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Operational planning and optimal sizing of microgrid considering multi-scale wind uncertainty

机译:考虑多尺度风的不确定性的微电网运营规划和优化规模

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Distributed and on-site energy generation and distribution systems employing renewable energy sources and energy storage devices (referred to as microgrids) have been proposed as a new design approach to meet our energy needs more reliably and with lower carbon footprint. Management of such a system is a multi-scale decision-making problem encompassing hourly dispatch, daily unit commitment (UC), and yearly sizing for which efficient formulations and solution algorithms are lacking thus far. Its dynamic nature and high uncertainty are additional factors in limiting efficient and reliable operation. In this study, two-stage stochastic programming (2SSP) for day-ahead UC and dispatch decisions is combined with a Markov decision process (MDP) evolving at a daily timescale. The one-day operation model is integrated with the MDP by using the value of a state of commitment and battery at the end of a day to ensure longer term implications of the decisions within the day are considered. In the MDP formulation, capturing daily evolving exogenous information, the value function is recursively approximated with sampled observations estimated from the daily 2SSP model. With this value function capturing all future operating costs, optimal sizing of the wind farm and battery devices is determined based on a surrogate function optimization. Meanwhile, a multi-scale wind model consistent from seasonal to hourly is developed for the connection of the decision hierarchy across the scales. The results of the proposed integrated approach are compared to those of the daily independent 2SSP model through a case study and real wind data. (C) 2017 Elsevier Ltd. All rights reserved.
机译:已经提出了采用可再生能源和储能装置(称为微电网)的分布式和现场能源产生和分配系统,作为一种新的设计方法,可以更可靠地满足我们的能源需求,并减少碳足迹。这种系统的管理是一个多尺度的决策问题,涉及每小时的调度,每日的单位承诺量(UC)和每年的规模确定,到目前为止,这些问题尚缺乏有效的公式和解决方案算法。它的动态特性和高度不确定性是限制有效和可靠运行的其他因素。在这项研究中,用于日程UC和调度决策的两阶段随机规划(2SSP)与在每日时间尺度上发展的Markov决策过程(MDP)相结合。通过在一天结束时使用承诺状态和电池的价值,将一日运行模型与MDP集成在一起,以确保考虑一天中决策的长期影响。在MDP公式中,捕获每日不断发展的外源信息,然后使用从每日2SSP模型估计的采样观测值来递归近似值函数。利用此价值函数,可以捕获所有未来的运营成本,从而基于替代函数优化来确定风电场和电池设备的最佳尺寸。同时,开发了从季节到每小时的一致的多尺度风模型,用于跨尺度的决策层次的连接。通过案例研究和实际风能数据,将建议的集成方法的结果与每日独立2SSP模型的结果进行比较。 (C)2017 Elsevier Ltd.保留所有权利。

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