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An efficient probabilistic-chronological matching modeling for DG planning and reliability assessment in power distribution systems

机译:用于配电系统DG规划和可靠性评估的高效概率-时间匹配模型

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In recent decades, power distribution systems have encountered a considerable shift toward utilizing renewable resource based distributed generation (DG) systems. This is due to the proven ability of DGs to reduce fossil fuel consumption, which reduces harm done to the environment. In this paper, a new state reduction algorithm is proposed to determine the minimum number of states required to describe or represent the behavior of wind speed and solar irradiance in DG planning problems and reliability analysis. This algorithm could be generalized to incorporate any planning problem where wind or PV power is part of its parameters. Moreover, an adequate time representation that mimics the fluctuation of renewable resource based DGs and chronologically matches the fluctuations in system demand is presented. Three different data clusters are applied (monthly, seasonal and yearly) to investigate the variability of DG power output and electricity demand on both DG planning problems and reliability assessment. These models are evaluated considering DG siting and sizing problems, as well as a supply adequacy-based reliability assessment. The proposed model measures the deviations in annual energy losses (AEL), total DG penetration, loss of load expectation (LOLE), and loss of energy expectation (LOEE). (C) 2016 Elsevier Ltd. All rights reserved.
机译:在最近的几十年中,配电系统已朝着利用基于可再生资源的分布式发电(DG)系统的重要转变。这是由于DG具有降低化石燃料消耗,减少对环境的危害的成熟能力。本文提出了一种新的状态约简算法,用于确定描述或表示DG规划问题和可靠性分析中风速和太阳辐照行为所需的最小状态数。该算法可以推广到包含任何计划问题,其中风能或光伏发电是其参数的一部分。此外,提出了一个适当的时间表示,该时间表示可模仿基于可再生资源的DG的波动,并按时间顺序匹配系统需求的波动。应用了三个不同的数据集群(每月,季节性和每年)来调查分布式发电计划问题和可靠性评估方面的分布式发电功率输出和电力需求的变化。评估这些模型时要考虑到DG的选址和选型问题,以及基于供应充足性的可靠性评估。所提出的模型测量了年度能源损失(AEL),总DG渗透,预期负荷损失(LOLE)和预期能源损失(LOEE)的偏差。 (C)2016 Elsevier Ltd.保留所有权利。

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