Next Article in Journal
Corporate-Run Society: The Practice of the Danwei System in Beijing during the Planned Economy Period
Next Article in Special Issue
A Novel Approach to Measuring Urban Waterlogging Depth from Images Based on Mask Region-Based Convolutional Neural Network
Previous Article in Journal
Benchmarking Energy Use at University of Almeria (Spain)
Previous Article in Special Issue
Strategic Insights into the Cauvery River Dispute in India
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Multi-Objective Optimal Allocation of Urban Water Resources While Considering Conflict Resolution Based on the PSO Algorithm: A Case Study of Kunming, China

1
State Key Laboratory of Hydrology-Water Resources and Hydraulic Engineering, Hohai University, Nanjing 210098, China
2
Business School, Hohai University, Nanjing 211100, China
*
Author to whom correspondence should be addressed.
Sustainability 2020, 12(4), 1337; https://doi.org/10.3390/su12041337
Submission received: 22 December 2019 / Revised: 2 February 2020 / Accepted: 3 February 2020 / Published: 12 February 2020
(This article belongs to the Special Issue Water Resources and Green Growth)

Abstract

:
With the rapid increase of water demand in urban life, ecology and production sectors, the problem of water resources allocation has become increasingly prominent. It has hindered the sustainable development of urban areas. Based on the supply of various water sources and the water demand of different water users, a multi-objective optimal allocation model for urban water resources was proposed. The model was solved using the algorithm of particle swarm optimization (PSO). The algorithm has a fast convergence and is both simple and efficient. In this paper, the conflict over Kunming’s water resources allocation was taken as an example. The PSO algorithm was used to obtain optimized water resources allocation plans in the year 2020 and 2030, under the circumstances of a dry year (inflow guarantee rate p = 0.825) and an unusually dry year (inflow guarantee rate p = 0.885), respectively. The results showed that those allocation plans can lower the future potential water shortage rates of Kunming. At the same time, the interests of different sectors can all be satisfied. Therefore, conflicts over urban water use can be effectively alleviated.

1. Introduction

In recent years, China’s water resources situation has generally become more severe. According to a survey of China’s water security situation in 2016, China’s per capita water resources are far below the global average of 2354.9 m3. In addition, only 62.8% of China’s total water resources and 22.2% of lake water quality in China can be drinkable [1]. About two-thirds of the country’s cities have different degrees of water shortages. Moreover, with the acceleration of urbanization in China and the continuous growth of population, the water consumption by urban municipal and health systems is on the rise. According to the data of China Water Resources Bulletin in 2017, the proportion of domestic water and artificial ecological supplements increased from 13.6% and 2.4% to 14.3% and 3.3%, respectively. China’s agricultural and industrial water still makes up a large proportion of these supplements. The contradiction between supply and demand of water resources has further deepened. Especially in the areas facing drought and water shortages, the urban water shortage situation is not optimal. Taking Kunming, a city that typically suffers from drought, as an example, according to the Kunming Water Resources Bulletin in 2017, the total water consumption of the city reached 1.832 billion m3, and experienced a decrease of 3.5% over the previous year. Specifically, the proportion of urban industrial and agricultural water, residential water and ecological water was 70.7%, 23.7% and 5.6%, respectively, compared to 71%, 23.2% and 5.8% in the previous year. This indicates that the gap between production water and residential water and between ecological environment water consumption is shrinking. This trend will continue. With the rapid development of the economy, enterprises in the field of industry and agriculture usually generate a large amount of water demand, which has impacts on urban life and ecological water. However, due to inefficient water pricing and unreasonable rates, cities have a lot of water losses [2]. Even in the dry period, high-water consumption industries such as car washes and bathing still develop, which intensifies competition among water users. This conflict over water resources allocation not only hinders the flow of water from low-value industries to high-value industries, but also leads to cities being unable to maintain sustainable levels of water resources. The question of how to alleviate conflicts over water resource allocations in cities through optimization is a problem that must be focused on to ensure the sustainable development of society.
At present, some research has already been carried out on the optimal allocation of water resources. Chen et al. [3] established a joint scheduling model for different water sources (surface water, groundwater and rainfall) to improve the water use efficiency of the Sanjiang Plain planting area. Yang et al. [4] used grounder modeling systems (GMS) to establish the Weihe River groundwater flow model, which provides decision support for multi-source water resources scheduling in Jinghe River. Li et al. [5] proposed a multi-stage fuzzy stochastic programming model for water resources management research. Zhang et al. [6] constructed a two-stage allocation mechanism based on performance to motivate two competing water consumers to act in accordance with their local provincial governor’s interests. Tian et al. [7] proposed an integrated framework for the evaluation of the comprehensive impact of inter-basin water transfer projects. Chandramouli et al. [8] established a reservoir model based on programming techniques and machine learning algorithms. Davijani et al. [9] proposed a water resource optimization allocation model based on particle swarm optimization (PSO), which can provide support for industrial and agricultural employment assignment decisions. The existing literature on optimal allocation of water resources combines system analysis technology, optimization technology and a large number of computer technologies [10,11,12]. However, this research mainly focuses on the optimal allocation of water resources in basins and across these basins [13,14,15,16,17,18,19,20,21,22], while there is little research available on the optimal allocation of water resources in different water sectors in the same area, especially in drought areas. Only Zou has thus far studied the urban water allocation of Kunming using dualistic water cycle theory and system entropy in 2019 [23]. In that research, ecological benefits were mainly considered, which would be conducive to the long-term healthy development of urban water resource systems. However, the allocation of water resources is essentially a problem that requires resolving the conflict between the water demand sector and the water supply sector. Considering the ecological benefits based on the perspective of conflict resolution would make it easier to conduct an optimal allocation of water resources. Moreover, the efficiency of model solving is relatively low, and the more intelligent and effective model solving algorithms are needed.
Currently, water resource allocation conflicts are severe, and a scientific theory for water resources optimization allocation is urgently needed. Moreover, with the continuous development of computer technology, a large number of new intelligent optimization algorithms, such as PSO [24,25,26,27,28], have the advantages of high efficiency and simplicity—which make it easy to promote the development of water resources optimization allocation theory and enrich the theory of water conflict management. In this study, the PSO algorithm has many advantages, such as a fast convergence speed, being simple and easy to implement and the algorithm itself does not have many parameters to adjust, which makes it more efficient for developing solutions using the constructed water resources optimization allocation model. Based on the PSO algorithm, the optimal allocation model of urban water resources is constructed, which aims to maximize the economic, social and ecological benefits of the city, while treating the water supply of each water source and the water demand of each department as constraints. Therefore, this paper treats obtaining the maximum economic, social and ecological benefits as the goal for a city. In consideration of the water supply of each city’s water sources and the water demand of various sectors, the urban water resources optimal allocation model is constructed and the PSO algorithm is adopted to find the solution. Finally, the model is applied to the practice of water resources optimization allocation in Kunming, China. The water distribution in the year 2020 and 2030 under the circumstances of a dry year (p = 0.825) and an unusually dry year (p = 0.885) is allocated among life, production and ecology sectors. The results can provide decision-making basis for the future specific water resources planning in Kunming, China.

2. Study Area

Kunming (Figure 1), the capital of Yunnan Province, China, is located at 102° 10′ ~ 103° 40′ E and 24° 23′ ~ 26° 22′ N. It is 237.5 km long from north to south and 152km wide from east to west. The total area is 21,473km2. It is the gateway to Southeast Asia, the Middle East, Africa and Europe, which has unique geographical advantages. According to 2018 Kunming National Economic and Social Development Statistical Bulletin, the existing population in the city is 6.85 million. According to Kunming CLIMATE BULLETIN 2018, the mean annual precipitation in the region is 918 mm. According to 2017 Kunming Water Resources Bulletin, the comprehensive water consumption per capita is 270 m3. The domestic water consumption per capita of urban residents (excluding urban public water consumption) is 134 L/day and that of rural residents is 89 L/day. Kunming belongs to the typical temperate monsoon climate, with obvious dry and wet seasons in the rainfall distribution time of the whole year. The rainy season is from May to October and the dry season is from November to April. The precipitation accounts for 85% and 15% respectively. There is no great river crossing in Kunming. The city is located at the boundary of the Jinsha River, Yuanjiang River and Nanpan River. The water resources mainly depend on natural lakes, reservoirs, precipitation and groundwater, which makes the available water limited. With the rapid development of the economy, the acceleration of urbanization and the growth of population, the amount of water used for urban life and ecology is on the rise, which intensifies the competition among different water use sectors. How to optimize the scheme design of water resources allocation in Kunming to alleviate the contradiction between supply and demand and improve the efficiency of water use has a certain practical significance for local water resources planning.

3. Data and Methods

3.1. Data Sources

The information about water cost was collected from the water price standard of Kunming Water Group Co., Ltd (http://www.kmwatersupply.com/channel/xxgk_detail.action?id=8a4280a34b58a876014b58d7a2580011&menuId=402891816a5fbdb3016a5fcfbc710012). The data on the water consumption and GDP output value in the field of agriculture and industry was gathered from Kunming Statistical Yearbook [29]. The data on the total water consumption control index of Kunming in 2020 and 2030 was collected from municipal government bulletin of Kunming Municipal People’s Government (http://www.km.gov.cn/c/2014-07-02/603600.shtml). The runoff data and distributable water data were collected from Kunming Statistical Yearbook and Kunming Water Resources Bulletin (http://shuiwu.km.gov.cn/c/2018-12-13/2850356.shtml).

3.2. Urban Water Optimization Allocation Model

The optimal allocation of urban water resources refers to the processes which include establishing an optimal allocation model that meets certain conditions based on the supply and demand of water resources in cities, solving the model by computer technology and obtaining a specific scientific water resources allocation plan. When water resources are scarce, the total water quantity required by different water users is greater than the total current water resources for distribution. In this situation, it is necessary to optimize the allocation of water resources. The optimal allocation of water resources is based on the demand and supply of water resources, so it can effectively alleviate the degree of water conflicts. It has become one of the effective means to resolve conflicts in water resources allocation. This study designs the corresponding urban water resources allocation model according to the specific local hydrological conditions and the water use efficiency of each water sector.

3.2.1. Objective Functions

Urban water resources allocation is a multi-subject decision-making problem involving the water needs of the life, ecological and production sectors. It is necessary to consider the relevant interests of different stakeholders to ensure the fairness, rationality and effectiveness of water resources allocation. At the same time, it is also necessary to take into account the different macroscopic goals of the city’s economy, society and ecology and promote the sustainable development of water resources in the city. Therefore, the optimal allocation of urban water is a complex project involving multiple subjects and objectives. Assuming that the urban water sources are mainly surface water and groundwater, the water sectors mainly include the life, ecological and production sectors [30]. The surface water and groundwater are respectively represented by i=1 and 2 and the life, ecological and production sectors are also described by j=1, 2 and 3. The objective functions are constructed as follows.
(1) Maximize Economic Benefits
Economic development can provide the necessary material basis for the sustainable development of regional water resources. Therefore, it is necessary to ensure that the city’s economic benefits are maximized, that is, to ensure that the production, life and ecological sectors have their own greatest economic benefits. In general, the cost of water and the benefit of water are used to represent economic benefits according to Equation (1):
max f 1 ( Q ) = max ( j = 1 i = 1 ( b i j c i j ) q i j β i j )  
where q i j and b i j are the amount of water and the benefit coefficient provided by the water source i to the j-type water sector, respectively. c i j is the cost coefficient for the unit water supply from the water source i to the j-type water sector. β i j is the order coefficient of water supply i to the j-type water sector—usually ranging in [0, 1], which reflects the priority of distribution. The index is determined by the principle of urban water resources allocation.
(2) Maximize Social Benefits
Water resource is an important factor restricting social development. The absolute value of the difference between the water supply and the water demand can be used to measure the social benefits. When the value is larger, it reflects that the social water demand gap is larger or the social water supply is excessive. It is easy to cause water-use waste and other improper water activities. At this time, the social benefit is smaller. On the contrary, the smaller the absolute value, the greater the social benefit. Only when the water supply is equal to the water demand, the social benefit is the greatest. The specific formula is shown in Equation (2):
min | f 2 ( Q ) | = | j = 1 D j Q |
where D j represents the water demand of the j-type water sector and Q satisfies Q = j = 1 i = 1 q i j .
(3) Maximize Ecological Benefits
Due to the unreasonable use of water resources, the pollution of water quality directly affects the balance of ecological environment. Therefore, the allocation of urban water resources cannot ignore the impact of water resources allocation plans on ecosystems. In general, some important water pollution indicators are applied to indicate the amount of pollutant emissions such as chemical oxygen demand, chemical oxygen demand (COD) and other water quality indicators to describe the target as follows:
min f 3 ( Q ) = min ( j 0.01 Q p 0 p j h j )
where p 0 represents the discharge coefficient of total urban wastewater, p j is the proportion of wastewater discharge of j-type water user, h j is the content of chemical oxygen demand (COD) in unit sewage discharge of the j-type water use sector.
In summary, the total objective function can be obtained by weighting based on the importance of economic, social, and ecological goals. Assume the weight of economic, social, and ecological benefits’ targets be λ 1 , λ 2 , λ 3 respectively, which is obtained by the Delphi method , so the total objective function is shown as follows:
min F ( Q ) = min j λ j f j ( Q ) = min { j i ( c i j b i j ) q i j β i j + | j D j Q | × λ 2 + ( j 0.01 Q p 0 p j h j ) × λ 3 }

3.2.2. Constraints

In a certain period, the city’s total water resources are limited and so does the water supply capacity. Therefore, the actual water supply cannot exceed the total water supply of the city. Under China’s most stringent water management system, the water supply must meet the total water control indicators of management system in the region. In addition, in order to meet the basic water demand of the city, the actual water supply has a minimum water supply value and a certain water supply guarantee must be satisfied.
(1) Urban Water Demand Constraint
min D j j i q i j max D j
(a) When j = 1, D 1 represents the demand for domestic water. Domestic water is the basic water for local life and production. It must be guaranteed. The urban water resources allocation is required to meet the urban domestic water demand. Therefore, the water constraint for domestic water supply should be min D 1 = i q i 1 = max D 1 .
(b) When j = 2, D 2 represents the demand for ecological water. Urban ecological environment water is mainly used for urban ecological protection such as greening, forestry ecological construction and urban sewage reuse. Therefore, the demand for environmental water should be guaranteed, so the ecological water demand constraint is min D 2 = i q i 2 = max D 2 .
(c) When j = 3, D 3 represents the demand for production water. Due to the special situation of production water, the demand for production water is constrained and meets ρ D 3 i q i 3 D 3 , 0 ρ 1 .
(2) Available for Water Constraints
j q i j Q i ,         ( i = 1 , 2 , , n )
where Q i is the distributable water volume of different water sources in the city.
(3) Non-negative Constraints
q i j 0 ,         ( i = 1 , 2 , , n ;     j = 1 , 2 , , m )
Therefore, the water resource optimization allocation model is shown as follows:
min F ( Q ) = min { j i ( c i j b i j ) q i j β i j + | j D j Q | × λ 2 + ( j 0.01 Q p 0 p j h j ) × λ 3 } s . t . { i q i 1 = D 1 i q i 2 = D 2 ρ D 3 i q i 3 D 3 , 0 ρ 1 j q i j Q i , i = 1 , 2 , , n ; i Q i = Q q i j 0 , i = 1 , 2 , , n ; j = 1 , 2 , , m

3.2.3. Coefficients of Model

(1) Water Benefit Coefficient
The water benefit coefficient reflects the GDP value produced by the unit water. The production water benefit mainly includes the agricultural water benefit and the industrial benefit. The production water benefit coefficient can be calculated according to the industrial and agricultural GDP and the industrial and agricultural water consumption, as described in the Equation (9):
b 1 = ( g A + g D ) / ( Q A + Q D )
where b 1 represents the production water benefit coefficient; Q A and Q D represent agricultural water and industrial water consumption, respectively; g A and g D represent the GDP of agriculture and industry accordingly. The formula for calculating the benefit coefficient of industrial water is shown in Equation (10):
b D = g D / Q D
where b D represents the industrial water benefit coefficient. Because of the multi-purpose and multi-stakeholder of life and ecological water use, water benefit is often difficult to calculate. This paper considers that the city gives priority to the protection of residential and ecological water use generally, assuming that the life and ecological water benefits are equal to the industrial water use benefits.
(2) Water Cost Coefficient
The water price paid by the general water user includes the water resource fee of the water conservancy project, the sewage treatment fee of the water supply department and the production and processing fee of the water plants. According to the different nature of urban water, urban water can be divided into residential water, administrative water (including landscaping, sanitation and environmental protection), industrial and commercial water (including industrial and mining enterprises, agricultural water) and special water (including a sauna and car wash water).
(3) Coefficient of Water Supply Order for Water Users
Coefficient of water supply order for water users β i j reflects the priority of urban water resources allocation. At present, there are subjective methods, objective methods and subjective and objective hybrid methods to determine the weights. In order to make the weight more objective, this study uses the objective weighting method. The formula is shown in Equation (11).
β i j = 1 + n max i n i j i j ( 1 + n max i n i j i )
where n i j i is the order of water supply from water source i to j-type water users; n max i is the largest water supply serial number of water source i. In the period of water shortage, the urban water sector gives priority to ensuring the water needs of residents’ life and ecological sectors. Therefore, the principle of priority for urban water use is that the domestic water is superior to ecological water and ecological water is superior to production water.

3.3. PSO Algorithm Design

There are many optimization algorithms in the field of water resources, genetic algorithms and simulated annealing algorithms have been applied maturely. At the same time, new algorithms such as PSO algorithm, ant colony algorithm and annealing algorithm have been deeply applied to the field of water resources optimization allocation. Compared with other optimization algorithms, the PSO algorithm does not need to adjust each parameter and its convergence speed is fast. The operation is simple and the implementation is more efficient. Therefore, this paper uses PSO algorithm to design an urban water resources optimal allocation plan.

3.3.1. Principle of PSO Algorithm

PSO is an intelligent optimization algorithm proposed by Kennedy and Eberhart in 1995, which was inspired by bird predation behavior [31]. Suppose a group of birds are looking for food in the forest, there is only one piece of food and no bird knows the specific location of the food. The problem is how to find the best way to find food. Based on the consideration of the behavior of birds’ predation, PSO algorithm was generated. The optimization question is seen as a flock of birds. The main body of the basic motion in the algorithm is called “particles” (with speed and position). Particles are like predatory birds. Birds adjust their flight direction and speed by distance from food. The corresponding particle searches for the optimal solution of the model by velocity and position. The optimal solution of the model is the “food” of the birds. In the actual optimization question, each particle is a possible solution to the question. The function reflects the quality of the solution. Usually, the fitness function is determined by the objective function of the question. The specific principle is shown in Figure 2:
Particles rely on their own experience and the experience of the entire particle swarm to adjust flight behavior, so they are getting closer and closer to the goal. This process is a process of continuously updating and iterating based on individual best values and global best values. The mathematical model can be expressed as follows: in the M-dimensional search space, there are n particles in the particle group. The kth particle can be represented by ( x k , v k ) The position and velocity of the particle are reflected by the abscissa and the ordinate, namely x k = ( x k 1 , x k 2 , , x k m ) T and v k = ( v k 1 , v k 2 , , v k m ) T . The fitness function in the PSO algorithm is denoted as F ( x ) . The best position in the flight of the ith particle is evaluated according to the function, which is expressed as p g = ( p g 1 , p g 2 , , p g m ) T . The best of global optimal position of the particle swarm is expressed as p k = ( p k 1 , p k 2 , , p k m ) T . The particle updates its position and velocity based on these two extreme values, as shown in Equation (12):
{ v k d t + 1 = ω v k d t + c 1 r 1 ( p g t x k d t ) + c 2 r 2 ( p k d t x k d t ) x k d t + 1 = x k d t + v k d t + 1
where ω is the inertia factor. The increase of ω can enhance the global search ability of the particle swarm algorithm and the reduction of ω can enhance the local search ability. r 1 and r 2 ([0, 1]) are random numbers to ensure the randomness of the search. c 1 and c 2 are learning factors used to define the maximum range of the individual optimal position and global optimal position. If the learning factor is too small, the particles are difficult to get close to the optimal target very quickly; if the learning factor is too large, the particles will fly out and exceed the optimal target.
In addition, the algorithm also involves the size of the population n, which is artificially determined according to the question. As n increases, the stability of the algorithm can be improved to a certain extent until it cannot be increased.

3.3.2. PSO Algorithm Design

The specific PSO algorithm is designed based on the characteristics of urban water resources optimization allocation model. Where the water quantity allocated by water source i to the j-type department is q i j . Suppose N = i i and S = j j , then each particle in the PSO algorithm can be coded into a matrix of S rows and N columns. The particle coding is as follows:
p a r t i c l e = [ q 11 q 12 q 1 N q 21 q 22 q 2 N q S 1 q S 2 q S N ]
where S is the total number of water sources and N is the amount of the water sectors. The use of two-dimensional arrays directly reflects the distribution of different water sources in various water sectors. From the horizontal point of view, the addition of the same row is the actual total distribution of a certain water source. While in the vertical direction, the addition of the same column is the actual total water distribution of a certain department.
The PSO algorithm for the urban water resources optimization allocation model has the following steps:
Step 1: Let the fitness function of the algorithm be equal to the total objective function, namely,
F ( Q )   = ( j = 1 i = 1 ( c i j b i j ) q i j β i j ) × λ 1 + | j = 1 D j Q | × λ 2 + ( j 0.01 Q p 0 p j h j ) × λ 3 .
Step 2: Initialize the model parameters. According to the optimization, the inertia factor ω , the population size n, the learning factors c 1 and c 2 and the maximum allowable iteration number T are respectively set. A group of particles are randomly generated. p i of each initial particle is set to the current value.
Step 3: Calculate the fitness of each particle separately.
Step 4: The fitness calculated in Step 3 is compared with the individual optimal position p i . If it is better, then the value is used to replace p i . Otherwise, it is not changed.
Step 5: The individual optimal position p i is compared with the global optimal position p g . If it is better, p g is replaced. Then it is updated according to Equation (12).
Step 6: If it is less than T, continue with Step 3, otherwise exit.

4. Results and Analysis

This paper takes the optimal allocation of water resources in Kunming, Yunnan Province in China as an example. The city is under different water supply guaranteed rates in different dry years. The purpose is to illustrate the application of PSO algorithm in urban water quantity optimization allocation.

4.1. Calculation of Model Parameters

According to the nature of water use, Kunming divides urban water into four categories: residential water, administrative water (such as landscaping, sanitation and environmental protection), industrial and commercial water (such as industrial and mining enterprises, agricultural water) and special water (such as sauna and the car wash industry). According to the data and estimates of the Kunming Water Supply Group, the water cost for residential water, administrative water, and industrial and commercial water is 3.45 yuan/m3, 4.85 yuan/m3 and 5.6 yuan/m3, respectively. The water cost includes water price and sewage treatment fee. Since the water fee is mainly controlled by the price of the water supply company, it is often difficult to predict. So it is assumed that the water cost will remain unchanged in 2020 and 2030. According to the statistics and literature of Kunming and the literature [32], combined with Equations (9) and (10), the benefit coefficient of production water in Kunming in 2020 is 84.00 yuan/m3 and the coefficient of ecological and domestic water is 140.54 yuan/m3. In 2030, the production water benefit is 156.84 yuan/m3 and the ecological and domestic water use benefit coefficient is 262.40 yuan/m3. According to the actual needs, Kunming’s constraint on production water ρ is 0.75, which not only ensures the demand for production water, but also plays a certain role in restricting production water. The allocation principles for priority use of water in Kunming are firstly domestic water, secondly ecological water and thirdly production water. It is assumed that the water supply order of different water sources to the same type of water users is equal. Calculated by Equation (11), the coefficients of water supply order are 0.5, 0.33 and 0.17, respectively. The weight coefficients of respective targets are 0.45, 0.3 and 0.25, respectively.
In 2013, the Yunnan government issued the total water consumption indicators for Kunming in the year 2020 and 2030, namely 3.388 billion m3 and 3.708 billion m3. Specifically, in 2020, Yangtze River, Pearl River and Honghe Rivers are limited respectively to 2.809, 0.565 and 0.014 billion m3. While in 2030, the three major river basins are controlled within 3.118, 0.572 and 0.018 billion m3, respectively. Based on the actual water consumption statistics of various water sectors in Kunming and combined with relevant planning results and statistical yearbooks [32,33,34], the water demand of the city’s life, ecological and production sectors in the year 2020 and 2030 will be obtained in Table 1, and the different proportions of water demand are obtained in Figure 3.
According to the results of the runoff statistics of the statistical yearbook of Kunming in the past years, this paper selects the partially dry year (inflow guarantee rate p=0.825) and the extraordinarily dry year (inflow guarantee rate p=0.885). Under these circumstances, water in Kunming are in short supply. According to the statistical yearbook of Kunming and other materials, the water distribution of different watersheds under different water supply guarantee rates in the year 2020 and 2030 is calculated, as shown in Table 2 and Figure 4.

4.2. Solution of Water Resources Optimization Allocation Model

The PSO algorithm is used to obtain the water distribution plans in Kunming in the partially dry year (inflow guarantee rate p=0.825) and extraordinarily dry year (inflow guarantee rate p = 0.885) of year 2020 and 2030. The results are shown in Table 3 and Figure 5, Table 4 and Figure 6:
It can be seen from Table 3 and Table 4 that urban water supply prioritizes the need for domestic and ecological water use, and water shortage is only reflected in production water. Regardless of the partially dry year (p=0.825) or the extraordinarily dry year (p = 0.885), the water shortage rate of production water is maintained at around 25%. Under the same guaranteed rate of water supply, the water shortage rate of the allocation plan in 2030 is about 20.5%, which is about 0.9% lower than the water shortage rate in 2020. It indicates that the water shortage rate has a decreasing trend, so the optimal allocation plan can alleviate the future water shortage in Kunming to a certain extent.
In addition, the PSO algorithm is used to solve the optimal allocation model under different water guaranteed supply rates in Kunming in the year 2020 and 2030. The optimal allocation results given in this study are only a set of possible optimal allocation plans. This study does not set the distribution ratio of the Yangtze River, Pearl River and Red River Basin, but it can obtain the optimal allocation plan that meets the distribution ratio of certain watersheds according to actual needs. At the same time, the water guaranteed supply rate and other related parameter values can be adjusted to get the corresponding water resource allocation plan, which shows that the PSO algorithm is operability and practicality.
In view of the lack of water for production in Kunming, the local government should focus on building water source projects to fully exploit the water supply potential of the project. In the agricultural sector, water is supposed to be saved. Canal reconstructions are urgent to be carried out; rainwater resources should be effectively used; crop planting structures are adjusted as a result of improving agriculture and so on. In the industry, water-saving technology and water-saving equipment should be actively promoted; leakage of water supply pipe network production is supposed to reduce water consumption; wastewater treatment rate and reuse rate of water should be improved as a result of improving the efficiency of industrial production water.

5. Conclusions

With the deepening of China’s social and economic development and urbanization, the competition of water consumption for the different sectors became more evident. Especially in arid regions where water supply is limited, water resource allocation conflicts have hindered the sustainable development of urban water resources. The question of how to alleviate the conflict of water resource allocation in cities by optimizing water resource allocation is a problem that must be paid attention to. Since urban water resource allocation is a multi-subject and multi-objective decision-making problem, it involves the water demand of the urban life, ecology and production sectors and the benefits of the urban economy, society and ecology. In this paper, the city’s maximum benefits of economic, social, ecological and others are the targets, and the local hydrological conditions and the water demand of various sectors are used as constraints, and the urban water resources optimal allocation model is constructed. The PSO algorithm has no need to adjust parameters in multi-objective nonlinear programming and it has features of fast convergence and simple operation, so the PSO algorithm is adopted to solve urban water optimization allocation model. Finally, the model was applied to the optimal allocation of water resources in Kunming, a typical area of drought. In partially dry years (inflow guarantee rate p = 0.825) and extraordinarily dry years (Inflow guarantee rate p = 0.885) of Year 2020 and 2030 are studied. The detailed scheme of water resources allocation in the life, production and ecological sectors can provide decision-making basis for Kunming’s specific water resources planning work in the future.
Since urban water supply prioritizes the need for life and ecological water use, the water shortage in Kunming’s water resources allocation plan is only reflected in production water. The results showed that, in the years of 2020 and 2030, the water production rate of the water distribution plan is controlled at 25% both in the partially dry year (inflow guarantee rate p = 0.825) and the extraordinarily dry year (inflow guarantee rate p = 0.885). These plans can not only ensure the demand for production water, but also play a certain role in the regulation of production water. Under the same inflow guarantee rate, the water shortage rate of the water distribution plan in 2030 is about 20.5%. Compared with the water resources allocation plan in 2020, the water shortage rate has decreased by about 0.9%. It indicates that the water resources allocation plans can alleviate the future water shortage in Kunming. In addition to designing scientific water resources allocation plans, Kunming should actively build water source projects, encourage the city to save water and improve the efficiency of industrial and agricultural production.

Author Contributions

J.C. had the original idea for the study; C.Y., M.C. and P.Z. collected research data; C.Y., J.C. and M.C. analyzed the data and wrote the paper; J.C., C.Y. and H.W. reviewed the paper. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Natural Science Foundation of China (Grant No. 41877526 ), the National Key R&D Program of China (Grant No. 2019YFC0409000), Jiangsu water conservancy science and technology project (Grant No. 2017060) and the Humanities and Social Sciences Fund of Ministry of Education of China (Grant No. 18YJA630009).

Acknowledgments

The authors would like to express their heartfelt gratitude to editor and reviewers for the valuable comments in developing this article.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Yu, W.J.; Wang, Y.; Xiong, Z.Y. Reshaping China’s “water strategy“—China’s water security situation survey. Hebei Water Conservancy 2016, 254, 26–27. (In Chinese) [Google Scholar]
  2. Tietenberg, T. Environmental and natural resource economics; People’s Publishing House: Beijing, China, 2014. [Google Scholar] [CrossRef]
  3. Chen, H.G.; Li, C.Y.; Li, X.D. Study on the water joint operation scheme optimization in sanjiang plain irrigation area based on risk analysis. Res. Soil. Water Conservation 2013, 20, 273–276. (In Chinese) [Google Scholar]
  4. Yang, L.; Wang, N.; Li, W.; Xie, J.C. Research on the joint application of modflow model and surface water quantity dispatching system. J. Northwest A. F. Univ. 2017, 45, 218–224. (In Chinese) [Google Scholar] [CrossRef]
  5. Li, F.; Jiao, N.; Hang, Z. Research on the influence of Rainstorm duration distribution to the multi-water resources allocation of artificial lake. Energy Procedia 2012, 16, 397–402. [Google Scholar] [CrossRef] [Green Version]
  6. Zhang, H.; Ren, Q.; Li, J. How to improve water resources allocation efficiency: A two-stage performance-based allocation mechanism. Sustainability 2019, 11, 6021. [Google Scholar] [CrossRef] [Green Version]
  7. Tian, J.; Liu, D.; Guo, S.; Pan, Z.; Hong, X. Impacts of inter-basin water transfer projects on optimal water resources allocation in the Hanjiang River basin, China. Sustainability 2019, 11, 2044. [Google Scholar] [CrossRef] [Green Version]
  8. Chandramouli, Z.; Raman, H. Multi-reservoir modeling with dynamic programming and neural networks. J. Water Res. Plan Manag. 2014, 127, 89–98. [Google Scholar] [CrossRef]
  9. Davijani, M.H.; Banihabib, M.E.; Anvar, A.N.; Hashemi, S.R. Optimization model for the allocation of water resources based on the maximization of employment in the agriculture and industry sectors. J. Hydrol. 2015, 533, 430–438. [Google Scholar] [CrossRef]
  10. Gu, J.; Guo, P.; Huang, G.H.; Shen, N. Optimization of the industrial structure facing sustainable development in resource-based city subjected to water resources under uncertainty. Stoch. Environ. Res. Risk Assess. 2012, 27, 659–673. [Google Scholar] [CrossRef]
  11. Guo, P.; Huang, G.H.; Zhu, H.; Wang, X.L. A two-stage programming approach for water resources management under randomness and fuzziness. Environ. Modell. Softw. 2010, 25, 1573–1581. [Google Scholar] [CrossRef]
  12. Hou, J.; Kong, Y.F.; Sun, J.L. Optimal allocation of water resources based on multi-target fish-ant colony algorithm. Resources Science 2011, 33, 2255–2261. (In Chinese) [Google Scholar]
  13. Mianabadi, H.; Mostert, E.; Zarghami, M.; van de Giesen, N. A new bankruptcy method for conflict resolution in water resources allocation. J. Environ. Manage. 2014, 144, 152–159. [Google Scholar] [CrossRef] [PubMed]
  14. Madani, K.; Zarezadeh, M.; Morid, S. A new framework for resolving conflicts over transboundary rivers using bankruptcy methods. Hydrol. Earth Syst. Sci. 2014, 18, 3055–3068. [Google Scholar] [CrossRef] [Green Version]
  15. Bosmans, K.; Lauwers, L. Lorenz comparisons of nine rules for the adjudication of conflicting claims. Int. J. Game Theory 2011, 40, 791–807. [Google Scholar] [CrossRef] [Green Version]
  16. Thomson, W. Lorenz rankings of rules for the adjudication of conflicting claims. Econ. Theory 2012, 50, 547–569. [Google Scholar] [CrossRef] [Green Version]
  17. Masih, A.; Neil, S. Managing water resources conflicts: modelling behavior in a decision tool. Water Resour. Manag. 2015, 29, 1573–1650. [Google Scholar] [CrossRef]
  18. Masih, A.; Neil, S. A framework for an agent-based model to manage water resources conflicts. Water Resour. Manag. 2013, 27, 4039–4052. [Google Scholar] [CrossRef]
  19. Li, H.; Liu, T.; Huang, W. Research on the causes and coordination modes of transboundary water resources conflicts. J. Natural Res. 2010, 25, 705–712. (In Chinese) [Google Scholar]
  20. Ma, J.; Suo, L.M. Network governance model of multi-dimensional attributes of water resources and conflicts of transboundary water resources in China. China Admin. 2010, 81–84. (In Chinese) [Google Scholar]
  21. Li, H.; Liu, T.; Huang, W. Analysis of the causes of transboundary water conflicts. China Water Res. 2010, 3, 12–14. (In Chinese) [Google Scholar]
  22. Feng, L.H.; He, J.S. Analysis of cross-border water resources conflicts. China Rural Water Hydropower 2008, 9, 42–44. (In Chinese) [Google Scholar]
  23. Zou, J. Allocation of urban water resources based on dualistic water cycle theory and system entropy. Adv. Sci. Techno. Water Res. 2019, 39, 16–20. (In Chinese) [Google Scholar]
  24. Marichelvam, M.K.; Geetha, M.; Tosun, Ö. An improved particle swarm optimization algorithm to solve hybrid flowshop scheduling problems with the effect of human factors – A case study. Comput. Oper. Res. 2020, 114. [Google Scholar] [CrossRef]
  25. Wang, Y.; Chen, X. Hybrid quantum particle swarm optimization algorithm and its application. Sci. China Inf. Sci. 2020, 63. [Google Scholar] [CrossRef] [Green Version]
  26. Wang, L.; Zheng, X.L. Research progress of Drosophila optimization algorithm. Contr. Theory App. 2017, 34, 557–563. (In Chinese) [Google Scholar] [CrossRef]
  27. Ding, S.; Du, W.; Zhao, X.; Wang, L.; Jia, W. A new asynchronous reinforcement learning algorithm based on improved parallel PSO. Appl. Intell. 2019, 49, 4211–4222. [Google Scholar] [CrossRef]
  28. Yue, C.; Liang, J.; Qu, B.; Han, Y.; Zhu, Y.; Crisalle, O.D. A novel multiobjective optimization algorithm for sparse signal reconstruction. Sig. Processing 2020, 167. [Google Scholar] [CrossRef]
  29. Kunming Statistic Department. Kunming Statistical Yearbook; China Statistical Publishing House: Beijing, China, 2018. (In Chinese) [Google Scholar]
  30. Wu, D.; Wang, S.D.; Ma, C. Demand-oriented urban water resources optimal allocation model. J. Arid Land Res. Envir. 2016, 30, 31–37. (In Chinese) [Google Scholar] [CrossRef]
  31. Hong, L.; Ji, Z.; Gong, C. Study on Immune PSO Hybrid Optimization Algorithm. In Proceedings of the 2009 Chinese Conference on Pattern Recognition, Nanjing, China, 4–6 November 2009; pp. 1–4. [Google Scholar] [CrossRef]
  32. Liu, Z.W.; Zhang, L.H. Decomposition of the most strict water resources management water control index in Kunming. People’s Yangtze River 2015, 46, 24–28. (In Chinese) [Google Scholar] [CrossRef]
  33. Li, X.P.; Zheng, J.L. Analysis of the coordination of total water use and water volume allocation indicators. Zhujiang Mod. Constr. 2017, 3, 12–13. (In Chinese) [Google Scholar]
  34. Zhou, Y.; Xu, H. Discussion and application of two industrial water demand forecasting methods. People’s Yellow River 2012, 344, 57–60. (In Chinese) [Google Scholar] [CrossRef]
Figure 1. The geographic location of Kunming in Yunnan Province, China.
Figure 1. The geographic location of Kunming in Yunnan Province, China.
Sustainability 12 01337 g001
Figure 2. Particle swarm optimization (PSO) algorithm schematic diagram.
Figure 2. Particle swarm optimization (PSO) algorithm schematic diagram.
Sustainability 12 01337 g002
Figure 3. Forecast of water demand percentage in Kunming in 2020 and 2030.
Figure 3. Forecast of water demand percentage in Kunming in 2020 and 2030.
Sustainability 12 01337 g003
Figure 4. Distributable water of different watersheds in Kunming in 2020 and 2030.
Figure 4. Distributable water of different watersheds in Kunming in 2020 and 2030.
Sustainability 12 01337 g004
Figure 5. Summary of water resources allocation for the partially dry year in Kunming (a) 2020, (b) 2030.
Figure 5. Summary of water resources allocation for the partially dry year in Kunming (a) 2020, (b) 2030.
Sustainability 12 01337 g005aSustainability 12 01337 g005b
Figure 6. Summary of water resources allocation for the extraordinarily dry year in Kunming (a) 2020, (b) 2030.
Figure 6. Summary of water resources allocation for the extraordinarily dry year in Kunming (a) 2020, (b) 2030.
Sustainability 12 01337 g006aSustainability 12 01337 g006b
Table 1. Forecast of water demand in Kunming in 2020 and 2030 (unit: 100 millionm3).
Table 1. Forecast of water demand in Kunming in 2020 and 2030 (unit: 100 millionm3).
YearDomestic WaterProduction WaterEcological WaterTotal
20203.164525.08090.890729.1360
20304.059826.42591.633632.1194
Source: Statistics from the Development and Reform Commission of Kunming.
Table 2. Distributable water of different watersheds in Kunming in 2020 and 2030 (unit: 100 million m3).
Table 2. Distributable water of different watersheds in Kunming in 2020 and 2030 (unit: 100 million m3).
YearWatershedPartially Dry Year (p = 0.825)Extraordinarily Dry Year (p = 0.885)
2020Yangtze River Basin24.1351821.24990
Pearl River Basin4.854534.27419
Honghe River Basin0.120290.10591
2030Yangtze River Basin24.4781521.55187
Pearl River Basin4.490543.95371
Honghe River Basin0.141310.12442
Source: Kunming statistical yearbook and estimation.
Table 3. Summary of water resources allocation for the partially dry year in Kunming (unit: 100 million m3).
Table 3. Summary of water resources allocation for the partially dry year in Kunming (unit: 100 million m3).
YearWatershedDomestic WaterProduction WaterEcological WaterTotal
2020Yangtze River Basin2.432530.7010816.7881219.92173
Pearl River Basin0.713840.184932.005912.90468
Honghe River Basin0.018130.004700.050940.07376
Total3.164500.8907018.8449722.90017
Shortage Ratio (%)0024.863%21.403%
2030Yangtze River Basin2.449991.1054917.1885820.74406
Pearl River Basin1.561830.512372.568034.64223
Honghe River Basin0.047980.015740.078890.14261
Total4.059801.6336019.8355125.52891
Shortage Ratio (%)0024.936%20.518%
Table 4. Summary of water resources allocation for the extraordinarily dry year in Kunming (unit: 100 million m3).
Table 4. Summary of water resources allocation for the extraordinarily dry year in Kunming (unit: 100 million m3).
YearWatershedDomestic WaterProduction WaterEcological WaterTotal
2020Yangtze River Basin2.407320.6923817.5876320.68733
Pearl River Basin0.738420.193411.223932.15577
Honghe River Basin0.018750.004910.031080.05475
Total3.164500.8907018.8426422.89784
Shortage Ratio(%)0024.873%21.411%
2030Yangtze River Basin2.408961.0937216.8098720.31255
Pearl River Basin1.601640.523792.928765.05418
Honghe River Basin0.049200.016090.089970.15527
Total4.059801.6336019.8286025.52200
Shortage Ratio(%)0024.965%20.540%

Share and Cite

MDPI and ACS Style

Chen, J.; Yu, C.; Cai, M.; Wang, H.; Zhou, P. Multi-Objective Optimal Allocation of Urban Water Resources While Considering Conflict Resolution Based on the PSO Algorithm: A Case Study of Kunming, China. Sustainability 2020, 12, 1337. https://doi.org/10.3390/su12041337

AMA Style

Chen J, Yu C, Cai M, Wang H, Zhou P. Multi-Objective Optimal Allocation of Urban Water Resources While Considering Conflict Resolution Based on the PSO Algorithm: A Case Study of Kunming, China. Sustainability. 2020; 12(4):1337. https://doi.org/10.3390/su12041337

Chicago/Turabian Style

Chen, Junfei, Cong Yu, Miao Cai, Huimin Wang, and Pei Zhou. 2020. "Multi-Objective Optimal Allocation of Urban Water Resources While Considering Conflict Resolution Based on the PSO Algorithm: A Case Study of Kunming, China" Sustainability 12, no. 4: 1337. https://doi.org/10.3390/su12041337

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop