Literature DB >> 31970276

Data on optimization of the Karun-4 hydropower reservoir operation using evolutionary algorithms.

Saeid Akbarifard1, Mohammad Reza Sharifi2, Kourosh Qaderi3.   

Abstract

This article describes the time series data for optimizing the hydropower operation of the Karun-4 reservoir located in Iran for a period of 106 months (from October 2010 to July 2019). The utilized time-series data included reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation on the reservoir, and release of water through the power plant. In this data article, a model based on Moth Swarm Algorithm (MSA) was developed for the optimization of water resources. The analysis showed that the best solutions achieved by the MSA, Genetic Algorithm (GA), and Particle Swarm Optimization (PSO) were 0.147, 0.3026, and 0.1584, respectively. The analysis of these datasets revealed that the MSA algorithm was superior to GA and PSO algorithms in the optimal operation of the hydropower reservoir problem.
© 2020 The Authors.

Entities:  

Keywords:  Hydropower operation; Karun-4 reservoir; Moth swarm algorithm; Optimization algorithms

Year:  2020        PMID: 31970276      PMCID: PMC6965708          DOI: 10.1016/j.dib.2019.105048

Source DB:  PubMed          Journal:  Data Brief        ISSN: 2352-3409


Specifications Table Reservoir characteristic parameters (e.g., Minimum reservoir storages, Maximum reservoir storages, Power plant capacity (PPC), Annual potential energy production, Efficiency, Water release, and Downstream water level and so on); The monthly time series of inflow, evaporation, precipitation, and release of the reservoir. Data on the volumes of reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation in the reservoir and release from the reservoir in the Karun-4 reservoir provide an overview of the operation of the reservoir between the years of 2010 and 2019. These data can be used to analyze the water resources status and energy generation in the Karun-4 hydropower reservoirs operation. The data will be useful for modeling purposes, especially relating to the Karun-4 reservoir operation. They can also be used to examine the impact of Karun-4 reservoir operation on generating energy. The analysis obtained herein with Evolutionary Algorithms (EAs) solver can serve as a standard benchmark for other researchers to compare their analysis of the other methods using this dataset. Other researchers can use the MSA algorithm in solving large-scale problems such as the hydropower reservoir operation with confidently.

Data

Water is a vital resource for socio-economic development in many parts of the world. Reservoir operation is an essential element in water resource planning and management. In the present study, Karun-4 hydropower reservoir operation is considered in terms of careful water demand management. The time series meteorological and hydrological dataset consists of reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation on the reservoir, and release of water through the power plant for a period of 106 months (from October 2010 to July 2019). The utilized data are shown in Fig. 1. Reservoir inflow is the volume of water inflow to the Karun-4 reservoir, which is measured in million cubic meters (MCM). Reservoir storage is a volume of water storage of the Karun-4 reservoir at the beginning of each period, which is expressed in MCM. Evaporation from the reservoir is a depth of evaporation from the area of the Karun-4 reservoir at each period, which is expressed in millimeter (mm). Precipitation on the reservoir is a depth of precipitation in the area of the Karun-4 reservoir at each period, which is expressed in millimeter (mm). The release of water through the power plant is a volume of water outflow from the power plant of the Karun-4 reservoir at each period, which is expressed in MCM.
Fig. 1

Time series chart of the dataset. The figure shows the time series meteorological and hydrological dataset consists of reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation on the reservoir, and release of water through the power plant for a period of 106 months (from October 2010 to July 2019).

Time series chart of the dataset. The figure shows the time series meteorological and hydrological dataset consists of reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation on the reservoir, and release of water through the power plant for a period of 106 months (from October 2010 to July 2019). Fig. 2 shows the location of the Karun-4 dam in the Karun basin. Table 1 gives the main characteristics of the Karun-4 dam reservoir. Table 2 displays the values of used algorithms parameters for the hydropower operation problem. Table 3 describes the objective value of objective functions and the average CPU run time obtained by each algorithm for the Karun-4 hydropower reservoir problem. Fig. 3 represents the convergence rate of applied algorithms in reaching the optimum value for 1000 iteration. Fig. 4 depicts the water release pattern for the operation of the Karun-4 hydropower reservoir for a period of 106 months (from October 2010 to July 2019). Finally, Fig. 5 shows the water storage pattern for the operation of the Karun-4 hydropower reservoir for this period.
Fig. 2

Location of the Karun-4 dam in the Karun basin (southwest of Iran).

Table 1

Main characteristics of the Karun-4 dam reservoir.

ParametersUnitValue
North latitudeDegree (°)31° 35′
East longitudeDegree (°)50° 24′
Minimum reservoir storagesMCM1405
Maximum reservoir storagesMCM2279
Power plant capacity (PPC)MW1000
Annual potential energy productionMWh2107
EfficiencyPercent (%)80
Table 2

Values of used algorithms parameters for hydropower operation problem.

MSAparameteriterationsNumber of variablesNumber of search agentsNumber of Pathfinders
Value100010610020
GAparameteriterationsNumber of variablesNumber of genesMutation rateCrossover rate
Value10001061000.010.8
PSOparameteriterationsNumber of variablesPopulation SizeC1C2
Value10001061001.491.49
Table 3

Analyses of 10 runs of the Karun-4 hydropower reservoir. The objective value of objective functions and the average CPU run time for each algorithm were presented in this table for the Karun-4 hydropower reservoir problem. Analysis of datasets in the table showed that MSA was able to produce superior solutions for the Karun-4 hydropower reservoir system.

Number of runsMSA
PSO
GA
Optimal valueCPU time (s)Optimal valueCPU time (s)Optimal valueCPU time (s)
10.155921.820.158428.991.691848.71
20.147320.121.070830.351.435247.79
30.147021.460.249928.881.961640.88
40.148622.530.546328.931.470237.16
50.150821.580.275629.030.376248.23
60.147220.660.170429.010.662347.99
70.150619.70.257029.621.371747.93
80.147021.240.159129.60.922548.09
90.147320.420.73229.170.549547.14
100.147121.760.182328.930.302647.62

Best0.14700.15840.3026
Worst0.15591.07081.9616
Average0.14890.38021.0744
SD0.00290.30780.5864
Coefficient of variation0.01920.80960.5458
Best CPU time (s)19.728.8837.16
Fig. 3

The convergence of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the convergence rate of applied algorithms in reaching the optimum value for the hydropower operation problem. It also indicates the rapid convergence of the MSA in comparison with the other algorithms.

Fig. 4

Water release patterns of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the water release pattern for the operation of the Karun-4 hydropower reservoir using the MSA, GA, and PSO algorithms. The MSA algorithm was able to store and generate more energy by water releasing less for a period of 106 months. This indicates the high capability of the MSA in calculating near-optimal global solutions.

Fig. 5

Water storage patterns of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the water storage pattern for the operation of the Karun-4 hydropower reservoir using the MSA, GA, and PSO algorithms. According to this figure, the storage of the reservoir obtained by the runs of the investigated algorithms is better than the actual storage. Also, the figure shows the superior performance of the MSA algorithm compared to other algorithms.

Location of the Karun-4 dam in the Karun basin (southwest of Iran). Main characteristics of the Karun-4 dam reservoir. Values of used algorithms parameters for hydropower operation problem. Analyses of 10 runs of the Karun-4 hydropower reservoir. The objective value of objective functions and the average CPU run time for each algorithm were presented in this table for the Karun-4 hydropower reservoir problem. Analysis of datasets in the table showed that MSA was able to produce superior solutions for the Karun-4 hydropower reservoir system. The convergence of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the convergence rate of applied algorithms in reaching the optimum value for the hydropower operation problem. It also indicates the rapid convergence of the MSA in comparison with the other algorithms. Water release patterns of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the water release pattern for the operation of the Karun-4 hydropower reservoir using the MSA, GA, and PSO algorithms. The MSA algorithm was able to store and generate more energy by water releasing less for a period of 106 months. This indicates the high capability of the MSA in calculating near-optimal global solutions. Water storage patterns of applied algorithms in the Karun-4 hydropower reservoir. The figure shows the water storage pattern for the operation of the Karun-4 hydropower reservoir using the MSA, GA, and PSO algorithms. According to this figure, the storage of the reservoir obtained by the runs of the investigated algorithms is better than the actual storage. Also, the figure shows the superior performance of the MSA algorithm compared to other algorithms.

Experimental design, materials and methods

In this data article, using the time-series dataset, a model based on Moth Swarm Algorithm (MSA) was developed for optimal hydropower operation of the Karun-4 Reservoir. The details of the MSA algorithm were provided by Mohamed et al. (2017) [1]. The MSA algorithm was compared with other well-known developed evolutionary algorithms, including GA and PSO algorithms [[2], [3], [4]]. It is noteworthy that all the studied metaheuristic algorithms were coded in MATLAB software.

Experimental design

The simulation optimization model for producing a time-series dataset of the highest amount of energy of the Karun4 reservoir was structured in a monthly time step during the period 2010–2011 to 2018–2019. Objective functions and constraints of the Karun-4 reservoir are as follows:where is the electricity produced by the power plant (MW), PPC is the total power plant capacity (MW), T is the total number of hydropower operation periods of the Karun-4 reservoir. In addition, g is gravitational acceleration, is efficiency of the Power plant, PF is the plant factor, is the water release through the power plant to generate power (MCM) in period t, is conversion factor from million cubic meters to cubic meters per second during period t, and are reservoir water level at the beginning and end of period t (m), respectively, is reservoir tail-water level, which is assumed constant for all periods during period t (m), is water release through the power plant (MCM) in period t, is the overflow volume through the power plant in period t (MCM), is the reservoir storage (MCM), is the reservoir inflow (MCM), is the spill overflow from the reservoir during period t (MCM), is the loss from reservoir (MCM), is the depth of evaporation from the reservoir (m), is the depth of precipitation on the reservoir (m), and are area of the reservoir lake at the beginning and end of period t (Km2), respectively, is the minimum storage (MCM), is the maximum storage capacity (MCM), and , , and are the coefficients of the Storage-Area-Depth relationships for the reservoir.

Analysis of datasets

The analyses of this data article showed that the best solution achieved by the MSA, GA, and PSO algorithms for the Karun-4 hydropower reservoir problem were 0.147, 0.3026, and 0.1584, respectively. The analyses revealed that the MSA algorithm was the superior algorithm in the optimal operation of the Karun-4 hydropower reservoir. All analyses of this research for each algorithm are presented in Table 3 and Fig. 3, Fig. 4, Fig. 5.

Data availability statement

All datasets, models, or codes generated or used during the article are available from the corresponding author by request.

Specifications Table

SubjectWater Resources Management
Specific subject areaHydrology and Water Resources; Hydropower Management; Metaheuristic Algorithms
Type of dataTable and figures
How the data were acquiredRaw data were obtained by Meteorological and Hydrological Measurement and the data analyzed were obtained from the MATLAB software.
Data formatRaw and analyzed
Parameters for data collection

Reservoir characteristic parameters (e.g., Minimum reservoir storages, Maximum reservoir storages, Power plant capacity (PPC), Annual potential energy production, Efficiency, Water release, and Downstream water level and so on);

The monthly time series of inflow, evaporation, precipitation, and release of the reservoir.

Description of data collectionMeteorological and Hydrological datasets are provided by the Khuzestan Water and Power Authority.
Data source locationThe Karun-4 reservoir located in the Karun basin (50° 24′ E longitude, 31° 35′ N latitude), Southwest of Iran.
Data accessibilityAll raw data and processed data are available in this data article as a supplementary file.
Value of the Data

Data on the volumes of reservoir inflow, reservoir storage, evaporation from the reservoir, precipitation in the reservoir and release from the reservoir in the Karun-4 reservoir provide an overview of the operation of the reservoir between the years of 2010 and 2019.

These data can be used to analyze the water resources status and energy generation in the Karun-4 hydropower reservoirs operation.

The data will be useful for modeling purposes, especially relating to the Karun-4 reservoir operation.

They can also be used to examine the impact of Karun-4 reservoir operation on generating energy.

The analysis obtained herein with Evolutionary Algorithms (EAs) solver can serve as a standard benchmark for other researchers to compare their analysis of the other methods using this dataset.

Other researchers can use the MSA algorithm in solving large-scale problems such as the hydropower reservoir operation with confidently.

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