1. Introduction
Iran is part of the arid and semi-arid regions of the world, with an average annual precipitation of about 250 mm, which is less than one
-third of the world’s average annual rainfall. In such circumstances, optimum use of available water resources and the extracting optimize rule curve is important. The rule curve, as the main pattern of reservoir operation policy, determines the amount of water stored or released at each time step [
1].
Applying hedging policies during drought periods can improve the utilization of water resources. This method is based on the fact that the higher number of drought periods with less intensity is preferred to fewer periods with higher intensity, mainly due to the nonlinear cost function of shortages. In other words, the relation between damages and deficiency is not linear [
2]. The continuous hedging method was introduced in 1982 by Hashimoto et al. [
3]. Later, Shih and ReVelle [
4] introduced the discrete hedging method. In 1999, Neelakantan and Pundarikanthan improved the reservoir operation performance through the simulation–optimization procedure with the application of the hedging rule [
5]. Considering the provision of hedging policies in recent years, many studies have been conducted to optimize utilization policies in drought periods, including the study by Dariane [
2] to reduce the effect of drought. Dariane and Karami [
6] presented an online optimization scheme for combined use of artificial neural networks (ANN), hedging policies, and the harmony search algorithm (HS) in developing optimum operating policies in a multiple-reservoir system. They developed a simulation–optimization methodology in which the management decision variables were passed from the optimization model to the simulation one to obtain the value of the objective function. Spiliotis et al. [
7] presented a method by using the particle swarm optimization (PSO) algorithm for adopting the best hedging policy for reservoir operation. Jin et al. [
8] reviewed the reservoir operation policies based on the discrete hedging method by using linear programming for the Hapcheon Reservoir in South Korea. In his research, hedging involved four phases, concern, caution, warning, and severe dehydration, in which the reservoir operation policies were determined based on the amount of available water and the tendency of the remaining reservoir in the existing phase. The amount of water in the reservoir also consisted of water stored at the beginning of the period plus the inflow into the reservoir.
In addition, in the past decades, a large number of papers have presented the fuzzy approach for improving the operation of reservoirs. For example, Russell and Campbell [
9] used fuzzy logic programming to extract operational rules. Shrestha et al. [
10] used a fuzzy rule-based model to derive operation rules for a multi-purpose reservoir. In this context, further research has been proposed using fuzzy logic theory to improve the efficiency in reservoir operation [
11,
12,
13,
14,
15,
16,
17]. Ahmadinefar et al. [
18,
19] showed that the combination of hedging methods and fuzzy logic reduced the effects of drought because the rationing factors do not change suddenly when the combination is used. Rajendra et al. [
20] and Kambalimath and Chandra Deka [
21] reviewed fuzzy logic models for the operation of a single-purpose reservoir and hydrology and water resources domain, respectively.
In discussing many-objective optimization algorithms (problems with more than three objective functions) visualization of a high-dimensional objective space and obtaining a good convergence of the Pareto front are challenges because the proportion of non-dominated objective solutions increases when the number of objectives exceeds four. This makes ranking difficult. Zitzler and Thiele [
22] introduced the SPEA algorithm. This algorithm consists of a population set and an external set. The program begins with the initial population and the outer blanket, and the following operations are performed on each repetition. The dominant answers are copied to the empty set, and the evaluation function for all the existing answers is calculated. It is worth noting that the goal is to minimize the evaluation function. The SPEA2 method is the modified version of SPEA [
23].
According to the importance of operating policies in drought periods, this study attempted to optimize the operation rules for a many-objective system (more than three objective functions), including the Karun-4, Karun-3, Karun-1, and Gotvand reservoirs, by using the hedging and fuzzy approach with the SPEA2 optimization algorithm. This study can help decision makers to decide how much water should be released now and how much should be retained for future uses, which is the major task of reservoir operation. This simple choice becomes complex in the presence of uncertain future inflows and nonlinear economic benefits for released water. Combining fuzzified hedging policies optimized with the SPEA2 optimization algorithm is a useful method in occurrence of severe and frequent droughts and can improve reservoir operation rules and aid water supply operators in coping with the risk of dramatic water deficiencies to the users. This is a new strategy for optimal operation of multiple reservoirs by combining discrete hedging and fuzzy theory during drought and water scarcity for a multi-reservoir, many-objective systems. It proposes water supply policies in the form of a rule curve and reduces drought effects in meeting demands. In the discrete hedging method, the hedging coefficient changes abruptly in each phase. Using the fuzzy approach creates a transition region for this coefficient and causes the coefficient to change gradually and mitigates the intensity of drought periods. In fact, the flexibility of the hedging factors increases by using fuzzy logic. Finally, vulnerability assessment, scarcity and reliability criteria are used to demonstrate the function of the fuzzy approach in hedging rules.
3. Case Study
The study area was the Karun basin in southwestern Iran. Five reservoirs, including the Karun-4, Karun-3, Karun-1, Godarlandar, and Gotvand reservoirs, along with their demand site were used in this paper to evaluate the methods (
Figure 5). It should be noted that the Godarlandar reservoir does not play a role in downstream flow regulations; therefore, it was removed from the optimization process, leaving a system of four reservoirs.
The whole Karun basin area is about 67,100 km
2, where 68% is in the mountains and 32% is in the plains. Karun River, with a length of 950 km, is the longest river in the country and one of the longest in the Middle East. The river originates from the Zagros Mountains and drains into Persian Gulf after passing the Khuzestan Plain. The river is also considered the largest river in Iran in terms of annual discharge [
27].
The schematic of the study area is shown in
Figure 6.
Data and System Specifications
The time series studied in this paper were monthly data during the 1961–1962 to 2013–2014 water years, from which the initial 43 years were considered for optimization of decision parameters and the last 10 years were used for testing the performance of the optimized rule curves.
Table 1 shows a summary of the reservoir information.
The priority of demands for the Karun-4, Karun-3, and Karun-1 reservoirs is as follows: 1-hydropower, 2-municipal, 3-environmental, and 4-agricultural demands. In the Gotvand reservoir, energy production is the secondary objective after all others. Therefore, due to high agricultural and municipal demands and in order to increase the reservoir efficiency for the secondary demand (hydropower), two outlets were devised. The height of the penstock (for releasing water for hydropower generation) is 181 masl and the height of the reservoir lower outlet for other uses (e.g., agriculture, municipal, etc.) is 161 masl. All other demands are released through the penstock for energy generation as long as possible. In dry periods, where the storage level falls below the penstock level (i.e., 181 m), the demand is released through the lower outlet of the reservoir.
Table 2 shows the monthly average municipal and agricultural demands in each reservoir site
.The returned water from agricultural fields is not usually estimated accurately and there is no report regarding this parameter in the area. Hence, in the present study, the rate of return flow was considered as 20% of the diverted flow. Moreover, according to the recommendation of Tennant [
28], the monthly minimum streamflow for environmental concerns at the downstream of each reservoir was assumed as the 10% of average monthly natural streamflow.
To calculate the reservoir’s hydropower requirement, following parameters are needed:
- (1)
Hydropower plant capacity (MW), design head (m), and head loss (m), which can be expressed as a constant or a function of other parameters.
- (2)
Number of units of power plants and the peak hours, which can be different for each month.
- (3)
Efficiency (%), flood level (m of sea level), and design discharge rate (cms).
- (4)
Moreover, the net head (m), the required discharge rate for firm energy production (cms), and the hydropower demand are obtained from Equations (20)–(22).
where H
t, TWL, HL, H
net,t, P, η, D
t, PT, and Nday are the reservoir level at the beginning of period t (masl), tail water level (masl), head loss (m), net head (m), power plant installation capacity (MW), plant efficiency (%), required water for hydropower demand (MCM), and daily peak hours and number of days in a month, respectively.
4. Applications
In this study the objective functions were the minimization of the normalized deficits for each demand as described by Equations (23)–(26).
In the above equations, the index i represents the reservoir number (1 to 4), Rti and Dti are the reservoir release and demand, respectively.
Constraints and assumptions of the problem are given as follows.
The simulation method for a fuzzified discrete hedging approach is presented in
Figure 7. The steps are as follows:
- 1.
For the first month (t = 1), the initial reservoir storage () is equal to and 0.
- 2.
The releases () are obtained in each period according to the rule curve based on optimized coefficients (according to Equations (1)–(5) for discrete hedging and 10 to 15 for the fuzzified discrete hedging method).
- 3.
The mass balance equation (Equation (27)) is calculated, and spill and reservoir storage are determined in the next month.
- 4.
The above steps are repeated until the last month of the time series.
In this study, 53 years of measured data were available from which 43 years of data were used for the optimization phase and the last 10 years were applied for testing the performance of optimized rule curves.
6. Conclusions
In this paper, the performance of the many-objective algorithm SPEA2 was evaluated using fuzzified and regular discrete hedging rules. It was compared to the non-hedging methods of SOP and WEAP using a four-reservoir system in the Karun basin in Iran with four objective functions related to meeting municipal, agricultural, environmental, and hydropower water demands. Results indicated that using fuzzy logic improves the performance of the discrete hedging rule. The hedging methods were able to reduce the overall vulnerability of the system by reducing the maximum water demand shortages. In addition, the fuzzified hedging method performed better than the regular algorithm in all aspects, including reliability, vulnerability, and losses through spills. Moreover, as expected the non-hedging SOP and WEAP methods produced higher reliabilities, lower average storages, and less water losses through spills. The key index in comparing the reservoir operation methods in here is the maximum vulnerability, which may cause great amounts of system damages and losses. The proposed many-objective algorithm SPEA2 coupled with fuzzified discrete hedging in a multi-reservoir, multi-user site proved to be superior to non-fuzzified hedging and non-hedging methods, including the SOP and WEAP.