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Utilization of the Discrete Differential Evolution for Optimization in Multidimensional Point Clouds

机译:利用离散差分演化在多维点云中优化

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The Differential Evolution (DE) is a widely used bioinspired optimization algorithm developed by Storn and Price. It is popular for its simplicity and robustness. This algorithm was primarily designed for real-valued problems and continuous functions, but several modified versions optimizing both integer and discrete-valued problems have been developed. The discrete-coded DE has been mostly used for combinatorial problems in a set of enumerative variants. However, the DE has a great potential in the spatial data analysis and pattern recognition. This paper formulates the problem as a search of a combination of distinct vertices which meet the specified conditions. It proposes a novel approach called the Multidimensional Discrete Differential Evolution (MDDE) applying the principle of the discrete-coded DE in discrete point clouds (PCs). The paper examines the local searching abilities of the MDDE and its convergence to the global optimum in the PCs. The multidimensional discrete vertices cannot be simply ordered to get a convenient course of the discrete data, which is crucial for good convergence of a population. A novel mutation operator utilizing linear ordering of spatial data based on the space filling curves is introduced. The algorithm is tested on several spatial datasets and optimization problems. The experiments show that the MDDE is an efficient and fast method for discrete optimizations in the multidimensional point clouds.
机译:差分进化(DE)是由钢板和价格开发的广泛使用的生物透明优化算法。它很受欢迎,简化和稳健性。该算法主要设计用于实值问题和连续功能,但是已经开发出了优化整数和离散值的问题的几种修改版本。离散编码的DE主要用于一组枚举变体中的组合问题。然而,DE在空间数据分析和模式识别中具有很大的潜力。本文将问题制定为搜索符合指定条件的不同顶点的组合。它提出了一种新的方法,称为多维离散差分演进(MDDE)应用离散点云(PC)的离散编码的原理。本文研究了MDDE的本地搜索能力及其对PC中全球最优的融合。不能简单地订购多维离散顶点,以便获得离散数据的便利课程,这对于良好的群体收敛至关重要。引入了一种基于空间填充曲线的空间数据线性排序的新型突变操作者。在几个空间数据集和优化问题上测试了算法。实验表明,MDDE是多维点云中离散优化的有效和快速方法。

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