电力系统的先进优化方法

P. Panciatici, M. Campi, S. Garatti, S. Low, D. Molzahn, A. Sun, L. Wehenkel
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引用次数: 48

摘要

电力系统的规划和运行为优化方法提供了大量的机会。在实践中,这些问题通常是大规模的、非线性的、受不确定性影响的,并且结合了连续变量和离散变量。近年来,应用数学领域在解决这类问题方面取得了一些互补的理论进展。本文介绍了在非凸优化、混合整数规划和不确定优化等领域的研究进展。讨论了这些发展与电力系统规划和运行的实际相关性,并强调了将它们与高性能计算和大数据基础设施以及新型机器学习和随机算法相结合的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced optimization methods for power systems
Power system planning and operation offers multitudinous opportunities for optimization methods. In practice, these problems are generally large-scale, non-linear, subject to uncertainties, and combine both continuous and discrete variables. In the recent years, a number of complementary theoretical advances in addressing such problems have been obtained in the field of applied mathematics. The paper introduces a selection of these advances in the fields of non-convex optimization, in mixed-integer programming, and in optimization under uncertainty. The practical relevance of these developments for power systems planning and operation are discussed, and the opportunities for combining them, together with high-performance computing and big data infrastructures, as well as novel machine learning and randomized algorithms, are highlighted.
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