| Literature DB >> 30174753 |
Shinichiro Fujimori1, Naota Hanasaki2, Toshihiko Masui1.
Abstract
We estimated global future industrial water withdrawal (IWW) by considering socioeconomic driving forces, climate mitigation, and technological improvements, and by using the output of the Asia-Pacific Integrated Model/Computable General Equilibrium (AIM/CGE) model. We carried out this estimation in three steps. First, we developed a sector- and region-specific regression model for IWW. The model utilized and analyzed cross-country panel data using historical statistics of IWW for 10 sectors and 42 countries. Second, we estimated historical IWW by applying a regression model. Third, we projected future IWW from the output of AIM/CGE. For future projections, we considered and included multiple socioeconomic assumptions, namely different shared socioeconomic pathways (SSPs) with and without climate mitigation policy. In all of the baseline scenarios, IWW was projected to increase throughout the twenty-first century, but growth through the latter half of the century is likely to be modest mainly due to the effects of decreased water use intensity. The projections for global total IWW ranged from 461 to 1,560 km3/year in 2050 and from 196 to 1,463 km3/year in 2100. The effects of climate mitigation on IWW were both negative and positive, depending on the SSPs. We attributed differences among scenarios to the balance between the choices of carbon capture and storage (CCS) and renewable energy. A smaller share of CCS was accompanied by a larger share of non-thermal renewable energy, which requires a smaller amount of water withdrawal per unit of energy production. Renewable energy is, therefore, less water intensive than thermal power with CCS with regard to decarbonizing the power system.Entities:
Keywords: Computable general equilibrium model; Industrial water withdrawal; Shared socioeconomic pathway; Technological assumption
Year: 2016 PMID: 30174753 PMCID: PMC6106114 DOI: 10.1007/s11625-016-0392-2
Source DB: PubMed Journal: Sustain Sci ISSN: 1862-4057 Impact factor: 6.367
Fig. 1Methodological framework
Statistics used in the panel data analysis
| Source | Year of publication | Publisher | Number of industrial sectors | Years covered | Countries covered |
|---|---|---|---|---|---|
| AQUASTAT | 2012 | FAOa | 1 (industry only) | 1965–2010 (limited data for some countries) | 85 |
| Environmental accounts: consumption of water resources by industrial sector | 2009 | Office for National Statistics (UK)b | 15 | 1997 | 1 |
| Estimated use of water in the US in 2000 | 2004 | USGS (US)c | 1 (electricity only) | Every 10 years since 1970 | 1 |
| Industrial statistics | 2007 | METI (Japan)d | 10 | 1950–2004 | 1 |
| Industrial water use | 2010 | Statistics Canadae | 18 | 2005–2007 | 1 |
| Report on the state of the environment in China | 2010 | Ministry of Environmental Protection of the People’s Republic of Chinaf | 43 | 2004–2007 | 1 |
| SI-STAT database | 2011 | Statistical Office of the Republic of Sloveniag | 8 | 1985–2005 | 1 |
| Water Account Australia | 2010, 2006 | Australian Bureau of Statisticsh | 15 | 2001, 2004, 2008 | 1 |
| Water Statistics (EUROSTAT) | 2011 | European Commissionsi | 10 | 1998–2007 | 37 |
FAO Food and Agriculture Organization of the United Nations, USGS US Geological Survey, METI Ministry of economy, trade, and industry
aFAO (2012), b Office for National Statistics (United Kingdom) (2009), c USGS (2004), d Industrial statistics (2007), e Statistics Canada (2010), f Report on the State of the Environment In China (2010), g SI-STAT database (2011), h The Australian Bureau of Statistics (2006), i EUROSTAT (2011)
Scenario framework
| SSP1 | SSP2 | SSP3 | SSP4 | SSP5 | |
|---|---|---|---|---|---|
| Baseline | SSP1_BaU | SSP2_BaU | SSP3_BaU | SSP4_BaU | SSP5_BaU |
| Climate mitigation (3.4 W/m2 stabilization) | SSP1_34W | SSP2_34W | SSP3_34W | SSP4_34W | SSP5_34W |
Fig. 2Main driving forces of global industrial water withdrawal (IWW) for the baseline cases
Fig. 3Global electricity energy sources. a–e are for the baseline and f–j are for mitigation scenarios
Key assumptions regarding the power supply in the different SSPs
| SSP1 | SSP2 | SSP3 | SSP4 | SSP5 | |
|---|---|---|---|---|---|
| Consumption of/dependency on fossil fuels | Low | Med | High | High and low* | High |
| Introduction of non-biomass renewable energy | High | Med | Med | High | Low |
| Acceptance of CCS | Low | Med | Med | High | Med |
CCS carbon capture and storage
* Differentiation across income levels and high- and low-income countries is assumed to be high and low, respectively
Results of panel data analysis
|
| Intercept | Number of countries | Number of data points | |||||
|---|---|---|---|---|---|---|---|---|
| Estimates |
| Estimates |
| |||||
| Industry total | −0.011 | −2.7 | *** | −3.900 | −21.0 | *** | 77 | 225 |
| Basic metal | −0.014 | −4.8 | *** | −1.920 | −6.6 | *** | 7 | 60 |
| Chemistry | −0.045 | −13.5 | *** | −1.660 | −5.1 | *** | 12 | 82 |
| Electricity | −0.031 | −6.1 | *** | 0.445 | 1.8 | * | 8 | 60 |
| Food processing | −0.021 | −9.0 | *** | −3.595 | −23.4 | *** | 11 | 75 |
| Mining | −0.038 | −2.1 | ** | −1.445 | −1.9 | * | 7 | 30 |
| Non-metal and mineral | −0.037 | −12.8 | *** | −2.982 | −11.5 | *** | 4 | 38 |
| Paper and pulp | −0.016 | −4.5 | *** | −2.823 | −9.7 | *** | 13 | 91 |
| Textile | −0.034 | −9.2 | *** | 11 | 79 | |||
| Other manufacturing | −0.089 | −4.6 | *** | 7 | 27 | |||
*** P < 0.01, ** P < 0.05, * P < 0.10
Fig. 4Projected total global IWW compared with the results of existing studies (Shiklomanov 2000; Alcamo et al. 2007; Shen et al. 2008; Hanasaki et al. 2013a; Hayashi et al. 2012; Bijl et al. 2016; Hejazi et al. 2014b)
Fig. 5Regional breakdown of projected IWW using shared socioeconomic pathways (SSPs)
Fig. 6IWW by sector in 2005 and projected withdrawal in 2100. The sectoral classification is AIM/CGE shown in Table 8
Comparison of the results of the present study with those of Vassolo and Döll (2005)
| Cooling of thermal power stations (km3/year) | Manufacturing (km3/year)** | |||||
|---|---|---|---|---|---|---|
| This study | Vassolo and Döll ( | This study | Vassolo and Döll ( | |||
| Year | 2005 | 1995 | 1995 | 2005 | 1995 | 1995 |
| North America | 219.19 | 195.38 | 224.40 | 35.19 | 40.79 | 42.53 |
| Latin America | 14.93 | 8.54 | 7.31 | 18.40 | 17.52 | 21.39 |
| Africa | 7.78 | 4.66 | 3.64 | 5.52 | 3.88 | 6.22 |
| Europe | 176.06 | 149.57 | 121.79 | 50.02 | 49.70 | 96.59 |
| West Asia | 2.70 | 1.44 | 1.46 | 0.55 | 0.42 | 2.72 |
| Asia | 147.40 | 87.95 | 41.03 | 150.81 | 78.59 | 149.42 |
| Oceania | 2.85 | 2.07 | 1.14 | 0.46 | 0.63 | 5.93 |
| World | 570.92 | 449.61 | 400.77 | 260.96 | 191.54 | 324.79 |
** Our study includes mining while that of Vassolo and Döll (2005) does not
Panel data analysis: F test and Hausman-type test
|
|
| |
|---|---|---|
| Industry total | 5.82E−55 | 0.94 |
| Basic metal | 2.47E−29 | 0.79 |
| Chemistry | 6.51E−44 | 0.89 |
| Electricity | 5.86E−28 | 0.65 |
| Food processing | 1.79E−26 | 0.82 |
| Mining | 5.90E−20 | 0.85 |
| Non-metal and mineral | 4.94E−09 | 0.18 |
| Paper and pulp | 2.97E−42 | 0.80 |
| Textile | 1.42E−24 | 0.01 |
| Other manufacturing | 1.82E−07 | 0.03 |
Region codes
| Code | Region | Code | Region |
|---|---|---|---|
| JPN | Japan | TUR | Turkey |
| CHN | China | CAN | Canada |
| IND | India | USA | United States |
| XSE | Southeast Asia | BRA | Brazil |
| XSA | Rest of Asia | XLM | Rest of South America |
| XOC | Oceania | XME | Middle East |
| XE25 | EU25 | XNF | North Africa |
| XER | Rest of Europe | XAF | Rest of Africa |
| CIS | Former Soviet Union |
Industrial classifications of AIM/CGE
| Agricultural sector | Energy supply sector | Other production sectors |
|---|---|---|
| Rice | Coal mining | Mineral mining and other quarrying |
| Wheat | Oil mining | Food products |
| Other grains | Gas mining | Textiles, apparel, and leather products |
| Oil seed crops | Petroleum refinery | Wood products |
| Sugar crops | Coal transformation | Paper, paper products, and pulp |
| Other crops | Biomass transformation (1st generation) | Chemical, plastic, and rubber products |
| Ruminant livestock | Biomass transformation (2nd generation with energy crop) | Iron and steel |
| Raw milk | Biomass transformation (2nd generation with residue) | Nonferrous products |
| Other livestock and fisheries | Gas distribution | Other manufacturing |
| Forestry | Coal-fired power | Construction |
| Oil-fired power | Transport and communications | |
| Gas-fired power | Other service sectors | |
| Nuclear power | CCS service | |
| Hydroelectric power | ||
| Geothermal power | ||
| Photovoltaic power | ||
| Wind power | ||
| Waste biomass power | ||
| Other renewable energy power generation | ||
| Advanced biomass power generation |
CCS carbon capture and storage