首页> 外文期刊>Silva Fennica >A new heuristic method for solving spatially constrained forest planning problems based on mitigation of infeasibilities radiating outward from a forced choice.
【24h】

A new heuristic method for solving spatially constrained forest planning problems based on mitigation of infeasibilities radiating outward from a forced choice.

机译:一种新的启发式方法,用于缓解空间受限的森林规划问题,该方法基于缓解从强制选择向外放射的不可行性。

获取原文
获取原文并翻译 | 示例
           

摘要

A new heuristic method to mitigate infeasibilities when a choice is forced into a solution was developed to solve spatially constrained forest planning problems. One unique aspect of the heuristic is the introduction of unchosen decision choices into a solution regardless of the resulting infeasibilities, which are then mitigated by selecting next-best choices for those spatial units that are affected, but in a radiating manner away from the initial choice. As subsequent changes are made to correct the affected spatial units, more infeasibilities may occur, and these are corrected as well in an outward manner from the initial choice. A single iteration of the model may involve a number of changes to the status of the decision variables, making this an n-opt heuristic process. The second unique aspect of the search process is the periodic reversion of the search to a saved (in computer memory) best solution. Tests have shown that the reversion is needed to ensure better solutions are located. This new heuristic produced solutions to spatial problems that are of equal or comparable in quality to traditional integer programming solutions, and solutions that are better than those produced by two other basic heuristics. Three small hypothetical forest examples illustrate the performance of the heuristic against standard versions of threshold accepting and tabu search. In each of the three examples, the variation in solutions generated from random starting points is smaller with the new heuristic, and the difference in solution values between the new heuristic and the other two heuristics is significant (p<0.05) when using an analysis of variance. However, what remains to be seen is whether the new method can be applied successfully to the broader range of operations research problems in forestry and other fields..
机译:为了解决空间受限的森林规划问题,开发了一种新的启发式方法来缓解不可行的问题。启发式方法的一个独特方面是将未选择的决策选择引入解决方案中,而不考虑导致的不可行之处,然后通过为受影响的那些空间单位选择次优选择来缓解这些问题,但以辐射方式远离初始选择。在进行后续更改以校正受影响的空间单位时,可能会出现更多的不可行性,并且从最初的选择开始也将以向外的方式进行校正。模型的单次迭代可能涉及决策变量状态的许多更改,这使其成为n-opt启发式过程。搜索过程的第二个独特方面是将搜索定期还原为已保存(在计算机内存中)的最佳解决方案。测试表明,需要进行还原以确保找到更好的解决方案。这种新的启发式方法产生了质量与传统整数规划解决方案相同或相当的空间问题的解决方案,并且其解决方案比其他两种基本启发式方法产生的解决方案更好。三个小的假设森林示例说明了针对标准版本的阈值接受和禁忌搜索的启发式算法的性能。在这三个示例中的每个示例中,使用新启发式方法,从随机起点生成的解的变化较小,并且当使用新的启发式方法进行分析时,新启发式方法与其他两种启发式方法之间的解决方案值差异很大(p <0.05)。方差。但是,还有待观察的是,该新方法是否可以成功地应用于林业和其他领域的更广泛的运筹学问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号