 2018. Source: Malaysia Energy Commission. Malaysia Energy Statistics Handbook [
11].
Figure 2.
Energy Consumption by sector in 2018. Source: Malaysia Energy Commission. Malaysia Energy Statistics Handbook [
11].
Figure 2.
Energy Consumption by sector in 2018. Source: Malaysia Energy Commission. Malaysia Energy Statistics Handbook [
11].
Malaysia increased total CO
2 emissions by nine times, from 28 Mt in 1980 to 262.2 Mt in 2020. The nation released 264.685 Mt of CO
2 in 2019, the highest level ever. Due to the COVID-19 epidemic, the economy entered a recession, which led to a drop in CO
2 emissions in 2020. GDP decreased by 5.6%.
Figure 4 illustrates the alarming trend of increasing CO
2 emissions in Malaysia from 1980 to 2020. The trend will continue if no action is taken to preserve the environment. As it may have a detrimental effect on human health and sustainable development, it is bad news for Malaysia’s next generation.
Figure 3.
FDI inflows as a percentage of GDP. Source: World Bank Development Indicator [
12].
Figure 3.
FDI inflows as a percentage of GDP. Source: World Bank Development Indicator [
12].
This paper is organized as follows: (1) The first section provides an overview of Malaysia’s energy use and CO2 emissions. (2) Previous research on CO2 emissions as a dependent variable is reviewed in the second section. (3) The method of analysis is described in the section that follows. (4) The next section presents the study’s findings. (5) The conclusion concerning whether energy consumption by sector affects CO2 emissions is presented in the last section, which also includes policy recommendations.
2. Materials and Methods
The effects of energy use and economic expansion on CO
2 emissions are extensively documented in the previous literature, including [
14,
15,
16]. According to Khan et al. [
14], economic expansion and energy use have a negative impact on the environment. Radmehr et al. [
17] and Karaaslan and Camkaya [
18] examined the causal relationships between energy consumption, economic development and CO
2 emissions. Investigating possible relationships between economic development, energy use, and CO
2 emissions in the European Union (EU) region from 1995 to 2014 using the Generalized Method of Moments (GMM) technique, Muhammad [
19] discovered bidirectional connections between economic growth and CO
2 emissions as well as between the use of renewable energy and economic growth.
Muhammad [
19] also discovered that energy consumption and economic growth could have a negative impact on the environment in developed nations and the Middle East and North Africa (MENA) region using the same methodology and data from 2001 to 2017. Environmental damage was discovered to be caused by energy consumption, and economic development can mitigate environmental degradation in developing nations. Ardakani and Seyedaliakbar [
20] also looked into the associations between energy use, economic growth, and CO
2 emissions in the MENA region between 1995 and 2014. They discovered the existence of the environmental Kuznets curve (EKC) in Oman, Qatar, and Saudi Arabia, suggesting that greater GDP prevents environmental damage in the final stage, supported by Ozgur et al. [
21] and Li and Haneklaus [
22]. They also discovered a U-shaped curve between gross domestic product (GDP) per capita and CO
2 emissions in Algeria and Bahrain, indicating that raising GDP in the final stage aggravates environmental degradation.
Ozgur et al. [
21], Karaaslan and Camkaya [
18] as well as Cai et al. [
23] employed the Autoregressive Distributed Lag (ARDL) method in their studies. Cai et al. [
23] looked at how the G7 countries’ economic development and the use of clean energy affected CO
2 emissions. The study produced mixed results, showing a one-way relationship between energy consumption and economic growth in Canada, Germany, and the US; a one-way relationship between CO
2 emissions and energy consumption in Germany; and a one-way relationship between clean energy consumption and CO
2 emissions in the US. From 2008 to 2018, Pejovic et al. [
24] also found mixed results when exploring the relationship between economic growth, CO
2 emissions, and energy consumption in the 27 EU nations and the Western Balkans. The results of the panel vector autoregression (PVAR) and GMM methods showed various linkages: (1) a bidirectional linkage between economic growth and CO
2 emissions, (2) a negative bidirectional linkage between CO
2 emissions and energy consumption, (3) a positive linkage running from economic growth to CO
2 emissions, (4) and a positive linkage running from CO
2 emissions to economic growth.
The EKC’s existence in India between 1970 and 2016 was investigated by Ozgur et al. [
21]. According to the study’s findings, which used the ARDL technique, nuclear energy can lower CO
2 emissions. The findings in India confirmed the EKC since they suggested that, after the turning point, increasing GDP might lead to less environmental damage. In 11 nations, Wang et al. [
25] investigated whether financial development could reduce the effects of using renewable energy on CO
2 emissions. The study used data from 1990 to 2015, employing the Driscoll–Kraay and Dumitrescu–Hurlin methods. The findings revealed that financial development is important for determining how much renewable energy consumption affects CO
2 emissions. Moreover, there are mutual linkages between financial development and the use of renewable energy as well as between the use of renewable energy and CO
2 emissions.
In the G7 nations, Li and Haneklaus [
22] looked into the relationship between the use of clean energy, economic expansion, trade openness, urbanization, and CO
2 emissions. The ARDL technique was employed to analyze data spanning 40 years from 1979 to 2019. The findings supported the EKC. In addition, using more renewable energy can lower CO
2 emissions both in the long run and short run. The results also showed that environmental degradation could result from other factors, such as trade openness and urbanization.
In order to determine whether economic growth, health expenditure, and renewable and non-renewable energy use may have an impact on environmental deterioration in Turkey, Karaaslan and Camkaya [
18] conducted their research. Besides the ARDL technique, the Toda–Yamamoto approach was also used to determine the variables’ causal link from 1980 to 2016. As a result of economic expansion and the use of non-renewable energy sources, CO
2 emissions increase, while spending on health and using renewable energy sources cause a decrease in CO
2 emissions.
From 2008 to 2018, Pejovic et al. [
24] explored the relationship between economic growth, CO
2 emissions, and energy consumption in 27 EU nations and the Western Balkans. The results of the panel VAR and GMM methods showed various linkages: (1) a bidirectional linkage between economic growth and CO
2 emissions, (2) a negative bidirectional linkage between CO
2 emissions and energy consumption, (3) a positive linkage running from economic growth to CO
2 emissions, and (4) a positive linkage running from CO
2 emissions to economic growth.
Chandran and Tang [
26] discovered that income and energy for the transportation sector resulted in a long-term, considerable rise in CO
2 emissions for Malaysia, Indonesia, and Thailand. With data from 1971 to 2008, the authors conducted a multivariate co-integration analysis on a subset of ASEAN members. The findings revealed that transportation leads to greater CO
2 emissions. Shaari et al. [
1] employed the ARDL approach to focus on energy consumption in agriculture, and the results revealed that energy in the sector reduces environmental degradation in Malaysia.
Several studies, such as Shaari et al. [
27], Wang and Huan [
7], Huang et al. [
9] as well as Demena and Afesorgbor [
10], investigated the impact of FDI and CO
2 emissions. However, the results are inconsistent as Shaari et al. [
27] examined the impacts of FDI and economic growth on CO
2 emissions in 15 developing countries. Employing a panel ARDL, the results showed that FDI does not influence CO
2 emissions, but economic growth can increase environmental degradation in developing countries. However, Wang and Huan [
7] and Huang et al. [
9] argued that FDI harms the environment. Wang and Huan [
7] investigated the impact in the East Asian region using a panel data analysis. Their results indicated that FDI, economic growth, and trade openness could contribute to greater CO
2 emissions between 2011 and 2020. The results are slightly different from the findings of Huang et al. [
9]. According to the study, the diminished impact of FDI on CO
2 emissions in the G20 countries from 1996 to 2018 could have been due to environmental regulations. With evidence from meta-data analysis, Demena and Afesorgbor [
10] found that FDI can reduce CO
2 emissions.
In a nutshell, most literature concentrated on energy consumption in general without specifying sectors. The impact of energy consumption is different from one sector to another. Hence, the failure to address specific sectors may lead to the wrong policies, thus affecting productivity.
4. Findings
The results of descriptive statistics for a sample of 29 observations are shown in
Table 2. The mean for LNT is 9.5416, whereas the mean for LNFDI is −3.4030. With a difference of 4.4774, LNFDI has the biggest difference between its highest and minimum values, while LNM has the least. All variables have standard deviations that are almost zero, which shows that the data points are quite close to the means.
A unit root test based on ADF is conducted to examine the stationarity of all variables, and the results are presented in
Table 3. The intercept and no trend results show that LNA, LNX, LNY, LNM, and LNP have unit roots and are not stationary at the level. However, the other variables (LNCO2, LNFDI, LNA, and LNT) have no unit root and are stationary at the level. All of the variables become stationary at the first difference. The results with an intercept and trend show that only LNFDI, LNY, and LNP have unit roots and are not stationary at the level, and the rest (LNCO2, lNA, LNX, LNM, and LNT) have no unit roots and are stationary at the level. Nevertheless, the results indicate that all variables have no unit root and are stationary at the first difference. In a nutshell, the variables used in this study are integrated of mixed order—I(I) and I(0)—indicating that the ARDL technique can be applied.
Prior to examining the short-run and long-run impacts of energy use on environmental degradation, a bound test must be performed to check whether there is a co-integration among the variables used in this study. The ARDL bounds testing technique is employed, and the results reported in
Table 4 show that the F-statistic of 8.0225 is higher than the upper bound of 3.77, implying the null hypothesis that there is no co-integration is rejected. This indicates that we can proceed to long-run and short-run estimations. In addition, the optimal lag of 1, 1, 1, 1, 1, 0, 1, 0, 1 is automatically selected based on AIC.
Table 3.
Unit Root Test Results.
Table 3.
Unit Root Test Results.
Variable | Intercept | | Intercept + Trend |
---|
| Level | 1st Difference | Level | 1st Difference |
---|
LNCO2 | −4.3170 *** | −4.6001 *** | −2.0792 | −6.0661 *** |
LNA | −2.0774 | −7.9965 *** | −2.6111 | −7.9298 *** |
LNX | −0.5393 | −3.4845 ** | −1.3776 | −4.1872 ** |
LNFDI | −4.7318 *** | −6.5092 *** | −5.2192 *** | −6.3848 *** |
LNY | −1.3664 | −2.0881 *** | −4.6330 *** | −0.5123 *** |
LNM | −0.5123 | −4.5845 *** | −2.7753 | −5.2327 *** |
LNA | −2.6917 * | −3.5198 ** | −2.0735 | −3.6777 ** |
LNT | −2.7064 * | −4.9034 *** | −1.8423 | −5.3775 *** |
LNP | −1.3292 | −9.0692 *** | −4.9297 *** | −8.9065 *** |
Table 5 provides the results of long-run relationships between population growth, energy consumption by sector, economic growth, FDI, exports, imports, and CO
2 emissions. The results reveal a significant and negative relationship between energy consumption in the agricultural sector and CO
2 emissions in the long run, with a coefficient value of 0.0417. A 1% increase in energy consumption in the sector can contribute to a 0.04% lower level of CO
2 emissions. There is also a significant and positive relationship between energy consumption in the industrial sector and CO
2 emissions in the long run. The coefficient value of 0.1500 indicates that a 1% rise in energy consumption in the sector may lead to a 0.15% rise in CO
2 emissions. A significant and positive relationship between energy consumption in the transportation sector has been observed with a coefficient value of 0.4582, suggesting that as energy consumption in the sector goes up by 1%, CO
2 emissions may increase by 0.46%. Exports can also contribute to larger CO
2 emissions in the long run. A 1% rise in exports results in CO
2 emissions rising by 0.44%. Economic growth also has a significant and positive relationship with CO
2 emissions. Economic growth escalates by 1%, prompting a rise of 0.43% in CO
2 emissions. Population growth, FDI, and imports do not have a long-term effect on CO
2 emissions. Therefore, a 1% increase in population growth, FDI, and imports does not cause CO
2 emissions to increase in the long run.
Table 6 provides the results of short-run relationships between the variables. The findings reveal a significant negative relationship between energy consumption in the agricultural sector and CO
2 emissions in the short run. There is also a significant and positive relationship between energy consumption in the transportation sector and CO
2 emissions. FDI and economic growth have significant impacts on CO
2 emissions. Energy consumption in the industrial sector, population growth, and imports, on the other hand, do not significantly impact CO
2 emissions. The coefficient of the ECT is −0.7610 and significant, confirming that there are long-run relationships between energy consumption by sector, population growth, exports, imports, economic growth, and CO
2 emissions in the long run.
Table 5.
Long-run estimation results.
Table 5.
Long-run estimation results.
Variable | Coefficient | Std. Error | T-Statistic | Prob |
---|
LNA | −0.0417 ** | 0.0174 ** | −2.3955 ** | 0.0338 |
LNI | 0.1500 ** | 0.0610 ** | 2.4613 ** | 0.0300 |
LNP | −0.0274 | 0.0295 | −0.9294 | 0.3710 |
LNT | 0.4582 *** | 0.4796 *** | 8.4378 *** | 0.0000 |
LNX | 0.4406 *** | 0.1227 *** | 3.5915 *** | 0.0037 |
LNFDI | 0.0244 | 0.0139 | 1.7565 | 0.1045 |
LNY | 0.4337 *** | 0.0655 *** | 6.6229 *** | 0.0000 |
LNM | −0.2510 | 0.1682 | −1.4918 | 0.1616 |
C | −5.0092 *** | 0.4796 *** | −10.4448 *** | 0.0000 |
Diagnostic tests, such as Breusch–Godfrey serial correlation, Ramsey RESET stability, heteroscedasticity, and Jarque–Bera, are indispensable for checking whether the model used in this study suffers any problem and whether the model is stable. The results reported in
Table 7 show that the
p-values for all of them are insignificant at 5%, indicating that the alternative hypotheses are rejected. This means that the model used in this study does not suffer from any diagnostic problems. In addition, CUSUM and CUSUMQ tests are also performed to check the stability of our model. The results presented in
Figure 5 show that the model is stable due to the plots falling within the two critical lines. Therefore, our inference concerning the impacts of energy consumption in the agricultural, transportation, and industrial sectors on environmental degradation is reliable.
5. Discussions
The findings of this study reveal that higher use of energy in the agricultural sector can harm the environment. They are similar to the findings of Shaari et al. [
1]. Energy use in the region’s sector is still low, and some farmers, especially in rural areas, still use traditional methods of producing outputs, which may reduce CO
2 emissions. In comparison to the other sectors, agriculture consumes the smallest share of the total energy, especially non-renewable energy such as oil. Therefore, developing the sector by introducing technologies that consume non-renewable energy may harm the environment. In addition, this study also finds that higher energy consumption in the industrial sector can also put the country at risk of suffering greater environmental degradation. The sector is responsible for the second-largest share of total energy consumption. The use of non-renewable energy sources, such as oil and coal, in the industrial sector exhibits an upward trend, contributing to greater CO
2 emissions in Malaysia. Therefore, it is imperative to pay more attention to this sector in order to reduce CO
2 emissions. Energy consumption in the transportation sector is also found to positively impact CO
2 emissions, supported by Chandran and Tang [
26] and Nasreen et al. [
32]. The sector consumes the largest share of the total energy in Malaysia, followed by the industrial sector. Thus, its impact on CO
2 emissions is greater than the industrial sector. As has been explained by Yuaningsih et al. [
33], this is because there is higher demand for passengers using transport services due to increasing income and rapid economic development; this conclusion is supported by Shaari et al. [
34], Ridzuan et al. [
35] and Ridzuan et al. [
36], who also found the same outcomes for Malaysia.
Economic growth is also responsible for greater environmental degradation as it entails using more non-renewable energy that can release more CO
2 into the air. Due to Malaysia’s reliance on oil, coal, and gas to generate its economic activity, it is no wonder that CO
2 emissions exhibit a steady increase. Malaysia is not a developed country, so economic growth still precedes environmental conservation. This does not correspond with the results of Rahman et al. [
2] that higher economic growth should reduce CO
2 emissions in newly industrialized countries. Greater FDI inflows can also harm the environment in Malaysia. Zubair et al. [
37] argue that FDI inflows may reduce CO
2 emissions in Nigeria as FDI inflows will result in using more green technologies to reduce CO
2 emissions. However, FDI inflows in Malaysia do not contribute to an increase in the use of green technology that can cushion the impact on environmental degradation. Exports can also contribute to greater environmental degradation, supported by Wang et al. [
38]. Malaysia’s exports depend highly on electrical and electronic goods, which can release CO
2 during production. Furthermore, the sector consumes various non-renewable energy sources, such as coal and oil, that can also emit CO
2.
6. Conclusions
This study examines the effects of energy consumption by sector on CO2 emissions in Malaysia from 1989 to 2019. It employs the ARDL approach, and the results reveal that energy consumption in the transportation and industrial sectors, exports, FDI, and economic expansion have positive impacts on CO2 emissions, whereas energy consumption in the agriculture sector has a significant negative impact. This indicates that an increase in energy use in agriculture does not harm the environment. Population growth and imports do not significantly impact CO2 emissions.
Policymakers must develop appropriate policies in light of the findings that energy use in the transportation and industrial sectors can worsen environmental deterioration. Malaysia continues to rely on non-renewable energy, such as coal and oil. Since agriculture does not impact the environment, it is not necessary to implement any environmental policies in this sector. However, we need to focus more on the industrial and transportation sectors. In comparison to the industrial sector, the transportation sector has a greater impact on CO2 emissions. To lessen environmental degradation, improvements must be made to five fuel diversifications that the government has already implemented, particularly in the transportation and industrial sectors. Despite the policies, non-renewable energy is still widely used in those sectors in Malaysia. Therefore, we must switch to utilizing more renewable energy sources, like solar, biodiesel, and hydro. In order for consumers to purchase electric vehicles, their prices must be reasonable. Additionally, firms in the two sectors that produce a lot of CO2 emissions should be subject to carbon taxes and pricing. Most economists also supported the idea that the policies may lower CO2 emissions while providing profits to the government.
Due to higher economic growth and exports increasing CO2 emissions, it is impossible to reduce them in a bid to reduce environmental degradation. However, the country can consider using carbon capture and storage technology. Carbon will be stored deep underground in geological formations, leading to a reduction in environmental degradation. FDI inflows might be detrimental to the environment, suggesting that technology brought into the country is not environmentally friendly. Thus, transferring green technology as a result of FDI inflows is of utmost importance. The government may also consider imposing additional taxes on firms that import non-green technology.
This study is still not perfect, as it has several limitations. There are several potential variables that can be included in this study, such as corruption, financial development, and so forth. Therefore, including these variables in the future may help improve the findings of this study and shed more light on formulating policies. In addition, this study only focuses on Malaysia using time-series data analysis. In future research, it is better to explore the impact of energy consumption on CO2 emissions in many countries employing panel data analysis.