Firefighting Drone Configuration and Scheduling for Wildfire Based on Loss Estimation and Minimization
Abstract
:1. Introduction
- We present a mathematical model of wildfire spreading that simulates dynamic fire development and propagation, and, at the same time, estimates the economic losses caused by the fire.
- We propose a heuristic optimization method for configuring and scheduling firefighting drones to minimize the expected total wildfire loss.
- We conduct expensive computational experiments to validate the effectiveness and efficiency of the proposed method on real-world instances.
2. Wildfire Spread Modeling and Loss Estimation
2.1. Fire Dynamics and Heat Release
- Preheat stage. After the ignition time , the heat release rate continuously grows with time t, and its growth rate depends on the combustible vegetation density of the subarea, temperature , humidity , and the wind force :
- Full combustion stage, in which gas combustion is dominant. Whenever the heat release rate reaches a threshold , i.e., , the fire in the subarea enters into the full combustion stage, the time at which is denoted as :The heat release rate during this stage is relatively stable:
- The decay stage, in which charcoal combustion is dominant. Whenever the ratio of the total released heat to the total combustible heat of the vegetation in the subarea reaches a threshold , the fire in the subarea enters into the decay stage, the time at which is denoted as :The heat release rate during this stage decreases with time:Whenever the heat release rate decreases to a lower limit (or the total released heat reaches the total combustible heat), the fire is extinguished, the time at which is denoted as :
2.2. Loss Estimation
2.3. Fire Propagation
2.4. Simulation Process
- Let ; for each subarea , initialize its accumulated ignition probability .
- Set ; if , then exit.
- For each subarea :
- (a)
- Initialize the non-ignition probability .
- (b)
- For each subarea that is adjacent to :
- i
- Calculate according to Equation (12).
- ii
- Update the non-ignition probability as
- (c)
- For each subarea that is adjacent to while having :
- i
- Calculate the probability of the propagation from to as
- ii
- Update the non-ignition probability according to Equation (14).
- (d)
- Set .
- (e)
- If (where is a small value, which is set to 0.001 in this study), then add to ;
- (f)
- Otherwise, update the accumulated probability of ignition in asIf , then add to .
- Go to step 2.
3. Drone Configuration and Scheduling
3.1. Minimum Number of Firefighting Drones in Preparation for Wildfire
3.2. Optimization Problem of Firefighting Drone Scheduling
- Let , be the initial number of available drones.
- Calculate according to Equation (21) and select the candidate set of subareas satisfying , which are sorted in the same order as in .
- For each subarea :
- (a)
- Calculate according to Equation (18).
- (b)
- If , then assign drones to subarea , whose fire will be extinguished at time , and these drones will be available at the station at time , and then set .
- (c)
- If , then go to step 4.
- Set .
- Check whether there is any burning subarea whose fire will be extinguished at time t; if so, set the extinguish time to t and heat release rate to zero and remove it from .
- If there is no burning subareas, calculate the total loss and exit.
- Use steps 3 to 5 described in Section 2.4 to update the states of the other subareas at time t; if there is any subarea entering into the full combustion stage, add it to ; if there is any burning subarea whose fire is naturally extinguished at time t, remove it from .
- Check whether there are some drones returning to the station at time t; if so, update the value of .
- Go to step 2.
3.3. Optimization Algorithms
- GA using order-based solution representation, partial mapping crossover, and swap mutation [42].
- Particle swarm optimization (PSO) using discrete sequence-based particle representation [43], where velocity trail values are used as the probabilities of the components being placed in certain positions of the sequence. We also incorporate a comprehensive learning strategy [44,45] and an adaptive parameter control mechanism [46].
- Differential evolution (DE) adapted for permutation optimization based on floating-to-integer mapping [47], where solutions are encoded as floating vectors and evolved via standard DE mutation and crossover, then decoded to integer sequences based on the order of floating values.
- Biogeography-based optimization (BBO) for permutation optimization based on subsequence migration [48,49]. The migration operator selects a subsequence from the emigrating solution and uses it to replace the corresponding part in the immigrating solution while using the original components in the part to substitute the corresponding components in the other part to avoid duplication.
Algorithm 1: WWO algorithm for firefighting drone scheduling. |
Algorithm 2: WWO breaking using self-adaptive local search. |
3.4. Drone/Staff Configuration and Preplanning
4. Computational Experiments
5. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter | Description |
---|---|
m | Number of subareas |
Area (m2) of subarea | |
Time of fire ignition in subarea | |
Combustible vegetation density of subarea | |
Total combustible heat of the vegetation in subarea | |
Temperature at time t | |
Humidity at time t | |
Wind force at time t | |
Wind direction at time t | |
Coefficient used in Equation (1) for calculating the heat release rate in the preheat stage | |
Exponent used in Equation (1) for calculating the heat release rate in the preheat stage | |
Coefficient used in Equation (3) for calculating the heat release rate in the full combustion stage | |
Exponent used in Equation (5) for calculating the heat release rate in the decay stage | |
Coefficient used in Equation (12) for calculating the probability of fire propagation | |
Time at which the fire in subarea enters into the full combustion stage | |
Time at which the fire in subarea enters into the decay stage | |
Time at which the fire in subarea is naturally extinguished | |
Threshold of heat release rate for the fire enters into the full combustion stage | |
Threshold of the ratio of the total released heat to for the fire enters into the decay stage | |
Valuation of vegetation in subarea | |
Valuation of vulnerable assets in subarea | |
Length of the boundary between two adjacent subareas and | |
Threshold of boundary length for fire propagation | |
Angle between two lines and | |
W | Amount of water that can be carried by a drone at a time |
D | Maximum distance of the drone |
W | Maximum load of the drone |
Maximum velocity of the drone | |
Minimum velocity of the drone |
Wind Force Level | 0 | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 |
---|---|---|---|---|---|---|---|---|---|---|---|
values | 1.414 | 1.503 | 1.691 | 2.000 | 2.265 | 2.673 | 2.967 | 3.341 | 3.568 | 4.102 | 4.609 |
values | 0.55 | 0.63 | 0.77 | 0.92 | 1.01 | 1.18 | 1.29 | 1.40 | 1.53 | 1.68 | 1.85 |
values | 1.64 | 1.32 | 1.21 | 1.12 | 0.97 | 0.90 | 0.83 | 0.77 | 0.74 | 0.65 | 0.61 |
values | 0.16 | 0.25 | 0.33 | 0.46 | 0.6 | 0.89 | 1 | 1 | 1 | 1 | 1 |
Instance | Metrics | GA | PSO | DE | BBO | EBO | WWO | EWWO |
---|---|---|---|---|---|---|---|---|
1 | minimum | 788 | 787 | 782 | 786 | 782 | 779 | 778 |
median | 808 | 806 | 801 | 808 | 801 | 801 | 798 | |
std | 17 | 11 | 15 | 12 | 8 | 15 | 16 | |
2 | minimum | 936 | 932 | 927 | 930 | 923 | 919 | 916 |
median | 980 | 970 | 951 | 974 | 964 | 955 | 946 | |
std | 29 | 27 | 15 | 35 | 21 | 31 | 25 | |
3 | minimum | 1059 | 1052 | 1044 | 1057 | 1051 | 1046 | 1039 |
median | 1172 | 1139 | 1109 | 1136 | 1114 | 1096 | 1084 | |
std | 62 | 55 | 36 | 59 | 40 | 34 | 29 | |
4 | minimum | 1133 | 1132 | 1118 | 1132 | 1121 | 1110 | 1108 |
median | 1221 | 1207 | 1189 | 1203 | 1194 | 1180 | 1162 | |
std | 79 | 53 | 43 | 45 | 46 | 50 | 28 | |
5 | minimum | 1256 | 1235 | 1218 | 1260 | 1225 | 1204 | 1162 |
median | 1345 | 1345 | 1282 | 1325 | 1301 | 1253 | 1226 | |
std | 57 | 49 | 28 | 41 | 60 | 31 | 49 | |
6 | minimum | 1428 | 1394 | 1356 | 1405 | 1365 | 1329 | 1290 |
median | 1576 | 1514 | 1454 | 1564 | 1466 | 1392 | 1369 | |
std | 67 | 78 | 51 | 75 | 74 | 46 | 54 | |
7 | minimum | 1640 | 1640 | 1526 | 158 | 1517 | 1428 | 1354 |
median | 1788 | 1694 | 1641 | 1745 | 1622 | 1590 | 1428 | |
std | 111 | 24 | 85 | 98 | 86 | 71 | 64 | |
8 | minimum | 1807 | 1784 | 1642 | 1752 | 1671 | 1558 | 1517 |
median | 1980 | 1 897 | 1778 | 1889 | 1819 | 1699 | 1620 | |
std | 97 | 50 | 84 | 90 | 110 | 75 | 70 | |
9 | minimum | 1921 | 1874 | 1787 | 1927 | 1778 | 1710 | 1610 |
median | 2201 | 2135 | 1984 | 2193 | 2036 | 1852 | 1729 | |
std | 230 | 226 | 127 | 188 | 219 | 127 | 64 | |
10 | minimum | 675 | 674 | 672 | 674 | 672 | 667 | 665 |
median | 699 | 690 | 684 | 697 | 680 | 682 | 670 | |
std | 14 | 11 | 8 | 17 | 6 | 9 | 4 | |
11 | minimum | 778 | 771 | 757 | 775 | 765 | 752 | 749 |
median | 788 | 782 | 779 | 784 | 772 | 769 | 763 | |
std | 9 | 6 | 15 | 6 | 4 | 14 | 8 | |
12 | minimum | 822 | 816 | 804 | 822 | 805 | 803 | 793 |
median | 837 | 836 | 817 | 837 | 820 | 809 | 808 | |
std | 6 | 17 | 9 | 13 | 6 | 3 | 13 | |
13 | minimum | 946 | 920 | 895 | 931 | 889 | 872 | 832 |
median | 975 | 961 | 921 | 973 | 930 | 897 | 862 | |
std | 18 | 23 | 13 | 34 | 26 | 17 | 14 | |
14 | minimum | 1074 | 1062 | 992 | 1024 | 993 | 931 | 906 |
median | 1133 | 1112 | 1047 | 1128 | 1056 | 992 | 926 | |
std | 50 | 35 | 44 | 79 | 52 | 32 | 12 | |
15 | minimum | 1281 | 1243 | 1083 | 1205 | 1136 | 1115 | 990 |
median | 1340 | 1286 | 1232 | 1316 | 1185 | 1183 | 1039 | |
std | 42 | 36 | 130 | 67 | 20 | 28 | 24 | |
16 | minimum | 1468 | 1335 | 1230 | 1359 | 1264 | 1172 | 1128 |
median | 1556 | 1435 | 1331 | 1546 | 1365 | 1275 | 1221 | |
std | 61 | 79 | 66 | 107 | 46 | 53 | 49 | |
17 | minimum | 1625 | 1573 | 1356 | 1599 | 1427 | 1281 | 1251 |
median | 1739 | 1634 | 1424 | 1755 | 1565 | 1489 | 1335 | |
std | 62 | 41 | 36 | 85 | 103 | 178 | 34 | |
18 | minimum | 1891 | 1811 | 1587 | 1751 | 1591 | 1615 | 1423 |
median | 2024 | 2024 | 1789 | 2013 | 1769 | 1668 | 1502 | |
std | 64 | 140 | 97 | 232 | 145 | 32 | 43 | |
19 | minimum | 655 | 652 | 648 | 652 | 650 | 649 | 645 |
median | 655 | 653 | 651 | 655 | 651 | 649 | 645 | |
std | 0 | 1 | 1 | 2 | 1 | 0 | 0 | |
20 | minimum | 734 | 708 | 686 | 728 | 711 | 693 | 665 |
median | 758 | 738 | 708 | 757 | 716 | 707 | 685 | |
std | 19 | 25 | 9 | 18 | 3 | 8 | 14 | |
21 | minimum | 788 | 788 | 723 | 788 | 737 | 694 | 685 |
median | 822 | 807 | 742 | 813 | 763 | 746 | 694 | |
std | 18 | 13 | 8 | 13 | 19 | 28 | 7 | |
22 | minimum | 891 | 836 | 763 | 844 | 834 | 755 | 729 |
median | 970 | 937 | 833 | 927 | 848 | 820 | 749 | |
std | 45 | 57 | 62 | 36 | 6 | 46 | 14 | |
23 | minimum | 1010 | 953 | 891 | 968 | 908 | 865 | 837 |
median | 1148 | 1085 | 991 | 1101 | 1009 | 993 | 872 | |
std | 119 | 60 | 43 | 82 | 49 | 101 | 26 | |
24 | minimum | 1084 | 1043 | 1018 | 1071 | 1002 | 967 | 951 |
median | 1300 | 1291 | 1100 | 1287 | 1152 | 1095 | 985 | |
std | 134 | 176 | 45 | 105 | 123 | 111 | 26 | |
25 | minimum | 1325 | 1266 | 1201 | 1257 | 1155 | 1049 | 1015 |
median | 1492 | 1462 | 1250 | 1449 | 1293 | 1239 | 1059 | |
std | 125 | 103 | 32 | 166 | 84 | 89 | 22 | |
26 | minimum | 1586 | 1462 | 1353 | 1519 | 1405 | 1219 | 1069 |
median | 1714 | 1603 | 1427 | 1691 | 1556 | 1249 | 1128 | |
std | 95 | 96 | 50 | 116 | 76 | 16 | 42 | |
27 | minimum | 1852 | 1729 | 1381 | 1871 | 1620 | 1291 | 1207 |
median | 2014 | 1992 | 1620 | 1947 | 1671 | 1450 | 1285 | |
std | 90 | 188 | 213 | 42 | 24 | 137 | 41 | |
28 | minimum | 773 | 773 | 767 | 770 | 768 | 765 | 763 |
median | 788 | 784 | 784 | 789 | 785 | 780 | 778 | |
std | 6 | 6 | 11 | 14 | 10 | 8 | 10 | |
29 | minimum | 891 | 864 | 828 | 855 | 832 | 828 | 788 |
median | 916 | 882 | 868 | 900 | 845 | 863 | 803 | |
std | 11 | 8 | 28 | 27 | 11 | 30 | 13 | |
30 | minimum | 101 | 989 | 930 | 983 | 943 | 916 | 891 |
median | 1054 | 1031 | 973 | 1032 | 967 | 978 | 926 | |
std | 33 | 19 | 25 | 22 | 18 | 35 | 17 | |
31 | minimum | 1074 | 1028 | 993 | 1068 | 1021 | 966 | 926 |
median | 1133 | 1089 | 1052 | 1108 | 1034 | 983 | 936 | |
std | 34 | 35 | 41 | 31 | 9 | 7 | 8 | |
32 | minimum | 1246 | 1142 | 1041 | 1209 | 1066 | 1004 | 965 |
median | 1335 | 1264 | 1179 | 1278 | 1216 | 1138 | 995 | |
std | 49 | 86 | 64 | 31 | 131 | 112 | 13 | |
33 | minimum | 1404 | 1396 | 1244 | 1317 | 1285 | 1212 | 1133 |
median | 1492 | 1441 | 1348 | 1498 | 1333 | 1297 | 1172 | |
std | 38 | 39 | 80 | 77 | 38 | 61 | 32 | |
34 | minimum | 1507 | 1445 | 1369 | 1507 | 1403 | 1330 | 1226 |
median | 1591 | 1528 | 1460 | 1582 | 1478 | 1374 | 1276 | |
std | 62 | 66 | 69 | 56 | 54 | 26 | 22 | |
35 | minimum | 1630 | 1560 | 1453 | 1529 | 1534 | 1386 | 1349 |
median | 1734 | 1675 | 1597 | 1703 | 1604 | 1541 | 1423 | |
std | 82 | 78 | 82 | 144 | 42 | 75 | 61 | |
36 | minimum | 1881 | 1722 | 1551 | 1894 | 1726 | 1622 | 1463 |
median | 1965 | 1880 | 1746 | 1957 | 1834 | 1667 | 1542 | |
std | 38 | 86 | 175 | 47 | 85 | 30 | 46 | |
37 | minimum | 896 | 896 | 894 | 895 | 893 | 893 | 891 |
median | 906 | 906 | 900 | 906 | 902 | 897 | 896 | |
std | 7 | 7 | 4 | 7 | 7 | 2 | 4 | |
38 | minimum | 985 | 970 | 962 | 969 | 959 | 955 | 936 |
median | 101 | 995 | 976 | 1001 | 983 | 975 | 951 | |
std | 12 | 18 | 7 | 200 | 16 | 11 | 6 | |
39 | minimum | 1019 | 1015 | 995 | 998 | 998 | 984 | 960 |
median | 1044 | 1028 | 1004 | 1033 | 1005 | 993 | 965 | |
std | 13 | 8 | 7 | 14 | 6 | 7 | 3 | |
40 | minimum | 1064 | 1051 | 1035 | 1054 | 1046 | 1031 | 1024 |
median | 1093 | 1077 | 1054 | 1074 | 1066 | 1054 | 1034 | |
std | 23 | 20 | 14 | 15 | 15 | 20 | 7 | |
41 | minimum | 1305 | 1228 | 1188 | 1239 | 1167 | 1111 | 1039 |
median | 1428 | 1368 | 1282 | 1410 | 1232 | 1247 | 1069 | |
std | 86 | 105 | 51 | 83 | 37 | 77 | 19 | |
42 | minimum | 1497 | 1494 | 1339 | 1481 | 1286 | 1253 | 1167 |
median | 1571 | 1546 | 1397 | 1571 | 1383 | 1347 | 1197 | |
std | 35 | 27 | 44 | 80 | 85 | 56 | 25 | |
43 | minimum | 1556 | 1524 | 1441 | 1459 | 1406 | 1373 | 1261 |
median | 1645 | 1572 | 1523 | 1661 | 1514 | 1460 | 1325 | |
std | 54 | 37 | 33 | 99 | 87 | 49 | 51 | |
44 | minimum | 1847 | 1847 | 1595 | 1821 | 1582 | 1469 | 1413 |
median | 1985 | 1895 | 1789 | 2004 | 1741 | 1636 | 1507 | |
std | 118 | 39 | 89 | 92 | 91 | 73 | 42 | |
45 | minimum | 2029 | 1898 | 1679 | 2040 | 1827 | 1537 | 1482 |
median | 2197 | 2083 | 1907 | 2191 | 2001 | 1696 | 1571 | |
std | 141 | 98 | 119 | 107 | 110 | 94 | 75 | |
46 | minimum | 749 | 749 | 749 | 749 | 749 | 749 | 749 |
median | 754 | 754 | 752 | 753 | 751 | 750 | 749 | |
std | 4 | 4 | 2 | 3 | 1 | 0 | 0 | |
47 | minimum | 788 | 787 | 783 | 788 | 785 | 781 | 778 |
median | 818 | 816 | 811 | 816 | 806 | 805 | 803 | |
std | 14 | 14 | 23 | 13 | 14 | 12 | 20 | |
48 | minimum | 906 | 902 | 874 | 896 | 863 | 847 | 837 |
median | 960 | 956 | 901 | 950 | 904 | 914 | 877 | |
std | 31 | 45 | 19 | 28 | 21 | 37 | 28 | |
49 | minimum | 1182 | 1169 | 1102 | 1142 | 1082 | 1047 | 1000 |
median | 1271 | 1223 | 1194 | 1236 | 1150 | 1130 | 1069 | |
std | 78 | 48 | 81 | 79 | 57 | 73 | 62 | |
50 | minimum | 1458 | 1393 | 1325 | 1433 | 1257 | 1204 | 1148 |
median | 1566 | 1527 | 1417 | 1580 | 1372 | 1282 | 1207 | |
std | 64 | 66 | 40 | 69 | 54 | 53 | 28 | |
51 | minimum | 1566 | 1456 | 1420 | 1529 | 1417 | 1301 | 1261 |
median | 1694 | 1631 | 1464 | 1694 | 1500 | 1476 | 1325 | |
std | 99 | 121 | 23 | 147 | 5 | 152 | 53 | |
52 | minimum | 1660 | 1600 | 1529 | 1632 | 1585 | 1540 | 1473 |
median | 1773 | 1695 | 1627 | 1731 | 1701 | 1610 | 1556 | |
std | 84 | 74 | 52 | 46 | 73 | 39 | 73 | |
53 | minimum | 1872 | 1798 | 1604 | 1795 | 1681 | 1597 | 1537 |
median | 1990 | 1983 | 1704 | 1986 | 1755 | 1765 | 1615 | |
std | 55 | 75 | 44 | 140 | 53 | 104 | 63 | |
54 | minimum | 2049 | 1919 | 1903 | 2041 | 1864 | 1694 | 1655 |
median | 2157 | 2057 | 2007 | 2104 | 1993 | 1875 | 1748 | |
std | 84 | 99 | 90 | 36 | 68 | 147 | 62 | |
55 | minimum | 857 | 855 | 836 | 851 | 837 | 822 | 818 |
median | 882 | 867 | 850 | 882 | 865 | 848 | 832 | |
std | 15 | 9 | 7 | 23 | 14 | 15 | 6 | |
56 | minimum | 965 | 946 | 911 | 940 | 937 | 925 | 896 |
median | 995 | 973 | 970 | 981 | 941 | 940 | 926 | |
std | 14 | 14 | 41 | 21 | 2 | 10 | 18 | |
57 | minimum | 1251 | 1243 | 1181 | 1256 | 1171 | 1122 | 1098 |
median | 1310 | 1276 | 1224 | 1302 | 1227 | 1172 | 1133 | |
std | 28 | 21 | 32 | 23 | 47 | 21 | 18 | |
58 | minimum | 1522 | 1442 | 1280 | 1485 | 1378 | 1286 | 1216 |
median | 1591 | 1518 | 1348 | 1604 | 1430 | 1358 | 1276 | |
std | 37 | 50 | 47 | 92 | 45 | 57 | 29 | |
59 | minimum | 1660 | 1647 | 1449 | 1540 | 1504 | 1416 | 1335 |
median | 1783 | 1727 | 1567 | 1794 | 1618 | 1570 | 1423 | |
std | 87 | 45 | 68 | 197 | 80 | 127 | 69 | |
60 | minimum | 1995 | 1937 | 1883 | 1886 | 1825 | 1729 | 1675 |
median | 2142 | 2066 | 2004 | 2056 | 1942 | 1918 | 1768 | |
std | 104 | 74 | 62 | 92 | 67 | 116 | 71 | |
61 | minimum | 2197 | 2083 | 2092 | 2194 | 2037 | 1932 | 1896 |
median | 2325 | 2275 | 2129 | 2278 | 2165 | 2023 | 1970 | |
std | 54 | 149 | 25 | 69 | 77 | 81 | 44 | |
62 | minimum | 2448 | 2332 | 2217 | 2336 | 2300 | 2141 | 2049 |
median | 2610 | 2489 | 2382 | 2579 | 2384 | 2333 | 2162 | |
std | 138 | 80 | 119 | 166 | 67 | 103 | 60 | |
63 | minimum | 2837 | 2652 | 2363 | 2819 | 2584 | 2369 | 2221 |
median | 3058 | 2860 | 2648 | 3043 | 2774 | 2486 | 2325 | |
std | 157 | 171 | 252 | 99 | 161 | 85 | 57 | |
64 | minimum | 650 | 650 | 650 | 650 | 650 | 650 | 650 |
median | 660 | 659 | 654 | 659 | 654 | 654 | 650 | |
std | 7 | 6 | 3 | 7 | 3 | 2 | 0 | |
65 | minimum | 773 | 772 | 771 | 772 | 771 | 770 | 768 |
median | 803 | 790 | 791 | 801 | 786 | 773 | 768 | |
std | 26 | 11 | 17 | 13 | 7 | 3 | 0 | |
66 | minimum | 975 | 952 | 878 | 948 | 911 | 872 | 852 |
median | 1024 | 1019 | 967 | 1024 | 956 | 925 | 867 | |
std | 21 | 46 | 63 | 48 | 30 | 35 | 13 | |
67 | minimum | 1281 | 1254 | 1187 | 1254 | 1238 | 1164 | 1152 |
median | 1345 | 1325 | 1252 | 1336 | 1293 | 1215 | 1212 | |
std | 56 | 59 | 27 | 42 | 27 | 43 | 46 | |
68 | minimum | 1409 | 1392 | 1314 | 1392 | 1307 | 1284 | 1236 |
median | 1502 | 1463 | 1361 | 1487 | 1376 | 1376 | 1285 | |
std | 55 | 29 | 30 | 79 | 60 | 45 | 38 | |
69 | minimum | 1670 | 1595 | 1552 | 1631 | 1544 | 1533 | 1463 |
median | 1788 | 1730 | 1632 | 1788 | 1655 | 1599 | 1532 | |
std | 101 | 87 | 53 | 114 | 84 | 46 | 34 | |
70 | minimum | 1975 | 1853 | 1818 | 1940 | 1769 | 1741 | 1625 |
median | 2108 | 2026 | 1937 | 2036 | 1894 | 1884 | 1704 | |
std | 111 | 110 | 98 | 47 | 76 | 78 | 33 | |
71 | minimum | 2098 | 2032 | 1978 | 2047 | 1938 | 1893 | 1832 |
median | 2231 | 2153 | 2089 | 2227 | 2064 | 1964 | 1916 | |
std | 104 | 107 | 66 | 135 | 60 | 33 | 56 | |
72 | minimum | 2197 | 2128 | 1996 | 2197 | 2042 | 1965 | 1921 |
median | 2369 | 2275 | 2067 | 2326 | 2146 | 2044 | 2004 | |
std | 126 | 130 | 48 | 52 | 54 | 46 | 43 |
Metrics | GA | PSO | DE | BBO | EBO | WWO | EWWO |
---|---|---|---|---|---|---|---|
AVG(Minimum) | 1348 | 1303.5 | 1227.6 | 1318 | 1246.7 | 1187.3 | 1140.7 |
RANK(Minimum) | 68 | 54 | 33 | 56 | 37 | 22 | 11 |
AVG(Median) | 1436.5 | 1391.8 | 1307.3 | 1420.3 | 1321.4 | 1265.9 | 1189.7 |
RANK(Median) | 68 | 52 | 32 | 60 | 36 | 23 | 10 |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Wu, R.-Y.; Xie, X.-C.; Zheng, Y.-J. Firefighting Drone Configuration and Scheduling for Wildfire Based on Loss Estimation and Minimization. Drones 2024, 8, 17. https://doi.org/10.3390/drones8010017
Wu R-Y, Xie X-C, Zheng Y-J. Firefighting Drone Configuration and Scheduling for Wildfire Based on Loss Estimation and Minimization. Drones. 2024; 8(1):17. https://doi.org/10.3390/drones8010017
Chicago/Turabian StyleWu, Rong-Yu, Xi-Cheng Xie, and Yu-Jun Zheng. 2024. "Firefighting Drone Configuration and Scheduling for Wildfire Based on Loss Estimation and Minimization" Drones 8, no. 1: 17. https://doi.org/10.3390/drones8010017
APA StyleWu, R. -Y., Xie, X. -C., & Zheng, Y. -J. (2024). Firefighting Drone Configuration and Scheduling for Wildfire Based on Loss Estimation and Minimization. Drones, 8(1), 17. https://doi.org/10.3390/drones8010017