Extended Exergy Analysis (EEA) of Italy, 2013–2017
Abstract
:1. Introduction
- (1)
- The introduction of a novel procedure for EEA based on the exploitation of the very disaggregated datasets currently available from national and private institutions in order to improve the accuracy of the model;
- (2)
- The analysis of Italian society over a 5 yea (2013–2017) window of observation in order to extract new useful insights and to critically assess the trends of exergy destruction and of the extended exergy of Italy vs. that of the GDP within the same time-window;
- (3)
- A comparison of the trends of the EE of Italy and of other sustainability indicators (HDI, ecological footprint, and biocapacity);
- (4)
- A discussion of the results and conclusions.
1.1. Exergy-Based Analysis: Thermoeconomics, Cumulative Exergy Content, Extended Exergy Analysis
- By denoting [W] as the total exergy influx into the system country, it must be considered that a portion of it is necessarily spent to ensure the survival and growth of the population, this portion is called “exergy of labor” and is computed as α where α < 1 is an econometric coefficient not specified by the theory, which must be derived from the exergy budget of the country under study [35];
- The monetary circulation M2 is converted into the so-called extended exergy of capital by means of another econometric factor β: . This second econometric parameter β is also external to the theory and must be extracted from monetary circulation data for the country;
- The system country is subdivided in 7 sectors:
- Domestic (DO): Power-consuming activities for survival and growth of the human population;
- Extractive (EX): Involves the processes of mining and quarrying;
- Conversion (CO): Includes energy conversion, heat and power plants, oil refineries, other refineries and base chemistry industries;
- Industrial (IN): Includes all of the manufacturing activities that generate added value to raw materials;
- Transportation (TR): Covers transportation services, both commercial and private;
- Tertiary (TE): Includes commercial, financial, and service sectors (government, schools, police, etc.);
- Agricultural (AG): Includes harvesting, forestry, fishing.
- The system exchanges flows of matter and energy with two additional sectors: the environment, from which raw materials are mined, and the other countries or societies collectively grouped into a generic sector called “abroad”.
1.2. The Human Development Index (HDI)
- Long and healthy life. This index is based on life expectancy, defined as “the number of years a newborn could expect to live if prevailing patterns of age-specific mortality rates at the time of birth were to stay the same throughout the child’s life”, considering 20 years and 85 years as limit values. The data are taken from the yearly UN World Population Prospects reports. Once the data for a specific country are available, the dimensional index is computed as:
- Knowledge. This index consists of two parameters: (1) average number of years spent on educational activities by adults over 25; (2) expected years of schooling for children of school age. The indicators are normalized by considering a minimum value of 0 and a maximum value of 15 for average school years and 18 for expected years of schooling. The knowledge index is computed from these two parameters by computing for each of them a dimensionless value according to Equation (2) and eventually an arithmetic average in order to obtain the value for the index related to knowledge, Ieducation. Data are taken from the UNESCO database and from statistical agencies.
- Decent standard of living. This index is based on income; it is measured by the logarithm of the pro capite GNI (gross national income) adjusted by the purchasing power parity (PPP). The minimum PPP value is considered 100$ and the maximum is 75,000$. The index is computed as:
1.3. Ecological Footprint and Biocapacity
2. Materials and Methods
- Every thermodynamic analysis of real processes is made under the (explicit or implicit) assumption of quasi-equilibrium transformations. In fact, only rather elementary processes can be approached using a non-equilibrium thermo process, and even then only under somewhat stringent additional assumptions. Thus, exergy analyses of current industrial processes are generally presented in the literature “as design points” and “from a quasi-equilibrium perspective” (often, this second statement is even omitted);
- To consider the evolution in time of a country (or of any other large complex system), a series of arbitrarily frequent energy balances must be considered. In the limit, if Δt- > 0, it is customary to say that we are performing a “transient simulation”. A better description would be “we have a series of infinitely close snapshots of a slightly more complex phenomenon”. This “snapshot” idea and practice is omnipresent; steam and gas turbines, heat exchangers, combustors, and chemical reactors are simulated “in steady state”, meaning that all of the snapshots show the system’s state as being “unvarying” in each considered Δt;
- In processes where the stationary state is not considered a good approximation (internal combustion engines for example, but also more fundamental phenomena such as turbulence), the snapshots are taken at time intervals that are sufficiently close to represent a “continuum” and sufficiently far apart to make changes discernible. From this time-averaged perspective, energy is conserved in each Δt interval. Changes in size or mass of the system are accounted for by including a proper accumulation term;
- Turning now to our “system country”, at each Δt not all of the difference is destroyed—a portion goes into Eaccumulated. However, when we talk about EE (extended exergy), the situation is quite different. EE is essentially a cost, and as with any cost balance, be it instantaneous, discrete, or with or without accumulation, it must as close to zero as allowed by the data disaggregation and accuracy. If we recall that the specific extended exergy ee measures the amount of primary exergy “embodied” in a product, for a given production chain, 1 kg of product j has an “exergy cost” of eej kJ. If nj units are produced in the time fraction Δt of the observation window (here, 1 year), EEj = eej*nj takes on a single value. The cumulative EEj over the entire observation window is simply the integral average of the EEj at each Δt. In fact, the term Eδ does not appear explicitly in the EE balance, however is included in the exergy budget that must be available prior to any EE analysis; since the exergy budget may well include accumulation, so does the EE.
2.1. Sector Classification and EE Fluxes
- EX extracts from the environment primary energy carriers and ores as raw materials, thanks to the energy and services supplied by TE, transportation provided by TR, financial investments from TE, and workers from DO. Its outputs are conveyed to CO for processing;
- CO converts the energy carriers from EX into heat and electrical energy with the generation of by-products (e.g., coke and refinery bottoms), thanks to contributions from DO, TR, and TE. Primary renewable energy inputs (solar, wind, geothermal, hydropotential) are “extracted” from the environment. The products are sent to TR, TE, and IN;
- IN generates consumer goods with added value. The products are dispatched to TE to be sold. Its inputs are EE fluxes from DO (workers), TR, and AG; energy from CO (distributed by TE); and raw materials from EX;
- AG receives exergy from DO, TE, TR, and the environment, generating semi-finished products to be sent to IN and in part to DO;
- DO supplies the labor force to all of the sectors, receiving goods and services from TE, TR, and partially from AG;
- TR receives refinery products from CO and labor from DO and supplies all of the sectors;
- TE provides goods and services to all of the sectors, receives the EE of CO and IN commodities, and sells them to DO and all of the other sectors (for example, electricity generated in CO is sold by utilities to all of the sectors, charged with their EE content due to the “production” of such an energy service). The exchanges with the other countries (“abroad”) represent import–export fluxes and are mediated in their entirety by TE.
2.2. Collecting Data
2.2.1. Solar Exergy
2.2.2. Hydraulic Exergy Potential
- From an orographic analysis of the Italian territory [41], the altitudes of the respective sources for the most important Italian rivers (Po, Tevere, Adige, Arno, Serchio) were derived;
- A mean temperature for the Italian seas was calculated as the average of the temperatures of the seas that bathe the Italian coasts;
- The equation developed by Valero et al. [47] was then used to compute the hydraulic-specific exergy of each river (neglecting the chemical exergy terms):
2.2.3. Geothermal Exergy
2.2.4. Other Material and Energy Flows
2.3. Computation of the Econometric Factors and Specific Exergy of Labor and Capital
- The α factor measures the portion of the input exergy necessary for the survival of the population. This is computed as the ratio between the experimentally derived exergy flow into the domestic sector and the country’s total exergy input. Once α is known, the specific extended exergy of labor is computed as where Nwh is the number of cumulative workhours per year;
- The second econometric factor, β, is also computed on the basis of experimentally derived data, namely the “money and quasi-money” aggregate M2 and the average salary Z; β is the ratio between M2 and the total average salary of a given year. From this perspective, β is a sort of amplification factor that produces wealth only from financial activities: the higher β is, the more the society is service-based. EEA introduces a systematic correction to this definition to take into account the so-called financial capital (the amount in excess of the global salaries in the country). The extended exergy embodied in one monetary unit is for a given year is computed as .
3. Results and Discussion
- The first econometric coefficient α is fairly constant over the time window of observation: it is equal to 4 × 10−4 and indicates that in spite of its high living standards, Italy is an “exergy sober” Country (values of α for different Countries for year 2005 are reported in [38]);
- The second econometric coefficient also remains fairly constant between 2013 and 2017: its values oscillate around 5.2. This indicates that Italy is a Country dominated by financial capital (Kf/Z = β − 1);
- The extended exergy of labor is a measure of how many joules i1 workhour is equivalent to—a higher eeL pertains to more energy-intensive societies. The value for Italy did not change much from 2013 to 2017, being around 70 MJ/h;
- The extended exergy of capital is a measure of how many joules it takes to make up one monetary unit (€). A higher eeK pertains to more affluent societies. The value for Italy did not change much from 2013 to 2017, being around 65 MJ/€;
- The Eδ does not correlate with the GDP (Figure 12); considering the plots expressed as percentages of values for 2013, the GDP curve (Figure 13) was convex and growing, while the Eδ curve was fairly constant with variations that are below 5%, except for 2017, in which there was lower destruction (15% less compared to the value for 2013); this is an unexpected result worthy of further investigation;
- The extended exergy (Figure 14), which is the “primary cost” of Italian society, is fairly constant, with an average value of around kJ; the variations are with a range of ±10% with respect to the value for 2013. It is helpful to compare this trend with that from the GDP. Historically, we associate development and wellness with a growth of GDP, so considering Figure 14 one could be led to consider that Italian society is growing in “the right way”; the problem is that according to our analysis, the extended exergy of the country reached a plateau (Figure 14) with a maximum deviation w.r.t. the year 2013 of about 9% in 2014.This means that the “cost” of the economic and social growth remained constant throughout the years, highlighting the absence of progress with more rational exploitation of the available resources. In fact, this result suggests that the sustainability of the Italian society did not improve throughout the window of observation.
- The GDP grew exponentially from 2013 in the time frame considered, contrary to the trends for the HDI (Figure 15) and Italian population (Figure 16), whose variations compared to 2013 are hardly noticeable. This implies an increase in “wealth” but not in “wellness” (higher GDP pro capite but about the same HDI);
- It is worth noting that in spite of an increase in the pro capite domestic product and “wellness parameters” for HDI, the trends for EF (Figure 17) and BC (Figure 18) show that the EF is around 261 Pha, except for a lower value in 2014 (a trend well-correlated with EE), while there is a smooth decrease of BC, indicating an increase in the “ecological debt” of Italy;
- The trend for EE is similar to that of EF until 2015; from 2015 to 2017, the EF remains pretty constant, while the EE decreases in 2016 and increases in 2017. This could suggest that the “cost” of Italian wellness was obtained at the expense of the non-renewable sources, which are not considered in the EF accounting. This calls for a more detailed analysis of the reasons for the increase of EE. This might well be due to less sustainable development that is not evidenced by other sustainability indicators.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
BC | Biocapacity |
CExC | Cumulative exergy content |
Cp | Specific heat, constant pressure |
DNI | Direct normal irradiance |
Exergy rate | |
EF | Ecological factor |
EEA | Extended exergy analysis |
Extended exergy of environment remediation | |
Extended exergy of labor | |
Extended exergy of capital | |
Exergy destruction rate | |
Fc | Carnot factor |
GDP | Gross domestic product |
H | Specific enthalpy |
HDI | Human development index |
Ib | Solar constant |
M2 | Money + quasi-money circulation |
PV | Photovoltaics |
S | Specific entropy |
T | Temperature |
TE | Thermoeconomics |
Greek symbols | |
α | First econometric factor |
β | Second econometric factor |
ηII | Exergy efficiency |
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River | Q [m3/s] avg | T Avg [°C] (2012–2018) | et [kJ/kg] | ez [kJ/kg] | ew [kJ/kg]] | Ew [kJ·1015 Per Year] |
---|---|---|---|---|---|---|
Po | 1540 | 16.50 | 17.62 | 19.62 | 37.24 | 1.81 |
Tevere | 240 | 15.20 | 25.43 | 13.80 | 39.23 | 0.30 |
Adige | 235 | 12.40 | 42.37 | 15.21 | 57.58 | 0.43 |
Arno | 110 | 16.00 | 20.64 | 16.23 | 36.86 | 0.13 |
Serchio | 46 | 13.50 | 35.72 | 14.72 | 50.44 | 0.07 |
2017 | EIN (kJ·1012) | EOUT | Eδ | EEL | EEK | EE |
AG | 2905.90 | 1732.44 | 1173.46 | 400.45 | 18,640.86 | 21,947.21 |
EX | 69.27 | 28.01 | 41.26 | 422.64 | 2.17 | 494.09 |
IN | 4211.55 | 968.28 | 3243.27 | 131.01 | 6148.50 | 10,491.06 |
CO | 8778.51 | 4724.16 | 4054.35 | 68.21 | 570,731.75 | 509,624.53 |
TE | 12,463.94 | 10,697.22 | 1766.72 | 10.12 | 574,185.86 | 586,659.92 |
TR | 1512.34 | 388.39 | 1123.96 | 3.47 | 160,136.96 | 161,652.77 |
DO | 1649.77 | 1035.90 | 613.87 | −1035.90 | 2968.49 | 3582.36 |
TOT | 28,685.38 | 17,841.95 | 10,843.43 | 0.00 | 1,332,814.59 | 1,362,535.86 |
2016 | EIN | EOUT | Eδ | EEL | EEK | EE |
AG | 2887.09 | 1779.23 | 1107.86 | 384.78 | 17,040.76 | 20,312.63 |
EX | 73.33 | 32.03 | 41.29 | 406.11 | 1.97 | 481.41 |
IN | 4947.39 | 939.42 | 4007.96 | 125.88 | 5499.02 | 10,572.29 |
CO | 8415.80 | 4555.07 | 3860.73 | 65.54 | 499,290.95 | 507,772.29 |
TE | 12,418.92 | 10,608.65 | 1810.27 | 9.72 | 562,765.64 | 575,194.29 |
TR | 1460.26 | 401.69 | 1058.57 | 3.33 | 142,758.55 | 144,222.13 |
DO | 1585.22 | 995.37 | 589.85 | −995.37 | 2739.64 | 3329.49 |
TOT | 31,788.01 | 19,311.47 | 12,476.54 | 0.00 | 1,230,096.53 | 1,261,884.53 |
2015 | EIN | EOUT | Eδ | EEL | EEK | EE |
AG | 2940.42 | 1790.30 | 1150.12 | 458.25 | 19,907.85 | 23,306.51 |
EX | 63.19 | 13.38 | 49.81 | 483.64 | 2.32 | 549.15 |
IN | 4760.90 | 879.05 | 3881.85 | 149.92 | 5543.84 | 10,454.66 |
CO | 8250.33 | 4693.21 | 3557.12 | 78.05 | 563,169.92 | 57,1498.30 |
TE | 12,408.44 | 10,591.63 | 1816.80 | 11.58 | 634,644.77 | 647,064.79 |
TR | 1484.77 | 426.98 | 1057.79 | 3.97 | 156,483.97 | 157,972.72 |
DO | 1886.59 | 1185.41 | 701.18 | −1185.41 | 2560.77 | 3261.95 |
TOT | 31,794.63 | 19,579.96 | 12,214.67 | 0.00 | 1,382,313.43 | 1,414,108.07 |
2014 | EIN | EOUT | Eδ | EEL | EEK | EE |
AG | 2960.82 | 2047.40 | 913.42 | 368.54 | 18263.90 | 21593.26 |
EX | 61.95 | 20.39 | 41.56 | 388.96 | 2.12 | 453.04 |
IN | 5168.07 | 862.21 | 4305.86 | 120.57 | 3606.89 | 8895.54 |
CO | 8268.03 | 4493.09 | 3774.94 | 62.77 | 491,679.98 | 500,010.78 |
TE | 12,017.59 | 10,678.87 | 133.72 | 9.31 | 498,016.78 | 510,043.68 |
TR | 1512.74 | 413.24 | 1099.50 | 3.19 | 143,650.22 | 145,166.15 |
DO | 1515.47 | 953.35 | 562.12 | −953.35 | 2829.46 | 3391.58 |
TOT | 31,504.67 | 19,468.55 | 12,036.13 | 0.00 | 115,8049.35 | 1,189,554.02 |
2013 | EIN | EOUT | Eδ | EEL | EEK | EE |
AG | 2892.36 | 1991.91 | 900.44 | 400,758.53 | 18,416.43 | 21,709.55 |
EX | 65.80 | 22.76 | 43.04 | 422964.83 | 2.30 | 491.07 |
IN | 5382.00 | 949.04 | 4432.96 | 131,110.36 | 6703.98 | 12,217.09 |
CO | 8317.61 | 4618.96 | 3698.66 | 68,260.19 | 529,971.34 | 538,357.22 |
TE | 12,365.04 | 10,607.83 | 1757.21 | 10,127.29 | 597,372.91 | 609,748.08 |
TR | 1456.88 | 400.68 | 1056.20 | 3469.77 | 144,359.58 | 145,819.93 |
DO | 1651.03 | 1036.69 | 614.34 | −1,036,690.96 | 2960.19 | 3574.53 |
TOT | 32,130.72 | 19,627.87 | 12,502.85 | 0.00 | 1,299,786.73 | 1,331,917.46 |
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Biondi, A.; Sciubba, E. Extended Exergy Analysis (EEA) of Italy, 2013–2017. Energies 2021, 14, 2767. https://doi.org/10.3390/en14102767
Biondi A, Sciubba E. Extended Exergy Analysis (EEA) of Italy, 2013–2017. Energies. 2021; 14(10):2767. https://doi.org/10.3390/en14102767
Chicago/Turabian StyleBiondi, Alfonso, and Enrico Sciubba. 2021. "Extended Exergy Analysis (EEA) of Italy, 2013–2017" Energies 14, no. 10: 2767. https://doi.org/10.3390/en14102767
APA StyleBiondi, A., & Sciubba, E. (2021). Extended Exergy Analysis (EEA) of Italy, 2013–2017. Energies, 14(10), 2767. https://doi.org/10.3390/en14102767