Exact constraint aggregation with applications to smart grids and resource distribution

Klaus Trangbaek, J. Bendtsen
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引用次数: 17

Abstract

As hierarchical predictive control of large-scale distributed systems grow in complexity, it eventually becomes necessary to consider aggregation of lower-level units into larger groups of units that can be handled efficiently at higher levels in the hierarchy. When aggregating similar units in this manner, it is advantageous if the aggregation maintains a certain degree of genericity, since the higher-level algorithms can then be designed with a higher degree of modularity. To achieve this goal, however, it is not only necessary to examine aggregation of models of the underlying units, but also the accompanying constraints. Constraint sets for rate- and storage volume-constrained units can often be represented as polytopes in high-dimensional Euclidean space; unfortunately, adding such polytopic sets in higher dimension than 2 has so far been considered a combinatorial problem. In this paper, we present a novel method for computing such polytopic constraint sets for integrating units, which achieves a much lower computational complexity than previous results. The concept is demonstrated via simulations of a smart grid control scenario.
精确约束聚合与智能电网和资源分配的应用
随着大规模分布式系统的分层预测控制变得越来越复杂,最终有必要考虑将低级单元聚合成更大的单元组,这些单元组可以在层次结构的更高级别上有效地处理。当以这种方式聚合相似的单元时,如果聚合保持一定程度的泛型是有利的,因为这样可以用更高程度的模块化来设计更高级的算法。然而,为了实现这个目标,不仅需要检查底层单元的模型聚合,而且还需要检查伴随的约束。速率和存储体积受限单元的约束集通常可以表示为高维欧几里德空间中的多面体;不幸的是,迄今为止,在高于2维的空间中添加这样的多面体集被认为是一个组合问题。在本文中,我们提出了一种计算积分单元多边形约束集的新方法,其计算复杂度比以往的结果低得多。该概念通过智能电网控制场景的模拟进行了演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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