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A novel traveling salesman problem solution by accelerated evolutionary computation with approximated cost matrix in an industrial application

机译:一种新颖的旅行推销员问题解决方案,通过加速进化计算,具有工业应用中的近似成本矩阵

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We propose an industrial technological solution for the traveling salesman problem (TSP) by using the approximated cost matrix and an accelerated evolutionary computation (EC) algorithm. The cost matrix used by theoretical research on TSP mostly is the Euclidean distance between cities, which is not proper to the real condition in the industrial product's application. In this paper, we propose an approximation approach on cost matrix based on the geographic information data, so that it approaches to the actual cost matrix. Slow convergence is the main issue of EC. We propose an accelerating EC convergence approach by Lagrange interpolation method to approximate the EC search space landscape, and do a local search near the related best individuals' region. The experimental result shows that the EC convergence is accelerated, and this acceleration approach is also used in an actual TSP application in a vehicle navigation system, in which the product performance is improved by the accelerated EC approach with the approximated cost matrix.
机译:我们通过使用近似成本矩阵和加速进化计算(EC)算法来提出旅行推销员问题(TSP)的工业技术解决方案。 TSP的理论研究使用的成本矩阵主要是城市之间的欧几里德距离,这对工业产品应用中的实际情况不适合。在本文中,我们基于地理信息数据提出了一种成本矩阵的近似方法,使其接近实际成本矩阵。缓慢的收敛是EC的主要问题。我们提出了一种通过拉格朗日插值方法加速EC融合方法,以近似EC搜索空间景观,并在相关的最佳个人区域附近进行本地搜索。实验结果表明,EC收敛加速,并且该加速度方法也用于车辆导航系统中的实际TSP应用中,其中通过加速的EC方法具有近似成本矩阵的加速EC方法改善了产品性能。

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