G. Ponkumar, S. Jayaprakash, Dharmaprakash Ramasamy, Amudha Priyasivakumar
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引用次数: 0
摘要
在我们提出的方法中,我们将 ADA 提升与粒子群优化-极端学习机(PSO-ELM)相结合,以提高风力发电估算的准确性,从而解决风能固有的不可预测性和可变性问题。首先,我们改进了极端学习机(ELM)的阈值和输入权重,然后构建了 PSO-ELM 预测模型。利用 ADA Boost 生成多个弱预测器,每个预测器由一个不同的隐藏层节点组成。然后利用 PSO 技术优化每个弱预测器的输入权重和阈值。通过使用稳健的风力预测模型对每个弱预测器的结果进行合并和加权,得出最终预测结果。利用土耳其风力涡轮机的数据进行的实验验证强调了我们方法的有效性。与集合学习模型和最优神经网络等当代技术的对比分析表明,我们的 ADA-PSO-ELM 模型在预测真实世界条件下的风电输出方面具有更高的准确性和通用性。所提出的方法为解决与风能估算相关的挑战提供了一个前景广阔的框架,从而促进了对风能资源更可靠、更高效的利用。
Particle swarm optimization-extreme learning machine model combined with the ADA boost algorithm for short-term wind power prediction
In our proposed approach, we integrate ADA boosting with particle swarm optimization-extreme learning machine (PSO-ELM) to enhance the accuracy of wind power estimation, addressing the inherent unpredictability and variability in wind energy. Initially, we refine the thresholds and input weights of the extreme learning machine (ELM) and then construct the PSO-ELM prediction model. ADA Boost is utilized to generate multiple weak predictors, each comprising a distinct hidden layer node. The PSO technique is then employed to optimize the input weights and thresholds for each weak predictor. The final forecast is attained by amalgamating and weighting the outcomes from each weak predictor using a robust wind power forecast model. Experimental validation utilizing data from Turkish wind turbines underscores the efficacy of our approach. Comparative analysis against contemporary techniques such as ensemble learning models and optimal neural networks reveals that our ADA-PSO-ELM model demonstrates superior accuracy and generalizability in predicting wind power output under real-world conditions. The proposed approach offers a promising framework for addressing the challenges associated with wind power estimation, thereby facilitating more reliable and efficient utilization of wind energy resources.