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A tight upper bound for quadratic knapsack problems in grid-based wind farm layout optimization

机译:基于网格的风电场布局优化的二次背包问题的紧张的上限

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摘要

The 0-1 quadratic knapsack problem (QKP) in wind farm layout optimization models possible turbine locations as nodes, and power loss due to wake effects between pairs of turbines as edges in a complete graph. The goal is to select up to a certain number of turbine locations such that the sum of selected node and edge coefficients is maximized. Finding the optimal solution to the QKP is difficult in general, but it is possible to obtain a tight upper bound on the QKP's optimal value which facilitates the use of heuristics to solve QKPs by giving a good estimate of the optimality gap of any feasible solution. This article applies an upper bound method that is especially well-suited to QKPs in wind farm layout optimization due to certain features of the formulation that reduce the computational complexity of calculating the upper bound. The usefulness of the upper bound was demonstrated by assessing the performance of the greedy algorithm for solving QKPs in wind farm layout optimization. The results show that the greedy algorithm produces good solutions within 4% of the optimal value for small to medium sized problems considered in this article.
机译:风电场布局优化模型0-1二次背包问题(QKP)可能是涡轮机位置作为节点,电源损耗由于在完整图中为边缘的涡轮机之间的唤醒效果。目标是选择多达一定数量的涡轮机位置,使得所选节点和边缘系数的总和最大化。难以一般地发现QKP的最佳解决方案,但是可以通过提供对任何可行解决方案的最优性差距来解决QKP来解决QKP的最佳价值的紧密上限,这促进了启发式解决QKP。本文应用了一种上限制,由于制定的某些特征,这是一种尤其非常适合于风电场布局优化中的QKP,这减少了计算上限的计算复杂性。通过评估贪婪算法在风电场布局优化中解决QKP的贪婪算法的性能来证明上界的有用性。结果表明,贪婪算法在本文中考虑的中小型问题的最佳值的4%内产生良好的解决方案。

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