1. Introduction
Agriculture is the main water consumption sector in China, accounting for about 60% of the total water use in the country. Irrigation water comprises more than 90% of the agricultural water use [
1]. Therefore, improving the efficiency of water resource use in agricultural production is an important way to relieve the pressure on China’s overall water resources. Reasonable assessments of the demand by crops for water resources and the utilization of water resources in the production of crops can provide a theoretical basis for improving the management and regulation of agricultural water resources [
2]. Compared to the traditional water use evaluation approach, the relatively new concept of the “water footprint” provides a framework to assess the impact of human production and consumption activities on water resources from the aspects of amounts, types, and utilization efficiency [
3,
4,
5,
6]. Additionally, the quantification of the crop water footprint (CWF) in agricultural production is the basis for analyzing the water footprint of the entire social production and consumption activities in this sector and the virtual water trade [
6].
Currently, international research on CWF generally focuses on three aspects. The first is examining the spatial–temporal evolution of the production water footprint of typical and staple crops [
7,
8,
9,
10], or comparing CWFs across different regions, to provide new ideas (such as the virtual water trade) for solving water shortages and innovative water resource management systems [
11,
12,
13,
14,
15]. The second is evaluating the pressure on water resources and efficiency of water use based on CWF in order to optimize the agricultural planting structure [
1,
16,
17]. The third aspect is exploring the meteorological and agricultural input factors that affect a crop’s production water footprint [
5,
18,
19,
20]. However, these studies merely focus on the water footprint of crop production, i.e., the fresh water consumption per unit of crop production (m
3/tonne), which is an indicator of production level. However, the total CWF reflects agricultural water consumption in its entirety, and is of more concern to local policy makers and residents than simply the amount of water used in production.
Some research has applied fuzzy mathematics to explore the influence of various factors on CWF. For example, one function such as
Y =
f(
C1,
C2,
… Cn;
P1,
P2,
… Pn) contains all factors [
5]; however, this has low accuracy because fuzzy mathematics cannot express the physical mechanism of the production process. In contrast, the Cobb–Douglas production function (i.e.,
Y = A(
t)
LαKβµ) provides a more powerful tool than fuzzy mathematics to examine the factors influencing CWF because production activities are specifically addressed by mathematical relationships. Furthermore, the Cobb–Douglas function is based on a physical process and is accurate.
Agricultural water conveyance projects, both above- and below-ground, determine whether crops can be irrigated in arid and sub-arid areas [
21]. As the most controversial area for water use in China, Xinjiang has the highest agricultural water use, accounting for 96% to 98% of the region’s water consumption. Agricultural water conveyance projects guarantee the irrigation of crops. For example, the number of reservoirs is 655, with total capacity 19.8 billion m
3, and the total length of irrigation ditches in Xinjiang’s irrigation districts is 188,000 km. Thus, the influence of agricultural water conveyance projects on crop production in irrigated districts cannot be ignored; yet, this aspect has not been analyzed in previous research. In addition, some previous studies only examined agricultural planting structure adjustment strategies through water footprint theory [
16,
22]; these studies did not explore the impact of changes in agricultural planting structure on the CWF, or examined them only in qualitative terms [
23].
Agricultural production activities are a complex process that integrates nature and society. Climatic factors such as temperature and sunshine, as well as social production factors (such as agricultural inputs, agricultural planting structures, and agricultural water conservancy engineering measures) influence the increase or decrease of CWF. However, the effects of these different factors vary significantly. According to previous research, the impact of climatic conditions on the water footprint of crop production is negligible compared to that of social factors such as agricultural investment [
5,
18]. Therefore, quantitatively investigating the effects of social production factors on CWF, as well as their sensitivities and relative contributions, can help clarify the main driving factors that influence CWF, and provide a theoretical basis for water footprint regulation and agricultural water resources management.
The objectives of this study were to analyze variations in the magnitude of CWF in Xinjiang over time and determine the major factors that influence the variations, in order to provide proposals for water resources management. First, the long-term CWFs in Xinjiang (including Xinjiang Uygur Autonomous Region and Xinjiang Production and Construction Corps) from 1988 to 2015 were determined, and variations in the annual CWFs were analyzed. Then, the effect of crop-planting structure variation on CWFs was examined, and the impact of direct factors (such as agricultural production inputs and agricultural water conservancy projects) was assessed through sensitivity and contribution analysis. These analyses revealed the major factors that caused the magnitude of CWFs to vary. Finally, the suitable and optimal agricultural water consumption and planting area in Xinjiang were determined.
2. Materials and Methods
2.1. Physical Setting
Xinjiang is an inland hinterland of the Eurasian continent (
Figure 1). It is a temperate arid region and has a total area of 1.66 × 10
6 km
2, accounting for almost 17% of China’s land area. Due to the fact that Xinjiang is far from the sea, most of its prefectures experience dry climates and scarce rainfall. The average annual rainfall of Xinjiang is 146 mm, the average annual evaporation is 1600–2300 mm, and the average annual sunshine is approximately 2800 h. Because the annual and daily temperature differences are extremely large, natural resources such as daylight, heat and land are in a good condition, making Xinjiang one of China’s important agricultural production areas. Although the level of agricultural science and technology (such as animal breeding techniques, fertilizers, pesticides, agricultural machinery, plastic film, and water-saving irrigation) in Xinjiang has gradually increased [
24], it has lagged far behind the national level. From 2012 to the end of 2015, the high-efficiency and water-saving irrigation area in Xinjiang increased by slightly more than 1 million ha, and the total area has reached 3.33 million ha (including that in the Xinjiang Production and Construction Corps). In addition, the high-efficiency and water-saving irrigation area accounts for 54% of the total irrigated area of Xinjiang, and accounts for 73% of China’s total micro-irrigation area. The utilization coefficient of irrigation water increased from 0.49 in 2012 to 0.52 in 2015, and the gross irrigation quota decreased from 45.33 m
3/ha to 40.67 m
3/ha (610 m
3/mu). In 2015, Xinjiang’s gross regional product was 93.2 billion yuan (
$13.68 billion), of which the agricultural added value was 16.72% (15.6 billion yuan or
$2.30 billion). In the same period, the total water consumption of Xinjiang was 56.14 billion m
3, including 54.06 billion m
3 of agricultural irrigation. Water for agricultural irrigation comprises almost all water use in Xinjiang.
2.2. Data Description
Climate data (1988–2015) from 88 weather stations in Xinjiang (
Figure 1) were used, including daily sunshine hours, average wind speed, relative humidity, rainfall and maximum and minimum temperature. The data for population, urbanization level, agricultural added value, output of crops, sowing area, yield per unit area, agricultural machinery, rural electricity consumption, fertilizer consumption, water utilization efficiency and effective irrigation area, were taken from the
Xinjiang Statistical Yearbook (1989 to 2016) and the
Statistical Yearbook of Xinjiang Production and Construction Group (1990 to 2016). Missing data were estimated using a time series data interpolation method.
The main crops produced in Xinjiang were evaluated in the study. These included wheat, corn, rice, potato, beans, cotton, oil, vegetables, melons, apples, pears, grapes, dates, alfalfa, hemp and medicinal crops. The agricultural added values at constant prices were obtained from the statistical yearbooks of both the Xinjiang Autonomous Region and the Xinjiang Production and Construction Group. The data for the amount of regional water resources and agricultural water consumption were obtained from the Xinjiang Water Resources Bulletin (2001 to 2015). The data about agricultural water conservancy projects included the number of irrigation reservoirs, total pond area of irrigation reservoirs, total length of irrigation ditches and the number of irrigation wells, and were obtained from the First National Water Conservancy Survey in Xinjiang Uygur Autonomous Region (2013).
2.3. Calculation of Crop Water Footprint (CWF)
CWF includes “green”, “blue” and “grey” water footprints. The blue water footprint refers to the consumption of surface water and groundwater. The green water footprint refers to the consumption of rainwater insofar as it does not become runoff. The grey water footprint refers to the volume of freshwater required to assimilate the load of pollutants to a given water quality standard [
25,
26]. CWF in this study was calculated using Equations (1)–(8) based on methods in
The Water Footprint Assessment Manual by Hoekstra [
25]. Grey water was not included because no consensus exists among researchers about the methods for calculating grey CWF; furthermore, the volume of the grey water footprint in crop production is very small in Xinjiang [
27].
In Equation (1), WFproc represents the volume of CWF in a process (m3/kg), WFproc,green is the green CWF (m3/kg), and WFproc,blue represents the blue CWF (m3/kg).
Green CWF was calculated as:
where
CWUgreen is the volume of green crop water usage (m
3/ha),
Y is the crop yield per unit area (kg/ha),
ETgreen is the green crop water requirement, represented by green crop evapotranspiration (mm),
d is the day number, and the multiplier 10 converts precipitation depth to water volume per unit land area (m
3/ha). The summation ∑ in Equation (3) calculates
CWUgreen from the date of planting (
d = 1) to harvest. lgp represents the length of the growing process (d), and
ETc is the crop evapotranspiration (mm), which is calculated using the software Cropwat8.0 as recommended by the United Nations Food and Agriculture Organization (FAO).
Peff is the effective precipitation for crops (mm).
Blue CWF was calculated as:
where
CWUblue is blue crop water usage (m
3/ha), and
ETblue is the blue crop water requirement (mm). The other quantities are the same as for Equations (2)–(4).
Thus, CWF for all crops was determined using Equation (8):
where
CWF is total volume of CWF (m
3),
i is the crop category, and
Ai is the area of crop
i (ha).
2.4. Factor Selection
Based on Equations (1)–(8) and previous research, production factors include agricultural machinery (expressed in terms of total power), rural electricity consumption and fertilizer consumption. Agricultural water conservancy projects were considered in this study, specifically the number of irrigation reservoirs, total pond area of irrigation reservoirs, total length of irrigation ditches, and the number of irrigation wells. It should be noted that no inevitable relationship existed between the total pond area and the number of irrigation reservoirs because, in Xinjiang, the total pond area of reservoirs is not determined by the number of irrigation reservoirs, but rather by whether the reservoirs can impound water immediately in the flood season.
2.5. Analysis of the Effects of Planting Structure and Planting Area on CWF
Both planting area and planting structure were assumed to affect CWF during the study period, but it was unclear what role the adjustment of the planting structure played. Therefore, two hypothetical experiments were used to analyze the effects of planting structures and planting area separately.
The first experiment (Exp. 1) assumed that the planting structure did not change, but the planting area did change. In other words, the control factor was the planting structure, and the change factor was the planting area. Based on the proportion of crops planted in 1988, the planting area of each crop was designated as the actual total planting area in each year of the study period multiplied by the planting proportion that existed in 1988. The resulting CWF was calculated using Equation (9):
where
CWF is the crop water footprint (m
3) in a given year of the study period,
i indicates the crop type,
PWFi indicates the production water footprint of the
ith crop (m
3/kg),
Pi indicates the yield per unit area of crop
i (kg/ha),
Aact indicates the actual planted area occupied by all crops (ha), and
a1988,i is the proportion of total cropped area in 1988 that was occupied by the
ith crop.
The second experiment (Exp. 2) assumed that the planting area did not change, but the planting structure did change. In other words, the control factor was the planting area, and the change factor was the planting structure. Based on the total planting area of 1988 crops, the planting area of each crop was designated as the actual planting proportion in each year of the study period multiplied by the total planting area in 1988. The CWF was then calculated using Equation (10):
where
i,
CWF,
PWFi and
Pi have the same meaning as in Equation (9).
A1988 denotes the total planting area in 1988 (ha), and
aact,i indicates the actual planting proportion of the
ith crop in a given year of the study period.
In both hypothetical experiments, actual values for the yield per unit area (Pi) and the production water footprint (PWFi) were used.
2.6. Calculation of Elasticity Coefficient and Relative Contribution
An agricultural production function (Equation (11)) was developed based on the Cobb–Douglas production function:
where
C is the total water footprint of the crop (m
3),
A is a coefficient,
Xi is the factor influencing CWP, and
αi is the elasticity coefficient of
Xi. Using a logarithmic transform, the function model described by Equation (11) can be converted to a linear function described as Equation (12):
Regression analysis of Equation (12) yields the factors affecting the elasticity coefficient
αi. The relative contribution of each factor to a crop’s production water footprint,
Vi, can be calculated using Equation (13):
4. Discussion
Agriculture is currently the world’s largest freshwater consumer. Reasonable assessment of the demand and consumption of water in the crop production process has great significance in improving agricultural water management practices. From the perspective of the water footprint, agricultural water use can be assessed in terms of type and quantity [
4,
6]. CWF is mainly affected by local agro-climatic conditions and agricultural production levels, but agro-climatic conditions mainly affect the water footprint of crop production by affecting the crop evapotranspiration; however, this effect is far less than the impact of social production factors [
5]. Moreover, an increase in the total CWF mainly arises from the expansion of the planting area resulting from the improvement of agricultural production level. Therefore, in the process of exploring the factors that influenced the CWF in Xinjiang, meteorological factors were omitted from this study, and focus was placed on the effects of planting structure, agricultural inputs, and agricultural water conservancy projects.
In Xinjiang, the convenience of agricultural water-drawing conditions directly determines the scale and technical level of agricultural production. Therefore, in exploring the factors that influence total CWF, this study introduced the elements of agricultural water conservancy projects according to local conditions. To match CWF with the factors of agricultural water conservancy projects, the relationships among agricultural inputs, agricultural water conservancy projects, and CWFs in 14 prefectures in 2011 were explored. This method of “replacing time with space” has been used in some studies [
28] to compensate for the lack of data. However, there is no precedent for this approach in previous research on water footprints, and the accuracy is yet to be verified.
In addition, the development of current agricultural water-drawing projects in Xinjiang has encountered a bottleneck. The irrigation technology and system above-ground are relatively developed, but the cost of operation and maintenance is very expensive. For example, drip tape is prone to clogging in drip irrigation system because plants and manure-mixed water could block the tiny orifices in drip emitters, so farmers have to change new equipment and waste lots of money [
29,
30]. Many motor-pumped wells for groundwater drawing fail due to inappropriate usage and lack of government, and a lot of wells are forbidden to use for over-drawing of groundwater leading to a severe decline of the water table and ecological degradation. Therefore, with respect to political governance, the cost of critical infrastructure operations and the losses of failure [
31,
32], the scale of agricultural water-drawing projects will not be enlarged in the near future, and the CWF in Xinjiang will not increase with large amplitude, either.
The exploration of how agricultural inputs influence the CWF (elasticity and contribution) was based on the Cobb–Douglas production function. The function prototype was
Y = A(
t)
LαKβµ, where
Y is the total output;
A(
t) is the comprehensive technical level;
L and
K are labor and capital inputs, respectively;
α and
β are the output elasticity coefficients of labor and capital, respectively; and
μ represents the impact of random interference. All these factors were applied to the process of crop production. Some studies have classified the effective irrigation area and irrigation water use efficiency as agricultural inputs, and used fuzzy mathematics to explore the relationship between these factors and production water footprint [
5].
In this study, the use of fuzzy mathematics was considered inappropriate. According to the Cobb–Douglas function, the inputs of labor and capital all directly participate in the production activities. However, for the CWF, the effective irrigation area and irrigation water use efficiency are not direct factors involved in the production process and can be regarded only as the expression of the agricultural production level. Therefore, these factors cannot be included with other direct factors in the Cobb–Douglas production function. Furthermore, compared to fuzzy mathematics, the Cobb–Douglas function has the advantages of accuracy and a physical basis. Yet, when analyzing the indirect factors that do not participate in the production process (such as the population’s demand for food, effective irrigation area, etc.), the Cobb–Douglas function fails. In addition, in previous studies only agricultural planting structure adjustment strategies were examined through water footprint theory [
16,
22]; these studies did not explore the impact of changes in agricultural planting structure on the CWF, or just examined the impact qualitatively. In contrast, this study used hypothetical controlled-variable experiments to quantitatively analyze the impact of agricultural planting structure on the total CWF; this approach is a groundbreaking exploration.
The intention of building agricultural water conservancy projects in Xinjiang is to guarantee the availability of irrigation water under drought conditions. However, according to this study, these water conservancy projects, such as Wruwat, Dashixia, Xiaoshixia Reservoirs and Wushishui water canal [
33,
34], have greatly contributed to the increase in the magnitude of the CWF. That is to say, the construction of agricultural water conservancy projects has made it convenient for farmers to irrigate and enlarge their planting area, often in a disorderly way without planning. Although the irrigated area with highly efficient water-saving techniques accounted for 54% of the total irrigated area in Xinjiang, one of the main reasons why the average irrigation water utilization coefficient is still low (0.52) can be attributed to disordered flood irrigation. Thus, to stop the disorderly use of irrigation water and chaotic land reclamation, the water abstraction license management system must be strictly strengthened and sanctioned by law.
The variation of agricultural planting structure is characterized by the increased planting of high-water consumption crops (e.g., cotton) and the decreased planting of low-water consumption crops (e.g., corn and wheat). This fundamental change has further increased the magnitude of Xinjiang’s CWF. Naturally, farmers want the maximum economic benefits from their efforts. However, the pursuit of economic gains while neglecting the social and ecological effects of production techniques may increase the amount of money farmers earn, but at the expense of larger consumption of agricultural water, decreasing the availability of water for ecological use and leading to unsustainable development. Some previous research has examined the optimal crop structure and distribution globally, in the USA and in Central Asia, for the purpose of water conservation by reducing the CWF and promoting virtual water trade [
15,
17,
35,
36]. Such research provides new ideas through which to evaluate the optimal planting structure and distribution in Xinjiang and China in subsequent research.
In 2015, the total water consumption in Xinjiang was 57.72 billion m3, approximately 94% (54.06 billion m3) of which was agricultural irrigation water. The areas of farmland and crop planting had already exceeded 6.6 million ha by the end of 2015. In response to the current water resources problems of a declining water table and reduced surface water volume arising from the continuous increase in agricultural water consumption, the government of Xinjiang is implementing a series of countermeasures. These include the “Three Red Lines” projects, a stricter managerial system for water resources, and water rights markets, etc. However, neither government officials nor academic scholars have clear targets for water reduction in Xinjiang. How much water consumption and farmland should be reduced? What scale of farmland and agricultural water consumption should be controlled?
This study attempted to estimate the optimal agricultural water use and the corresponding planting area by exploring the marginal benefits of the water footprint based on the marginal benefit theory from the perspective of economics. Marginal benefit refers to the benefit obtained by selling or consuming one additional unit of a good [
37,
38]. In this study, the relationship between water footprint and agricultural added value was well described (R
2 = 0.89) using a logarithmic function:
y(
x) = 247.33ln(
x) − 1210.71 (
Figure 6), in which
x is the CWF and
y(
x) is the added value of agricultural products. The marginal benefit was defined by the first derivative of the function
y(
x), and yielded
y′(
x) = 247.33/
x [
37]. The derivative
y′(
x) tends to decrease gradually as the magnitude of the CWF increases, i.e., the marginal benefit of the additional CWF declines. The maximum economic benefit of the CWF is identified when the value of the derivative function is 1. When
y′(
x) is less than 1, the increase in agricultural added value is greater than the increase in water footprint. Conversely, when the derivative value exceeds 1, the increase of water footprint exceeds the increment of agricultural added value; specifically, if the crop water footprint increases one unit, the increase of agricultural added value is less than one unit.
When
y′(
x) equals 1, the CWF is 24.73 billion m
3, and the benefit of the CWF is greatest. In other words, the optimal CWF in Xinjiang is 24.73 billion m
3 (
Figure 6). In this condition, the blue crop water footprint is 20.5 billion m
3, which, if divided by the irrigation water use factor of 0.52 for Xinjiang, indicates that the optimal volume of agricultural irrigation water is 39.4 billion m
3; this is 73% of the current agricultural water consumption. The “hydraulic radius” was used to calculate ecological river basal flow [
39]. Currently, the rate of water resources development and utilization in Xinjiang has reached 63%, far exceeding the ecological warning line (i.e., 40%) used in international water resources development practice.
If the volume of irrigation water is reduced to 39.4 billion m3 and the associated total water consumption is decreased to 43 billion m3, the water utilization rate will be less than 50%. According to the current gross irrigation quota of 9150 m3/ha (610 m3/mu) in Xinjiang, 39.4 billion m3 of agricultural water can support 4.3 million ha (64.59 million mu) of farmland, which is only 65% of the area currently in agricultural production. With enhanced agricultural production in the future, the gross irrigation quota will be reduced further, and the amount of farmland that can be supported might be increased correspondingly.
Xinjiang has good quality agricultural production conditions such as sunshine, land resources, and large differences in day–night temperature, etc. But the relative shortage of water resources has seriously restricted the development of agriculture, and decreased local living standards. To solve the current water utility dilemma in Xinjiang, many social groups and individuals have proposed a series of water conveyance schemes, such as “Hongqi River” [
40] and “Great West Line” [
41], to transfer fresh water from south-west China to Xinjiang. However, the government has not endorsed these schemes; thus, whether (or when) the water conveyance projects will be implemented to transfer water resources to Xinjiang is unclear. Therefore, in the short term, the water resources in Xinjiang will not increase. Against this background, proper measures are crucially needed to reduce agricultural water consumption and the amount of cultivated land.
5. Conclusions
This study determined the annual CWF of Xinjiang from 1988 to 2015, explored the effect of agricultural planting structure on the total CWF, and analyzed the relationships among agricultural inputs, water conservancy projects and the CWF. Marginal benefit theory was introduced to examine the optimal amount of agricultural water consumption and farmland area in Xinjiang. The results support the following conclusions and perspectives.
The magnitude of the CWF in Xinjiang significantly (i.e., exponentially) increased during the 28-year study period, from 13.02 billion m3 in 1988 to 46.48 billion m3 in 2015 (a 256% increase). The expansion of the cultivated area is the main reason for the rapid increase of CWF. The crop-planting structure in Xinjiang has contributed to the increase in the total CWF. This influence is mainly due to a dramatic expansion in the planting area of high water-consumption industrial crops (such as cotton, red dates, etc.). The change to these crops has been prompted by the large revenues they generate and the consequent high incomes for farmers. Construction of agricultural water conservancy projects has greatly facilitated the diversion of irrigation water, which has promoted the expansion and reproduction of the scale of agricultural production activities. This Cobb–Douglas production function has a good accuracy for describing the effect of various production factors on the CWF; however, the function only analyzes factors that directly participate in the production process. The optimal agricultural water consumption and farmland area in Xinjiang are 39.4 billion m3 and 4.3 million ha, 73% and 65% of the current water use and planting area, respectively. Against the background of no extra-water being transferred to Xinjiang in the short term, effective measures are urgently needed to reduce agricultural water consumption and the amount of cultivated land.
Xinjiang suffers from an extreme scarcity of water resources, but still plays essential roles in agricultural production, such as its role as the cotton base in the national commodity market. Fresh water resources in Xinjiang is transferred out of the territory along with the transportation of agricultural products, and forms a pattern of “west-to-east” water transition as a type of “virtual water”. Therefore, from the perspective of ecological compensation, how much virtual water has been transported outward and to which provinces and cities has virtual water mainly been transferred will be explored in the next research work.