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Comparative Analysis of Economic Viability with Distributed Energy Resources on Unit Commitment

机译:单位承诺下分布式能源经济可行性的比较分析。

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Classic unit commitment is the important and challenging task of allocating generating units subject to basic constraints over a scheduled time horizon to obtain the least generation cost. Penetration of distributed energy resources in modern power systems makes generation planning more complex. This article presents the individual and combined effect of three distributed energy resources, namely wind power generator as a renewable energy source, plug-in electric vehicles, and emergency demand response program on unit commitment. The inconsistent nature of wind speed and wind power is characterized by the Weibull probability distribution function considering overestimation and underestimation costs of stochastic wind power. The comprehensive comparative analysis of the economic viability on unit commitment is carried out to minimize the total cost of the entire system. To obtain the optimum solution, a modified teaching-learning-based optimization algorithm is used. The IEEE standard ten-unit test system is used for this study. To validate the efficacy of the modified teaching-learning-based optimization algorithm, a 26-unit reliability test system is also considered. It is found that the collective effect of wind power generator, plug-in electric vehicles, and emergency demand response program on unit commitment provides significant reduction in the total cost.
机译:经典的机组承诺是一项重要且富挑战性的任务,即在计划的时间范围内分配受基本约束的发电机组以获得最低的发电成本。现代电力系统中分布式能源的渗透使发电计划变得更加复杂。本文介绍了三种分布式能源的个体和综合影响,即作为可再生能源的风力发电机,插电式电动汽车和应急承诺计划对单位承诺的影响。风速和风能的不一致性的特征是考虑了随机风能的高估和低估成本的威布尔概率分布函数。对单位承诺的经济可行性进行了全面的比较分析,以使整个系统的总成本降至最低。为了获得最佳解决方案,使用了一种改进的基于教学的优化算法。本研究使用IEEE标准的十单元测试系统。为了验证改进的基于教学的优化算法的有效性,还考虑了一个26单元的可靠性测试系统。可以发现,风力发电机,插电式电动汽车和应急需求响应计划对机组承诺的共同影响大大降低了总成本。

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