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Unit commitment considering effect of load and wind power uncertainty

机译:考虑负载和风力不确定性的效果的单位承诺

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With the annual capacity growth of wind power integration, the stochastic wind power makes it increasingly difficult to optimize traditional unit commitment with fixed load and wind power percentage. Considering load and wind powder uncertainty, the multiple scenario model of load and wind power was established using scenario reduction techniques. To explore effect of load and wind power uncertainty, the positive and negative spinning reserve needs of the unit commitment were determined based on the maximum variation ranges of load and wind power under different scenarios. Considering effect of different loads and wind powers under different scenarios on the unit dispatch optimization, taking the weighted sum of mean and variance of generating cost under all scenarios as the objective function, a model for unit dispatch optimization that considers load and wind power uncertainty was established. This model was solved using improved particle swarm optimization (PSO) algorithm. PSO-oriented dynamic adjustment of unit output range was proposed in order to improve the convergence performance of the PSO algorithm during iteration. The accuracy and validity of the proposed model and algorithm were verified by a case study based on a typical 10-unit commitment.
机译:随着风电集成的年产量增长,随机风力发电使得优化传统单位承诺与固定载荷和风电百分比越来越困难。考虑负载和风粉不确定性,使用场景减少技术建立了多种情景的负载和风电模型。为了探索负载和风能不确定性的影响,基于不同场景下的负载和风力功率的最大变化范围确定单位承诺的正负旋转储备需求。考虑到不同载荷和风力的不同场景对单位调度优化的影响,从所有场景下的均值和变异的加权和变化作为目标函数,考虑负载和风能不确定性的单位调度优化模型是已确立的。使用改进的粒子群优化(PSO)算法来解决该模型。提出了针对单位输出范围的PSO的动态调整,以提高PSO算法在迭代期间的收敛性能。基于典型的10单元承诺,通过案例研究验证了所提出的模型和算法的准确性和有效性。

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