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Asynchronous Evolutionary Multi-Objective Algorithms with heterogeneous evaluation costs

机译:异步演化多目标算法具有异构评估成本

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Master-slave parallelization of Evolutionary Algorithms (EAs) is straightforward, by distributing all fitness computations to slaves. The benefits of asynchronous steady-state approaches are well-known when facing a possible heterogeneity among the evaluation costs in term of runtime, be they due to heterogeneous hardware or non-linear numerical simulations. However, when this heterogeneity depends on some characteristics of the individuals being evaluated, the search might be biased, and some regions of the search space poorly explored. Motivated by a real-world case study of multi-objective optimization problem — the optimization of the combustion in a Diesel Engine — the consequences of different components of heterogeneity in the evaluation costs on the convergence of two Evolutionary Multi-objective Optimization Algorithms are investigated on artificially-heterogeneous benchmark problems. In some cases, better spread of the population on the Pareto front seem to result from the interplay between the heterogeneity at hand and the evolutionary search.
机译:通过将所有健身计算分配到从属的奴隶,进化算法(EAS)的主从并行化是简单的。当在运行时期限的评估成本之间面对可能的异质性时,异步稳态方法的好处是由于异质硬件或非线性数值模拟的影响。然而,当这种异质性取决于所评估的个人的一些特征时,搜索可能偏见,搜索空间的一些区域探索不佳。对多目标优化问题的真实案例研究 - 柴油发动机中燃烧的优化 - 研究了两种进化多目标优化算法的评估成本中异质性的不同组分的结果人工异构基准问题。在某些情况下,帕累托前线上的人口更好地蔓延似乎是由于手头的异质性与进化搜索之间的相互作用。

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