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Reliability assessment with density scanned adaptive Kriging

机译:密度扫描自适应克里格的可靠性评估

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Reliability assessment with adaptive Kriging has gained notoriety due to the Kriging capability of accurately replacing the performance function while performing as a self-improving function for learning procedures.Recent works on adaptive Kriging pursued to improve the efficiency of the active learning through the application of distinct learning functions, sampling methods, or frameworks to assess the learning space. Within this context, the present work exploits three innovative applications of density scanning to improve the efficiency of the adaptive Kriging. Density scanning has significant synergies with adaptive Kriging implementation. For most learning criteria, candidate points occur in dense clusters. This is due to the fact that the most efficient learning strategies pursue to improve predictions near the failure region, or when the prediction uncertainty is large.Identifying dense clusters of points, and fomenting exploitation of these, parallelizing computations, and limiting the generation of dense clusters in the design of experiments are examples of learning frameworks that can be achieved with density scanning. Three reference examples are researched in the present work, a complex function, a series system, and a relatively high dimension engineering problem. For all the cases, the application of density scanning is identified to improve the active learning efficiency.
机译:具有自适应克里格的可靠性评估由于Kriging能力而准确地更换了性能功能,同时表现为学习程序的自我提高功能。在适应性克里格的工作中,通过应用于不同的应用来提高主动学习的效率学习功能,采样方法或框架以评估学习空间。在这种情况下,目前的工作利用了三种密度扫描的创新应用,以提高自适应克里格的效率。密度扫描具有具有自适应Kriging实现的显着协同作用。对于大多数学习标准,候选点发生在密集的簇中。这是由于最有效的学习策略追求改进失败区域附近的预测,或者当预测不确定性很大。识别密集的点簇,以及肥胖的利用这些,并行化计算,并限制致密的产生实验设计中的集群是可以通过密度扫描实现的学习框架的示例。本作三个参考实施例,复杂的功能,系列系统和相对高的维度工程问题研究。对于所有情况,识别密度扫描的应用以提高主动学习效率。

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