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Combining Filter Method and Dynamically Dimensioned Search for Constrained Global Optimization

机译:结合滤波方法和动态尺寸搜索进行约束全局优化

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摘要

In this work we present an algorithm that combines the filter technique and the dynamically dimensioned search (DDS) for solving nonlinear and nonconvex constrained global optimization problems. The DDS is a stochastic global algorithm for solving bound constrained problems that in each iteration generates a randomly trial point perturbing some coordinates of the current best point. The filter technique controls the progress related to optimality and feasibility defining a forbidden region of points refused by the algorithm. This region can be given by the flat or slanting filter rule. The proposed algorithm does not compute or approximate any derivatives of the objective and constraint functions. Preliminary experiments show that the proposed algorithm gives competitive results when compared with other methods.
机译:在这项工作中,我们提出了一种结合了滤波技术和动态尺寸搜索(DDS)的算法来解决非线性和非凸约束全局优化问题。 DDS是一种用于解决约束问题的随机全局算法,该算法在每次迭代中都会生成一个随机的试验点,该试验点会扰乱当前最佳点的某些坐标。过滤器技术控制与优化和可行性相关的进度,该进度定义了算法拒绝的禁止点的禁区。可以通过平坦或倾斜的滤镜规则来指定此区域。所提出的算法不计算或近似目标函数和约束函数的任何导数。初步实验表明,与其他方法相比,该算法具有竞争优势。

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