Investigation on New Metaheuristic Algorithms for Solving Dynamic Combined Economic Environmental Dispatch Problems
Abstract
:1. Introduction
2. Literature Review
- Improvement of some optimization methods, such as TSA, SOA, CSA, and FFA.
- Application of the proposed algorithms to solve single-and bi-objective DEED problems.
- The four techniques are validated and tested by applying them on the IEEE standard five-unit test system to demonstrate their robustness and accuracy.
3. DCEED Problem Formulation Including VPE
3.1. Objective Function
3.1.1. Dynamic Economic Load Dispatch Model (DED)
3.1.2. Dynamic Environmental Dispatch Model (DEnD)
3.2. Constraints Functions
3.2.1. Power Balance Constraint
3.2.2. Power Output Limits
4. Metaheuristic Approaches Applied to DEED
4.1. Seagull Optimization Algorithm (SOA)
4.1.1. Migration (Exploration)
4.1.2. Attacking (Exploitation)
4.2. Crow Search Algorithm (CSA)
Algorithm 1. Crow Search Algorithm |
1: Input: N number of crows in the population, and Maximum number of iteration (tmax). |
2: Output: Optimal crow position |
3: Initialize position of crows, and crows’ memory |
4: while t < tmax do |
5: for i= 1:N (all N crows of the flock) |
6: Choose a random crow (i.e. Mj), and determine a value of an awareness probability AP |
7: if |
8: |
9: else |
10: random position of search space |
11: end if |
12: end for |
13: Check solution boundaries. |
14: Calculate the fitness of each crow |
15: Update Crows’ memory |
16: end while |
4.3. Tunicate Swarm Algorithm (TSA)
- Step 1: Create the initial tunicate population.
- Step 2: Determine the control units of TSA and stopping criteria.
- Step 3: Compute the fitness values of the initial population.
- Step 4: Select the position of the tunicate with the best fitness value.
- Step 5: Create the new position for each tunicate by using Equation (18).
- Step 6: Update the position of the tunicates that are out of the search space.
- Step 7: Compute the fitness values for the new positions of tunicates.
- Step 8: Until stopping criteria is satisfied, repeat steps 5–8.
- Step 9: After stopping criteria is satisfied, save the best tunicate position.
4.4. Overview of the Firefly Algorithm (FFA)
4.4.1. Attractiveness
4.4.2. Distance
4.4.3. Movement
5. Simulation Results and Discussion
5.1. IEEE Five-Unit Test System
- Case 1: Dynamic economic dispatch DED;
- Case 2: Dynamic environmental dispatch DEnD;
- Case 3: Dynamic economic emission dispatch DEED.
5.1.1. Case 1
Methods | Total Loss MW | Total Fuel Cost USD/h | Total Emission |
---|---|---|---|
CSA | 193.393 | 42,425.455 | 21,960.553 |
SOA | 204.660 | 48,609.770 | 32,652.860 |
TSA | 198.278 | 46,672.479 | 27,641.230 |
FFA | 191.298 | 45,474.198 | 24,862.338 |
PSOGSA [48] | NA | 42,853.339 | 22,087.887 |
NEHS [49] | NA | 43,066.073 | NA |
MHS [49] | NA | 45,497.740 | NA |
HS-NPSA [49] | NA | 43,927.305 | NA |
DE-SQP [50] | NA | 45,590.000 | 23,567.000 |
PSO [47] | NA | 47,852.000 | 22,405.000 |
5.1.2. Case 2
5.1.3. Case 3
5.2. IEEE 10-Unit Test System
- Case 4: Dynamic economic dispatch DED ;
- Case 5: Dynamic environmental dispatch DEnD ;
- Case 6: Dynamic economic emission dispatch DEED ;
5.2.1. Case 4
5.2.2. Case 5
Methods | Total Fuel Cost | Total Emission |
---|---|---|
CSA | 2.625940 | 2.93540 |
GCABC [60] | NA | 2.93416 |
TLBO [61] | 2.594148 | 2.94153 |
IHS [49] | NA | 2.96044 |
MHS [49] | NA | 3.02093 |
NSGA-II [58] | 2.656300 | 3.04120 |
CRO [62] | NA | 3.17400 |
HCRO [62] | NA | 3.27500 |
5.2.3. Case 6
6. Conclusions and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
CEED | Combined economic environmental dispatch |
DED | Dynamic economic dispatch |
DEnD | Dynamic environmental dispatch |
DEED | Dynamic economic emission dispatch |
DCEELDP | Dynamic combined economic emission load dispatch problem |
EED | Economic emission dispatch |
FC | Fuel cost |
Coefficients of the fuel cost corresponding of generator i | |
Fuel cost coefficients of generator due to VPE | |
Emission curve coefficients | |
Power losses | |
Weighting factor |
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Algorithm | Parameters |
---|---|
SOA | N = 50, tmax = 1000, u = 1, v = 0.011 |
CSA | N = 50, itermax= 1000, fl = 2, AP = 0.1 |
TSA | m = 50, itermax = 1000, VTmin= 1, VTmax= 4 |
FFA | N = 100, itermax= 1000, = 1, γ = 1, α = 0.1, |
Unit | |||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
25 | 2.0 | 0.0080 | 100 | 0.042 | 80 | −0.805 | 0.0180 | 0.6550 | 0.02846 | 10 | 75 | 1.8201 | |
60 | 1.8 | 0.0030 | 140 | 0.040 | 50 | −0.555 | 0.0150 | 0.5773 | 0.02446 | 20 | 125 | 1.5436 | |
100 | 2.1 | 0.0012 | 160 | 0.038 | 60 | −1.355 | 0.0105 | 0.4968 | 0.02270 | 30 | 175 | 3.4911 | |
120 | 2.0 | 0.0010 | 180 | 0.037 | 45 | −0.600 | 0.0080 | 0.4860 | 0.01948 | 40 | 250 | 1.7278 | |
40 | 1.8 | 0.0015 | 200 | 0.035 | 30 | −0.555 | 0.0120 | 0.5035 | 0.02075 | 50 | 300 | 0.7578 |
Time (h) | Load (MW) | Time (h) | Load (MW) | Time (h) | Load (MW) |
---|---|---|---|---|---|
1 | 410 | 9 | 690 | 17 | 558 |
2 | 435 | 10 | 704 | 18 | 608 |
3 | 475 | 11 | 720 | 19 | 654 |
4 | 530 | 12 | 740 | 20 | 704 |
5 | 558 | 13 | 704 | 21 | 680 |
6 | 608 | 14 | 690 | 22 | 605 |
7 | 626 | 15 | 654 | 23 | 527 |
8 | 654 | 16 | 580 | 24 | 463 |
Time h | MW | MW | MW | MW | MW | MW | MW | Fuel Cost USD/h | Emission |
---|---|---|---|---|---|---|---|---|---|
1 | 84.804 | 98.539 | 50.652 | 40.000 | 139.759 | 410 | 3.756 | 1363.640 | 546.604 |
2 | 48.075 | 98.539 | 112.673 | 40.000 | 139.759 | 435 | 4.048 | 1380.410 | 510.742 |
3 | 88.876 | 98.539 | 112.673 | 40.000 | 139.759 | 475 | 4.849 | 1423.790 | 584.122 |
4 | 59.954 | 98.539 | 112.673 | 124.908 | 139.759 | 530 | 5.835 | 1584.710 | 590.865 |
5 | 84.139 | 98.539 | 112.673 | 40.000 | 229.519 | 558 | 6.872 | 1604.790 | 969.866 |
6 | 55.079 | 98.539 | 112.673 | 209.816 | 139.759 | 608 | 7.868 | 1777.140 | 784.062 |
7 | 73.529 | 98.539 | 112.673 | 209.816 | 139.759 | 626 | 8.317 | 1783.770 | 814.087 |
8 | 97.449 | 98.539 | 112.673 | 124.908 | 229.519 | 654 | 9.090 | 1882.450 | 1071.515 |
9 | 49.619 | 98.539 | 112.673 | 209.816 | 229.519 | 690 | 10.168 | 1977.660 | 1175.437 |
10 | 64.011 | 98.539 | 112.673 | 209.816 | 229.519 | 704 | 10.559 | 1996.590 | 1194.648 |
11 | 80.483 | 98.539 | 112.673 | 209.815 | 229.519 | 720 | 11.032 | 1989.970 | 1226.653 |
12 | 101.112 | 98.539 | 112.673 | 209.816 | 229.519 | 740 | 11.662 | 2106.450 | 1282.648 |
13 | 64.0110 | 98.539 | 112.673 | 209.816 | 229.519 | 704 | 10.559 | 1996.590 | 1194.648 |
14 | 49.619 | 98.539 | 112.673 | 209.816 | 229.519 | 690 | 10.168 | 1977.660 | 1175.437 |
15 | 97.449 | 98.539 | 112.673 | 124.908 | 229.519 | 654 | 9.090 | 1882.450 | 1071.515 |
16 | 84.800 | 40.058 | 112.673 | 209.816 | 139.759 | 580 | 7.108 | 1746.070 | 745.131 |
17 | 84.139 | 98.539 | 112.673 | 40.000 | 229.519 | 558 | 6.872 | 1604.790 | 969.866 |
18 | 55.079 | 98.539 | 112.673 | 209.816 | 139.759 | 608 | 7.868 | 1777.140 | 784.062 |
19 | 97.449 | 98.539 | 112.673 | 124.908 | 229.519 | 654 | 9.090 | 1882.450 | 1071.515 |
20 | 64.011 | 98.539 | 112.673 | 209.816 | 229.519 | 704 | 10.559 | 1996.590 | 1194.648 |
21 | 39.353 | 98.539 | 112.673 | 209.816 | 229.519 | 680 | 9.902 | 1944.590 | 1166.578 |
22 | 52.007 | 98.539 | 112.673 | 209.816 | 139.759 | 605 | 7.796 | 1771.650 | 780.351 |
23 | 56.889 | 98.539 | 112.673 | 124.908 | 139.759 | 527 | 5.771 | 1581.460 | 586.584 |
24 | 81.432 | 98.539 | 112.673 | 124.908 | 50.000 | 463 | 4.553 | 1392.530 | 468.968 |
Time h | MW | MW | MW | MW | MW | MW | MW | Fuel Cost USD/h | Emission |
---|---|---|---|---|---|---|---|---|---|
1 | 54.679 | 58.236 | 116.571 | 110.598 | 73.364 | 410 | 3.448 | 352.453 | 1723.627 |
2 | 58.067 | 62.383 | 121.851 | 117.982 | 78.601 | 435 | 3.885 | 385.960 | 1784.169 |
3 | 63.526 | 69.080 | 130.221 | 129.751 | 87.063 | 475 | 4.641 | 446.642 | 1912.114 |
4 | 71.120 | 78.439 | 141.552 | 145.801 | 98.890 | 530 | 5.797 | 544.648 | 2135.506 |
5 | 75.032 | 83.262 | 147.232 | 153.895 | 105.008 | 558 | 6.431 | 601.208 | 2203.616 |
6 | 82.107 | 92.034 | 157.218 | 168.176 | 116.119 | 608 | 7.654 | 713.801 | 2241.188 |
7 | 84.684 | 95.241 | 160.760 | 173.252 | 120.183 | 626 | 8.121 | 758.078 | 2229.487 |
8 | 88.729 | 100.286 | 166.212 | 181.072 | 126.577 | 654 | 8.876 | 831.019 | 2240.807 |
9 | 93.996 | 106.880 | 173.119 | 190.970 | 134.934 | 690 | 9.898 | 932.292 | 2270.804 |
10 | 96.065 | 109.478 | 175.772 | 194.768 | 138.227 | 704 | 10.311 | 974.021 | 2274.187 |
11 | 98.446 | 112.472 | 178.783 | 199.072 | 142.020 | 720 | 10.794 | 1023.365 | 2305.246 |
12 | 101.444 | 116.253 | 182.514 | 204.393 | 146.809 | 740 | 11.414 | 1087577 | 2365.552 |
13 | 96.065 | 109.478 | 175.772 | 194.768 | 138.227 | 704 | 10.311 | 974.021 | 2274.190 |
14 | 93.996 | 106.879 | 173.119 | 190.970 | 134.934 | 690 | 9.898 | 932.292 | 2270.804 |
15 | 88.729 | 100.286 | 166.212 | 181.072 | 126.577 | 654 | 8.876 | 831.019 | 2240.804 |
16 | 78.130 | 87.098 | 151.652 | 160.208 | 109.866 | 580 | 6.955 | 648.892 | 2233.356 |
17 | 75.032 | 83.262 | 147.233 | 153.895 | 105.008 | 558 | 6.431 | 601.208 | 2203.615 |
18 | 82.107 | 92.034 | 157.218 | 168.176 | 116.119 | 608 | 7.654 | 713.801 | 2241.189 |
19 | 88.729 | 100.286 | 166.212 | 181.072 | 126.577 | 654 | 8.876 | 831.019 | 2240.807 |
20 | 96.066 | 109.478 | 175.772 | 194.768 | 138.227 | 704 | 10.311 | 974.021 | 2274.187 |
21 | 92.525 | 105.036 | 171.212 | 188.239 | 132.596 | 680 | 9.609 | 903.298 | 2265.782 |
22 | 81.678 | 91.502 | 156.625 | 167.326 | 115.445 | 605 | 7.577 | 706.617 | 2241.906 |
23 | 70.703 | 77.915 | 140.940 | 144.931 | 98.239 | 527 | 5.727 | 538.858 | 2126.253 |
24 | 61.883 | 67.063 | 127.721 | 126.227 | 84.514 | 463 | 4.407 | 427.514 | 1850.281 |
Methods | Total Loss MW | Total Fuel Cost USD/h | Total Emission |
---|---|---|---|
CSA | 187.901 | 51,149.500 | 17,733.600 |
SOA | 189.766 | 51,385.300 | 18,743.100 |
TSA | 188.825 | 51,878.700 | 18,602.800 |
FFA | 187.070 | 51,263.500 | 19,840.200 |
NEHS [49] | NA | NA | 17,853.003 |
MHS [49] | NA | NA | 17,937.408 |
HS-NPSA [49] | NA | NA | 17,872.348 |
PSOGSA [48] | NA | 51,953.905 | 17,852.979 |
DE-SQP [50] | NA | 52,611.000 | 18,955.000 |
PSO [47] | NA | 53,086.000 | 19,094.000 |
Time h | MW | MW | MW | MW | MW | MW | MW | Fuel Cost USD/h | Emission | CEED USD/h |
---|---|---|---|---|---|---|---|---|---|---|
1 | 23.221 | 95.066 | 118.179 | 125.507 | 51.646 | 410.00 | 3.619 | 1343.493 | 400.897 | 1814.930 |
2 | 42.464 | 84.193 | 112.348 | 124.800 | 75.142 | 435.00 | 3.946 | 1607.846 | 399.951 | 2078.248 |
3 | 46.363 | 94.690 | 111.484 | 87.447 | 139.713 | 475.00 | 4.697 | 1670.469 | 519.509 | 2254.467 |
4 | 26.838 | 99.530 | 114.280 | 126.507 | 168.745 | 530.00 | 5.899 | 1745.194 | 669.218 | 2475.641 |
5 | 33.564 | 92.891 | 123.185 | 175.142 | 139.753 | 558.00 | 6.536 | 1902.752 | 665.000 | 2649.852 |
6 | 73.336 | 98.983 | 157.530 | 146.016 | 139.760 | 608.00 | 7.625 | 2031.153 | 728.731 | 2893.762 |
7 | 57.750 | 99.767 | 123.604 | 210.658 | 142.515 | 626.00 | 8.294 | 1914.203 | 816.010 | 2838.928 |
8 | 51.884 | 88.674 | 103.432 | 204.515 | 214.625 | 654.00 | 9.131 | 2131.606 | 1040.647 | 3248.435 |
9 | 53.142 | 97.776 | 114.207 | 209.557 | 225.462 | 690.00 | 10.144 | 2019.883 | 1153.740 | 3260.318 |
10 | 54.142 | 109.352 | 112.662 | 209.810 | 228.632 | 704.00 | 10.598 | 2075.861 | 1204.781 | 3370.372 |
11 | 73.636 | 100.102 | 117.640 | 210.105 | 229.527 | 720.00 | 11.010 | 2052.002 | 1223.114 | 3381.405 |
12 | 72.069 | 116.167 | 123.841 | 210.056 | 229.502 | 740.00 | 11.635 | 2224.386 | 1274.535 | 3613.856 |
13 | 66.908 | 98.680 | 173.744 | 145.451 | 229.517 | 704.00 | 10.300 | 2236.929 | 1154.978 | 3523.693 |
14 | 61.029 | 98.536 | 102.648 | 209.815 | 228.176 | 690.00 | 10.204 | 2036.995 | 1171.356 | 3293.254 |
15 | 66.581 | 117.798 | 115.698 | 213.160 | 149.886 | 654.00 | 9.123 | 2078.304 | 903.466 | 3098.415 |
16 | 22.005 | 101.970 | 112.492 | 124.576 | 226.155 | 580.00 | 7.200 | 1701.781 | 948.532 | 2700.991 |
17 | 24.788 | 95.120 | 109.230 | 195.916 | 139.614 | 558.00 | 6.667 | 1740.035 | 706.614 | 2521.975 |
18 | 66.807 | 83.120 | 156.707 | 124.906 | 184.080 | 608.00 | 7.620 | 2199.492 | 803.606 | 3116.141 |
19 | 61.025 | 110.762 | 116.453 | 209.863 | 164.984 | 654.00 | 9.087 | 2122.958 | 915.351 | 3145.552 |
20 | 61.190 | 96.517 | 118.054 | 209.294 | 229.473 | 704.00 | 10.528 | 2049.371 | 1189.705 | 3333.294 |
21 | 61.279 | 77.640 | 112.693 | 208.694 | 229.519 | 680.00 | 9.825 | 2055.372 | 1140.486 | 3280.867 |
22 | 66.280 | 38.471 | 112.702 | 209.818 | 185.459 | 605.00 | 7.729 | 2051.944 | 873.120 | 3013.830 |
23 | 47.683 | 93.663 | 126.697 | 124.929 | 139.771 | 527.00 | 5.741 | 1693.775 | 582.538 | 2357.800 |
24 | 41.562 | 70.450 | 112.609 | 124.880 | 117.903 | 463.00 | 4.404 | 1696.097 | 452.880 | 2212.678 |
Methods | Total Loss MW | Total Fuel Cost | Total Emission | Total Cost | Change % w.r.t CSA |
---|---|---|---|---|---|
CSA | 192.386 | 46,381.900 | 20,938.800 | 33,660.350 | // |
SOA | 196.961 | 48,500.800 | 21,130.100 | 34,815.450 | 3.43 |
TSA | 194.204 | 45,816.300 | 22,424.800 | 33,942.950 | 0.84 |
FFA | 192.451 | 47,030.700 | 22,069.600 | 34,550.150 | 2.64 |
NEHS [49] | NA | 45,398.016 | 18,392.337 | 31,895.177 | −5.24 |
MHS [49] | NA | 47,390.956 | 18,423.776 | 32,907.366 | −2.24 |
MOHDESAT [51] | NA | 48,214.000 | 18,011.000 | 33,112.500 | −1.63 |
WOA [52] | NA | 46,475.090 | 18,827.980 | 32,651.530 | −2.99 |
PSOGSA [48] | NA | 45,702.6001 | 18,267.179 | 31,984.985 | −5.24 |
DE-SQP [50] | NA | 46,625.000 | 20,527.000 | 33,576.000 | −0.002 |
PSO [47] | NA | 50,893.000 | 20,163.000 | 35,528.000 | 5.55 |
MONNDE [53] | NA | 49,135.000 | 18,233.000 | 33,684.240 | 0.06 |
EP [54] | NA | 48,628.000 | 21,154.000 | 34,891.000 | 3.66 |
SA [51] | NA | 48,621.000 | 21,188.000 | 33,904.500 | 0.73 |
PS [55] | NA | 47,911.000 | 18,927.000 | 33,419.000 | −0.72 |
MODE [51] | NA | 47,330.000 | 18,116.000 | 32,723.000 | −2.78 |
Case 1 | Economic Load Dispatch ELD (USD/h) | |||
---|---|---|---|---|
Algorithm | Min | Average | Worst | Std Dev |
CSA | 2142.3181 | 2164.8135 | 2593.5470 | 55.4145 |
SOA | 2456.3468 | 2537.9394 | 5577.4323 | 290.6773 |
TSA | 2269.2981 | 2293.2777 | 3635.3608 | 113.8379 |
FFA | 2265.5019 | 2310.7733 | 2926.1582 | 100.0485 |
Case 2 | Environmental Dispatch EnD (lb/h) | |||
CSA | 1090.3380 | 1111.2373 | 1421.8938 | 58.9938 |
SOA | 1160.6740 | 1757.2506 | 3536.7399 | 499.4472 |
TSA | 1295.4652 | 1506.9932 | 1728.0597 | 83.5214 |
FFA | 1241.5852 | 1323.0107 | 5121.1719 | 331.6223 |
Case 3 | Combined Economic Emission Dispatch CEED (USD/h) | |||
CSA | 1646.9098 | 1652.9305 | 1784.2619 | 22.1540 |
SOA | 1955.3266 | 2153.2196 | 3553.8243 | 418.7256 |
TSA | 1879.5231 | 1992.3606 | 2203.5179 | 99.1567 |
FFA | 1848.8820 | 1878.6942 | 2216.4237 | 67.0644 |
Unit | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
786.7988 | 38.5397 | 0.1524 | 450 | 0.0410 | 103.3908 | −2.4444 | 0.0312 | 0.5035 | 0.0207 | 150 | 470 | |
451.3251 | 46.1591 | 0.1058 | 600 | 0.0360 | 103.3908 | −2.4444 | 0.0312 | 0.5035 | 0.0207 | 135 | 470 | |
1049.9977 | 40.3965 | 0.0280 | 320 | 0.0280 | 300.3910 | −4.0695 | 0.0509 | 0.4968 | 0.0202 | 73 | 340 | |
1243.5311 | 38.3055 | 0.0354 | 260 | 0.0520 | 300.3910 | −4.0695 | 0.0509 | 0.4968 | 0.0202 | 60 | 300 | |
1658.5696 | 36.3278 | 0.0211 | 280 | 0.0630 | 320.0006 | −3.8132 | 0.0344 | 0.4972 | 0.0200 | 73 | 243 | |
1356.6592 | 38.2704 | 0.0179 | 310 | 0.0480 | 320.0006 | −3.8132 | 0.0344 | 0.4972 | 0.0200 | 57 | 160 | |
1450.7045 | 36.5104 | 0.0121 | 300 | 0.0860 | 330.0056 | −3.9023 | 0.0465 | 0.5163 | 0.0214 | 20 | 130 | |
1450.7045 | 36.5104 | 0.0121 | 340 | 0.0820 | 330.0056 | −3.9023 | 0.0465 | 0.5163 | 0.0214 | 47 | 120 | |
1455.6056 | 39.5804 | 0.1090 | 270 | 0.0980 | 350.0056 | −3.9524 | 0.0465 | 0.5475 | 0.0234 | 20 | 80 | |
1469.4026 | 40.5407 | 0.1295 | 380 | 0.0940 | 360.0012 | −3.9864 | 0.0470 | 0.5475 | 0.0234 | 10 | 55 |
0.49 | 0.14 | 0.15 | 0.15 | 0.16 | 0.17 | 0.17 | 0.18 | 0.19 | 0.20 |
0.14 | 0.45 | 0.16 | 0.16 | 0.17 | 0.15 | 0.15 | 0.16 | 0.18 | 0.18 |
0.15 | 0.16 | 0.39 | 0.10 | 0.12 | 0.14 | 0.14 | 0.16 | 0.16 | 0.16 |
0.15 | 0.16 | 0.10 | 0.40 | 0.14 | 0.10 | 0.11 | 0.12 | 0.14 | 0.15 |
0.16 | 0.17 | 0.12 | 0.14 | 0.35 | 0.11 | 0.13 | 0.13 | 0.15 | 0.16 |
0.17 | 0.15 | 0.12 | 0.10 | 0.11 | 0.36 | 0.12 | 0.12 | 0.14 | 0.15 |
0.17 | 0.15 | 0.14 | 0.11 | 0.13 | 0.12 | 0.38 | 0.16 | 0.16 | 0.18 |
0.18 | 0.16 | 0.14 | 0.12 | 0.13 | 0.12 | 0.16 | 0.40 | 0.15 | 0.16 |
0.19 | 0.18 | 0.16 | 0.14 | 0.15 | 0.14 | 0.16 | 0.15 | 0.42 | 0.19 |
0.20 | 0.18 | 0.16 | 0.15 | 0.16 | 0.15 | 0.18 | 0.16 | 0.19 | 0.44 |
Time (h) | Load (MW) | Time (h) | Load (MW) | Time (h) | Load (MW) |
---|---|---|---|---|---|
1 | 1036 | 9 | 1924 | 17 | 1480 |
2 | 1110 | 10 | 2022 | 18 | 1628 |
3 | 1258 | 11 | 2106 | 19 | 1776 |
4 | 1406 | 12 | 2150 | 20 | 1972 |
5 | 1480 | 13 | 2072 | 21 | 1924 |
6 | 1628 | 14 | 1924 | 22 | 1628 |
7 | 1702 | 15 | 1776 | 23 | 1332 |
8 | 1776 | 16 | 1554 | 24 | 1184 |
Time h | Fuel Cost | Emission | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 150.510 | 135.104 | 80.705 | 62.302 | 169.338 | 122.675 | 125.946 | 119.882 | 54.877 | 34.491 | 19.832 | 61,600.519 | 3803.894 |
2 | 150.006 | 135.034 | 146.567 | 120.465 | 175.863 | 122.983 | 128.759 | 118.303 | 20.993 | 13.373 | 22.336 | 64,906.264 | 4689.769 |
3 | 150.279 | 135.165 | 181.085 | 182.838 | 221.095 | 138.049 | 129.652 | 89.063 | 49.058 | 10.227 | 28.514 | 72,304.859 | 6228.359 |
4 | 150.009 | 135.007 | 224.237 | 191.995 | 242.419 | 159.944 | 129.963 | 119.998 | 44.613 | 43.418 | 35.606 | 80,271.190 | 7718.284 |
5 | 150.034 | 135.001 | 290.188 | 242.097 | 222.606 | 124.793 | 129.457 | 117.073 | 61.531 | 47.082 | 39.862 | 84,408.221 | 9763.984 |
6 | 150.032 | 144.110 | 339.873 | 298.516 | 242.647 | 159.853 | 98.936 | 118.058 | 79.997 | 44.509 | 48.532 | 94,297.297 | 13,307.920 |
7 | 222.445 | 135.032 | 330.607 | 299.754 | 239.465 | 159.924 | 129.960 | 116.990 | 70.059 | 51.333 | 53.563 | 100,946.056 | 13,761.749 |
8 | 224.611 | 213.686 | 339.936 | 291.807 | 242.827 | 139.143 | 129.115 | 119.997 | 79.959 | 54.035 | 59.116 | 107,884.313 | 14,564.055 |
9 | 272.168 | 323.499 | 339.776 | 299.530 | 242.880 | 159.038 | 129.950 | 120.000 | 65.817 | 42.489 | 71.142 | 124,932.384 | 17,534.742 |
10 | 299.063 | 395.517 | 339.995 | 293.040 | 242.928 | 159.991 | 122.587 | 114.212 | 79.889 | 55.000 | 80.219 | 137,626.028 | 20,656.966 |
11 | 341.347 | 449.088 | 339.950 | 296.452 | 243.000 | 159.982 | 129.965 | 110.813 | 79.997 | 44.020 | 88.609 | 150,876.695 | 26,836.868 |
12 | 386.873 | 450.590 | 339.134 | 299.972 | 242.996 | 156.337 | 129.852 | 119.998 | 79.960 | 37.402 | 93.114 | 157,522.576 | 29,006.003 |
13 | 312.707 | 441.906 | 332.353 | 299.267 | 242.973 | 144.923 | 128.829 | 119.947 | 79.461 | 54.994 | 85.359 | 145,630.761 | 24,855.409 |
14 | 272.168 | 323.499 | 339.776 | 299.530 | 242.880 | 159.038 | 129.950 | 120.000 | 65.817 | 42.489 | 71.142 | 124,932.384 | 17,534.742 |
15 | 224.611 | 213.686 | 339.936 | 291.807 | 242.827 | 139.143 | 129.115 | 119.997 | 79.959 | 54.035 | 59.116 | 107,884.313 | 14,564.055 |
16 | 152.831 | 135.356 | 293.140 | 299.998 | 237.653 | 158.625 | 129.971 | 93.751 | 52.366 | 44.230 | 43.915 | 89,095.065 | 11,635.439 |
17 | 150.034 | 135.001 | 290.188 | 242.097 | 222.606 | 124.793 | 129.457 | 117.073 | 61.531 | 47.082 | 39.862 | 84,408.221 | 9763.984 |
18 | 150.032 | 144.110 | 339.873 | 298.516 | 242.647 | 159.853 | 98.936 | 118.058 | 79.997 | 44.509 | 48.532 | 94,297.297 | 13,307.920 |
19 | 224.611 | 213.686 | 339.936 | 291.807 | 242.827 | 139.143 | 129.115 | 119.997 | 79.959 | 54.035 | 59.116 | 107,884.313 | 14,564.055 |
20 | 247.097 | 405.611 | 338.935 | 300.000 | 241.615 | 159.957 | 130.000 | 116.665 | 64.768 | 43.158 | 75.807 | 131,752.041 | 20,566.632 |
21 | 272.168 | 323.499 | 339.776 | 299.530 | 242.880 | 159.038 | 129.950 | 120.000 | 65.817 | 42.489 | 71.142 | 124,932.384 | 17,534.742 |
22 | 150.032 | 144.110 | 339.873 | 298.516 | 242.647 | 159.853 | 98.936 | 118.058 | 79.997 | 44.509 | 48.532 | 94,297.297 | 13,307.920 |
23 | 150.015 | 135.032 | 215.063 | 180.844 | 222.867 | 143.145 | 129.793 | 119.964 | 56.899 | 10.332 | 31.955 | 76,082.212 | 7006.619 |
24 | 150.001 | 135.024 | 184.626 | 131.224 | 222.612 | 123.171 | 129.588 | 86.119 | 24.598 | 22.486 | 25.447 | 68,742.483 | 5589.037 |
Time h | Fuel Cost | Emission | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 150.002 | 135.718 | 90.566 | 91.469 | 118.016 | 136.066 | 109.538 | 94.773 | 74.663 | 54.913 | 19.725 | 63,282.134 | 3479.107 |
2 | 157.856 | 153.661 | 110.735 | 93.173 | 142.569 | 139.932 | 110.889 | 89.120 | 79.790 | 54.989 | 22.712 | 68,271.277 | 3945.886 |
3 | 160.271 | 167.053 | 120.413 | 132.252 | 178.038 | 155.820 | 122.997 | 119.962 | 75.131 | 54.997 | 28.936 | 75,457.550 | 5060.796 |
4 | 204.728 | 221.786 | 134.213 | 140.423 | 197.409 | 159.938 | 129.528 | 119.976 | 79.999 | 55.000 | 37.000 | 86,669.943 | 6532.429 |
5 | 188.357 | 229.602 | 151.075 | 171.912 | 239.342 | 158.088 | 129.982 | 119.990 | 77.798 | 54.576 | 40.723 | 89,962.573 | 7507.212 |
6 | 277.420 | 270.540 | 161.914 | 183.738 | 242.939 | 159.996 | 130.000 | 117.692 | 79.999 | 54.583 | 50.822 | 105,456.159 | 9689.460 |
7 | 303.679 | 253.234 | 215.080 | 207.820 | 234.626 | 159.789 | 129.996 | 118.557 | 80.000 | 54.731 | 55.512 | 110,376.988 | 11,046.974 |
8 | 284.213 | 276.631 | 242.805 | 257.079 | 232.163 | 159.480 | 129.906 | 119.925 | 79.154 | 54.847 | 60.204 | 114,622.220 | 12,591.579 |
9 | 329.264 | 351.175 | 263.618 | 277.043 | 237.413 | 153.536 | 129.956 | 119.969 | 79.838 | 54.610 | 72.424 | 131,422.312 | 16,492.225 |
10 | 391.022 | 365.874 | 298.133 | 265.150 | 242.871 | 159.900 | 129.864 | 119.824 | 75.641 | 54.994 | 81.275 | 143,558.138 | 20,215.772 |
11 | 403.610 | 398.763 | 323.390 | 299.975 | 233.988 | 159.970 | 129.997 | 112.664 | 79.995 | 52.485 | 88.838 | 152,258.869 | 24,291.715 |
12 | 415.007 | 433.955 | 340.000 | 295.831 | 242.986 | 159.987 | 129.954 | 98.248 | 79.986 | 47.515 | 93.474 | 159,891.196 | 28,568.055 |
13 | 403.752 | 376.588 | 323.914 | 265.781 | 242.984 | 159.996 | 129.998 | 119.990 | 79.991 | 54.733 | 85.728 | 148,855.883 | 22,349.281 |
14 | 329.264 | 351.175 | 263.618 | 277.043 | 237.413 | 153.536 | 129.956 | 119.969 | 79.838 | 54.610 | 72.424 | 131,422.312 | 16,492.225 |
15 | 284.213 | 276.631 | 242.805 | 257.079 | 232.163 | 159.480 | 129.906 | 119.925 | 79.154 | 54.847 | 60.204 | 114,622.220 | 12,591.579 |
16 | 223.433 | 240.864 | 174.031 | 189.920 | 227.097 | 159.983 | 129.867 | 119.965 | 79.171 | 54.950 | 45.282 | 95,730.049 | 8464.578 |
17 | 188.357 | 229.602 | 151.075 | 171.912 | 239.342 | 158.088 | 129.982 | 119.990 | 77.798 | 54.576 | 40.723 | 89,962.573 | 7507.212 |
18 | 277.420 | 270.540 | 161.914 | 183.738 | 242.939 | 159.996 | 130.000 | 117.692 | 79.999 | 54.583 | 50.822 | 105,456.159 | 9689.460 |
19 | 284.213 | 276.631 | 242.805 | 257.079 | 232.163 | 159.480 | 129.906 | 119.925 | 79.154 | 54.847 | 60.204 | 114,622.220 | 12,591.579 |
20 | 349.961 | 338.292 | 287.234 | 299.742 | 242.953 | 157.864 | 129.890 | 119.878 | 68.079 | 54.236 | 76.132 | 134,994.987 | 18,062.886 |
21 | 329.264 | 351.175 | 263.618 | 277.043 | 237.413 | 153.536 | 129.956 | 119.969 | 79.838 | 54.610 | 72.424 | 131,422.312 | 16,492.225 |
22 | 277.420 | 270.540 | 161.914 | 183.738 | 242.939 | 159.996 | 130.000 | 117.692 | 79.999 | 54.583 | 50.822 | 105,456.159 | 9689.460 |
23 | 167.768 | 180.865 | 146.464 | 142.876 | 189.040 | 159.016 | 129.864 | 113.622 | 79.999 | 54.997 | 32.511 | 80,208.210 | 5752.844 |
24 | 166.459 | 153.534 | 105.409 | 106.892 | 152.447 | 159.990 | 110.254 | 119.831 | 79.968 | 54.989 | 25.774 | 71,963.076 | 4438.329 |
Time h | FC | E | TC | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 150.406 | 135.246 | 85.444 | 94.209 | 181.135 | 122.376 | 129.280 | 94.366 | 20.605 | 42.622 | 19.691 | 61,700.233 | 3934.478 | 32,955.958 |
2 | 150.059 | 135.192 | 148.162 | 120.431 | 172.562 | 122.461 | 93.065 | 119.995 | 22.348 | 48.148 | 22.423 | 65,198.802 | 4454.610 | 34,966.155 |
3 | 150.093 | 135.208 | 101.472 | 182.259 | 221.659 | 149.384 | 129.872 | 119.939 | 55.572 | 41.141 | 28.607 | 72,288.444 | 5650.903 | 39,113.119 |
4 | 150.060 | 135.019 | 190.752 | 204.190 | 224.454 | 159.847 | 124.653 | 119.999 | 79.982 | 52.633 | 35.589 | 80,461.980 | 7112.270 | 43,928.263 |
5 | 150.231 | 135.171 | 241.644 | 242.567 | 241.338 | 159.980 | 129.383 | 119.991 | 52.892 | 46.297 | 39.493 | 84,292.688 | 9023.037 | 46,796.853 |
6 | 152.020 | 164.386 | 320.567 | 277.526 | 222.190 | 159.921 | 129.914 | 119.986 | 80.000 | 49.903 | 48.411 | 94,530.118 | 12,104.35 | 53,457.173 |
7 | 161.851 | 223.048 | 310.663 | 299.756 | 235.796 | 141.568 | 129.795 | 119.940 | 78.244 | 55.000 | 53.662 | 100,886.75 | 13,127.88 | 57,150.064 |
8 | 150.069 | 269.756 | 339.843 | 299.405 | 242.988 | 158.986 | 124.745 | 119.937 | 75.404 | 53.775 | 58.903 | 107,645.16 | 14,941.13 | 61,436.135 |
9 | 289.083 | 313.982 | 339.999 | 280.201 | 234.134 | 156.640 | 129.595 | 120.000 | 78.241 | 53.458 | 71.328 | 125,468.68 | 16,952.94 | 71,353.584 |
10 | 364.296 | 316.930 | 339.330 | 299.170 | 242.913 | 159.675 | 129.700 | 119.025 | 76.855 | 54.122 | 80.023 | 137,757.86 | 19,776.86 | 78,914.408 |
11 | 391.758 | 400.840 | 336.936 | 293.570 | 242.999 | 159.970 | 129.998 | 119.999 | 63.537 | 54.997 | 88.603 | 151,135.50 | 24,136.97 | 87,778.694 |
12 | 442.035 | 396.653 | 337.897 | 299.108 | 242.982 | 157.061 | 127.818 | 119.996 | 79.999 | 39.772 | 93.323 | 158,774.96 | 28,337.51 | 93,695.444 |
13 | 359.815 | 391.269 | 339.912 | 299.467 | 242.964 | 151.758 | 126.070 | 118.443 | 79.987 | 47.449 | 85.138 | 145,326.69 | 22,318.79 | 83,964.399 |
14 | 289.083 | 313.982 | 339.999 | 280.201 | 234.134 | 156.640 | 129.595 | 120.000 | 78.241 | 53.458 | 71.328 | 125,468.68 | 16,952.94 | 71,353.584 |
15 | 150.069 | 269.756 | 339.843 | 299.405 | 242.988 | 158.986 | 124.745 | 119.937 | 75.404 | 53.775 | 58.903 | 107,645.16 | 14,941.13 | 61,436.135 |
16 | 150.156 | 135.036 | 276.528 | 283.184 | 240.900 | 159.073 | 129.657 | 120.000 | 51.168 | 52.036 | 43.739 | 88,890.958 | 10,861.13 | 50,016.892 |
17 | 150.231 | 135.171 | 241.644 | 242.567 | 241.338 | 159.980 | 129.383 | 119.991 | 52.892 | 46.297 | 39.493 | 84,292.688 | 9023.037 | 46,796.853 |
18 | 152.020 | 164.386 | 320.567 | 277.526 | 222.190 | 159.921 | 129.914 | 119.986 | 80.000 | 49.903 | 48.411 | 94,530.118 | 12,104.35 | 53,457.173 |
19 | 150.069 | 269.756 | 339.843 | 299.405 | 242.988 | 158.986 | 124.745 | 119.937 | 75.404 | 53.775 | 58.903 | 107,645.16 | 14,941.13 | 61,436.135 |
20 | 326.074 | 347.521 | 309.290 | 299.994 | 242.997 | 160.000 | 129.970 | 119.999 | 67.957 | 44.017 | 75.820 | 133,249.35 | 18,331.48 | 75,929.053 |
21 | 289.083 | 313.982 | 339.999 | 280.201 | 234.134 | 156.640 | 129.595 | 120.000 | 78.241 | 53.458 | 71.328 | 125,468.68 | 16,952.94 | 71,353.584 |
22 | 152.020 | 164.386 | 320.567 | 277.526 | 222.190 | 159.921 | 129.914 | 119.986 | 80.000 | 49.903 | 48.411 | 94,530.118 | 12,104.35 | 53,457.173 |
23 | 150.173 | 137.534 | 180.818 | 163.649 | 238.569 | 149.328 | 129.739 | 117.812 | 51.515 | 44.869 | 32.009 | 76,243.211 | 6439.102 | 41,480.912 |
24 | 150.015 | 135.021 | 126.085 | 104.167 | 220.872 | 159.474 | 129.251 | 119.979 | 21.132 | 43.459 | 25.457 | 68,625.467 | 5068.830 | 36,985.679 |
Methods | Total Loss MW | Total Fuel Cost | Total Emission | Total Cost |
---|---|---|---|---|
CSA | 1298.9956 | 2.492050 | 3.19592 | 2.843985 |
MONNDE [53] | 1307.8000 | 2.557900 | 2.95220 | 2.769100 |
NSGA-II [58] | NA | 2.521000 | 3.12460 | 2.823600 |
IBFA [59] | 1299.8760 | 2.517117 | 2.99037 | 2.753743 |
TLBO [61] | 1301.1900 | 2.472116 | 2.94153 | 2.776644 |
HCRO [62] | 1299.8723 | 2.517076 | 2.99065 | 2.753863 |
CRO [62] | 1298.4666 | 2.517821 | 3.01941 | 2.768615 |
NSPSO [63] | NA | 2.474472 | 2.93416 | 2.704316 |
PSO-CSC [64] | 1303.1000 | 2.524700 | 3.05240 | 2.788550 |
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Larouci, B.; Ayad, A.N.E.I.; Alharbi, H.; Alharbi, T.E.A.; Boudjella, H.; Tayeb, A.S.; Ghoneim, S.S.M.; Abdelwahab, S.A.M. Investigation on New Metaheuristic Algorithms for Solving Dynamic Combined Economic Environmental Dispatch Problems. Sustainability 2022, 14, 5554. https://doi.org/10.3390/su14095554
Larouci B, Ayad ANEI, Alharbi H, Alharbi TEA, Boudjella H, Tayeb AS, Ghoneim SSM, Abdelwahab SAM. Investigation on New Metaheuristic Algorithms for Solving Dynamic Combined Economic Environmental Dispatch Problems. Sustainability. 2022; 14(9):5554. https://doi.org/10.3390/su14095554
Chicago/Turabian StyleLarouci, Benyekhlef, Ahmed Nour El Islam Ayad, Hisham Alharbi, Turki E. A. Alharbi, Houari Boudjella, Abdelkader Si Tayeb, Sherif S. M. Ghoneim, and Saad A. Mohamed Abdelwahab. 2022. "Investigation on New Metaheuristic Algorithms for Solving Dynamic Combined Economic Environmental Dispatch Problems" Sustainability 14, no. 9: 5554. https://doi.org/10.3390/su14095554