Multi-objective optimisation is a popular approach for finding solutions to complex problems with large search spaces that reliably yields good optimisation results. However, with the rise of cyber-physical systems, emerges a new challenge of noisy fitness functions, whose objective value for a given configuration is non-deterministic, producing varying results on each execution. This leads to an optimisation process that is based on stochastically sampled information, ultimately favouring solutions with fitness values that have co-incidentally high outlier noise. In turn, the results are unfaithful due to their large discrepancies between sampled and expectable objective values. Motivated by our work on noisy automated driving systems, we present the results of our ongoing research to counteract the effect of noisy fitness functions without requiring repeated executions of each solution. Our method kNN-Avg identifies the k-nearest neighbours of a solution point and uses the weighted average value as a surrogate for its actually sampled fitness. We demonstrate the viability of kNN-Avg on common benchmark problems and show that it produces comparably good solutions whose fitness values are closer to the expected value.
翻译:多目标优化是一种为大量搜索空间的复杂问题寻找解决办法的流行方法,这些搜索空间可靠地产生良好的优化结果。然而,随着网络物理系统的兴起,出现了噪音健身功能的新挑战,这种功能对特定配置的客观价值不是决定性的,对每个执行过程产生不同的结果。这导致一个基于随机抽样信息的优化过程,最终偏向于具有相近高外缘噪音的健身价值的解决方案。反过来,由于抽样和预期的客观价值之间存在巨大差异,结果也是不忠的。受我们关于噪音自动驱动系统的工作的驱动,我们展示了我们不断研究的结果,以抵消噪音健身功能的影响,而无需对每种解决方案进行多次执行。我们的方法 kNN-Avg 确定了解决方案点的K最近邻,并使用加权平均值作为实际抽样健身的替代。我们展示了KNN-Avg在共同基准问题上的可行性,并表明它产生了可比较的好的解决办法,其健康价值接近预期值。