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Article

The Effects of Local Food on Carbon Emissions: The Case of the Republic of Korea

1
Department of Food and Resource Economics, Dankook University, Cheonan 31116, Republic of Korea
2
Department of Food and Resource Economics, Korea University, Seoul 02841, Republic of Korea
*
Author to whom correspondence should be addressed.
Sustainability 2024, 16(9), 3614; https://doi.org/10.3390/su16093614
Submission received: 5 March 2024 / Revised: 18 April 2024 / Accepted: 24 April 2024 / Published: 25 April 2024

Abstract

:
This study addresses the urgent environmental issue of climate change, focusing specifically on the role of local food, which is produced and consumed locally, in helping to reduce carbon emissions by eliminating the need for long-distance transportation. Through quantitative analysis, this study elucidates the potential benefits of environmental impact achieved through the consumption of local food, i.e., the significant reduction in carbon emissions. Specifically, the consumption of local food has been found to yield an annual decrease of 2,421,296 t C O 2 emissions, representing 2.5% of the Republic of Korea’s total greenhouse gas emissions from the transportation sector. This reduction further translates into an estimated economic value of USD 54.23 million (KRW 70.5 billion). These findings underscore the potential of local food consumption as a tangible strategy to overcome environmental problems. Moreover, the academic contribution of this study lies in its comprehensive analysis of the economic and empirical impacts of local food consumption on the environment. Moving forward, we propose policies such as supporting local food distribution networks, providing public education on local food, fostering local food industries, and implementing incentives to revitalize local food consumption.

1. Introduction

Climate change and global warming are currently the foremost international environmental issues. Their impacts manifest in diverse ways, including glacier reduction, desertification, rising sea levels, and ecological transformations worldwide. Notably, the frequency and intensity of extreme weather events and natural disasters have been on the rise in recent times.
The primary cause of these phenomena is greenhouse gas emissions. When gas particles enter the Earth’s atmosphere, some trap heat, intensifying the greenhouse effect and causing a rise in global temperatures. This effect, wherein the planet’s surface and troposphere warm due to gas particles, accelerates global warming and prompts climate change.
The Kyoto Protocol, an international treaty on climate change, regulates six major greenhouse gases. Their respective contributions are as follows: carbon dioxide ( C O 2 ) accounts for 88.6%, methane ( C H 4 ) for 4.8%, nitrous oxide ( N 2 O ) for 2.8%, and other gases such as hydrofluorocarbons ( H F C s ) , perfluorocarbons ( P F C s ) , and sulfur hexafluoride ( S F 6 ) contribute 3.8%.
Globalization and large-scale industrialization in the food industry have led to more food trade among nations and regions. Consequently, food products travel from their origins to reach their end customers across the globe. The problem lies in the increased energy consumption due to the transportation distance of food distribution. Vehicles such as airplanes, ships, trains, and trucks mainly rely on fossil fuels such as coal, oil, and gas. Consequently, carbon dioxide and other greenhouse gas emissions occur more frequently as a result of fuel consumption [1].
Food miles is a widely used concept in the study of environmental aspect, emphasizing the need to reduce greenhouse gas emissions, a major contributor to environmental issues. Food miles refers to the distance that food products (i.e., agricultural products, livestock, seafood, etc.) travel from their origin to the final consumers. Food miles is measured by multiplying the quantity of food transported (in tons) by the distance travelled (in kilometers). A higher value of food miles indicates increased environmental pollution resulting from pollutants such as carbon dioxide by the long-distance transportation of food. As a result, food miles is utilized as a global environmental indicator in countries and regions, such as the United States, the European Union, Australia, Canada, and others, as they allow for the tracking and calculation of the entire food distribution process [2].
Local food consumption is a prominent social effort to reduce food miles. Local food refers to food that is consumed within a region without long-distance transportation or multi-stage distribution processes [3,4]. Since local food limits the distance a product must be transported, the greenhouse gas emissions associated with transportation are relatively low or even non-existent. Therefore, consuming local food contributes directly to reducing greenhouse gas emissions and protecting the environment.
There have been several studies on food miles in Korea, such as [5,6,7]. Ref. [5] calculated the food miles and carbon dioxide emissions of imported food products in Korea, Japan, the United Kingdom, and France. Ref. [6] focused on beef and wine, determining and comparing their food miles and carbon dioxide emissions, with the authors asserting that carbon dioxide emissions’ problems can be solved through local food consumption. Ref. [7] analyzed methods for measuring the food miles and carbon dioxide emissions of agricultural products.
However, despite the efforts of previous scholars, few studies analyzing the changes in food miles caused by using local food exist. Specifically, calculating and comparing the food miles and carbon dioxide emissions of local food is an important research topic in the context of sustainable environmental practices. Therefore, this study aims to calculate the food miles and carbon dioxide emissions associated with local food consumption and quantitatively evaluate their environmental impact.

2. Methodological Framework

2.1. Framework

In previous studies, local food is defined as localization, simplification of distribution process, and linkage between production and consumption, etc. and commonly mentioned as follows: regional concept, main agent, distribution process, etc. For this study, local food is defined as ‘agricultural products that are produced, distributed, and consumed within a certain geographic area without multi-stage distribution processes’. It is specifically limited to agricultural products sold in local food direct markets. Moreover, local food direct markets refer to the representative local food policy in Korea. Lastly, the environmental effects of local food consumption are assessed by comparing the period before and after consumption at Korean local food direct markets.
Before considering the local food business, the classification of where food comes from begins with agricultural products consumed in a specific region and are classified into domestic and imported commodities. Next, after the consumption of local food, agricultural products can be categorized as local food, domestic but non-local food, and imported but non-local food. In other words, a certain proportion of the consumption of domestically produced and imported agricultural products is replaced by local food. Since the exact extent to which local food replaces domestic and imported commodities cannot be known, the proportion of domestically produced and imported agricultural products before the local food business is assumed as the replacement ratios, respectively. The formula developed by Annika Carlsson-Kanyama in 1997 considers both the weight of the food transported and the distance from the place of origin to the place of consumption. The calculation formula for food miles is ‘consumption quantity ( t ) × distance ( k m )’, and as the consumption of local food increases, the food miles decreases (Figure 1).
The equation for calculating the food miles of domestic agricultural products is as follows: ‘Consumption volume of domestic agricultural products ( t ) × distance ( k m )’. In Korea, agricultural products are mainly moved from the place of origin to the wholesale market and then to the place of consumption. Therefore, the distribution path of domestic agricultural products is represented as place of origin–wholesale market–place of consumption (Figure 2). The consumption volume in the evaluation region is calculated by multiplying the total domestic supply of the target agricultural products and the proportion of the evaluation region population to the country’s total population. The distance is calculated by dividing the distance from the origin to the wholesale market and the distance from the wholesale market to the consumption area. In this case, the major origin and the major wholesale market are based on the origin (production area) and wholesale market that account for up to 80% of the cumulative ratio of the Concentration Ratio (CR3) (Concentration Ratio (CR) refers to the proportion of transaction value held by a few large companies within the total transaction value of a specific industry. Generally, ‘CR3’ indicates an oligopoly when the combined market share of the top three companies is 75% or more. In this study, the major origin and the major wholesale market are determined based on origins and wholesale markets that reach 80% of the Concentration Ratio, considering them as the major production areas and hubs).
The equation for calculating the food miles of imported agricultural products is as follows: ‘Consumption volume of imported agricultural products ( t ) × distance ( k m )’. Imported agricultural products are moved from the exporting country (export port) to the domestic port and then to the wholesale market and then to the place of consumption. Therefore, the distribution path of imported agricultural products is represented as exporting country–domestic port–wholesale market–place of consumption (Figure 3). The consumption volume is calculated by multiplying the total domestic supply of imported agricultural products and the proportion of the evaluation region population to the country’s total population. The distance is divided into three steps: the distance from the export country to the domestic port, the distance from the port to the wholesale market, and the distance from the wholesale market to the consumption area. In this case, the export country and the domestic port are based on the CR3 criteria, considering the cumulative weight of up to 80% of exporting countries and domestic ports, respectively. Additionally, the wholesale market encompasses all markets where imported agricultural products are imported.

2.2. Rate of Change in Carbon Emission: CER

Equation (1) is used to measure the rate of change in carbon emissions of domestically produced and imported foods before and after the local food business in region r . A higher rate of change in carbon emissions in the evaluation region is considered a decrease in food miles.
C E R r = D C O r , b D C O r , a D C O r , b + I C O r , b I C O r , a I C O r , b  
  • C E R r : Rate of carbon emissions change in region r;
  • D C O r , b : Carbon emissions from distribution of domestic agricultural products before local food business in region r (t C O 2 );
  • D C O r , a : Carbon emissions from distribution of domestic agricultural products after local food business in region r (t C O 2 );
  • I C O r , b : Carbon emissions from distribution of imported agricultural products before local food business in region r (t C O 2 );
  • I C O r , a : Carbon emissions from distribution of imported agricultural products after local food business in region r (t C O 2 ).
D C O r , b is composed of the sum of carbon emissions ( D C O k , p , l r , b ) from the origin p to the wholesale market l for commodity k before the local food business and the carbon emissions ( D C O k , l , r r , b ) from the wholesale market l to region r (Equation (2)).
D C O r , b = k ( D C O k , p , l r , b + D C O k , l , r r , b ) = k ( D F M k , p , l r , b + D F M k , l , r r , b ) × E t r
  • D C O r , b : Carbon emissions from distribution of domestic agricultural products before local food business in region r (t C O 2 );
  • D C O k , p , l r , b : Carbon emissions from the origin p to the wholesale market l for the domestically produced commodity k before the local food business (t C O 2 );
  • D C O k , l , r r , b : Carbon emissions from the wholesale market l to the region r for the domestically produced commodity k before the local food business (t C O 2 );
  • D F M k , p , l r , b : Food miles from the origin p to the wholesale market l for the domestically produced commodity k before the local food business (t·km);
  • D F M k , l , r r , b : Food miles from the wholesale market l to the region r for the domestically produced commodity k before local food business (t·km);
  • E t r : C O 2 emission factor for trucks (t C O 2 /t·km).
The food miles of domestically produced commodity k before the local food business can be calculated based on the distance from the origin p to the region r and the supply (Equation (3)).
k D F M k , p , l r , b + D F M k , l , r r , b = k p l D Q k , p , l × d k , p , l × 1 β k , p + l D Q k , l , r × d k , l , r × 1 β k , l × D Q k r D Q k w h e r e ,   D Q k r = D Q k N × N r
  • D Q k , p , l : Supply of the domestically produced commodity k from the origin p to the wholesale market l (ton);
  • d k , p , l : Distance from the origin p to the wholesale market l for the domestically produced commodity k (km);
  • β k , p : Proportion of wholesale market imports from major origins in the total supply of the domestically produced commodity k;
  • D Q k , l , r : Supply of the domestically produced commodity k from the wholesale market l to the region r (ton);
  • d k , l , r : Distance from the wholesale market l to the region r for the domestically produced commodity k (km);
  • β k , l : Proportion of major wholesale market imports in the total supply of the domestically produced commodity k;
  • D Q k r : Supply of the domestically produced commodity k from the region r (ton);
  • D Q k : Total supply of the domestically produced commodity k (ton);
  • N : Total population of the Republic of Korea; N r : Total population of region r.
D C O r , a is composed of the sum of carbon emissions ( D C O k , p , l r , a ) from the origin p to the wholesale market l for commodity k after the local food business and the carbon emissions ( D C O k , l , r r , a ) from the wholesale market l to region r (Equation (4)).
D C O r , a = k ( D C O k , p , l r , a + D C O k , l , r r , a ) = k ( D F M k , p , l r , a + D F M k , l , r r , a ) × E t r
  • D C O r , a : Carbon emissions from distribution of domestic agricultural products after the local food business in region r (t C O 2 );
  • D C O k , p , l r , a : Carbon emissions from the origin p to the wholesale market l for the domestically produced commodity k after the local food business (t C O 2 );
  • D C O k , l , r r , a : Carbon emissions from the wholesale market l to region r for the domestically produced commodity k after the local food business (t C O 2 );
  • D F M k , p , l r , a : Food miles from the origin p to the wholesale market l for the domestically produced commodity k after the local food business (t·km);
  • D F M k , l , r r , a : Food miles from the wholesale market l to region r for the domestically produced commodity k after the local food business (t·km);
  • E t r : C O 2 emission factor for trucks ( t C O 2 /t·km).
The food miles of domestically produced commodity k after the local food business can be calculated based on the distance from the origin p to the region r and the supply (Equation (5)).
k   ( D F M k , p , l r , a + D F M k , l , r r , a ) = k p l D Q k , p , l × d k , p , l × 1 β k , p + l ( D Q k , l , r × d k , l , r ) × 1 β k , l × ( D Q k r Q L k r × α k ) D Q k w h e r e ,   Q k r , d m = Q k d m N d m × N r
  • D Q k , p , l : Supply of the domestically produced commodity k from the origin p to the wholesale market l (ton);
  • d k , p , l : Distance from the origin p to the wholesale market l for the domestically produced commodity k (km);
  • β k , p : Proportion of wholesale market imports from major origins in the total supply of the domestically produced commodity k;
  • D Q k , l , r : Supply of the domestically produced commodity k from the wholesale market l to the region r (ton);
  • d k , l , r : Distance from the wholesale market l to the region r for the domestically produced commodity k (km);
  • β k , l : Proportion of major wholesale market imports in the total supply of domestically produced commodity k;
  • D Q k r : Supply of the domestically produced commodity k from the region r (ton);
  • D Q k : Total supply of the domestically produced commodity k (ton);
  • Q L k r : The local food sales volume of the commodity k in the region r (ton);
  • α k : Domestically produced commodities’ market share of commodity k;
  • N : Total population of the Republic of Korea; N r : Total population of region r.
I C O r , b is composed of carbon emissions ( I C O k , e x , h r , b ) from the export country e x to domestic port h for commodity k , carbon emissions ( I C O k , h , l r , b ) from the port h to the wholesale market l , and the carbon emissions ( I C O k , l , r r , b ) from the wholesale market l to region r (Equation (6)).
I C O r , b = k I C O k , e x , h r , b + I C O k , h , l r , b + I C O k , l , r r , b = k ( I F M k , e x , h r , b × E s h ) + k ( I F M k , h , l r , b + I F M k , l , r r , b ) × E t r
  • I C O r , b : Carbon emissions from imported products before the local food business in region r (t C O 2 );
  • I C O k , e x , h r , b : Carbon emissions from the export country ex to domestic port h for the imported commodity k before the local food business (t C O 2 );
  • I C O k , h , l r , b : Carbon emissions from domestic port h to the wholesale market l for the imported commodity k before the local food business (t C O 2 );
  • I C O k , l , r r , b : Carbon emissions from the wholesale market l to the region r for the imported commodity k before the local food business (t C O 2 );
  • I F M k , e x , h r , b : Food miles from the export country ex to domestic port h for the imported commodity k before the local food business (t·km);
  • I F M k , h , l r , b : Food miles from domestic port h to the wholesale market l for the imported commodity k before the local food business (t·km);
  • I F M k , l , r r , b : Food miles from the wholesale market l to the region r for the imported commodity k before the local food business (t·km);
  • E t r : C O 2 emission factor for trucks (t C O 2 /t·km); E s h : C O 2 emission factor for ships (t C O 2 /t·km).
The food miles of imported commodity k before the local food business can be calculated based on the distance from the export country e x to the region r and the supply (Equation (7)).
k ( I F M k , e x , h r , b + I F M k , h , l r , b + I F M k , l , r r , b ) = k e x h I Q k , e x , h × d k , e x , h × 1 γ k , e x + h l I Q k , h , l × d k , h , l × 1 γ k , h + l ( I Q k , l , r × d k , l , r ) × 1 γ k , l × I Q k r I Q k w h e r e ,   Q k r = I Q k N × N r
  • I Q k , e x , h : Import volume of the imported commodity k from the export country ex to domestic port h (ton);
  • d k , e x , h : Distance from the export country ex to domestic port h for the imported commodity k (km);
  • γ k , e x : Proportion of import volume from major export countries in the total import volume of the imported commodity k;
  • I Q k , h , l : Import volume of the imported commodity k from domestic port h to the wholesale market l (ton);
  • d k , h , l : Distance from domestic port h to the wholesale market l for the imported commodity k (km);
  • γ k , h : Proportion of import volume from major domestic ports in the total import volume of the imported commodity k;
  • I Q k , l , r : Import volume of the imported commodity k from the wholesale market l to the region r (ton);
  • d k , l , r : Distance from the wholesale market l to the region r for the imported commodity k (km)
  • γ k , l : Proportion of major wholesale market imports in the total volume of the imported commodity k;
  • I Q k r : Import volume of the imported commodity k from the region r (ton);
  • I Q k : Total import volume of the imported commodity k (ton); N : Total population of the Republic of Korea; N r : Total population of region r.
I C O r , a is composed of carbon emissions ( I C O k , e x , h r , a ) from the export country e x to domestic port h for commodity k , carbon emissions ( I C O k , h ,   l r , a ) from the port h to the wholesale market l , and the carbon emissions ( I C O k , l , r r , a ) from the wholesale market l to the region r (Equation (8)).
I C O r , a = k   ( I C O k , e x , h r , a + I C O k , h , l r , a + I C O k , l , r r , a ) = k ( I F M k , e x , h r , a × E s h ) + k ( I F M k , h , l r , a + I F M k , l , r r , a ) × E t r
  • I C O r , a : Carbon emissions from imported products after the local food business in region r (t C O 2 );
  • I C O k , e x , h r , a : Carbon emissions from the export country ex to domestic port h for the imported commodity k after the local food business (t C O 2 );
  • I C O k , h , l r , a : Carbon emissions from domestic port h to the wholesale market l for the imported commodity k after the local food business (t C O 2 );
  • I C O k , l , r r , a : Carbon emissions from the wholesale market l to the region r for the imported commodity k after the local food business (t C O 2 );
  • I F M k , e x , h r , a : Food miles from the export country ex to domestic port h for the imported commodity k after the local food business (t·km);
  • I F M k , h , l r , a : Food miles from domestic port h to the wholesale market l for the imported commodity k after the local food business (t·km);
  • I F M k , l , r r , a : Food miles from the wholesale market l to the region r for the imported commodity k after the local food business (t·km);
  • E t r : C O 2 emission factor for trucks (t C O 2 /t·km); E s h : C O 2 emission factor for ships (t C O 2 /t·km).
The food miles of imported commodity k after the local food business can be calculated based on the distance from the export country e x to the region r and the supply (Equation (9)).
k   ( I F M k , e x , h r , a + I F M k , h , l r , a + I F M k , l , r r , a ) = k e x h I Q k , e x , h × d k , e x , h × 1 γ k , e x + h l I Q k , h , l × d k , h , l × 1 γ k , h + l ( I Q k , l , r × d k , l , r ) × 1 γ k , l × ( I Q k r Q L k r × 1 α k ) I Q k w h e r e ,   Q k r = I Q k N × N r
  • I Q k , e x , h : Import volume of the imported commodity k from the export country ex to domestic port h (ton);
  • d k , e x , h : Distance from the export country ex to domestic port h for the imported commodity k (km);
  • γ k , e x : Proportion of import volume from major export countries in the total import volume of the imported commodity k;
  • I Q k , h , l : Import volume of the imported commodity k from domestic port h to the wholesale market l (ton);
  • d k , h , l : Distance from domestic port h to the wholesale market l for the imported commodity k (km);
  • γ k , h : Proportion of import volume from major domestic ports in the total import volume of the imported commodity k;
  • I Q k , l , r : Import volume of the imported commodity k from the wholesale market l to the region r (ton);
  • d k , l , r : Distance from the wholesale market l to the region r for the imported commodity k (km);
  • γ k , l : Proportion of major wholesale market imports in the total volume of the imported commodity k;
  • I Q k r : Import volume of the imported commodity k from the region r (ton);
  • I Q k : Total import volume of the imported commodity k (ton);
  • Q L k r : The local food sales volume of the commodity k in the region r (ton);
  • 1 α k : Imported commodities’ market share of commodity k; N : Total population of South; N r : Total population of region r.

3. Results

3.1. Targets and Materials

This study analyzes the top 16 agricultural products (this study analyzed 16 agricultural products, excluding rice. In the Republic of Korea, rice is produced in every region. Thus, there is no primary origin for rice. Instead, rice is processed collectively at Rice Processing Complexes (RPCs) located and consumed locally, which is similar to the concept of local food) in the Republic of Korea across five regions (the Republic of Korea is divided into 82 country-level regions. Of these, we analyzed five regions for which we had data available) based on production volume (Table 1). Furthermore, the research period was focused on the year 2020.
Local food is defined as agricultural products purchased from locally direct markets within the residential area, whereas non-local food is defined as agricultural products purchased from other regions within the country or imported agricultural products.
The first step in the analysis is to calculate food miles, which is obtained by multiplying the distance from the place of production (origin) to the place of consumption by the quantity of food. In the second step, carbon emissions were calculated by multiplying the food miles by the carbon emission factor based on the mode of transportation. In the final step of the analysis, the carbon emissions calculated before and after the local food business were compared to evaluate the reduction in carbon emissions resulting from local food consumption. It is practically impossible to determine the exact locations of production and consumption sites along with distribution routes when calculating food miles. Therefore, based on the disclosed data, Table 2 was created to show the consistent criteria that were applied for calculating food miles in this study.
Table 3 represents the decrease in food miles caused by the proportion of domestically sourced products in supply ( α k ) and import quantities in supply ( 1 α k ) of specific agricultural products that were substituted by local food.
As shown in Table 4, the major origin is determined as the origin where the cumulative proportion of the shipping volume reaches 80%.
Table 5 represents that the major wholesale market was determined in the same manner as the major origin, in which the cumulative proportion of the wholesale market imports reaches 80%.
The data for calculating imported products’ food miles are provided in Table 6, Table 7 and Table 8. The major export countries were selected based on their cumulative share of domestic import volume up to 80%.
The major domestic port is determined as the port where the cumulative proportion of import values reaches 80%.
All wholesale markets that handle imported agricultural products were included in this study.

3.2. Evaluation Results

The results of comparing the local food supply before and after its consumption are as follows. Agricultural products previously classified solely as domestic (non-local) and imported were subsequently categorized as domestic, imported, and local food following the consumption of local food. The weight of local food was determined by calculating the proportion of domestic and imported agricultural products in relation to the total agricultural product supply, with the sum of these values presented in Table 9.
Table 10, found below, compares the changes in food miles before and after local food consumption. Region A experienced a decrease of approximately 1.92 million t·km, followed by a reduction of 130,000 t·km in Region B, 97,000 t·km in Region C, 880,000 t·km in Region D, and 570,000 t·km in Region E (Table 10).
Table 11 illustrates the levels of greenhouse gas (GHG) emissions before and after local food consumption, alongside the corresponding economic values (environmental benefits) calculated through the value of carbon. In Region A, there was a reduction of approximately 70,000 t C O 2 emissions following the consumption of local food. Similarly, in Region B, the decrease amounted to 5000 t C O 2 ; while in Region C, it was 40,000 t C O 2 ; in Region D, it was 20,000 t C O 2 ; and in Region E, it was also 20,000 t C O 2 . The extent of emission reduction and the number of GHG emissions varied across regions, correlating with the total amount of local food consumed.
We utilized a weighted average value of USD 22.60 (KRW 29,386) (in this study, all monetary values in KRW were converted into USD using the average exchange rate of 1300 KRW/1 USD) per ton of carbon credits for the carbon valuation. The environmental benefits associated with consuming local food are as follows: approximately USD 1,494,323 (KRW 1943 million) for Region A; USD 122,381 (KRW 159 million) for Region B; USD 928,914 (KRW 1208 million) for Region C; USD 380,978 (KRW 495 million) for Region D; and USD 410,771 (KRW 534 million) for Region E. These findings demonstrate that the greater the consumption of local food, the more pronounced the environmental benefits are.
While this study selected five specific regions in Korea, it is believed that the environmental benefits to the nation will be even greater when scaled up to include the entire country.
The results of the carbon emission evaluations are found in Table 12 and are as follows. The rate of change in carbon emissions was the highest in region A, followed by region C, region D, region E, and region B.
A correlation analysis was conducted to determine whether significant relationships between changes in carbon emission and the characteristics of the region exist. Table 13, presented below, shows that positive correlations between carbon emission changes and the total agricultural area, agricultural area of small farmers, total number of farmers, number of elderly farmers, number of female farmers, and number of full-time workers exist at a significant level. Moreover, a negative correlation was found between the region’s total population and carbon emission changes.
Based on the above findings, the total agricultural area and the area of small farmers can be proportional to shipments to their local food direct markets, which means that carbon emissions from the consumption of agricultural products in the region can be reduced. In addition, regions with larger populations tend to have more wholesale and retail businesses, such as large discount stores and corporate supermarkets (e.g., mega supermarket chains), to account for urbanization and urban sprawl. As a result, the number of and use of local food direct markets in urban areas is relatively smaller than in rural areas, so the level of change in carbon emissions is judged to be low.

4. Discussion

Carbon emissions represent a significant contributor to environmental pollution, including climate change, with food transportation being a notable source. As environmental concerns like climate change and global warming are becoming more serious, this study aims to assess the role of local food as a way to reduce carbon emissions. We analyze food miles and carbon emission measurement methodologies for agricultural products, applying them to Korean agricultural goods to compare the environmental impacts of agricultural transportation.
In this study, several key terms were defined. First, local food was defined as agricultural products produced, distributed, and consumed within a specific geographical area, bypassing multi-step distribution processes. Second, the ‘Local food direct market’ was a representative local food business in Korea. Next, a series of quantitative tests were conducted to evaluate the environmental impact of local food by comparing it before and after the consumption at the ‘local food direct market’. Moreover, the assessment encompassed the top 16 agricultural products’ production in Korea. The results of these tests indicated that local food consumption led to an average reduction of 893,245 tons·km per region in food miles, which confirms previous studies’ assertions that reducing food miles occurs with more local food consumption [21]. Given that the Republic of Korea has 82 cities, the nationwide reduction in food miles is likely even greater.
Furthermore, calculations of carbon emissions before and after local food consumption revealed an average reduction of 29,528 ton CO2 per region. Extrapolating to the national scale, this reduction amounts to approximately 2,421,296 ton CO2, accounting for 2.5% of the Republic of Korea’s transportation sector’s GHG emissions in 2022 (98 million tons). In particular, we found that the main factor affecting carbon emissions from agricultural distribution is the distance traveled by agricultural products. This is because agricultural products have much higher food miles by land and sea transportation. While this study focused on the top 16 agricultural goods, broader analysis suggests even greater carbon emission reductions across the entire agricultural sector. These reductions translate to a total of USD 3,337,345 million (KRW 4.3 billion) for five regions or USD 54.23 million (KRW 70.5 billion) nationwide in terms of carbon credit value. Therefore, it can be concluded that expanding local food consumption yields positive environmental and economic impacts by reducing carbon emissions, and this aligns with the claims of prior research as well [22].
There is an ongoing national focus and effort to reduce carbon emissions. Increasing the demand for local food can be a solution to reduce food miles, thus reducing carbon emissions and overcoming environmental problems. Empirical analysis demonstrates a direct correlation between increased local food consumption and reduced emissions across all regions, underscoring the urgency of prioritizing policies that promote local food demand. If the government fails to prioritize policies to expand local food demand, it may cause various problems, such as social problems and environmental costs.
The above findings underscore several implications for policies to promote local food consumption. First, the current distribution structure of Korean agricultural products revolves around a system where goods are centralized in large wholesale markets within metropolitan areas and then disseminated to local regions via intermediate distributors [23]. It is necessary to support a distribution environment by strengthening the local food distribution network, facilitating the distribution of agricultural products closer to the place of consumption. Second, it is important to promote and educate consumers to realize that local food consumption contributes to environmental protection and local economies. Third, to encourage increased local food consumption, it is essential to explore strategies that enhance consumer satisfaction and promote positive perceptions of local food stores. For example, in the case of product quantity management, despite the need to replenish defects or collect inventory, [24] mentioned that producers may not be able to display or sell their products smoothly because they are focused on farming. Therefore, it is necessary to find a way to systematically manage defective products and prepare a complementary system for claims due to defective products. Furthermore, to expand local food consumption, it is important to rationalize location selection and operation methods to increase accessibility from a consumer perspective rather than focusing on mandatory government acceptance of local food policies or expanding the number of local food stores. Additionally, various other policies can be considered, such as fostering the food industry using local food and providing benefits for local food consumption.

5. Conclusions

This study aimed to analyze the potential benefits of local food for environmental protection by evaluating the carbon emission impacts of locally produced and consumed local food. Based on the results, this study estimates and evaluates the food miles and carbon emission reductions resulting from local food consumption, offering insights into policy implications. The academic significance of this research lies in its pioneering approach to economically and empirically analyzing the environmental impact of local food consumption. While the findings provide valuable insights, further analysis encompassing a broader range of agricultural products and regions could yield more nuanced conclusions. This study encourages future research to explore these aspects for a comprehensive understanding of the environmental implications of local food consumption.

Author Contributions

Conceptualization, D.-E.J. and S.-R.Y.; methodology, D.-E.J. and S.-B.Y.; validation, D.-E.J.; investigation (data and evidence collection), D.-E.J.; writing—original draft preparation, D.-E.J., S.-B.Y. and S.-R.Y.; writing—review and editing, D.-E.J.; supervision, S.-R.Y. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Informed Consent Statement

Not applicable.

Data Availability Statement

The original contributions presented in the study are included in the article, further inquiries can be directed to the corresponding author/s.

Conflicts of Interest

The authors declare no conflicts of interest.

References

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Figure 1. The change (decrease) in food miles before and after the consumption of local food business.
Figure 1. The change (decrease) in food miles before and after the consumption of local food business.
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Figure 2. Overview of food miles calculation of domestic agricultural products.
Figure 2. Overview of food miles calculation of domestic agricultural products.
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Figure 3. Overview of food miles calculation of imported agricultural products.
Figure 3. Overview of food miles calculation of imported agricultural products.
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Table 1. Top 3 agricultural products’ category by production volume.
Table 1. Top 3 agricultural products’ category by production volume.
Classification1st Place2nd Place3rd Place
CategoryProduction
(ton)
CategoryProduction
(ton)
CategoryProduction
(ton)
Food cropsRice3,506,578Potato553,194Sweet potato329,927
VegetablesFruit
vegetables
Watermelon466,529Cucumber335,596Tomato344,048
Green
vegetables
Chinese cabbage2,242,640Cabbage313,236Lettuce96,774
Root
vegetables
Radish1,178,631Carrot100,875--
Condiment vegetablesOnion1,168,227Garlic363,432Korean leek314,685
FruitsCitrus fruit658,859Apple422,115Peach189,058
Source: Korean Statistical Information Service “Crop Production Survey“ (2020) [8]; Food crops consist of rice, wheat, and barley, pulse crops (i.e., beans, small red beans, green grams, etc.), minor cereals (i.e., corn, buckwheat, etc.), and root and tuber crops (i.e., potatoes, sweet potatoes, etc.). Vegetables consist of fruit vegetables (i.e., watermelons, oriental melons, cucumbers, pumpkins, tomatoes, strawberries, eggplants, etc.), green vegetables (i.e., Chinese cabbage, cabbage, spinach, lettuce, java water-dropwort, etc.), root vegetables (i.e., radishes, carrots, burdock, taro, etc.), condiment vegetables (i.e., red peppers, garlic, Korean scallions, onions, ginger, etc.). Fruits consist of apples, Korean pears, peaches, grapes, citrus fruits, persimmons, etc.
Table 2. Criteria for application.
Table 2. Criteria for application.
Theoretical CriterionApplied Criteria on Study
Supply of domestic
agricultural products
Production—import volume
Consumption of region
= (consumption of domestic agricultural products/total population of the Republic of Korea) × total population of region
Transportation distance of
domestic agricultural products
Distance from major origin (city, county, district office 2)
to the point of sale (wholesale market) 3
+ distance from the point of sale (wholesale market)
to the place of consumption
Import volumeImport volume
Consumption of region
= (import volume/total population of the Republic of Korea)
× total population of region
Transportation distance of
imported agricultural products
Distance from the export country to the domestic port 4
+ distance from the domestic port to the point of sale
(wholesale market) + distance from the point of sale
(wholesale market) to the place of consumption
Sales volume of local food· Sales volume of local food
Transportation distance of
local food
0 1
1 Compared to non-local domestic agricultural products or imported agricultural products, transportation distance of local food is limited within the region and very short. Therefore, to simplify the model, this study assumes the distance to be ‘0’. 2 Generally, the reference point for determining the place of production or sale is measured based on a location that combines administrative functions (e.g., county or city hall, township or village office, etc.) and commercial activities [7,9,10]. 3 In the case of agricultural products, ‘food miles’ is commonly considered to be based on the distance from the place of production to the point of sale because of challenges in obtaining volume data of products’ movement at each stage of the distribution process [11,12,13,14]. 4 If it is possible to identify the exact place of production (origin) within the export country, then the transportation distance with the export country is calculated from the origin to the export port. However, if it is impossible to identify the origin, then the exporting distance is calculated from the capital city to the port. On the other hand, for the importing country, the distance is calculated from the origin point to the domestic port closest to the capital city plus the distance from the point of entry to the capital [10,15,16].
Table 3. Data for evaluating the decrease in food miles ( α k ,   1 α k ) .
Table 3. Data for evaluating the decrease in food miles ( α k ,   1 α k ) .
ProductProduction
Volume
(ton) A
Export
Volume
(ton) B
Supply of Domestic Product
(ton) C = A − B
Import
Volume
(ton) D
Total
Supply
(ton) E = C + D
Proportion   of   Domestic   Products   in   Supply   ( ton )
α k = C / E
Proportion   of   Import   Products   in   Supply   ( ton )
1 α k = D / E
Chinese cabbage2,242,64024,4132,218,2276432,218,8701.0000.000
Citrus fruit658,8595996652,8630652,8631.0000.000
Watermelon466,529350466,17930466,2091.0000.000
Cucumber335,596211335,3850335,3851.0000.000
Sweet potato329,927357329,57042329,6121.0000.000
Peach189,058508188,5500188,5501.0000.000
Korean leek314,6850314,6851500316,1850.9950.005
Radish1,178,63169431,171,68873001,178,9880.9940.006
Apple422,1151952420,1632903423,0660.9930.007
Onion1,168,22756221,162,60540,1001,202,7050.9670.033
Lettuce96,77471596,0598618104,6770.9180.082
Garlic363,4323130360,30237,500397,8020.9060.094
Cabbage313,2365996307,24038,424345,6640.8890.111
Tomato344,0486709337,33943,367380,7060.8860.114
Potato553,1941414551,780162,033713,8130.7730.227
Carrot100,875197100,67896,400197,0780.5110.489
Source: Korean Statistical Information Service “Crop Production Survey” (2020) [8], Ministry of Agriculture, Food and Rural Affairs “Agriculture, Forestry and Fisheries Export & Import Statistics” (2020) [17], Korea Customs Service Trade Statistics (2020) [18], Korea Agro-Fisheries & Food Trade Corporation KaTi (2020) [19].
Table 4. An example of major origin selection (the case of potatoes).
Table 4. An example of major origin selection (the case of potatoes).
RankRegionShipping VolumeRankRegionShipping Volume
Volume (ton)ProportionCumulative
Proportion
Volume (ton)ProportionCumulative
Proportion
1Gangwon-do
Pyeongchang-gun
44,9890.2180.21816Jeollabuk-do
Buan-gun
30200.0150.663
2Gyeongsangnam-do
Miryang-si
12,9980.0630.28017Gyeongsangbuk-do
Gimcheon-si
29610.0140.677
3Jeollabuk-do
Gimje-si
11,0990.0540.33418Jeju-do
Jeju-si
28350.0140.691
4Jeollanam-do
Bpseong-gun
10,3870.0500.38419Gangwon-do
Chuncheon-si
27670.0130.704
5Chungcheongnam-do
Dangjin-si
96430.0470.43120Gangwon-do
Jeongseon-gun
25660.0120.717
6Chungcheongnam-do
Seosan-si
80460.0390.47021Gangwon-do
Inje-gun
23030.0110.728
7Gangwon-do
Hongcheon-gun
50180.0240.49422Jeju-do
Seogwipo-si
22690.0110.739
8Gyeongsangnam-do
Changnyeong-gun
48780.0240.51823Gyeongsangbuk-do
Andong-si
22280.0110.750
9Gangwon-do
Hoengseong-gun
46990.0230.54024Gangwon-do
Wonju-si
21110.0100.760
10Gyeongsangbuk-do
Goryeong-gun
44680.0220.56225Gyeongsangnam-do
Changwon-si
18910.0090.769
11Gyeonggi-do
Guri-si
39380.0190.58126Gyeongsangbuk-do
Uiseong-gun
17380.0080.777
12Gyeongsangbuk-do
Gumi-si
36750.0180.59927Gyeongsangbuk-do
Yeongju-si
17350.0080.786
13Gyeongsangbuk-do
Bonghwa-gun
34790.0170.61628Gyeongsanbuk-do
Sangju-si
16690.0080.794
14Jeollabuk-do
Namwon-si
34300.0170.63229Jeollanam-do
Yeongam-gun
16250.0080.802
15Gangwon-do
Gangneung-si
33200.0160.648
Source: Modified from Korea Agro-Fisheries & Food Trade Corporation Wholesale Distribution Information System (aT agromarket) (2020) [20]. The shipping volume with missing origin information has been excluded.
Table 5. An example of major wholesale market selection (the case of potatoes).
Table 5. An example of major wholesale market selection (the case of potatoes).
RankWholesale
Market
Shipping Volume
Volume (ton)ProportionCumulative
Proportion
1Seoul Garak82,9350.4010.401
2Daegu Bukbu19,9980.0970.498
3Guri12,0840.0580.556
4Busan Eomgung10,8790.0530.609
5Busan Banyeo10,2340.0490.658
6Gwangju Seobu10,0130.0480.707
7Gwangju Gakhwa92670.0450.752
8Seoul Gangseo79500.0380.790
9Daejeon Ojeong62720.0300.820
Source: Modified from Korea Agro-Fisheries & Food Trade Corporation Wholesale Distribution Information System (aT agromarket) (2020) [20].
Table 6. An example of major export country selection (the case of potatoes).
Table 6. An example of major export country selection (the case of potatoes).
RankExport
Country
Shipping Volume
Volume (ton)ProportionCumulative
Proportion
1Unites States of America109,2080.6740.674
2Australia13,0550.0810.755
3Belgium11,1220.0690.823
4Netherlands10,5690.0650.888
5Canada10,0910.0620.951
6China71690.0440.995
7Vietnam8190.0051.000
Source: Korea Customs Service Trade Statistics (2020) [18].
Table 7. An example of major domestic port selection (the case of potatoes).
Table 7. An example of major domestic port selection (the case of potatoes).
RankWholesale
Market
Shipping Volume
Volume (ton)ProportionCumulative
Proportion
1Seoul Garak50.8330.833
2Changwon Palyong10.1671.000
Source: Korea Customs Service Trade Statistics (2020) [18].
Table 8. An example of wholesale market selection (the case of potatoes).
Table 8. An example of wholesale market selection (the case of potatoes).
Name of PortImport Value
(USD Thousands)
ProportionCumulative
Proportion
Busan Port116,505,7480.3650.365
Incheon Port63,313,0310.1980.563
Pyeongtaek Port30,800,9330.0960.659
Ulsan Port24,779,1620.0780.737
Yeosu Port19,875,3440.0620.799
Daesan Port14,399,0380.0450.844
Source: Modified from Korea Agro-Fisheries & Food Trade Corporation Wholesale Distribution Information System (aT agromarket) (2020) [20].
Table 9. Agricultural products supply: comparison of before and after local food consumption.
Table 9. Agricultural products supply: comparison of before and after local food consumption.
Classification
of Region
Before the Consumption of Local FoodAfter the Consumption of Local Food
Domestic
(Non-Local)
ImportedTotalDomestic
(Non-Local)
ImportedLocal FoodTotal
Region A45,525221747,74243,3212058236347,742
Region B121,0435895126,938120,8395880219126,938
Region C47,380230749,68746,3982251103849,687
Region D59,215288262,09757,7602814153162,097
Region E115,9105643121,554114,90056081046121,554
Total389,07318,944408,018383,21818,6116197408,018
Table 10. Food miles: comparison of before and after local food consumption.
Table 10. Food miles: comparison of before and after local food consumption.
Classification
of Region
Before the Consumption of Local Food (t·km)After the Consumption of Local Food (t·km)Difference
(B − A)
Domestic
(Non-Local)
ImportedTotal
(A)
Domestic
(Non-Local)
ImportedLocal FoodTotal
(B)
Region A22,745,10014,088,52336,833,62321,697,63613,214,731034,912,367▼1,921,256
Region B38,905,36636,613,67675,519,04238,844,60836,547,103075,391,711▼127,331
Region C23,756,11214,639,77438,395,88623,152,66714,272,441037,425,108▼970,778
Region D21,372,52817,907,89939,280,42720,911,18117,493,464038,404,645▼875,782
Region E48,503,33635,324,14383,827,47948,093,07735,163,326083,256,403▼571,076
Total155,282,442118,574,015273,856,457152,699,169116,691,0650269,390,234▼4,466,223
▼ denotes a reduction in carbon emissions following the consumption of local food compared to before the consumption.
Table 11. Changes in carbon emissions and the economic benefits resulting from local food consumption.
Table 11. Changes in carbon emissions and the economic benefits resulting from local food consumption.
Classification
of Region
Before   the   Consumption   of   Local   Food   ( t C O 2 ) After   the   Consumption   of   Local   Food   ( t C O 2 )Difference
(B − A)
Benefits
(Value of Carbon)
(USD 1000)
Domestic
(Non
-Local)
ImportedTotal
(A)
Domestic
(Non
-Local)
ImportedLocal FoodTotal
(B)
Region A56642,007,1552,012,8195,4031,941,30901,946,712▼66,1071494
Region B10,1643,363,6003,373,76410,1493,358,20103,368,350▼5414122
Region C59152,132,4582,138,37457652,091,51502,097,280▼41,094929
Region D53221,881,3851,886,70752071,864,64601,869,853▼16,854381
Region E12,0774,373,6804,385,75811,9754,355,61104,367,586▼18,172411
Total39,14213,758,27913,797,42138,49913,611,282013,649,781▼147,6403337
▼ denotes a reduction in carbon emissions following local food consumption compared to before consumption. The exchange rate of 1300 KRW/1 USD was applied.
Table 12. The results of carbon emission evaluations.
Table 12. The results of carbon emission evaluations.
ClassificationRegion ARegion BRegion CRegion DRegion E
Rate of change
in carbon emissions (%)
7.90.34.53.01.3
Table 13. The results of correlation analysis between the changes in carbon emission and the characteristics of the region.
Table 13. The results of correlation analysis between the changes in carbon emission and the characteristics of the region.
CharacteristicsCorrelation Coefficients with Rate of Change in Carbon Emissions
Total agricultural area0.898 **
Area of small farmers0.979 ***
Total number of farmers0.948 **
Number of elderly farmers0.994 ***
Number of young farmers0.220
Number of female farmers0.923 **
Number of full-time farmers0.982 ***
Number of part-time farmers 0.321
Total population−0.843 *
Number of wholesale and retail businesses−0.616
*** (**, *) denotes coefficients are significant at 1% (5%, 10%) level.
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Jung, D.-E.; Yang, S.-B.; Yang, S.-R. The Effects of Local Food on Carbon Emissions: The Case of the Republic of Korea. Sustainability 2024, 16, 3614. https://doi.org/10.3390/su16093614

AMA Style

Jung D-E, Yang S-B, Yang S-R. The Effects of Local Food on Carbon Emissions: The Case of the Republic of Korea. Sustainability. 2024; 16(9):3614. https://doi.org/10.3390/su16093614

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Jung, Da-Eun, Sung-Bum Yang, and Seung-Ryong Yang. 2024. "The Effects of Local Food on Carbon Emissions: The Case of the Republic of Korea" Sustainability 16, no. 9: 3614. https://doi.org/10.3390/su16093614

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