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包含自发自用电量情况的负荷预测
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作者 赖岳雄 潘旭红 《广东自动化与信息工程》 2004年第2期4-6,共3页
本文针对一种含有自发电的特殊情况来进行负荷预测,对时间序列法在负荷预测的建模中应用,提出了一种ARMAX的模型,结合预测模型,将自发电作为一个大扰动来考虑。通过验证,得到了较好的结果。
关键词 自发电 大扰动 负荷预测 时间序列法建模 ARMAX 自回归
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城市居民用电量中期预报分析方案研究
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作者 孙奕学 左云 宰志萍 《江西电力职工大学学报》 1998年第4期20-24,共5页
对未来几年内城市居民用电量的需求程度,本文采用时间序列建模法对其预测方法进行了探讨,对建立自回归数学模型的参数做了研究分析。
关键词 城市居民用电量 预报分析方案 需求程度 时间序列
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A time-series modeling method based on the boosting gradient-descent theory 被引量:5
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作者 GAO YunLong PAN JinYan +1 位作者 JI GuoLi GAO Feng 《Science China(Technological Sciences)》 SCIE EI CAS 2011年第5期1325-1337,共13页
The forecasting of time-series data plays an important role in various domains. It is of significance in theory and application to improve prediction accuracy of the time-series data. With the progress in the study of... The forecasting of time-series data plays an important role in various domains. It is of significance in theory and application to improve prediction accuracy of the time-series data. With the progress in the study of time-series, time-series forecasting model becomes more complicated, and consequently great concern has been drawn to the techniques in designing the forecasting model. A modeling method which is easy to use by engineers and may generate good results is in urgent need. In this paper, a gradient-boost AR ensemble learning algorithm (AREL) is put forward. The effectiveness of AREL is assessed by theoretical analyses, and it is demonstrated that this method can build a strong predictive model by assembling a set of AR models. In order to avoid fitting exactly any single training example, an insensitive loss function is introduced in the AREL algorithm, and accordingly the influence of random noise is reduced. To further enhance the capability of AREL algorithm for non-stationary time-series, improve the robustness of algorithm, discourage overfitting, and reduce sensitivity of algorithm to parameter settings, a weighted kNN prediction method based on AREL algorithm is presented. The results of numerical testing on real data demonstrate that the proposed modeling method and prediction method are effective. 展开更多
关键词 time-series forecasting BOOSTING ensemble learning OVERFITTING
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