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A hesitant fuzzy wind speed forecasting system with novel defuzzification method and multi-objective optimization algorithm

机译:具有新型除霜方法和多目标优化算法的一种犹豫不决的风速预测系统

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摘要

Owing to the nondeterministic nature of wind speed, the conventional fuzzy time series forecasting model has difficulty in establishing a common membership level. Therefore, in this study, the fuzzy series forecasting model was improved based on hesitant fuzzy sets. A hesitant fuzzy wind speed forecasting system with a novel defuzzification method and multiobjective optimization algorithm was developed. First, an advanced decomposition model is employed to extract the effective feature and remove the noise component from the raw wind speed series. Then, the universe of discourse is partitioned into equal and unequal intervals by multifuzzification methods and merged by aggregating hesitant information. A multiobjective intelligent optimization algorithm is applied to determine the optimal weights of different intervals accurately and stably. Furthermore, a novel defuzzification model based on an ordered weighted averaging operator and a regular increasing monotone quantifier is proposed to calculate the final forecasting results. The crucial strengths of the developed system are verifying the possibility of enhancing the performance of wind speed forecasting models by improving conventional fuzzy time series forecasting models and integrating them with decomposition models and artificial-intelligence models. Typical wind speed series datasets with different resolutions were selected to evaluate the performance of the proposed system, and experimental results prove that the proposed system outperforms other comparison models with high forecasting accuracy and computing efficiency.
机译:由于风速的无限制性,传统的模糊时间序列预测模型难以建立共同的成员水平。因此,在本研究中,基于犹豫不决的模糊套改进了模糊系列预测模型。开发了一种具有新型除霜方法和多目标优化算法的犹豫不决的风速预测系统。首先,采用先进的分解模型来提取有效特征并从原始风速系列中移除噪声分量。然后,通过多布风方法将话语宇宙划分为相等和不平等的间隔,并通过聚合犹豫不决的信息来合并。应用多目标智能优化算法以准确且稳定地确定不同间隔的最佳重量。此外,提出了一种基于有序加权平均操作员和常规增加单调量化的新型除霜模型,以计算最终预测结果。发达系统的关键优势正在验证通过改进传统的模糊时间序列预测模型并将其与分解模型和人工智能模型集成来提高风速预测模型的性能的可能性。选择具有不同分辨率的典型风速系列数据集以评估所提出的系统的性能,实验结果证明,所提出的系统优于具有高预测精度和计算效率的其他比较模型。

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