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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Modeling the Operation of Small‐Scale Integrated Energy Systems Based on Data‐Driven Robust Optimization
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Modeling the Operation of Small‐Scale Integrated Energy Systems Based on Data‐Driven Robust Optimization

机译:建模基于数据驱动的强大优化的小规模集成能源系统的运行

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摘要

To facilitate energy system integration, it is imperative that a multienergy system produce and deliver in a coordinated way the energy in its different component forms. In particular, a small‐scale integrated energy system must accommodate renewable energy resources, flexible loads, and energy coupling technologies, which creates new challenges to the interactions between the energy vectors. Hence, an energy management model for a microenergy system in grid‐connected mode under uncertainties is proposed to perform the decision‐making for shifting energy modes for all energy sources and end‐use applications with the aim of optimally scheduling controllable energy resources in the system and minimizing the net management cost under uncertainty. To address the stochastic nature of the price of electricity, a data‐driven robust optimization approach is introduced. It uses the available sample data to design the appropriate uncertainty set using statistical hypothesis tests, and a combination of conditional value‐at‐risk and a worst‐case optimization problem is used to formulate the energy management problem under uncertainty. We explore a computationally tractable robust counterpart of the original optimization problem. The optimal energy scheduling solution obtained from the proposed approach is immune against any worst‐case realizations. Numerical results demonstrate the effectiveness of the proposed approach and its performance of less conservation. © 2019 Institute of Electrical Engineers of Japan. Published by John Wiley & Sons, Inc.
机译:为了促进能源系统的整合,必须以多项式系统以其不同组件形式以协调的方式生产和交付能量。特别是,小规模的综合能源系统必须容纳可再生能源资源,灵活的负载和能量耦合技术,这为能量向量之间的相互作用带来了新的挑战。因此,提议在不确定性下以网格连接模式下的微能系统的能源管理模型,以执行所有能源转移能源模式和最终用途应用程序的决策,以期在系统中最佳安排可控制的能源资源并最大程度地减少不确定性下的净管理成本。为了解决电力价格的随机性质,引入了数据驱动的强大优化方法。它使用可用的示例数据使用统计假设测试设计适当的不确定性集,并使用条件价值 - 风险和最坏情况的优化问题组合来制定不确定性下的能量管理问题。我们探索原始优化问题的计算可牵引力的强大对应物。从提议的方法获得的最佳能源调度解决方案是针对任何最坏情况实现的免疫。数值结果证明了拟议方法的有效性及其较少保护的性能。 ©2019日本电气工程师研究所。由John Wiley&amp出版Sons,Inc。

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