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Article

A New Climate Change Analysis Parameter: A Global or a National Approach Dilemma

by
Nerea Portillo Juan
*,
Vicente Negro Valdecantos
and
José María del Campo
Environment, Coast and Ocean Research Laboratory, Universidad Politécnica de Madrid, Campus Ciudad Universitaria, Calle del Profesor Aranguren 3, 28040 Madrid, Spain
*
Author to whom correspondence should be addressed.
Energies 2022, 15(4), 1522; https://doi.org/10.3390/en15041522
Submission received: 31 December 2021 / Revised: 10 February 2022 / Accepted: 14 February 2022 / Published: 18 February 2022
(This article belongs to the Special Issue CO2 Emissions and Sustainable Development)

Abstract

:
Climate change is an issue nowadays present in almost all of the media daily, but information can be manipulated very easily. It is a fact that, in the last decades, greenhouse gas emissions have multiplied, and to tackle climate change efficiently, it is necessary to analyze their origin and their relationship with regards to countries, population, production, etc. When analyzing a country’s emissions, not only the total emissions, but also the emissions in relation to its population, production, etc., should be considered. In this paper, a new parameter (CE2N) that merges total emissions, and emissions per capita and per GDP is proposed and applied, obtaining, for the first time, a unified and universal parameter that considers the emission efficiency and total emissions at the same time and can be used in all countries. We validated this new parameter with its implementation in previous environmental models, and the results obtained showed that CE2N would help to increase the transparency and objectivity of these models, giving more weight to emission efficiency, rather than other, more subjective criteria previously used. In addition, CE2N could be implemented in future international agreements, being beneficial not only for the scientific community, but also for policymakers.

1. Introduction

Defining climate and climate change is a complex issue that requires study and meditation (Todorov, 1986 [1] and Werndl, 2016 [2]). The correct definition of climate change is crucial for both, climate policies and scientific studies. In fact, there are whole papers that deal with the problem of climate and climate change definition. Werndl, 2016 [2] stated that the definition of climate has to meet five conditions: be empirically and mathematically valid, classify different climates, not depend on human knowledge, and be applicable to the past, present, and future. He gave five definitions of climate and discussed their advantages and inconveniences. Lorenz already defined climate change mathematically in 1970 [3]. Werndl, 2016 [2] and Dymnikov and Gritsoun, 2001 [4] stated that there is climate change when there are different distributions of climate variables for two successive time periods. More recently, the United Nations Framework Convention on Climate Change (UNFCC) defined climate change as “a change of climate which is attributed directly or indirectly to human activity that alters the composition of the global atmosphere and which is in addition to natural climate variability observed over comparable time periods” [5], and the IPCC defined climate change as “a change in the state of the climate that can be identified by changes in the mean and/or the variability of its properties and that persists for an extended period, typically decades or longer” [6].
Climate change has always existed, since the origin of the Earth, 4500 M years ago. However, almost all literature about climate change and global warming only focuses on the last few decades. Although it is true that climate change has been influenced for a long time since the agricultural revolution [7,8], the main factors responsible for it are greenhouse gas (GHG) emissions, and it is has been after the industrial revolution that the amount of GHGs emitted to the atmosphere increased considerably. Between 1750 and 2011, cumulative anthropogenic CO2 emissions to the atmosphere were 2040 ± 310 GtCO2, and about half of these emissions have occurred in the last 40 years. The total anthropogenic GHG emissions continued to increase between 1970 and 2010, with the largest absolute increases occurring in the last decades. In fact, each of the last three decades has been successively warmer at the Earth’s surface than any previous decade since 1850. Combined and globally averaged land and ocean surface temperature data, calculated from a linear trend, show a warming of 0.85 (0.65 to 1.06) °C over the period of 1880–2012. This increase in emissions has not only produced the warming of the planet, but it has also altered ecosystems, provoked the acidification of the ocean, the death of animal species, etc. [9].
Emissions vary per country and understanding the contribution of each country to climate change is essential to face it. However, there is still no agreement on the criteria that should be used to judge countries’ environmental policies, whether by total emissions, emissions per capita, or emissions per gross domestic product (GDP).
Reducing GHG emissions is directly related to Sustainable Development Goals (SDG). SDG were adopted in 2015 in the Agenda 2030 by the General Assembly of the United Nations (UN) [10,11]. Reducing GHG emissions is considered in SDG 13: Climate Action, which is positively correlated with SDG 7: Affordable and Clean Energy [11]. The literature about emissions, sustainable development goals, and energy is very rich. Among others, Bilan et al. [12], Zoundi [13], and Liu et al. [14] studied it and concluded that the use of renewable energy allowed decreasing the emissions of GHG. Ziolo et al. [15] and Akaev et al. [16] supported the need to increase energy efficiency and to develop a good energy transition if sustainable development is to be reached. Peña-Ramos et al. [17] studied the energy transition in Spain. Drozdz et al. [18] studied the determinants of decarbonization and of the development of a sustainable energy system in Poland, and Zimon et al. [19] studied the relationship between emissions, SDG, business models, and supply chains.
There are also many scientific articles about GHG emissions, their impact on the economy, energy, and population, their spatial distribution, and the relationship between all of these variables. In fact, the study of the linkage between economic growth and emissions goes back to the 1990s, with Grossman and Krueger [20,21] and Douglas [22].
Some of the most relevant studies about the distribution of GHG emissions, population, and GDP are the following: Zhang et al. [23] studied the advantages and drawbacks of using each variable (total emissions, emissions per capita, and emissions per GDP) as an indicator. Moghaddam et al. [24] proposed a new GHG intensity indicator that integrated the concepts of GDP and per capita in a new one that they called activities. Liang et al. [25] carried out an analysis of the emissions of each nation. Arango Miranda et al. [26] analyzed the relationship between carbon dioxide (CO2) emissions, energy consumption, and economic growth. Sun et al. [27] developed an index that incorporated the concepts of ecology, economy, and equity to analyze the spatial distribution of emissions in China. Leitão et al. [28] studied the linkage between emissions, economic growth, tourism, and renewable energy in the European Union. Bădîrcea et al. [29] studied the relationship between climate change, emissions, and the blue economy, and Karman et al. [30] presented a climate model to evaluate regional competitiveness.
All these previous studies either conducted complex environmental models on specific areas/countries, or analyzed only some of the three main parameters to be considered when talking about emissions (population, GDP, and total emissions). However, none of them proposed neither a universal formula that could be applied to every country of the world, nor a formula that integrated GDP, population, and total emissions in only one parameter. This paper proposes a new universal formula to quantify emissions that integrates these three main variables in a unique parameter: CE2N (where C means carbon dioxide, E means equivalent, and N means normalized).
The main objective of this study is to define a universal criterion that puts an end to disputes about what should be the environmental variable (total emissions, or emissions per capita or per GDP) that underlies international agreements, unifying the variables used until now into a single CE2N parameter that can also be applied in environmental models developed by the scientific community. The results of environmental models vary a lot depending on the criteria used and, as CE2N unifies all these criteria, it will end with this problem.
For the first time in the literature, a global parameter that unifies the three main environmental variables and that can be applied in every country of the world, not only in some countries or specific areas, is proposed.
The uniqueness of the study lies in the fact that it proposes a unified and simple criterion that can benefit both politicians and the scientific community, helping to narrow the gap between science and society and making the understanding of emissions distribution accessible to everyone. CE2N is very simple and has an advantage over other studies—its clarity. There is no need to use sophisticated and unclear equations to obtain CE2N, although it can also be implemented in more complex models (Section 4.3.2), also making environmental models more objective.
The limitations of the technique applied in this study are that the allocation of the total emissions, emissions per capita, and per GDP weights depends on user criteria (Section 3.2 Weighting of total emissions, emissions per capita, and per GDP), and that, to obtain CE2N, only the emissions of the present year are considered; consequently, CE2N gives only an image of the environmental policies of a country in the present. However, historical emissions could be considered when applying CE2N in environmental models (Section 4.3.2)
The structure of the paper is as follows: Section 2 presents the literature review; Section 3 describes the methodology; Section 4 reveals the results obtained; Section 5 presents the discussion of results and policy recommendations; and Section 6 states the conclusions reached and suggests new research lines.

2. Literature Review

The literature on climate change, gas emissions of nations, and equity is voluminous. Some of the most significant contributions are those made by Sagar [31], who studied the allocation scheme of emissions; Vaillancourt and Waaub [32], who developed a model to allocate emissions based on the equity principle; Markandya [33], who conducted an analysis of the distribution of climate change; Mattoo and Subramanian [34], who conducted a review about equity and climate change; Remuzgo et al. [35], who studied the evolution of GHG emissions during 1990–2011; Alcaraz et al., who developed a model of climate justice per capita [36] and applied it to the Mediterranean [37]; and Jena et al. [38], who designed a nonlinear model to forecast the CO2 emissions of the 17 key emitting countries.
There are three main approaches in the study of the distribution of gas emissions and equity [33,34]:
  • Emissions per capita: Based on the principle that every person has an equal right to emit GHG. There are some authors that support this approach, such as Dubash, N.K. [39], Saran, S. [40], and Alcaraz et al. [36]. However, judging environmental responsibility focusing on emissions per capita is far from equity, because the capacity to produce GHG and also to reduce emissions highly depends on the level of development of a country [41,42,43]. In addition, the main percentage of GHG emissions is not caused by individuals;
  • Emissions per GDP: Supported by Cao, J. [44], among others. Based on the idea that countries with higher levels of production have the right to emit more GHG, but, as it happens with the emissions per capita scope, this theory helps to increase the gap between high and low-income countries;
  • Historic responsibility: Dubash, N.K. [39], Cooper, R. N. [45], and Stern, N. [46] are some of the authors that agree with this scope. It considers that the allocation of future emissions should be inversely related to past emissions. However, it is not clear from when emissions should be accounted from. Although many authors consider that it should be since the industrial revolution (Cao, J. [44], Kanitkar et al. [47]), humankind has been altering the climate since the origin of the human species and not only over the last 100 years, so it would not be rigorous to only consider a few years. However, as stated by Shue [48], emissions from developing countries should be treated differently to those from developed countries; the latter should support developing countries with their adaptation costs, mainly through financial and technological transfers (Falkner [49]).
The fact that the emissions per capita and per GDP approaches are not fair is supported by the Environmental Kuznets Curve Theory [50], which states that the emissions of CO2 follow an inverted U-shape with economic growth. Therefore, the level of emissions of a country will depend on its level of development. The literature on this topic is very abundant. Some of the most recent and relevant studies were carried out by Dogan et al. [51], Mania et al. [52], Jóźwik et al. [53], and Knight and Schor [54].
The relationship between globalization and GHG emissions has also been studied, but there are no solid conclusions. Some studies, such as the ones carried out by Rahman [55], Villanthenkodath et al. [56], and Baydoun et al. [57], concluded that globalization helps to reduce GHG emissions, while others, such as the ones by Pata, U.K. [58] or Kihombo et al. [59], concluded the opposite.
Similar to globalization, there are no strong conclusions linking financial development and emissions. Some studies defend a negative relationship (Xu et al. [60] and Salahuddin et al. [61]), while others support a positive relationship (Chebbi et al. [62], Jiang and Ma [63], and Ameyaw and Lao. [64]).

International Agreements, Kyoto, and Paris

In order to tackle the problem of climate change, it is essential to study the international agreements that have been reached throughout history and the political and social situation. This is the main rationale for this section.
In 1992, climate change was recognized as a problem for the first time, when the UNFCC was adopted [65]. Since then, 26 conferences have taken place and two big international agreements have been adopted: the Kyoto Protocol and the Paris Agreement [66,67,68].
The Kyoto Protocol was adopted in 1997; it was the first international agreement in which nations committed to reducing their emissions by 5% (referring to 1990 emissions) for the period of 2008–2012. However, the Kyoto Protocol distinguished between developed and developing countries. Only developed countries who were annexed in UNFCC had quantified commitments, while developing countries only had to try to improve their policies. In addition, the Kyoto Protocol defined different tools to help nations to reach their targets [66]:
  • International Emissions Trading: Based on the right of emitting gases and its commercialization. When a country reduces its emissions in a percentage higher than its target, it can sell the surplus of CO2 on the carbon market;
  • Clean Development Mechanism (CDM): It allows an annexed country to implement an emission-reduction project on developing countries. Such projects can earn saleable certified emission reductions, which can be counted towards meeting reduction targets [69];
  • Joint Implementation (JI): It allows an annexed country to earn emission reduction units from an emission-reduction or emission removal project in another annexed country [70].
In 2012, the Kyoto Protocol was extended until 2020 with the Doha Amendment. Countries that ratified it committed to reducing their emissions by 18% for 2020. However, the Doha Amendment never entered into force because the annexed countries only represented 15% of global emissions [66,67].
The other big international agreement is the Paris Agreement that came into effect in 2016. It leaves the distinction between developed and developing countries and also the common objective of reducing the emissions by a certain percentage. With this new agreement, each country has to commit to making its best effort to develop environmental policies through nationally determined contributions [68].

3. Materials and Methods

The new parameter proposed, CE2N, is obtained by applying the following equation:
  CE 2 N units   of   normalized   CO 2 = α CO 2 M t / year + β CO 2   per   capita   t / year + γ CO 2 kUSD   t / year
where α, β, and γ are constants that are obtained by normalizing and weighting each variable.

3.1. Normalization of Total Emissions, Emissions Per Capita, and Per GDP

As the total emissions, and emissions per capita and per GDP have different orders of magnitude, the first step is to normalize them. To this end, the maximum and minimum values of each variable are studied.
The emissions per capita is the variable that has medium values (total emissions are usually higher than the emissions per capita and the emissions per GDP are usually lower). Therefore, the constant of the emissions per capita β is taken as the base parameter. As β is taken as the reference value, β is equal to 1.

3.1.1. Normalization of Total Emissions (α)

  • Total emissions are, on average, 41 times the emissions per capita;
  • About 90% of the total emissions are between 0.2 and 82 times the emissions per capita;
  • Total emissions’ standard deviation is 154 units.
Therefore, to make the total emissions and emissions per capita have the same order of magnitude, the total emissions’ constant α has to be divided by 0.2 and 82. This gives a range of values α of 0.012 to 5. From this acceptable range of values, the value of 0.07 was chosen as the recommended value for α, because it is the medium value plus 15% of deviation units, which was considered the best statistical criteria. Below, the whole process of normalization is explained step by step.
Final   objective :   α × Total   emissions = β × Emissions   per   capita
(3) β = 1   (4) Max .   Total   emissions = 82 × Emissions   per   capita (5) Min .   Total   emissions = 0.2 × Emissions   per   capita
Substituting (3) and (4) in (2) gives
α × 82 ×   emissions   per   capita = 1 × emissions   per   capita
α = 1 82 = 0.012
Substituting (3) and (5) in (2) gives
α × 0.2 ×   emissions   per   capita = 1 × emissions   per   capita
α = 1 0.2 = 5
Range   of   values   of   α = 0.012   to   5
Average   value = 41 ; Deviation   units = 154 ; 0.15 × Deviation   units = 23.1  
α = 1 41 + 1 23.1 = 0.07

3.1.2. Normalization of the Emissions per kUSD (γ)

  • Emissions per kUSD are, on average, 1/21 times the emissions per capita;
  • About 90% of the emissions per kUSD are around 1/3 and 1/50 times the emissions per capita;
  • The standard deviation of emissions per kUSD is 22 units.
Taking the parameter of emissions per capita β as the base parameter, γ range of values should be between 3 and 50. From this range, the value of 23 was chosen as the recommended value for γ because it is the medium value of the range proposed plus 10% of the deviation units, which was considered the best statistical criteria. (Same criteria as those applied to total emissions, but with 5% fewer deviation units because, for the total emissions, the standard deviation is more relevant).
Final   objective :   γ × emissions   per   GDP = β × emissions   per   capita
{ (7) β = 1 (8) Max .   Emissions   per   G D P = 1 3 × Emissions   per   capita   (9) Min .   Emissions   per   G D P = 1 50 × Emissions   per   capita  
Substituting (7) and (8) in (6) gives
γ × 1 3 × emissions   per   capita = 1 × emissions   per   capita
γ = 3
Substituting (3) and (5) in (2) gives
γ × 1 50 ×   emissions   per   capita = 1 × emissions   per   capita
γ = 50
Range   of   values   of   γ = 3   to   50
Average   value = 1 21 ; Deviation   units = 22 ; 0.10 × Deviation   units = 2.2  
γ = 21 + 2.2 = 23
In the table below (Table 1), the values obtained for α, β, and γ after normalizing the variables are presented.

3.2. Weighting of Total Emissions, Emissions Per Capita and Per GDP

The second step is to assign the corresponding weight to each of the variables. It was considered that the best relative weight for the total emissions ( α ) was 70%, and 15% for the emissions per capita ( β ) and per kUSD ( γ ) (Table 2).
This distribution is based on the fact that the priority right now is to cut CO2 emissions. This is why the total emissions relative weight is much higher (0.7). It is based on the authors’ criteria and knowledge, but if potential users of CE2N do not agree with this distribution of weights, it can be changed. If a user considers that a better distribution would be 60% for total emissions and 20% for emissions per capita and per GDP, the new values of α ,   β , and γ can be obtained by multiplying the recommended value of the range (column 3 of Table 1 and Table 2) by the new relative weight:
α :   0.07 × 0.6 = 0.04
β :   1 × 0.2 = 0.2
γ :   23 × 0.2 = 4.6
CO 2 N = 0.05 CO 2 + 0.15 CO 2   per   c á pita + 3.5   CO 2 / kUSD
Once the formula was defined, it was validated by introducing it into previous environmental models. Finally, the results obtained were analyzed and compared to the results obtained from the original models (Section 4.3.2 and Section 5).

4. Results

To analyze how the implementation of CE2N will change international agreements and environmental models, a previous analysis of emissions statistics and of compliance with agreements needs to be presented.
Section 4.1 presents the analysis of the total emissions, and emissions per capita and per kUSD; Section 4.2 presents the analysis of the compliance of the Kyoto Protocol; Section 4.3 focuses on the new parameter, CE2N; and, finally, Section 4.4 presents different graphs to illustrate the application of CE2N.

4.1. Total Emissions, and Emissions Per Capita and Per kUSD

The distribution of the global total emissions in 1990 and 2019 is presented below (Figure 1).
Since 1990 (base year), global emissions have increased by 68% and the world population has increased by 45%, which means that, today, humanity is not only emitting more CO2, but also more CO2 per person (16% greater than in 1990) [71]. In addition, as it can be seen from the figure above, the three most polluting countries (China, the USA, and India) account for 50% of global emissions. These three countries emit as much as the remaining 191 countries, which means that, without their collaboration, the climate change problem cannot be addressed.
The tables below show the countries that reduced and increased their emissions the most in 2019 compared to 1990 (Table 3 and Table 4, where Mt is Megaton and t is ton).
If, instead of the global total emissions, the emissions per capita are studied, the results are very different. China or the USA are no longer the most polluting countries, and, in the ranking of countries with the worst values of emissions per capita, new countries appear [71] (Table 5).
When the emissions per kUSD are analyzed, the results are the same as in the previous section. There are new countries that appear in the list of countries with the worst values of emissions per kUSD [71] (Table 6).
From Table 3 and Table 4, it can be seen that the countries that reduced most their emissions with respect to 1990 are European, and the countries that incremented their emissions the most are China and India, two of the three most polluting countries in 2019. Table 5 and Table 6 show that the countries with worst the emission efficiencies are developing countries. These two facts are related to the Environmental Kuznets Curve Theory [50] that states that the emissions of CO2 follow an inverted U-shape with economic growth. In India and China, economic growth is based on industrial development, which means increasing GHG emissions. On the other hand, European countries were already developed countries in 1990, and their economy and technology allow them to continue growing without emitting more CO2 into the atmosphere.
In the table below (Table 7), the countries with the largest values of emissions and their relative position according to other variables (emissions per capita and per kUSD) are presented. It can be seen that the statistics differ a lot depending on the variable analyzed.

4.2. Kyoto Annexed Countries Emissions

With the aim of analyzing the effectiveness of the Kyoto Protocol and its compliance, the emissions of each annexed country in 1990 and 2019 are presented in Table 8 (the emissions are given in Mt/year).
As it can be seen, the Kyoto Protocol was, by far, fulfilled. The annexed countries reduced their emissions by 72% with respect to the emissions in 1990. Twenty of 34 countries reached their objectives, which means 60% of the countries. The remaining 40% did not fulfill their promises, which can be considered a high percentage. However, 85% of the countries that did achieve their targets reduced their GHG emissions by more than 20%, and some of the countries reduced their emissions by more than 50%: Ukraine (75%), Lithuania (61%), and Romania (60%) are some of these countries. This is the main reason why, despite the fact that many countries did not deliver as promised, the Kyoto Protocol did deliver, because the countries that did reduce their emissions did so at high rates. These results and their implications will be further discussed in Section 5.
The USA, Russia, Japan, New Zealand, and Canada are not included in the table because they abandoned the Kyoto Protocol before its end.
Countries with “*” are countries that were considered by Kyoto Protocol as developing countries, so they did not have real commitments, they only had to try to develop sustainable policies. Countries with the %2019-base in green are countries that fulfilled their commitment, and countries with this number in red are countries that did not.

4.3. CE2N

As the results differ a lot depending on the variable analyzed, the formula presented in the section “Methodology” has been proposed in order to integrate all variables in one parameter: CE2N. This new parameter CE2N aims to define a unique classification of the most polluting countries and also proposes a unified criterion that could be applied in environmental models. CE2N considers all the variables (GDP, population, and total emissions), and not just one of them. It is important to consider the total emissions, GDP, and population in one parameter to account for different factors and to be more impartial when assessing countries’ environmental policies.
Configuring CE2N with α   = 0.05 , β = 0.15 and γ = 3.5 , the obtained classification of the 20 most-polluting countries for the year 2019 would be as follows (Table 9):
If the CE2N classification is compared with the total emissions classification per country, the results are as follows (in red are those countries that change their position in the ranking) (Table 10).
As per the table, CE2N gives a new methodology to assess countries’ emissions; considering the emissions per capita and per GDP changes the usual classification.
Comparing Table 9 and Table 10, it can be seen that using CE2N narrows the emissions gap between countries. While the difference in the total emissions between China and USA is 6428 Mt, it is 321 in equivalent carbon units. In fact, from the eighth position, the CE2N differences between countries are less than 1 equivalent carbon unit (Table 9), while those in Table 10 are more than 100 Mt. This implies that countries that change their environmental policies and make an effort to improve their emissions statistics can easily change their position in the CE2N Classification (Table 9), while it would be much more difficult in the usual classification (total emissions, Table 10). Therefore, using CE2N as the new reference environmental parameter could promote the improvement of environmental policies, as it would be much easier to see direct results than with the previous environmental criteria. However, as will be explained in Section 4.3.1 and in Section 5, the position of the top eight emitting countries is very difficult to change due to their high level of total emissions.

4.3.1. Sensitivity Analysis

The CE2N formula is a formula that integrates the concept of total emissions, emissions per capita, and emissions per GDP with the aim of knowing how polluting a country is. The sensitivity of this formula depends on the values of the parameters chosen. A sensitivity analysis with the recommended values of the parameters for two scenarios was conducted:
  • Scenario 1: Europe continues with its policy of reducing its total emissions, reaching an 8% of reduction, and Asia and America continue increasing their emissions with an increment of 5%.
  • Scenario 2: Most developed countries reduce their emissions by 5% and developing countries increase their emissions by 5%.
  • Total emissions sensitivity
For both scenarios, the formula was “highly sensitive” to the total emissions. However, the position of the 10 countries with the highest values of emissions hardly changed due to their high values of emissions. The difference in the amount of gases emitted by the 10 most emitting countries was large. For example, China emits 6428 Mt of CO2 more than the USA [71], which is a great difference that makes it very difficult to change the relative position of these countries. As emissions become lower, the difference in emissions between countries also decreases, which makes the formula proposed much more sensitive. The positions of the countries began to change from the ninth position.
  • Emissions per capita and per GDP sensitivity
With the values of the parameters proposed, the formula of CE2N is less sensitive for the emissions per capita and per GDP than for total emissions. This is due to the reason that it was considered that the most appropriate relative weights were 70% for the total emissions and 15% for the emissions per capita and per GDP. However, if the user does not agree with this and considers that the emissions per capita and per GDP should be more important in the formula, it would be enough to use a lower value of α and higher values of β and γ .

4.3.2. Validation of the New Parameter CE2N

In this section, CE2N is introduced into the environmental models developed by Sagar [31] and Vaillancourt and Waaub [32].
The results obtained from the models are consistent with the changes that the introduction of the CE2N into the models imply. Therefore, the new formula proposed for CE2N is considered validated.
How the introduction of CE2N changes the results of these models is analyzed in Section 5.

Sagar, AD. (2000)

Sagar, AD. [31] developed a model to allocate future GHG emissions based on equal per capita emissions. Three factors were considered in this environmental model:
  • Population;
  • Per capita income levels (pcGNPPPP);
  • Per capita accumulative responsibility (pcCR).
The basic allocation formula proposed by Sagar is [31]:
F i = Pop i × f pcGNP PPP i / g pcCR i i = 1 n Pop i × f pcGNP PPP i / g pcCR i
(Sagar, A.D., 2000 [31])
where Fi is the fraction of the global emissions allocated to country i, and f and g are the functions of pcGNPPPP and pcCR, respectively.
In this research paper, Equation (11) was redefined, replacing function g with another function g’ that depends on the parameter CE2N. GDP was also used instead of pcGNPPPP. The formula obtained after applying all those changes is as follows:
F iN = Pop i × f GDP /   g   CE 2 N i = 1 n Pop i × f GDP /   g   CE 2 N
The obtained results are presented below (Table 11).

Vaillancourt and Waaub (2003)

Vaillancourt and Waaub [32] also developed a model to allocate GHG emissions that was based on equity. They defined a total of 11 criteria to allocate these emissions and gave different weights to them that depended on the level of development of the country. (South and North criteria, Table 12).
In this research paper, it is proposed to substitute those criteria by the parameter CE2N and apply the same model. The model can be summed up in two main steps:
  • Definition of priority functions
a t = 1 a v e m i n
b = 1 m a x a  
(Vaillancourt and Waaub, 2003, [32])
n i   k , t = v i k , t × a t + b t   i f   v i k , t > a v e r a g e n i   k , t = 0   i f   v i k , t < a v e r a g e
(Vaillancourt and Waaub, 2003, [32])
where v i k , t is the variable; n i   k , t , the normalized variable; i, the country; k, the criteria and t, the year.
The priority functions are defined as:
g i j k , t = ( n i k , t n j k , t ) × a t + b t   i f   n i k , t > n j k , t  
g i j k , t = 0   i f   n i k , t < n j k , t
(Vaillancourt and Waaub, 2003, [32])
  a t = 1 p q  
(Vaillancourt and Waaub, 2003, [32])
b t = a p a t
where p and q are the maximum and minimum differences between countries respectively.
Adding all the criteria considered (k):
g i j t = k w k g i j k , t
(Vaillancourt and Waaub, 2003, [32])
where wk is the weight of criteria k
  f i j = 1 α t ( f i j t 1 ) + α t g i j t
(Vaillancourt and Waaub, 2003, [32])
where α t varies from 1 to 0 from 2000 to 2050
Finally,
  x i j = f j i t f i j t
(Vaillancourt and Waaub, 2003, [32])
2.
Allocation of emissions
a i t = e i t 1 E t E t 1
(Vaillancourt and Waaub, 2003, [32])
where e i t 1 is the previous emissions of the region and E t is the global emissions.
  e i t = a i t 1 + j a j t E t x i j t
(Vaillancourt and Waaub, 2003, [32])
If, instead of using the 11 criteria that Vaillancourt and Waaub [32] defined, the parameter CE2N is used as the conceptual base of the model, the allocation of CO2 emissions for the year 2020 is as follows:

4.4. Graphs

To have a visual knowledge of the worst countries in terms of total emissions, and emissions per capita and per GDP, “traffic lights diagrams” are presented below (Figure 2, Figure 3 and Figure 4). Countries that have unacceptable values of any of the variables are in the red zone and those that have medium or acceptable values are in the green area. The further from the origin, the worse the position of the country.
* All the data presented in the graphs are in emissions per year
  • Total emissions vs. emissions per capita
With the aim of scaling properly the graphs and making them easier to visualize, the three countries with the greatest values of total emissions and the two countries with the highest emissions per capita were removed and are not shown in the graph below.
These countries were China, the USA, EU27 + UK, Palau, and New Caledonia [71]. If they were represented, the five of them would be in the red zone.
Countries such as Australia, Canada, or South Korea that do not have high rates of total emissions are in the red zone because their emissions compared to their population are high, and they will be the countries less benefited if CE2N is implemented in environmental models.
Figure 2. Traffic light diagram of the total emissions vs. emissions per capita. Own elaboration.
Figure 2. Traffic light diagram of the total emissions vs. emissions per capita. Own elaboration.
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  • Emissions per capita vs. emissions per kUSD
Figure 3. Traffic light diagram of the emissions per capita vs. emissions per kUSD. Own elaboration.
Figure 3. Traffic light diagram of the emissions per capita vs. emissions per kUSD. Own elaboration.
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  • Total emissions vs. emissions per kUSD
The same procedure as before was followed. China, the USA, EU27+UK, Palau, and New Caledonia were removed in order to obtain a better visualization of the graph.
As explained in Figure 2, countries with high values of emissions per GDP, such as South Africa or Iran, would be the countries most penalized.
Figure 4. Traffic light diagram of total emissions vs. emissions per kUSD. Own elaboration.
Figure 4. Traffic light diagram of total emissions vs. emissions per kUSD. Own elaboration.
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5. Discussion of Results

From 1990 to 2019, global CO2 emissions have increased by 15,333 Mt, which is 68% more compared to those in 1990. However, the Kyoto Protocol was satisfied. This is due to the fact that the countries that had reduction targets in the Kyoto Protocol and fulfilled their promises reduced their emissions by a high percentage, but the rest of the world did not.
As stated by Zhang et al. [23] and Sagar [31], the level of emissions of a country is closely related to its industrialized level and to its level of development. Economic growth is positively related to CO2 emissions (Kim et al. [72]). Countries such as China or India that were considered as developing countries in 1990 and, therefore, did not have to fulfill any emission commitment in the Kyoto Protocol have become powerful countries and, consequently, have increased enormously their emissions. China has risen them by 480%, going from being responsible for 10% of the total emissions in 1990 to 30% in 2019, India from 2% to 7%, and Iran from 0.9% to 1.8%. On the other hand, annexed countries that ratified the Kyoto Protocol were responsible for 68% of emissions in 1990, but only accounted for 11% of the emissions in 2019. Countries such as Germany, Italy, or Russia considerably reduced their emissions, but their efforts were not enough. Countries who were annexed to the Kyoto Protocol reduced their emissions to 72% of the base year (the initial objective was only to reduce it to 82%), but global emissions increased by 68% with respect to those in 1990. This is clear proof that the Kyoto Protocol became outdated.
The effectiveness of the Kyoto Protocol is a very controversial topic and it is difficult to measure (Almer and Winkler [73]). Therefore, the results obtained in this research contradict some of those of previous studies, such as Grunewald and Martínez-Zarzoso [74,75], who stated that the Kyoto Protocol had a reducing effect on CO2 emissions in both developing and developed countries, and Maamoun [76], who considered the Kyoto Protocol a success. However, the results of this study are in line with the results obtained in other research: Kim et al. [72] limited the environmental benefits of the Kyoto Protocol to annexed countries, and Almer and Winkler [73] and Thakur [77] even questioned these positive effects.
With respect to the emissions per capita and emissions per kUSD, countries such as Curaçao or Palau are those with the worst values. There are two main types of countries that have high values of emissions per capita or emissions per kUSD:
  • Countries with high levels of total emissions, such as China (high numerator in emissions/capita or kUSD);
  • Developing countries with very low levels of production or who are poorly populated, which makes the emissions per capita or per kUSD high, even with a low level of total emissions (Palau or Curaçao). (Low denominator in emissions/capita or kUSD).
This diversity among countries with regards to the emissions per capita and per kUSD ranking could also be explained by the Environmental Kuznets Curve [50] mentioned before. This theory states that the emissions of CO2 follow an inverted U-shape with economic growth. Therefore, countries that are right now developing and that have pre-industrial economies will have high rates of emissions per kUSD and usually also per capita. This is the reason why countries such as Kazakhstan, St. Pierre, and Miquelon or Bahrain appear in Table 5 and Table 6. In general, the countries with the worst values of emissions efficiency are developing countries, because their economy is not efficient and implies high rates of emissions.
Focusing on the new parameter proposed, CE2N:
The classification of the 10 most polluting countries obtained by applying the new formula (CE2N) is very similar to the classification obtained if only total emissions are analyzed. However, from the ninth position onwards, the new estimation proposed of CE2N differs from the classification by total emissions. The use of CE2N allows considering the emissions per capita and emissions per kUSD at the same time as the total emissions, giving a better idea of which countries should improve their environmental policies, and showing which countries should improve either their total emissions, emissions per capita, or emissions per kUSD.
In addition, the variable CE2N is much more elastic than the total emissions; differences in the carbon equivalent units between countries are much less than the differences in Mt of CO2. This means that, if CE2N is implemented in international agreements, it could promote the development of environmental measures, as improving CE2N values is simpler and it can be seen as more achievable than improving total emissions statistics.
The low elasticity of the 10 most emitting countries is because, as explained in Section 4.3.1, they emit huge amounts of Mt of GHG to the atmosphere and, consequently, the difference in the amount of gases emitted by them is large, which makes it very difficult to change their relative position in the new classification.
If this is translated to reality and policy measures, it means that, until countries such as China, the USA, or India, commit to climate change and develop real political measures to reduce their emissions, the efforts made by the rest of the countries will be useless. The obtained results are in line with those obtained in earlier studies: Paltsev et al. [78] pointed out that the participation or non-participation of China in global climate architecture can result in a 1.1 °C to 1.3 °C change by the end of the century. Brenton [79] and Liu et al. [80] also pointed out that the cooperation of the USA and China, as the two largest producers of GHG, is key to reaching sustainable development. Without the largest GHG emitters’ involvement, ambitious global climate goals are vastly more difficult, if not impossible, to achieve. Only 10 countries out of 194 are responsible for more than 60% of the total CO2 emissions. China is the biggest pollutant; it is responsible for 30% of global emissions, followed by the USA, with 13%, and India, with 7%. Without additional policy intervention, China’s CO2 emissions will continue to grow until 2040 or 2050 and will approximately double from their 2010 level (Liu et al., 2017 [80]).
CE2N can also be used in other environmental models.
In the case of the Sagar model [31], the use of CE2N and the removal of the historic component implies assigning more weight to the population, GDP, and emissions of a country. When allocating CO2 emissions, the model gives greater percentages to countries that have high levels of production and that are densely populated, such as Japan or Germany, and penalizes countries with high levels of emissions, such as China (See Table 11). It benefits countries with good values of emissions efficiency; the more efficient they are, the more they can emit. In addition, the definition of the historic responsibility function is not entirely clear, so substituting this function with CE2N improves the transparency, clarity, and objectivity of the model.
In the case of the Vaillancourt model [32], the introduction of the parameter CE2N helps to improve the clarity and objectivity of the model. Vaillancourt defined different weights and criteria that depended on the level of development of the countries and their results varied a lot depending on the criteria and weights applied. The introduction of CE2N to the model ends the problem of the variability of the results with different criteria, unifies all these criteria, simplifies the model, and makes it more objective (see Table 12). The consequences of basing the Vaillancourt model on CE2N are similar to the implementation of this parameter in the Sagar model; countries that have a good balance of total emissions, emissions per capita, and per GDP are benefited. Countries that have unacceptable values in any of these variables (countries in the red zone in Figure 2, Figure 3 and Figure 4) will be penalized, and the allocation of emissions will be much less for them.

Policy Recommendations

To address climate change, every country has to cooperate and leave nationalist approaches behind. There are many articles that study the relationship between globalization and GHG emissions [56,57,58,59]. However, none of them analyzed in depth the concept of globalization; previous articles analyzed the impacts that a global economy can have on the environment, but they did not mention that only the economy is global. Politics are not global, and here is the main problem. Thanks to globalization, nowadays, society has access to many services and goods that it would not have if the economy was only local. Therefore, the current global economic model is hard to change and nor is it the solution. What should be promoted is global politics. Emissions and climate change do not have borders, so to cut emissions and tackle climate change, global politics are needed; the final objective is that every state in the world reduces its emissions and that they cooperate to face global warming. Every country should develop a realistic and affordable plan adapted to its history and situation without looking at other countries or the disadvantages with respect to other states. Moreover, international cooperation is needed to push the most polluting countries to cut their emission, even if this has a negative impact on their economy. Without the commitment of the big economies (China, the USA, India, etc.), very little can be done, as they are responsible for more than 40% of total emissions.
Climate change is a global problem and, as a global problem, it needs a global answer. Emissions from China affect the inhabitants of Australia, and global and without borders politics and cooperation are the only solution. Another difficulty is that there are many interests involved, depending on the climate variable that is analyzed, and the statistics differ a lot. The capacity of manipulating information through the media added to the economic and political interests give very different speeches that may raise questions about the reality of climate change.
On the other hand, developed countries should help developing countries to reach their peak of emissions as soon as possible with the aim of being able to reduce their emissions as soon as possible (Environmental Kuznets Curve Theory [13,14,50,51,52,53]). They should promote technology and knowledge transfer, and help to implement the projects needed to cut emissions. Until developing countries implement sustainable policies, climate change would be hard to face. Countries such as Germany or Denmark (developed countries) have already reduced their emissions and, nowadays, developing countries have to improve.
In addition, the use of renewable energy, the enhancement of energy efficiency, and the promotion of the blue economy have been proven to help sustainable development [12,13,14,15,16,28,29,55,56,57,58]. Consequently, countries should focus on developing their economy from this base, avoiding policies that promote economic expansion at the price of environmental deterioration. There is a need to create policies that strike a balance between economic expansion, environmental measures, energy transition, and technology and knowledge equity.
In conclusion, climate change is a problem that can only be addressed with international cooperation, a global economy, and global politics. Effective measures can only be achieved if nationalities and ethnicities are forgotten and if nationalist approaches are left. The answer to this problem mostly relies on the most powerful countries and, until they cooperate, very little can be achieved in the climate change fight.

6. Conclusions

Climate change is a reality and the countries that are most affected are small island states or mountain communities that are only responsible for 0.1% of global emissions or less. All these societies could disappear in 100 years and they can do very little to stop climate change. Developed countries need to take action and mobilize all of their resources, scientific knowledge, and technology to address this problem. The first step to facing the climate change problem is to analyze global emissions with the final aim of defining a universal criterion that could be applied to all countries and is seen as fair by all countries. Until this is achieved, effective international agreements will never be reached. In addition, it is the scientific community that should be responsible for the definition of this criterion, because it is the one with the necessary knowledge.
This article has helped to tackle this problem. It has studied the distribution of GHG emissions, the effectiveness of international agreements, and defined a new universal environmental criterion, the new parameter proposed, CE2N.
The main contribution of this paper is the definition of the new environmental parameter, CE2N. There are many environmental criteria, which leads to problems in both the scientific community and society and politics. As it has been recently seen, during COP26, world leaders do not agree on which environmental criteria should rule international agreements, which prevents the understanding between countries and progress on environmental policies. On the other hand, scientific environmental model results vary a lot depending on the criteria used. In this paper, we have addressed these two problems taking the three most important environmental variables: total emissions, and emissions per capita and per GDP, and unified them in a unique and universal parameter: CE2N. The results obtained show a unique classification of the countries that can be used to implement environmental policies. This classification considers all of the environmental criteria used until now and proposes a new way to judge environmental policies in which emissions efficiency is considered. This new parameter benefits countries with average values of total emissions, and emissions per capita and per GDP (countries in the green area in the traffic diagrams presented, such as Poland, Italy, or the UK), while penalizes countries with unacceptable values of one of these variables (countries in the red area in the traffic diagrams, such as Kazakhstan or Australia). In addition, it is much more sensitive than total emissions, so improvements in environmental policies implemented by countries will have a direct impact on their CE2N values, which can promote real environmental measures. Finally, the introduction of CE2N into previous environmental models helps to increase the objectivity and clarity of the model. This paper also calls for a reflection; it points out, as a solution to climate change, a real global economy and politics, real interdisciplinary knowledge, and cooperation between social and technical disciplines.
Future research should focus on climate change equity, globalization, and the unification of environmental criteria. The results of environmental models vary a lot depending on the criteria used; this is the main reason why this research paper focuses on the development of a parameter that unifies all of these criteria in only one value. Future articles should keep studying how to define a unique criterion to quantify emissions all across the world.

Author Contributions

This paper will be included in the PhD thesis developed by Nerea Portillo at the Technical University of Madrid, Spain, and the aim of the research relates to reviewing climate change and a new proposition about it, made by the PhD candidate. All the authors contributed toward choosing data, discussion, methodology, figures, and references to provide an accurate paper. Conceptualization, N.P.J. and V.N.V.; Funding acquisition, N.P.J.; Investigation, N.P.J., V.N.V. and J.M.d.C.; Methodology, N.P.J., V.N.V. and J.M.d.C.; Writing—original draft, N.P.J.; Writing—review & editing, N.P.J., V.N.V. and J.M.d.C. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

CDMClean Development Mechanism;
CH4Methane;
CE2NNew parameter proposed, normalized CO2;
CO2Carbon dioxide;
ECEuropean Commission;
EUEuropean Union;
EU27+UK27 members states of the European Union and United Kingdom;
GDPGross Domestic Product;
GHGGreenhouse gas;
IPCCIntergovernmental Panel on Climate Change;
JIJoint Implementation;
kUSD1000 United States Dollars;
MtMegaton;
N2OOxide of nitrogen;
RCPRepresentative Concentration Pathways;
SDGSustainable Development Goals;
tTons;
UKUnited Kingdom;
UNUnited Nations;
UNFCCUnited Nations Framework Convention on Climate Change;
USAUnited States of America;
WOSWeb of Science.

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Figure 1. Distribution of global emissions 1990 vs. 2019. Own elaboration.
Figure 1. Distribution of global emissions 1990 vs. 2019. Own elaboration.
Energies 15 01522 g001
Table 1. Values of α, β, and γ after normalization.
Table 1. Values of α, β, and γ after normalization.
ConstantRange without Weight AllocationRecommended Value of the Range
α 0.012 to 50.07
β Base parameter (1)Base parameter (1)
γ 3 to 5023
Table 2. Parameter values proposed.
Table 2. Parameter values proposed.
ParameterRange without Weight AllocationRecommended Value of the RangeRelative WeightRecommended Value
α 0.012 to 50.070.70.05
β Base parameter (1)Base parameter (1)0.150.15
γ 3 to 50230.153.50
Table 3. Ten first countries with the greatest reduction in emissions. Own elaboration.
Table 3. Ten first countries with the greatest reduction in emissions. Own elaboration.
Max. Reduction of Emissions (Mt/Year)
CountryReduction 1990
EU27+UK1104
Russia601
Ukraine586
Germany315
UK223
Romania108
Italy98
North Korea89
France71
Czechia57
Table 4. Ten countries with the greatest increment in emissions. Own elaboration.
Table 4. Ten countries with the greatest increment in emissions. Own elaboration.
Max. Increment of Emissions (Mt/Year)
CountryIncrement 1990
China9130
India1997
Iran497
Indonesia461
Saudi Arabia441
South Korea381
Vietnam284
Turkey265
Brazil250
Mexico194
Table 5. Ten countries with the worst values of emissions per capita in 1990 and 2019. Own elaboration.
Table 5. Ten countries with the worst values of emissions per capita in 1990 and 2019. Own elaboration.
19902019
Countryt CO2/Capita/YearCountryt CO2/Capita/Year
Palau142.826Palau58.879
Curaçao37.321New Caledonia55.25
Qatar35.695Qatar38.823
Luxembourg30.777Curaçao36.382
United Arab Emirates30.601Trinidad & Tobago23.806
Estonia24.576Kuwait23.289
Bahrain24.173United Arab Emirates22.992
St. Pierre & Miquelon23.556Bahrain21.637
USA20.057Gibraltar19.884
Canada16.373Oman18.549
Table 6. Ten countries with the worst values of emissions per kUSD in 1990 and 2019. Own elaboration.
Table 6. Ten countries with the worst values of emissions per kUSD in 1990 and 2019. Own elaboration.
19902019
Countryt CO2/kUSDCountryt CO2/kUSD
Palau10.273Palau4.089
Bosnia & Herzegovina3.024New Caledonia1.666
Curaçao1.882Curaçao1.514
Uzbekistan1.757Syria1.198
Turkmenistan1.718Armenia1.129
China1.488Turkmenistan0.98
Estonia1.475Mongolia0.905
Mongolia1.208Trinidad & Tobago0.897
Belarus1.203Barbados0.853
Kazakhstan1.141Iran0.685
Table 7. Position of the countries with the highest values of emissions in the emissions per capita and per kUSD in 2019. Own elaboration.
Table 7. Position of the countries with the highest values of emissions in the emissions per capita and per kUSD in 2019. Own elaboration.
Countries with the Highest Values of CO2 Emissions in 2019Relative Position among Countries with Worst Values of
t CO2/Capita/Year 2019
(Position 1 Would Be the Country with the Highest Emissions per Capita)
Relative Position among Countries with Worst Values of
t CO2/kUSD/Year 2019
(Position 1 Would BE the Country with the Highest Emissions per GDP)
China4218
USA1660
EU27+UK53115
India12432
Russia2224
Japan3368
Germany37108
Iran3912
South Korea2145
Indonesia11083
Table 8. Kyoto Protocol emissions analysis. Own elaboration.
Table 8. Kyoto Protocol emissions analysis. Own elaboration.
Country% Emissions Base Year CommitmentBase Year Emissions2019 Emissions%2019-Base
Germany801018.221702.669.00
Australia99.5354.23433.379122.34
Austria8062.92772.363115.00
Belgium80115.996104.41590.02
Bulgary *8082.34643.31452.60
Belaruse *88109.0266.33560.85
Cyprus804.547.413163.24
Croatia *8025.15819.11976.00
Denmark8053.5931.11958.07
Slovakia *8060.54535.98559.44
Slovenia *8016.62415.36592.43
Spain80230.354259.31112.57
Estonia *8038.46818.50348.10
Finland8057.25443.41575.83
France and Monaco80386.367314.73681.46
Greece8079.19165.56882.80
Hungary *8072.07553.18373.79
Ireland8032.90436.548111.07
Iceland802.3573.925166.53
Italy80430.061331.56377.10
Kazakhstan95251.29277.365110.38
Latvia *8020.1328.37941.62
Lithuania *8035.30513.77239.01
Luxembourg8011.759.7482.89
Norway8037.32447.991128.58
Holland80161.195156.41597.03
Poland *80371.381317.65485.53
Portugal8043.69248.472110.94
United Kingdom and North Ireland80588.068364.90662.05
Czech Republic *80162.83578.63148.29
Romania *80187.29178.63141.98
Sweden8058.10444.74977.02
Switzerland and Liechtenstein84.244.95539.37187.58
Ukraine *80783.21196.40125.08
Total82 72
Table 9. CE2N Classification.
Table 9. CE2N Classification.
CountryCE2N
China579.77045
USA258.5589
EU27+UK166.67385
India131.4827
Russia93.05085
Japan59.8236
Germany38.7682
Iran36.95795
South Korea35.53405
Saudi Arabia34.76765
Canada32.705
Indonesia32.3173
South Africa28.9105
Mexico25.47545
Australia25.46055
Brazil24.7873
Palau23.20985
Turkey22.16045
United Kingdom19.4723
Kazakhstan18.09745
Table 10. Twenty top emitters countries and differences with the CE2N classification. Own elaboration.
Table 10. Twenty top emitters countries and differences with the CE2N classification. Own elaboration.
CountryMt/Year
China11535
USA5107.2
EU27+UK3303.9
India2597.3
Russia1792.0
Japan1153.7
Germany702.6
Iran701.98
South Korea651.87
Indonesia625.66
Saudi Arabia614.60
Canada584.84
South Africa494.86
Mexico485.00
Brazil478.14
Australia433.37
Turkey415.78
United Kingdom364.90
Italy, Vatican City and S.Marino331.56
Poland317.65
Table 11. Sagar results vs. results with CE2N. Own elaboration.
Table 11. Sagar results vs. results with CE2N. Own elaboration.
Year 1995
CountryFi (%)FiN (%)
USA2.184.79
Japan2.343.91
Norway0.050.07
France0.922.55
Canada0.260.44
Germany0.692.44
Netherlands0.200.31
Italy1.072.34
UK0.531.49
Australia0.170.24
Czech Republic0.040.09
Poland0.120.34
Russia0.331.35
Ukraine0.070.29
Singapore0.040.04
Qatar0.0030.001
South Korea0.990.64
Chile0.430.23
Saudi Arabia0.180.42
Malaysia0.650.32
South Africa0.240.33
Mexico1.522.83
Brazil5.368.39
Trinidad & Tobago0.0040.001
Ecuador0.280.13
Philippines2.781.43
Kazakhstan0.030.05
Indonesia5.787.25
China15.309.64
Vanuatu0.0080.000
Egypt1.011.50
Solomon Islands0.0190.000
Senegal0.320.03
India16.7121.26
Kenya0.890.39
Nepal0.890.15
Bangladesh4.543.11
Uganda0.720.10
Nigeria1.041.99
Burundi0.160.01
Mozambique0.320.02
Ethiopia1.040.43
Table 12. Vaillancourt results vs. CE2N results. Own elaboration.
Table 12. Vaillancourt results vs. CE2N results. Own elaboration.
RegionNorth Criteria (%)South Criteria (%)CE2N Criteria (%)
Africa2.78.54.8
Latin America2.64.25.4
Asia1.75.38.5
Australia-NZ0.50.71.9
Canada1.11.12.5
FSU6.57.38.3
China10.224.916.3
South Korea0.40.72.8
USA49.72313.3
Eastern Europe1.11.73.2
Western Europe16.89.48.3
India1.45.87.3
Japan2.11.94.9
Mexico11.83.6
Middle East2.13.78.9
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Portillo Juan, N.; Negro Valdecantos, V.; del Campo, J.M. A New Climate Change Analysis Parameter: A Global or a National Approach Dilemma. Energies 2022, 15, 1522. https://doi.org/10.3390/en15041522

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Portillo Juan N, Negro Valdecantos V, del Campo JM. A New Climate Change Analysis Parameter: A Global or a National Approach Dilemma. Energies. 2022; 15(4):1522. https://doi.org/10.3390/en15041522

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Portillo Juan, Nerea, Vicente Negro Valdecantos, and José María del Campo. 2022. "A New Climate Change Analysis Parameter: A Global or a National Approach Dilemma" Energies 15, no. 4: 1522. https://doi.org/10.3390/en15041522

APA Style

Portillo Juan, N., Negro Valdecantos, V., & del Campo, J. M. (2022). A New Climate Change Analysis Parameter: A Global or a National Approach Dilemma. Energies, 15(4), 1522. https://doi.org/10.3390/en15041522

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