GENETIC ALGORITHM APPROACH FOR OPTIMAL CYCLIC TOUR ROUND THE STATE CAPITALS IN NIGERIA’S NIGER DELTA REGION

Egba Anwaitu Fraser, O. Okonkwo
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引用次数: 1

Abstract

The classical traveling salesman problem(TSP) is simple to state but difficult a problem to solve. TSP seeks to determine the total distance or cost of visiting (n-1) cities or points and returning to the starting city or point. In this research, the Genetic Algorithm (GA) technique is utilized for solving the problem of finding the optimal tour around the nine Niger Delta state capitals in Nigeria which is an example of a traveling salesman problem. The partially mapped(PMX) crossover operator and the inversion mutation operator techniques were employed due to their simplicity. Genetic algorithms are evolutionary techniques used in solving optimization problems according to the survival of the fittest. The method does not provide an optimal exact solution, rather, it gives an approximated result in time. Data required for the tour were obtained from an online google map website where the distances between the state capitals and their coordinates (longitude and latitudes) were obtained. The MATLAB software which is suitable for scientific computations was used in coding the results show that the BB algorithm yielded an optimal tour of 1351km with a cyclic tour of (X3,1), (X1,9), (X9,6), (X6,8), (X8,4), (X4,7), (X7,5), (X5,2), (X2,3) and then (X3,1) after nine (9) iterations. Solving using the genetic algorithm with the four genetic parameters population size(N), maximum generation(G), crossover probability (Pc), and mutation probability(Pn) were used and set to 30; 10; 0.8; and 0.1 respectively yielded an optimal path of (8476125398) which is with an optimal tour of 1124.0KMs. genetic algorithm yielded an improved result.
尼日利亚尼日尔三角洲地区州首府最优循环旅游的遗传算法方法
经典旅行商问题(TSP)是一个表述简单但求解困难的问题。TSP试图确定访问(n-1)个城市或点并返回起始城市或点的总距离或成本。在本研究中,利用遗传算法(GA)技术来解决尼日利亚九个尼日尔三角洲州首府的最佳旅游问题,这是一个旅行推销员问题的例子。由于部分映射(PMX)交叉算子和反转突变算子的简单性,我们采用了它们。遗传算法是一种进化技术,用于解决根据适者生存的优化问题。该方法不提供最优精确解,而是在时间上给出近似结果。旅行所需的数据是从一个在线谷歌地图网站获得的,该网站获得了各州首府之间的距离及其坐标(经度和纬度)。采用适合科学计算的MATLAB软件进行编码,结果表明:BB算法经过9(9)次迭代,以(X3,1)、(X1,9)、(X9,6)、(X6,8)、(X8,4)、(X4,7)、(X7,5)、(X5,2)、(X2,3)、(X3,1)为循环行程,得到最优行程1351km。采用种群大小(N)、最大代数(G)、交叉概率(Pc)和突变概率(Pn)四个遗传参数的遗传算法求解,并设置为30;10;0.8;和0.1的最优路径为(8476125398),最优行程为1124.0 km。遗传算法得到了改进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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