1. Introduction
Every country must consistently allocate energy resources and develop socially fair technology with the least negative environmental impact [
1]. However, the unacceptable natural environmental degradation brought on by the burning of fossil fuels can only be stopped by slowing down both economic expansion and fossil fuel consumption [
2]. Su et al. [
3] have been educated on various economic choices about energy technology and resources to achieve low-level carbon green economic development. In addition, the world economy experienced a catastrophic economic shutdown as a result of unsafe lending practices by US banks [
4,
5]. The recession’s repercussions cause a considerable decline in foreign trade and a drop in pricing [
6]. Almost all countries were desperate to escape recession [
6]. Since then, implementing green technology has presented a win-win situation because not only are they green, but most of them are not utilized [
7]. They provide a valuable argument on combining green technology innovation, energy production policies, and policy incentive timing for countries based on their socio-economic and biological conditions.
Advances in Green technology are critical to meeting sustainable development goals while having the least harmful impact on the normal environment [
8,
9]. Carbon neutrality, or achieving net-zero CO
2 emissions, is a hot topic among legislators, researchers, and other environmental sectors. The phrase CO
2 emissions, on the other hand, refers to the discharge of carbon into the environment from various types of energy consumption and trade-associated sources. At the moment, there is a series of conversations regarding green innovation technology (GTIs) in which the phrase “environmental sound technologies (ESTs)” is regarded to be the first conception [
10]. But the traditional green technology concept has been transformed into completely sustainable solutions considering the economy, the environment, and society.
Different countries have implemented various techniques to promote green development. For example, the Chinese government has proposed that Green Technology appropriately be implemented according to the United Nations (UN) 2030 agenda [
11]. The Chinese government and commercial banks provide unconditional financial loans for green investment and environmentally friendly industries [
12]. The idea of green technologies was first introduced by Braun and Wield [
13], believing it has to include ecological treatment, pollution management, recycling, monitoring, purification, and other evaluation procedures. Moreover, environmental considerations should be considered during the invention of the manufacturing process; hence a novel GTIs system established on the classic linear model technological innovations has been established. The necessity for GTIs is seen in every country worldwide. As a result, the transformation of green technology is critical for environmental conservation. This is because developing countries continue to struggle to gain access to modern green technology. Approximately 66.7% of countries still seek appropriate green technology to stabilize their economy and environment [
14]. The UN Framework Agreement on Climate Change (UNFCC) has initiated a program concentrating on climate-changing technologies, with the participation of 85 nations [
15]. The success and efficiency of GTI in terms of green economy development can decrease air pollution and preserve energy sources.
According to some researchers, the GTI’s performance is the association between input and output during all operations of GTIs. Three basic methods for estimating the efficiency of local GTIs have been observed [
16,
17]. The first method utilizes the patent indications for green technology innovation, particularly based on GTI accomplishments. Given an instance of such practices, show the number of patent applications received by firms, and analyze when the stock of green and global green technology knowledge influenced technological development. But one of the major drawbacks of this technique is that GTI is a broad concept that a single indication cannot present. The second way to assess GTI performance is through main element analysis across many locations, organizations, and economies [
18]. This strategy was evaluated by the people who created GTI’s index system. A third strategy uses parametric and non-parametric techniques to determine GTI input and output proficiencies [
19].
With expanding financial and economic demands, emerging economies confront numerous issues since increased economic activity increases energy demand, primarily from conventional resources such as coal, gas, and oil [
20]. Renewable energy sources (RE) are strategic energy services for long-term development [
2]. Solar energy, waste, wind, and biomass are considered environmentally friendly and cost-effective because they reduce pollution, improve energy safety, reduce the harmful effects of climate changes, and ultimately, provide low costs energy to remote areas [
21,
22]. Most of the previous literature outcomes about the renewable energy role in the environment are significant and positive [
23]. In the evaluation, some research shows that renewable energy has little effect on energy production or CO
2 emissions concentration [
24,
25]. On the other side, the lack of green technology innovations and inefficient gearing structures are among the elements that prove the harmful effect of renewable energy on environmental quality [
26]. This will propose that such technological developments can limit REC’s harmful environmental effects [
17].
The Chinese economy is the fastest-growing economy globally, and greenhouse gas (GHGs) emissions are increasing rapidly. Its economy is disconnected from energy consumption, air pollution, water usage, and garbage production. However, due to the Chinese economy’s high resource intensity and fossil fuels dependence, environmental pressures will increase in absolute terms [
27,
28]. Currently, the results of the GHG inventory show that total GHG emissions as CO
2 equivalent increased by 0.34% in 2021 relative to the previous year; with the energy sector accounting for GHG emissions it is a big part. Furthermore, total GHGs emission per capita were found to be 1.9 metric tons CO
2 eq. in 1990-, 8.39- and 8.73-tons CO
2 eq. in 2020 and 2021, respectively (see
Figure 1). Fined particulate matter emissions from the power sector and transportation pose major health risks currently. Around 660 major Chinese cities generate solid waste, approximately 190 million tons each year; 29% of the world’s MSW is generated each year. Environmental protection, energy savings, pollution control, water conservation, recycling, low carbon, emission reduction, environmental protection, and ecology are also examples of inventions. All the numbers above provide sufficient justification for examining the Chinese’s economy while monitoring trends in CO
2 emissions based on factors of interest such as green technology innovation, energy consumptions, and numerous other macro-economic dynamic forces.
The objective of this paper is to add the existing literature in the following ways: (1) Its concept uses annual data on the Chinese economy from 1990 to 2021 to compare CO2 emissions, GTI, NREC, REC, POP and PI with the significance of GTIs. (2) This present study explores the characteristics of unit root all variables such as GTIs, NREC, REC, POP, PI, and CO2 emissions using ADF and ZA tests. (3) The bootstrapping ARDL bound analysis approach is used in this work to validate co-integration association aimed variables for co-integration analysis. Several advantages have been noticed in the present literature when using the BARDL technique for data analysis. For example, the BARDL test increases the lagged values significance of selected variables, indicating a better understanding of the model’s Co-integration status than some classic models such as OLS and the basic ARDL test. Other advantages of utilizing BARDL include the absence of inconclusive intervention with a bound test. Furthermore, there is strong evidence about the indigeneity difficulties with the size of the ARDL bound testing structure and its small effect on power dynamics when utilizing the bootstrap ARDL test.
In addition, we used the Granger causality method to investigate the causality relationship between the research variables. Pragmatic evidence suggests that developments in green technology and energy reduce both long-run and short-run CO2 emissions. However, China’s CO2 emissions are increasing due to an increase in energy consumption and population. The causality test indicates a significant relationship between GTIs and CO2 emissions, NREC and CO2 emission, REC and CO2 emissions, POP and CO2 emissions, and PI and CO2 emissions.
The remaining part of the paper is organized as follows:
Section 2 examines the pertinent literature. The data, technique, and models are all described in
Section 3.
Section 4 contains the findings and discussion, while
Section 5 has the conclusion and policy recommendations.
4. Results and Discussion
Table 1 displays descriptive statistics for the findings. Regarding mean scores, we discovered that POP is the most valuable, followed by PI, NREC, and REC. This would support the claim that the targeted economy’s average POP is higher, but Personal Income trends are higher than Renewable Energy. Furthermore, we find that CO
2 emissions are more volatile than NREC. Conversely, PI has a higher deviation than REC, GTI, CO
2 emissions, NREC, and POP. In the current literature, Jarq-B is the direct measurement of goodness-of-fits used to determine whether or not the data confirm a normal distribution, as indicated by skewness and kurtosis. However, the Jarq-B results are positive, with the value remote from zero indicating that the variables of interest have a normal distribution. The same findings were discovered using [
66]. The Jarq-B results reveal that CO
2, GTI, PI, REC, NREC, and POP are normally distributed.
The pragmatic results of pair-wise correlations in (
Table 2) show significant associations between CO
2 emissions and REC, population and CO
2 emissions, CO
2 emissions, and PI. CO
2 emissions and POP, on the other hand, are found to be adversely associated with GTIs and NREC. In addition, REC, PI, and pop are positively connected. During the study period, there was a substantial relationship “between the variables” and a negligible link between “population and RE.” in the Chinese region. The variables variance inflation factor (VIF) and threshold as 1/VIF are shown in
Table 2. The singular value and Mean of VIF for the variables of interest is less than 5, indicating that multi-collinearity is not an issue. The variable’s values are more than 0.10, indicating the variables are connected within an acceptable range.
The unit root test applies to the small data size. In the same way, as demonstrated by Phillip and Perron [
67] and Dickey and Fuller [
68], due to insufficient explanatory power, typical unit root tests might reject the null hypothesis issues. On the other hand, the ADF unit root reflects these problems through its better explanatory control and provides some stable pragmatic evidence about the existence of structural breaks.
Table 3 shows unit root test results with structural breaks. CO
2 emissions, GTI, REC, NREC, POP, and PI, have all been discovered to have the unit root problem at a level. As previously indicated, reliable tests for unit roots in structural breakdowns may provide misleading results, particularly in time-series data. The ZA test, which takes into account one structural break as suggested by Zivot and Andrews [
65]—ZA after this—solves this problem.
Table 3 also includes the results of the ZA tests. Furthermore, ADF (Δ) and ZA (Δ) demonstrate variables are stationary at 1st difference.
Table 4 shows the results of the Bootstrapped ARDL Co-integration analysis. The F-test values and T-test show that ARDL rejected the H0 of Co-integration between the variables. We also reject the H0 because CO
2 emissions are a significant dependent variable. The Reciprocal F-test and T-test will be used on multiple lagged values of all variables to verify the presence of co-integration vectors in the Chinese CO
2 emission system. Moreover, distinctive CO
2 concentrations, GTIs, REC, NREC, POP, and PI, have a long-run association in China from 1990 to 2021. The value of R
2 is 0.967, indicating that all variables describe CO
2 emissions at the same time. In conclusion, the JB results demonstrate the existence of a normal residual distribution for the model.
The Akaike Information Criterion (AIC) was used to estimate the optimal lag time. The F-statistic is based on the bootstrap process’s critical asymptotic bounds. The dependent variable TDV is the t-statistic, and the independent variable, the t-statistic, is TIV. LM measures the Langrage Multiplier test, and the approximation term for JB is the Jarq-B test.
Table 5 depicts the long-run study findings, demonstrating that green technology innovation significantly and negatively influences CO
2 emissions.
The short-run empirical findings are shown in
Table 6. We find that GTI considerably reduces CO
2 emissions. This will support the claim that increased advancement in green technology will cut carbon dioxide emissions in the short run. At a 1% level of relevance, renewable energy is negatively and strongly associated with CO
2 emissions. This demonstrates how REC helps to shift the typical energy pattern, reducing CO
2 emissions in the Chinese economy. PI and REC are negative and significant with CO
2 emission; this is typically the pattern of personal income and energy sources reducing CO
2 emission. However, NREC and POP are positively related to CO
2 emissions by 1%, implying that these are key factors in increasing CO
2 emissions. The ECMt-1 estimation value is (−0.497), which is negatively significant at 1% at the level. The model short-run has also confirmed diagnostic tests that show normality, autoregressive heteroscedasticity, serial correlation, and homoscedastic variance in the study data. The short-run parameters’ stability is confirmed by CUSUM and CUSUMsq, showing that the short-run dimension model is objectively designed.
Finally, the VECM Granger causality method is used to investigate a causal association between the study variables, and the results exist in
Table 7. The importance of Granger causality in time series analysis literature cannot be overstated as it helps decide whether the time series is suitable in anticipating others.
Table 7 shows that the F-statistics value for the first null hypothesis is significant at 5%, indicating that GTI Granger causality is positively unimportant. CO
2 is positively caused by NREC but not by Granger, whereas NREC is positively caused by CO
2. The PI-CO
2 relationship shows significant evidence that PI does not cause CO
2 and CO
2 causes PI, with an F-statistic of 10.2084. Furthermore, the study’s alternate theory is supported by the fact that the population does not produce CO
2, and CO
2 causes POP. Finally, we discover that REC does not cause CO
2 granger and that CO
2 granger causes REC significantly by 1% at the level.
5. Discussion
The results of this study indicate that a 1% increase in green technology is associated with a 0.47% decrease in g CO
2 emission, indicating their inverse relationship. These results are related to those of Umar et al. [
69] and Jordaan et al. [
70]. The NREC and CO
2 emissions are substantial and positive, implying that NREC is a boon for increasing CO
2 emissions in the Chinese region. All else being equal, a 1% increase in the value of NREC increases CO
2 emissions by 0.33%. This confirms the positive result of increased CO
2 emissions from NREC. This pragmatic finding is consistent with Adamas and Acheampong [
71]. Similarly, even at a 1% at level, REC is highly positively associated with CO
2 emissions. This suggests that personal income is beneficial for China’s low CO
2 emissions. If everything else remains constant, a −0.45% reduction in CO
2 emissions is accounted for by a 1% increase in personal income. This pragmatic result is dependable on the findings of Khan et al. [
72]. The association between POP and CO
2 emissions is significant statistically, implying that POP frequently plays a vital role in hastening CO
2 emissions, such as energy consumption. By holding all variables constant, a 1% increase in labor increases the CO
2 emissions by 0.021%. These results are supported by Yeh and Liao [
73].
Renewable energy has a tangible and negative link with CO
2 emissions, showing that renewable energy is a boon for reducing CO
2 emissions in China. Keeping everything else unchanged, a 1% change in REC reduces CO
2 emissions by 0.26%. This validates the positive result for rising CO
2 emissions from renewable energy during the period. Taiwan’s population growth rate has a substantial impact on carbon emissions. At 5%, the impact of per capita CO
2 emissions is significant. This would indicate that the Chinese economy had higher per capita CO
2 emissions. According to historical data, China’s per capita wealth has expanded dramatically over the last few decades, resulting in rising CO
2 emissions. The long-term explained variation in CO
2 emissions through all variables is 0.994%. Altogether, autocorrelation is identified using DW statistics and detected as no auto-correlation in the model data. The model approved all stability tests and had no problems in normality, serial Co-relation, heteroscedasticity, autoregressive conditional heteroscedasticity, or description. The Parameter constancy can be observed using CUSUM and CUSUMsq, which reflect long-run parameter stability. In a nutshell, all the hypotheses of this study are accepted.
Table 8 shows the summary of hypothesis results:
6. Conclusions
China begins to make progress toward its carbon neutrality objective following the Paris Climate Conference (Conference of the Paris COP: 21). The goal of this research was to examine the association between CO2 emissions, GTI, NREC, REC, POP, and PI in the Chinese economy from 1990 to 2021. Co-integration can be seen in GTIs, NREC, REC, POP, PI, and CO2 emissions. GTI, REC, and PI negatively influence CO2 emissions, but NREC and POP have long-term positive impacts. Similarly, in the short run, REC, GTIs, and PI all negatively and significantly impact CO2 emissions, while the remaining drivers have a positive impact.
The pragmatic results of the causality reveal unidirectional causation between GTI and CO2 emissions, NREC and CO2 emissions, REC and CO2 emissions, population and CO2 emissions, and PI and CO2 emissions. GTI, REC, and PI negatively influence CO2 emissions in terms of policy implications. This would mean that more policies should be devised to stimulate increased GTIs, PI, and the usage of REC while achieving long-term environmental development. Our findings show a link between GTI, PI, REC, and CO2 emissions. Improved economic trends towards more GTIs advancements, REC, and PI will directly impact natural carbon emissions in such situations.
Policy Recommendation
The Chinese government must develop policies encouraging GTIs, REC, and the CO2 emission triangle. In addition, our empirical data show that NREC, POP, and CO2 levels are all rising. To get positive results, the local government should develop encouragement programs to promote REC sources. Appropriate measures are also required to limit the growing population expansion hazard, leading to increased carbon emissions. Furthermore, such empirical research has demonstrated that the government and policymakers confront extra challenges in implementing proper macroeconomic changes to address the direct association between REC, POP, and CO2 emissions. Based on this distressing reality, our research highlights the significance of designing and implementing serious policies to control the direct and significant effect of elements more strategically such as REC, POP, and PI on CO2 emissions.
Finally, this study has several drawbacks. The present study looks at tendencies in carbon neutrality and the role of GTIs and RECs in the Chinese economy. This means that the rest of the Asian countries are not considered in the analysis. Second, the economic expansion role in the influence of environmental quality is generally recognized in the present literature, according to the theoretical assumption known as the Environmental Kuznets Curve (EKC). However, the existing analysis needs to be refined to analyze this trend in CO2 emissions on the EKC theoretical basis. Future studies should include these barriers to improve race and policy implications.