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Hedging strategies for renewable resource integration and uncertainty management in the smart grid

机译:智能电网中可再生资源整合和不确定性管理的对冲策略

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Increased environmental and economic concerns have set the stage for an increase in the fraction of electricity supplied using renewable sources. Recent advances in wind prediction offer hope that reduction in the uncertainty of wind availability will lead to an increase in its value. Model based methods that predict future wind availability and then optimize local generation have been seen to be successful for both economic dispatch and demand management. In this paper we evaluate model free hedging strategies for renewable resource integration and uncertainty management in the smart grid. We compare the performance of these two classes of algorithms for intelligent generator scheduling using simple wind speed forecasters in both simulations and on real wind traces. We also suggest that algorithms based on online convex optimization can be applied to demand management problems and evaluate hedging algorithms for smart demand response, highlighting the reduction in costs possible when renewable energy is combined with demand response.
机译:对环境和经济问题的日益关注为利用可再生资源提供的电力所占比例的增加奠定了基础。风能预测的最新进展为减少风能可用性的不确定性带来了希望,从而增加了风能价值。对于经济调度和需求管理来说,预测未来风能然后优化本地发电的基于模型的方法已被证明是成功的。在本文中,我们评估了智能电网中可再生资源整合和不确定性管理的无模型对冲策略。我们在模拟和真实风迹中都使用简单的风速预报器比较了这两类算法用于智能发电机调度的性能。我们还建议,基于在线凸优化的算法可以应用于需求管理问题,并评估对冲算法以实现智能需求响应,从而突出显示可再生能源与需求响应相结合时可降低的成本。

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