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Reduced Data Communication for Parallel CMA-ES for REACTS

机译:减少用于REACTS的并行CMA-ES的数据通信

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摘要

Covariance Matrix Adaptation - Evolutionary Strategy (CMA-ES) is a black-box optimization method useful for applications where no direct inversion is possible. We present the development of a parallel CMA-ES algorithm that reduces the runtime for a specific geophysical data analysis, dipole localization. We compare our parallel algorithm against several other parallel CMA-ES variants on a sample dataset for dipole localization. We improve the performance of CMA-ES for the problem of finding dipoles in a subsurface environment as part of a closed-loop near-real-time wireless bioremediation system, REACTS (near-REal-time Autonomous bioremediation of ConTamination in the Subsurface). The goal of the performance improvement is to enable near-real-time analysis of geophysical data. For this application, our algorithm shows significant performance improvement over the other variants.
机译:协方差矩阵自适应-进化策略(CMA-ES)是一种黑盒优化方法,适用于无法进行直接反演的应用。我们介绍了并行CMA-ES算法的开发,该算法可减少特定地球物理数据分析,偶极子定位的运行时间。我们将并行算法与样本数据集上的其他几个并行CMA-ES变体进行比较,以进行偶极子定位。作为闭环近实时无线生物修复系统REACTS(地下污染的近实时自动生物修复)的一部分,我们改善了CMA-ES在地下环境中发现偶极子的性能。性能改进的目标是实现地球物理数据的近实时分析。对于此应用程序,我们的算法显示出与其他变体相比显着的性能改进。

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