Optimization of power and its variability with an artificial immune network algorithm

A. Kusiak, Zijun Zhang
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引用次数: 5

Abstract

A bi-objective optimization model of power and power changes generated by a wind turbine is discussed in this paper. The model involves two objectives, power maximization and power ramp rate (PRR) minimization. A new constraint for power maximization based on physics and process control theory is introduced. Data-mining algorithms were used to identify the model of power generation from the industrial data collected at a wind farm. The models and constraints derived from the data were integrated to optimize the power itself and the power variability, expressed as the power ramp rate. Due to the nonlinearity and complexity of the optimization model, an artificial immune network algorithm was used to solve it. The optimization results, such as computed operation strategies and the corresponding outputs, are demonstrated and discussed.
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基于人工免疫网络的功率及其变异性优化
本文讨论了风力发电机组功率和功率变化的双目标优化模型。该模型涉及两个目标:功率最大化和功率斜坡率(PRR)最小化。基于物理和过程控制理论,提出了一种新的功率最大化约束。利用数据挖掘算法从风电场收集的工业数据中识别发电模型。从数据中得到的模型和约束被集成以优化功率本身和功率变异性,表示为功率斜坡率。由于优化模型的非线性和复杂性,采用人工免疫网络算法进行求解。对优化结果进行了论证和讨论,包括计算出的操作策略和相应的输出。
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