需求响应程序中可中断负荷的不确定优化决策

Wenjuan Niu, Yang Li
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引用次数: 11

摘要

在智能电网中,需求响应(DR)方案得到了迅速发展,它改变了单纯依靠供电侧发展来满足日益增长的电力需求的固定思维,将需求侧资源作为替代能源加以利用。然而,在DR方案的应用中,存在许多传统优化方法无法反映的不确定性因素。本文考虑了用户响应和总可中断容量需求的不确定性,进行了可中断负荷优化。根据历史数据,可以推导出客户响应的概率分布。因此,计算作为赔偿或处罚客户的结算期望值,并将其最小化作为目标函数之一。方差和作为另一个目标函数被最小化。在约束条件中考虑了总可中断容量需求的不确定性,将其描述为置信水平。这种优化问题被称为机会约束规划,因为约束中的随机变量可以转化为它的确定性等价。算例分析表明,所提出的优化方法能够兼顾中断客户负荷时的经济性和可靠性,满足置信度要求。
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Uncertain optimization decision of interruptible load in Demand Response program
In the Smart Grid, Demand Response (DR) programs have been developed rapidly, which change the fixed mindsets of satisfying the growing power demand merely by the development of power supply side, and utilize the demand side resources as alternative energy sources. Nevertheless, in application of DR programs, there are many uncertain factors which cannot be reflected in conventional optimization approaches. In this paper, the interruptible load optimization is carried out considering the uncertainties of customer response and total interruptible capacity requirement. The probability distribution of customer response can be deduced according to historical data. So the expected value of settling accounts as compensation or penalty to customers is calculated and minimized as one of the objective functions. The sum of variances is minimized as another objective function. The uncertainty of total interruptible capacity requirement is considered in the constraints, which is described as the confidence level. This optimization problem is called chance constrained programming because of the random variables in the constraints, which can be transformed to its deterministic equivalents. Example analysis demonstrates that the proposed optimization method can consider the coordination of economy and reliability in interrupting the customer loads and satisfy the confidence level.
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