Abstract
In this study, we propose a method for downscaling ecological footprint (EF) and biocapacity (BC) to a 1-km square resolution for a spatially flexible analysis of environmental burden balance. To conduct EF downscaling (by land type and consumption category) for all terrestrial areas of Japan, the grid population was multiplied by the scaled EF per capita based on the consumption expenditures and income statistics available at the municipal level. The BC of each land type was estimated following the land-use map. Subsequently, a balance analysis between EF and BC showed the spatial distribution of EF, BC, and the environmental load excess ratio (EF/BC). The values of the environmental load excess ratio significantly varied between grids, and the spatial distributions differed depending on the land type. An example of multiscale balance analysis at municipal and prefectural scales by the developed dataset showed the different distributions of the environmental load excess ratio due to the scale of spatial boundaries and demonstrated its contribution to designing interregional cooperative policies from a multilayered perspective. The established high-resolution dataset can be utilized practically for flexibly analyzing the multilayered spatial boundaries to fill the scale mismatch between natural resources and administrative boundaries. The downscaling method proposed in this study can be applied beyond Japan if similar sets of statistics and land-use information are available, which will significantly improve the spatial resolution of the analysis.
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Introduction
Background
To achieve sustainable development, humans must live within the boundaries of ecosystem stocks (natural capital) and the flows the stocks generate (ecosystem services). The ecological footprint (EF), an environmental indicator developed in the early 1990s (Rees 1992; Wackernagel and Rees 1996), has received global attention as a useful sustainability indicator. EF is the total “area of productive land and water ecosystems required to produce the resources that the population consumes and assimilate the wastes that the population produces” (Rees 2000). In other words, EF is an environmental indicator that converts various human-induced ecological burdens, such as resource consumption and CO2 emissions, into consumed land areas. As a counterpart to EF, biocapacity (BC) is an indicator that represents the amount of biologically productive land and sea areas available to provide ecosystem services or nature’s regenerative capacity (Borucke et al. 2013). Moreover, these indexes are proposed to have two basic contributions (Nakano and Wada 2007). First, they enable a quantitative assessment of the balance between the capacity of the ecosystem service supply (BC) and human demand (EF). Second, they show how much the economic activities in a particular country or region environmentally burden other regions through the importation and exportation of goods and services (Nakano and Wada 2007; van Vuuren and Bouwman 2005).
The EF and BC datasets at the global and national scales are being continuously developed by the Global Footprint Network (GFN 2021). Measuring the EF at various smaller spatial scales (i.e., subnational, prefectural, municipal, and community) is a significant and widespread research theme (Ujihara et al. 2008; Kuzyk 2012; Cano-Orellana and Delgado-Cabeza 2015; Suzuki and Tanabe 2016; Luo et al. 2018; Galli et al. 2020), because spatially revealing the EF distribution is difficult, unlike BC whose distribution is tied to land types. However, van den Bergh and Verbruggen (1999) highlighted that EF estimation following geopolitical and cultural boundaries (e.g., national or subnational administrative boundaries) is somewhat arbitrary from an environmental viewpoint. This could be an inherent weakness of the EF, because its calculation depends heavily on statistics developed according to administrative boundaries, such as countries, provinces, and municipalities. If the EF can be calculated for areas defined from an ecological perspective (i.e., larger connected ecosystems or river catchments by hydrological or ecological boundaries), it can be useful for designing sustainable and integrative management at bioregion scales at which ecosystem functions are interconnected.
Moreover, it is also necessary to analyze the spatial evolution and pattern of EF using a high-resolution dataset and geographic information system. Such analysis should provide profound implications of the spatial distribution of ecological security and optimize the coordination of urban spaces (Lu et al. 2019). Kuzyk (2012) argued that questions regarding local sustainability could be addressed at an increasingly local level as EF data become finer. However, studies developing such an EF dataset at a high resolution are limited. Given the significant effect of spatial dimensions on the sustainability assessment process and territorial management policies (Barrahmoune et al. 2019) and the aspiration to achieve sustainability through multilevel environmental governance (Newig and Fritsch 2009), breaking the limitations of existing studies on the spatial flexibility of the EF is worthwhile. Thus, in this paper, we develop a novel method for downscaling EF and BC in high spatial resolutions. The appropriate approach will be reviewed in the next section.
Review of methodologies for estimating local EF
Two approaches have been applied to construct EF datasets at scales below the national scale (GFN 2009). The early “bottom-up” (component) approach calculated the EF of all individual products consumed by the local population and summed them. Its analysis was detailed and flexible, but measuring the exact footprint intensity of all activities and products was challenging (GFN 2009). Many studies have applied the bottom–up approach, such as Barthelmie et al. (2008), who applied it for a town in Canada, focusing on carbon footprint, and Luo et al. (2018) who applied it to 18 provinces in Midwestern China, and Yokawa et al. (2008).
Later, a “top-down” (compound) approach was applied. This approach first calculates the EF data at the national level in the National Footprint Accounts (NFA) and then derives subnational footprints based on local populations (GFN 2009). The top–down approach can ensure comparability with other countries or regions. Nevertheless, it can be less responsive to regional policy shifts if the scaling data do not reflect specific local conditions (Chapman et al. 2017; Świąder et al. 2020). Examples of existing studies that have applied the top–down approach are Cano-Orellana and Delgado-Cabeza (2015, for 771 municipalities in the Andalusian region, Spain), Suzuki and Tanabe (2016, for 47 prefectures in Japan), Galli et al. (2020, for six cities in Portugal), and Tsuchiya et al. (2021, for 47 prefectures in Japan). These studies commonly applied the downscaling of national EF data using the consumption land-use matrix (CLUM) provided by the GFN and considering subnational and local consumption characteristics.
To balance the advantages and disadvantages of the existing approaches for EF derivation, some studies have proposed a hybrid approach integrating the bottom–up and top–down approaches. Kuzyk (2012) analyzed the EF of housing components for residential postal code areas in the city of Calgary based on the initial EF value derived from the national data and the variation in EF estimated using the bottom–up approach. Furthermore, Świąder et al. (2020) estimated the total EF for the city of Wrocław in Poland by summing the carbon footprint using the bottom–up approach, and the remaining EF components were determined using the top–down approach.
We selected the top–down approach to establish a high-resolution dataset of EF for two reasons. First, only the top–down approach is recognized as a “standards-compliant” approach by the Ecological Footprint Standards 2009 (GFN 2009). The top–down approach makes EF data comparable as a “common language” (Wackernagel et al. 2006) for discussing environmental impacts of human activities in different areas. Additionally, it makes hidden and externalized impacts apparent and can generate global thinking (Klinsky et al. 2010; Kuzyk 2012).
Second, data are available for the top–down approach. To flexibly enable EF analysis at any scale, a grid-based high-resolution dataset must be established for not only a few selected areas and extensive spaces. Only top–down estimation can be adopted because of the difficulty in obtaining the detailed data required to specify the absolute amount of resource consumption in each grid. Although the downscaled data using the top–down approach are less responsive in reflecting regional policies (Świąder et al. 2020), they can be used to flexibly explore the appropriate spatial boundaries where natural resources can be circulated.
Objective of this study
In this study, we propose a top–down-based method for downscaling the EF indicators in high resolution for spatially flexible EF analysis. We seek to establish an EF dataset at a 1-km resolution for all of Japan based on the national CLUM provided by the GFN. A detail of the method is described in the following section, and the balance analysis between EF and BC and their spatial distribution is shown by the established data at a 1-km resolution (Sect. “Results”). This study should provide a functional and practical approach for other countries to realize a spatially flexible analysis of environmental burdens.
Materials and methods
The GFN has calculated the EF and BC for each land type, such as cropland, grazing land, forestland, fishing grounds, and built-up land (Lin et al. 2018). In addition, carbon footprint has been established as a category of EF, different from BC, which mainly accounts for carbon uptake capacity as a subcategory of forest BC (Borucke et al. 2013). EF and BC are expressed in global hectares (gha). A gha is a globally comparable and standardized accounting unit that expresses biologically productive hectares with the world’s average biological productivity for a given year (Wackernagel and Rees 1996). Using the GFN classifications, we estimated the EF and BC according to the same land typology and unit (i.e., gha) for each 1-km grid in Japan.
Estimation of EF at 1-km grid resolution
The proposed method in this study is summarized by multiplying the population at a 1-km grid resolution by the scaled EF per capita for municipalities based on consumption expenditure and income (Fig. 1). Using multiregional input–output (MRIO) assessments, GFN divided the national EF into consumption categories that induced EF (GFN, official homepage). The divided dataset is provided as a CLUM in the form of EF per capita (gha/person). In this study, we used the Japan CoLUM (COICOP Land Use Matrix) version 2011 based on the NFA 2017 edition as the primary dataset (GFN 2017a). The CoLUM is a dataset very similar to CLUM; it follows The Classification of Individual Consumption According to Purpose (COICOP; United Nations 2018) and comprises three dimensions: the short-lived consumption directly paid for by households (divided into 43 consumption categories; Appendix 1), short-lived consumption directly paid for by the government, and long-lasting consumption also called gross fixed capital formation (houses, roads, and machines). The calculation procedure in Fig. 1 was driven by the dataset listed in Table 1 regarding World Wide Fund for Nature (WWF) Japan (2016), Galli et al. (2020), and Tsuchiya et al. (2021), who utilized the CoLUM to conduct EF downscaling following the top–down approach.
The primary CoLUM dataset represents the average EF per capita of Japanese residents. To reflect the regional differences in consumption level, scaling factors (SFs) were created for all 1741 municipalities (B–D of Fig. 1). They were multiplied using the Japanese EF average to calculate the scaled EF (gha/person) (A in Fig. 1). By multiplying the scaled EF using the population of each grid (Statistics Bureau of Japan: SBJ 2012), the total EF (gha) of each grid induced by the residents’ consumption was calculated (A in Fig. 1). The EF calculation was conducted for each land type for 383,389 1-km square grids covering the entire land area of Japan, as shown in Eq. (1)
Here, EFi,j,k is the EF (gha) of land type j (1–6, including land carbon uptake) at grid i (1–383,389), belonging to municipality k (1–1741, for each city, town, village, and special ward). Pi,l is the population of one household type l (l = 1 [one-person household] or 2 [two-or-more-person households]) at grid i. efj,m is the national average value of EF per capita (gha/person) of land type j caused by the consumption category m (1–46). Finally, SFk,l,m is the scaling factor of municipality k for each household type l and consumption category k.
The SFs for the consumption categories of short-lived consumption directly paid for by households (m = 1–43) were calculated using Eqs. (2) and (3) (B in Fig. 1)
Here, cek,l,m and ceJapan,ave,m [JPY/person] represent per capita consumption expenditure in municipality k of household type l and the national average value of per capita consumption expenditure (including both household types) for consumption category m. CPIk,m is the consumer price index of consumption category m in municipality k (SBJ 2008). CPIk,m was multiplied to adjust the price differences between municipalities.
The category of “electricity, gas, and other fuels” was designated using m = 11. The EF induced by electricity use differs depending on the energy source used for power generation. Ten major electric power companies monopolized the electricity supply to assigned prefectures in Japan. Even after the liberalization of the electricity supply in 2016, most households still buy electricity from those ten companies (Electricity and Gas Market Surveillance Commission 2021). Thus, the carbon dioxide emission factor, CEFk [t-CO2/MWh] (MOE 2012), was based on one company that supplies electricity to the prefecture where municipality k belongsFootnote 1 among the ten electric power companies. The ratio of CEFk to the national average value (CEFave [t-CO2/MWh]) allowed the EF of energy consumption to be localized by reflecting local power supply characteristics.
The SFs of short-lived consumption directly paid for by the government (m = 44) and long-lasting consumption (m = 45) were set as 1 for all municipalities and all land types. This is due to the difficulty of evaluating regional differences in the environmental burden induced by governmental consumption and gross fixed capital formation.
In Japan, two statistical surveys have been conducted on consumption expenditures using consumption categories: the Family Income and Expenditure Survey (SBJ 2010) and the National Survey of Family Income and Expenditure (SBJ 2009), which were used to calculate cek,l,m. The Family Income and Expenditure Survey aims to grasp the actual circumstances of household income and expenditures. Moreover, the provided data are aggregated for prefectural capital and regional blocks. The National Survey of Family Income and Expenditure is a comprehensive survey of household income and expenditures, durable consumer goods, and household assets, of which the prefectural average data are published. Both surveys summarize the household expenditure data for one-person and two-or-more-person households; in the Family Income and Expenditure Survey, the household expenditures of one-person households are available only as the national average value. Thus, the cek,l,m of prefectural capitals was estimated using the Family Income and Expenditure Survey, and those of the other municipalities were calculated mainly using the National Survey of Family Income and Expenditure. Appendices 1 and 2 show the correspondence of the consumption categories between the CoLUM, household expenditure data, and consumption price index data.
Consumption expenditure estimation for prefectural capital
The per capita consumption expenditure of the prefectural capitals (ceḱ,l,m) was estimated using Eqs. (5) and (6) (C in Fig. 1)
Here, \(he_{{k^{\prime},l,m}}\) and heJapan,l,m [JPY/household] represent a household expenditure of prefectural capital ḱ and the national average value for consumption category m of household type l; the data were sourced and established based on the Family Income and Expenditure Survey (SBJ 2010). \(NP_{{k^{\prime},l=2}}\) [persons/household] is the average number of people per household in households with two or more persons in prefectural capital ḱ; the data were obtained from the 2010 Population Census (SBJ 2011).
Consumption expenditure estimation for other municipalities
Since the household expenditure data for municipalities were available only for prefectural capitals, the per capita consumption expenditure of other municipalities was estimated from the prefectural average value for household expenditures. Furthermore, the individual income index which represents the income level for each municipality was used for the estimation following Eqs. (7)–(9) (C and D of Fig. 1). Given the observed positive correlation between disposable income level and consumption expenditure (Ministry of Health, Labor, and Welfare: MHLW 2015), the consumption expenditure level was assumed to be linked to the individual income level
Here, \(h^{\prime}e_{n,l,m}\) [JPY/household] represents a prefectural average of household expenditures, excluding the prefectural capital for consumption category m of household type l. IIk is the individual income index of municipality k showing regional differences in the income level. Npk,l = 2 [persons/household] is the average number of people per household of households with two or more persons in municipality k. \(h^{\prime}e_{n,l,m}\) was estimated from hen,l,m and \(he_{{k^{\prime},n,l,m}}\) [JPY/household], representing an average value of household expenditures of prefecture n and household expenditure of prefectural capital \(k^{\prime}\) belonging to prefecture n, as cited from the Family Income and Expenditure Survey (SBJ 2010) and the National Survey of Family Income and Expenditure (SBJ 2009). NHn,l and \(NH_{{k^{\prime},n,l}}\) [households] are the number of households of household type l in prefecture n and prefectural capital \(k^{\prime}\) belonging to prefecture n. The data were obtained from the 2010 Population Census (SBJ 2011).
To estimate the individual income index of each municipality, municipal tax payment per person was used as the approximate variable reflecting the difference between individual income levels, because Japan’s inhabitant tax is levied according to the income amount. Thus, the individual income index IIk was estimated using the average number of municipal tax payments per person in each municipality, as shown in Eqs. (10)–(12) (E in Fig. 1)
Here, tpn and tpk,n [JPY/person], respectively, show the average number of individual tax payments of prefecture n and municipality k belonging to prefecture n. TPk,n [JPY] is the total individual tax payment in municipality k, and NTPk,n [persons] is the number of individual taxpayers of municipality k. These data were cited from the Survey of Municipal Taxation Status (Ministry of Internal Affairs and Communications, Japan 2010). The utilized data included taxation based on per capita and income. NMn [municipalities] is the number of municipalities belonging to prefecture n, and it was utilized to estimate the average number of individual tax payments in prefecture n.
Estimation of BC at a 1-km grid resolution
The BC in a 1-km grid resolution was estimated from the land-cover maps by referring to the existing research that calculated the local BC (Lu et al. 2019; Galli et al. 2020). The utilized dataset was Land Use Subdivision Mesh data provided by the Ministry of Land, Infrastructure, Transport, and Tourism (MLIT 2009). In the data, one of 12 types of land use was assigned for every 100 m square grid, and all grids covering territorial areas of Japan were targeted. The areas of each type of land use were aggregated into 1-km square grids. Twelve types of land use were merged into six land types whose BC were summarized by the GFN, as shown in Table 2. The BC of the six land types in the 1-km resolution was estimated using Eq. (13)
Here, BCi,j is the BC [gha] of land type j at grid i. JYFj [wha (world average ha) /ha] is the Japanese national yield factor of land type j, representing the local productivity of the land. EQFj [gha/wha] is the equivalence factor that is a productivity-based scaling factor for converting the areas of different land types into the standard gha unit. JYFj and EQFj were multiplied using the area of each land type j at grid i (Ai,j [ha]). The utilized value of the national yield and equivalence factors in Table 2 were cited from the NFA 2017 edition provided by GFN (2017b).
Analysis using the established dataset
Statistical analysis of scaled EF per capita
The mean, variance, median, and quartile were calculated using consumption categories and household types to grasp the municipalities’ statistical distribution of EF per capita. The results are shown by a scatter plot and a boxplot. For each consumption category, the difference in the mean value of the EF per capita between household types was tested using a paired t test. For each household type, the differences in the means and variances between consumption categories were tested using multiple comparison procedures using the Steel–Dwass method and F test.
The distribution of total EF per capita of municipalities was projected on the map, and the difference of the mean and deviation between household types was tested using a t test and an F test. To explore the relationship between regional characteristics and EF per capita, the differences in the statistical distribution of EF per capita were evaluated for three categories of municipalities (i.e., metropolitans, mid-sized municipalities, and small-sized municipalities) as determined by population size. Referring to the categories by MLIT (2017) and the Family Income and Expenditure Survey, municipalities holding populations of over 200,000 and special wards in Tokyo were included as metropolitans. Municipalities holding populations of more than 50,000 and less than 200,000 were categorized as mid-sized municipalities. The difference in the mean EF per capita between municipal categories was tested using a t test for both household types.
Analysis of the environmental load excess ratio
Given the advantage that the EF and BC indexes can measure ecological overshoot status, the environmental load excess ratio (r) was calculated at a 1-km grid resolution using Eq. (14) (Ujihara et al. 2008)
Here, ri,j is the environmental load excess ratio of land type j at grid i. The grid with r = 0 indicates a nonresidential area, whereas 0 < r ≤ 1 indicates that the grid has an ecological surplus with more BC than EF. Grids with 1 < r fall into an ecological overshoot with an ecological deficit.
Besides grid resolution, r was calculated for the municipality and prefecture levels to highlight the change in the balance between EF and BC at different spatial boundaries. The municipal r value was derived using Eq. (15), and the same aggregating calculation was conducted for the prefectures
Finally, the balance distribution between the EF and BC was analyzed by calculating the proportion of grids (i.e., the area ratio) according to the r value for each prefecture.
Results
Distribution of per capita EF
Figure 2 shows the statistical distribution of EF per capita after the scaling procedure for municipalities by consumption category and household type.
The mean values of the EF per capita were significantly greater for one-person households than for two-or more-person households for all consumption categories (significance level: 0.1%). For both household types, the mean EF values of “food and nonalcoholic beverages,” “housing, water, electricity, gas, and other fuels,” and “transportation” were significantly higher than those of other consumption categories (significance level: 0.1% significant differences were detected between all categories except between “furnishings, household equipment, and routine household maintenance” and “communication” for both household types and between “housing, water, electricity, gas, and other fuels” and “transportation” for two-or-more-person households). Furthermore, the standard deviations of “housing, water, electricity, gas, and other fuels” and “transportation” were greater than those of “food and nonalcoholic beverages,” and the differences in variances were significant (significance level: 0.1%). The possible reason is that consumption in those two categories vastly differs by region because of the differences in climate classifications and urbanization levels.
Figure 3 shows the spatial distribution of the EF per capita (total value of all consumption categories) of each municipality according to household types. Table 3 summarizes the statistical distribution, including the analysis by municipal category. The mean of the total EF per capita of one-person households was significantly higher than that of two- or more-person households (significance level: 0.1%). Furthermore, total EF per capita was observed to have almost a twofold difference in maximum between municipalities. The Kyusyu and Shikoku regions (yellow circles in Fig. 3) seemed to have smaller differences between municipalities than others. Nevertheless, many prefectures were observed to have large differences according to the municipality, even within the same prefecture.
Small municipalities showed significantly lower mean EF per capita than larger ones (significance level: 0.1%). This result corresponds with the previous studies which observed that more urbanized areas had increased EF per capita (Rashid et al. 2018; Tsuchiya et al. 2021). Over 80% of the Japanese population lives in municipalities categorized as metropolitan or mid-sized municipalities (SBJ 2016); thus, an increased EF per capita in urban areas significantly increases the EF for all of Japan.
Distribution of EF, BC, and environmental load excess ratio
Figure 4 shows the total spatial distribution of BC, EF, and r at a 1-km grid resolution.
High BC values were widely distributed in plain areas. The values obtained by multiplying the yield and equivalence factors were highest in croplands and built-up lands (Table 2), which are located in plain areas. In the EF map, the gray area indicates the nonresidential area. It accounts for 53% of all grids covering terrestrial areas in Japan. The EF per 1-km-square grid is distributed following the population distribution; the EF value is higher when closer to the center of the metropolitan area. Figure 4c shows that the distribution of r grids with bluish colors has an ecological surplus, and those with reddish colors show areas of ecological deficit. Furthermore, areas under ecological overshoot were observed widely in residential areas, except for the fringes and regions with high agricultural production. Grids with r > 1 accounted for 27% of the total number of grids.
Figure 5 shows the distribution of r by land type. Table 4 summarizes the ratio of grids according to the r value (the denominator is the number of residential grids). It is noted that the r value of fishing grounds is not shown here, because the BC of marine fishing grounds was significantly underestimated using data focusing on the terrestrial area of Japan. This point will be argued further in the section “Discussion”. The black grids in Fig. 5 indicate the areas where EF is greater than 0, but BC does not exist; thus, r is not calculable.
The spatial distribution of r differed between land types (Fig. 5, Table 4). The r value of cropland increased as the area approached the urban centers, but over half of the residential grids did not overshoot. This might be because cropland can exist near urban areas, such as suburban areas. For grazing lands, the black grids (EF existing without BC) were widely distributed in residential areas (the area ratio with r < 1 was 15.6%). Although areas holding grazing lands were limited, people consumed goods from grazing land, such as meat, regardless of where they lived. For forestlands, the national EF total was lower than the total BC (WWF Japan 2009). However, large parts of the urbanized area fell into an ecological deficit. This is because forests do not tend to encroach on residential areas, unlike croplands. The EF and BC locations seemed to be the most matched for the built-up land. Black grids can also be observed in other areas, such as mountainous areas. This might result from the land-use map at 100 m resolution, which may overlook scattered small residential areas in mountainous areas.
Analysis of the environmental load excess ratio at municipal and prefectural boundaries
Figure 6 shows the distribution of r calculations for municipalities and prefectures. The upper maps show r for the total of all land types, including carbon footprint, which is aggregated from Fig. 4c, and the lower maps are examples of croplands, which can be compared with Fig. 5a.
For all land types, 22.5% of municipalities had r < 1, located mainly in Hokkaido (indicated in Fig. 6) and partially in the inland areas of the Japanese archipelago. For croplands, 51.4% of municipalities had r < 1, widely distributed throughout Japan, excluding the areas around metropolitan areas. In the municipalities at the center of metropolitan areas, such as Tokyo and Osaka, r was significantly greater than 1. These results enabled us to specify the municipalities with nationwide surplus EF and BC.
However, when r was aggregated for the prefectures, all the prefectures were under ecological deficits (r > 1) for all the land types. This was because all prefectures included municipalities with a population concentration and r that was significantly greater than 1. This result showed almost no room for exchanging surplus BC beyond prefectures when all land types and carbon footprint were summarized. Moreover, it confirms that the problem is the unbalanced environmental load and its absolute volume. Nevertheless, the difference in r between the prefectures can be grasped by this result. For croplands, the prefectures with r < 1 could be found in Hokkaido, the Tohoku region, and some parts of the Sea of Japan side of western Japan, which differed significantly from that of Tokyo (r = 161).
This result can be used to design the spatial boundary or interregional relationship in which the balance between EF and BC can be achieved from a multilevel perspective. For example, many municipalities near the Tokyo metropolitan area are falling into an ecological deficit regarding croplands. Some municipalities have ecological surpluses within the Kanto region, where Tokyo belongs. However, when it is aggregated by the prefectural boundary, all prefectures of Kanto result in an ecological deficit. This reveals that the municipalities with cropland r < 1 in the Kanto region cannot afford the municipalities of Tokyo metropolitans beyond prefectural boundary; instead, the municipalities in the Tohoku region can be candidates to support the cropland demand of metropolitans remotely, because almost all of the areas in Tohoku have ecological surplus even on a prefectural scale. Hence, multiple-scale balance analysis of EF and BC using a developed dataset enables us to design practical cooperative policies between regions from a multilayered perspective.
Figure 7 shows the area proportion according to the r value for each prefecture (the denominator is the number of grids belonging to each prefecture). There were large differences between prefectures in the distribution of areas holding ecological surplus (i.e., EF > BC) and deficits (i.e., EF < BC). Furthermore, the prefectures where the area proportion with r > 1 was highest were the suburbs of Tokyo (Chiba and Saitama). In the central prefectures of major metropolitan areas, such as Tokyo, Osaka, and Kanagawa, the area proportion with r > 10 was the highest.
Discussion
Significance of the method
In this study, we proposed a top–down-based method for downscaling the EF at a 1-km square resolution for the entirety of Japan. The proposed method is summarized by multiplying the population in 1-km square grids using the scaled EF per capita for municipalities based on consumption expenditures and income level. This downscaling method has two advantages. First, the required data are easily available compared with conventional research attempting to localize the EF for municipalities or communities (e.g., Kuzyk 2012; Cano-Orellana and Delgado-Cabeza 2015). Furthermore, the applicability of this method can be expanded to other countries and regions. Even if the actual consumption data of all municipalities are unavailable, the estimation can be conducted using proxy indicators. In the Japanese case, local consumption expenditure was estimated using the individual income index obtained from the tax payment data of the municipalities. However, as Galli et al. (2020) used an indicator of per capita purchasing power in each municipality, the available approximate variables can be selected when this method is applied to other countries. Although nationwide high-resolution population data might not be available in all countries, it can be estimated from open sources, such as high-resolution land-cover maps (Silva et al. 2013) or nighttime light datasets (Yu et al. 2018).
Second, despite the simplicity of this method, it reflects the findings of Baabou et al. (2017) and Tsuchiya et al. (2021) that areas (prefectures or cities) with higher average incomes had a higher EF per capita. Given the causal relationship, it is rational to estimate the consumption level in each municipality by breaking down the prefectural consumption expenditure data based on the municipal income level. However, local lifestyles and industrial characteristics vary significantly among municipalities within the same prefecture. Thus, the proposed method for estimating the EF per capita for each municipality is an excellent approach that reflects these differences.
This method is especially recommended for application in Asian countries, which, similar to Japan, suffer from issues of disjuncture between the urban areas’ overconsumption of natural resources and rural areas’ richness in ecosystems but delayed development (McGee 2008). The approach to reassessing the spatial and integral interdependent relationships between urban and rural areas based on scientific evidence is being expanded from Japan to these countries (IGES: Institute for Global Environmental Strategies 2021). Following this movement, the proposed method’s high-resolution EF and BC datasets can contribute to the spatially flexible balance analysis between environmental burdens and capacities, including urban, peri-urban, and rural areas in Asian countries.
Two areas not addressed in the present study require further research. They should be considered for methodological advancement: integrating the BC of marine fishing grounds and refinement of areas covered by each land-use type within a 1-km square grid. Although defining where to allocate the BC of marine fishing grounds is difficult, the idea is to expand the target area to grids covering an exclusive economic zone and allocate the BC to the municipality or prefecture with the closest coastline to each grid (Hori et al. 2016). Accurate land-use aggregation can be realized using vegetation inventories as the primary data (Shoyama 2021).
Utility of the developed dataset
The developed dataset of EF and BC at a 1-km square resolution enables a balanced analysis of the environmental burdens at any spatial scale. This is a significant contribution, given that the localized EF data established for Japan so far was just for prefectures (Suzuki and Tanabe 2016; Chin et al. 2016; WWF Japan 2019). Although only one example of balance analyses in multiple municipal and prefectural scales was shown in this paper (the section “Analysis of the environmental load excess ratio at municipal and prefectural boundaries”), the different distribution of r by the scale of spatial boundaries could be shown quantitatively for the entirety of Japan. It could provide the foundation for the practical designing of interregional cooperative policies from a multilayered perspective. This would lead to the realization of the interregional cap and trade program of environmental burdens proposed by Ujihara et al. (2008). Furthermore, advanced spatially flexible balance analysis, not along administrative boundaries but at the river basin or community scales, is a greatly expected research expansion, demonstrating the full potential of the developed data.
A spatially flexible analysis of EF and BC is becoming essential in Japan. In the Fifth Basic Environment Plan, the Ministry of the Environment (MOE) proposed a new concept, the Circulating and Ecological Sphere (CES) (MOE 2018). The CES is a spatial–environmental system where “each region demonstrates its strengths by utilizing its unique geographic and socio-economic characteristics, thereby building a self-reliant and decentralized society where different resources are circulated within each region” (MOE 2018). CES premises on multilayered circular regions connected by the supply and demand of ecosystem services and aims to establish new rural–urban linkages that enable a minimized environmental impact (Ortiz-Moya et al. 2021). Nevertheless, no standard approach has been developed to identify the spatial scale of the CES effectively; building CES is attempted practically for various spatial scales, from community to prefectural scale (MOE 2020). To realize CES, it is essential to assess and discuss the spatial boundaries in which natural and socio-economic resources can circulate. Furthermore, the spatial scale of the CES could vary according to the types of resources (indicated as multilayered circular regions). The established high-resolution dataset in this study is ideal for exploring appropriate multilayered boundaries to create CES. Thus, the dataset should be utilized proactively at the decision-making stage for CES establishment, and it would induce contributions to realize the multilevel governance essential for sustainability (Ostrom and Janssen 2004) throughout the CES framework.
However, this dataset must be carefully utilized when discussing the appropriate spatial scale for balancing the EF and BC, because it is only a visualization of the relationship between the EF attributed to the final consumption by residents of each grid and the BC of that grid. Nakano and Wada (2007) argued that the localized EF by gha “is a hypothetical area, not an actual area.” Furthermore, Barrahmoune et al. (2019) and Chapman et al. (2017) wrote about the limited aptitude of global accounting to answer regional research or policy questions. Even if the r value of one grid is 1, it does not mean that the grid residents have a self-sufficient way of life or that the BC of the grid is fully utilized. Moreover, it does not express the place and mode of production for each consumed good and service. Thus, this dataset must be used to assess the heterogeneity of the spatial distribution of EF and BC to present potential management actions to be taken on each geographic scale (Barrahmoune et al. 2019) and to explore comprehensive and coordinated development (Lu et al. 2019) for living in harmony with nature.
As a related argument, van den Bergh and Verbruggen (1999) demonstrated the “anti-trade bias” of the EF. The comparison between the local EF and BC implies that some form of self-sufficiency is the most desirable situation. Given this concern, it must be emphasized here that this study does not suggest a self-sufficient lifestyle within a 1-km grid. As van den Bergh and Verbruggen (1999) argued, it is necessary to recognize the positive impact of the spatial concentration of people and the advantages of regions related to endowments of environmental and ecological resources, which can be grasped from our developed EF and BC dataset. The recognition induces the design of appropriate institutions for the sustainable trade of commodities and resources between regions (van den Bergh and Verbruggen 1999). Additionally, it enables spatial matching of consumption, production, and resource use, as is the aim of CES. This dataset can be useful for showing the invisible and externalized environmental burden created by the people of each grid and the unutilized resources there.
One of the next research agendas is the spatial and flexible balance analysis of EF and BC, using the developed dataset for the actual regions that can be established as CES. The scenario analysis of future EF is also a meaningful challenge, for which this developed dataset can be integrated with projection methods, such as a system dynamics model (Wei et al. 2013), a scenario-based projection model of the future population distribution (Hori et al. 2021; Kumagai et al. 2021), determinant analyses of EF and the environmental load excess ratio (Pata 2021; Pata and Isik 2021), or a method for exploring lifestyle pathways to reduce the footprint (Koide et al. 2021). Furthermore, research expressing the EF and BC by local hectares, which reflects actual local land productivity, should be considered (Nakano and Wada 2007; Wiedmann and Lenzen 2007). For further development of the EF dataset, analysis of the EF flow throughout the supply chain across municipalities using an input–output analysis utilizing the MRIO database of all Japanese municipalities (Wakiyama et al. 2020) is a significant challenge. This enables the design of institutions for sustainable trade between regions, considering the transformation of production modes and distribution systems.
Conclusion
This study proposed a top–down-based method for downscaling EF and BC to a 1-km square resolution for a spatially flexible analysis of the balance of ecological burden. The downscaling of EF was conducted for all terrestrial areas of Japan, and local EF was estimated based on the national CoLUM of Japan by land type and consumption category. The proposed method can be summarized as to multiply the grid population by the scaled EF per capita for municipalities based on consumption expenditure and income levels. In the result of EF per capita scaling, large differences between municipalities were indicated, even within the same prefectures. The BC of each land type was estimated from the land-use map in a 100-m square resolution, the national yield factors, and equivalence factors. The balance analysis between EF and BC showed the spatial distribution of EF, BC, and the environmental load excess ratio (r). The r values significantly varied between grids, and the distribution differed depending on the land type. An example of multiscale balance analysis at municipal and prefectural scales could show the different distributions of r by the scale of spatial boundaries and enable the practical design of interregional cooperative policies from a multilayered perspective. The established high-resolution dataset can be used to flexibly analyze multilayered spatial boundaries for implementing the CES of Japan. The proposed method used relatively high availability data compared to the conventional studies. This method should be applied to other countries and regions.
Change history
27 March 2023
A Correction to this paper has been published: https://doi.org/10.1007/s11625-023-01318-z
Notes
Japan’s administrative division structure comprises 47 prefectures; each prefecture is divided into municipalities. Several neighboring prefectures are grouped and called regional blocks by geographical condition, and eight regional blocks cover the whole of Japan.
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Acknowledgements
This research was funded by the Environment Research and Technology Development Fund (S-15, JPMEERF16S11501, JPMEERF16S11502, Ministry of the Environment, Japan), FY2021 commissioned work for policy research on the environmental economy (Development of Sustainable Local Scenarios Using Multi-dimensional Value Indicators, Ministry of the Environment, Japan), and a Grant-in-Aid for Japan Society for the Promotion of Science Scientific Research (19K20494).
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Appendices
Appendix 1. Forty-three consumption categories of CoLUM and the correspondence between household expenditure data and consumption price index data
Household expenditure | CPI | |
---|---|---|
1. Food and nonalcoholic beverages | ||
1.1 Food | 3~11 | 5 |
1.2 Nonalcoholic beverages | 12 | 15 |
2. Alcoholic beverages, tobacco and narcotics | ||
2.1 Alcoholic beverages | 13 | 16 |
2.2 Tobacco | 60 | 60 |
3. Clothing and footwear | ||
3.1 Clothing | 32~37, 39 | 33 |
3.2 Footwear | 38 | 36 |
4. Housing, water, electricity, gas and other fuels | ||
4.1 Actual rentals for housing | 17/2 | 19 |
4.2 Imputed rentals for housing | 17/2 | 19 |
4.3 Maintenance and repair of the dwelling | 18 | 20 |
4.4 Water supply and miscellaneous dwelling services | 23 | 25 |
4.5 Electricity, gas other fuels | 20,21 | 21 |
Direct household consumption (Heating) | 22 | 24 |
5. Household furnishings, equipment and maint | ||
5.1 Furniture, furnishings, carpets etc. | 25/2, 27 | 26 |
5.2 Household textiles | 26 | 28 |
5.3 Household appliances | 25/2 | 27 |
5.4 Glassware, tableware, and household utensils | 28 | 30 |
5.5 Tools and equipment for house and garden | 29 | 31 |
5.6 Goods and services for household maintenance | 30 | 32 |
6. Health | ||
Social protection | ||
6.1 Medical products, appliances, and equipment | 41,42,43 | 39 |
6.2 Out-patient services | 44/4 | 42 |
6.3 Hospital services | 44/4 | 42 |
7. Transportation | ||
7.1 Purchase of vehicles | 47/3 | 45 |
7.2 Operation of personal transport equipment | 47/3 | 45 |
7.3 Transport services | 46 | 44 |
7.4 Direct household consumption (transportation) | 47/3 | 45 |
8. Communication | ||
8.1 Postal services | 48/3 | 46 |
8.2 Telephone and telefax equipment | 48/3 | 46 |
8.3 Telephone and telefax services | 48/3 | 46 |
9. Recreation and culture | ||
9.1 Audio-visual, photo, and info. Processing equipment | 51/2 | 52 |
9.2 Other major durables for recreation and culture | 51/2 | 52 |
9.3 Other recreational equipment etc. | 52 | 53 |
9.4 Recreational and cultural services | 54/4 | 55 |
9.5 Newspapers, books, and stationery | 53 | 54 |
9.6 Package holidays | 54/4 | 55 |
10. Education | ||
10. Education | 49 | 47 |
11. Restaurants and hotels | ||
11.1 Catering services | 14,15 | 17 |
11.2 Accommodation services | 54/4 | 55 |
12. Miscellaneous goods and services | ||
12.1 Personal care | 57 | 57 |
12.3 Personal effects nec | 58,59 | 56 |
12.4 Social protection | 44/4, 54/4 | 42 |
12.5 Insurance | 44/4 | 42 |
12.6 Financial services nec | – | 1 |
12.7 Other services nec | 61 | 61 |
Appendix 2. Consumption categories of household expenditure data and consumption price index data
Household expenditure | CPI | ||||
---|---|---|---|---|---|
All items | 1 | All items | 1 | ||
Food | 2 | All items, less fresh food | 2 | ||
Cereals | 3 | All items, less imputed rent | 3 | ||
Fish and shellfish | 4 | All items, less food (less-alcoholic beverages) and energy | 4 | ||
Meat | 5 | Food | 5 | ||
Dairy products and eggs | 6 | Cereals | 6 | ||
Vegetables and seaweeds | 7 | Fish and shellfish | 7 | ||
Fruits | 8 | Meat | 8 | ||
Oils, fats, and condiments | 9 | Dairy products and eggs | 9 | ||
Cakes and candies | 10 | Vegetables and seaweeds | 10 | ||
Cooked food | 11 | Fruits | 11 | ||
Beverages | 12 | Oils, fats, and seasonings | 12 | ||
Alcoholic beverages | 13 | Cakes and candies | 13 | ||
Eating out | 14 | Cooked food | 14 | ||
Charges for board | 15 | Beverages | 15 | ||
Housing | 16 | Alcoholic beverages | 16 | ||
Rents for dwelling and land | 17 | Meals outside the home | 17 | ||
Repairs and maintenance | 18 | Housing | 18 | ||
Fuel, light, and water charges | 19 | Rents for dwelling and land | 19 | ||
Electricity | 20 | Repairs and maintenance | 20 | ||
Gas | 21 | Fuel, light and water charges | 21 | ||
Other fuel and light | 22 | Electricity | 22 | ||
Water and sewerage charges | 23 | Gas | 23 | ||
Furniture and household utensils | 24 | Other fuel and light | 24 | ||
Household durables | 25 | Water and sewerage charges | 25 | ||
Interior furnishings and decorations | 26 | Furniture and household utensils | 26 | ||
Bedding | 27 | Household durable goods | 27 | ||
Domestic utensils | 28 | Interior furnishings and decorations | 28 | ||
Domestic nondurable goods | 29 | Bedding | 29 | ||
Domestic services | 30 | Domestic utensils | 30 | ||
Clothes and footwear | 31 | Domestic nondurable goods | 31 | ||
Japanese clothing | 32 | Domestic services | 32 | ||
Clothing | 33 | Clothing and footwear | 33 | ||
Shirts and sweaters | 34 | Closing | 34 | ||
Underwear | 35 | Shirts and sweaters and underwear | 35 | ||
Cloth and thread | 36 | Other clothing | 36 | ||
Other clothing | 37 | Footwear | 37 | ||
Footwear | 38 | Services related to clothing | 38 | ||
Services related to clothing | 39 | Medical care | 39 | ||
Medical care | 40 | Medicines and health fortification | 40 | ||
Medicines | 41 | Medical supplies and appliances | 41 | ||
Health fortification | 42 | Medical services | 42 | ||
Medical supplies and appliances | 43 | Transportation and communication | 43 | ||
Medical services | 44 | Public transportation | 44 | ||
Transportation and communication | 45 | Private transportation | 45 | ||
Public transportation | 46 | Communication | 46 | ||
Private transportation | 47 | Education | Education | 47 | |
Communication | 48 | School fees | 48 | ||
Education | 49 | School textbooks and reference books for study | 49 | ||
Reading and recreation | 50 | Tutorial fees | 50 | ||
Recreational durable goods | 51 | Culture and recreation | Culture and recreation | 51 | |
Recreational goods | 52 | Recreational durable goods | 52 | ||
Books and other reading materials | 53 | Recreational goods | 53 | ||
Recreational services | 54 | Books and other reading materials | 54 | ||
Other living expenditure | 55 | Recreational services | 55 | ||
Miscellaneous | 56 | Miscellaneous | Miscellaneous | 56 | |
Personal care services | 57 | Personal care services | 57 | ||
Toilet articles | 58 | Personal care goods | 58 | ||
Personal effects | 59 | Personal effects | 59 | ||
Tobacco | 60 | Tobacco | 60 | ||
Other miscellaneous | 61 | Other miscellaneous | 61 | ||
Pocket money (of which, detailed | 62 | Fresh food | 62 | ||
Social expenses | 63 | Energy | 63 | ||
Remittance | 64 |
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Hori, K., Shirahama, S., Hashimoto, S. et al. Development of a method for downscaling ecological footprint and biocapacity to a 1-km square resolution. Sustain Sci 18, 1549–1568 (2023). https://doi.org/10.1007/s11625-022-01283-z
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DOI: https://doi.org/10.1007/s11625-022-01283-z