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Hybrid Model Based on Wavelet Decomposition for Electricity Consumption Prediction 被引量:1
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作者 xia chenxia WANG Zilong JHONY Choon Yeong Ng 《Journal of Donghua University(English Edition)》 EI CAS 2019年第1期77-87,共11页
The effective supply of electricity is the basis of ensuring economic development and people's normal life. It is difficult to store electricity, as leading to the production and consumption must be completed simu... The effective supply of electricity is the basis of ensuring economic development and people's normal life. It is difficult to store electricity, as leading to the production and consumption must be completed simultaneously. Therefore, it is of great significance to accurately predict the demand for electricity consumption for the production planning of electricity and the normal operation of the society. In this paper, a hybrid model is constructed to predict the electricity consumption in China. The structural breaks test of monthly electricity consumption in China from January 2010 to December 2016 is carried out by using the structural breaks unit root test. Based on the existence of structura breaks, the electricity consumption data are decomposed into low-frequency and high-frequency components by wavelet model, and the separated low frequency signal and high frequency signal are predicted by autoregressive integrated moving average(ARIMA) and nonlinear autoregressive neural network(NAR), respectively. Therefore the wavelet-ARIMA-NAR hybrid model is constructed. In order to compare the effect of the hybrid model, the structural time series(STS) model is applied to predicting the electricity consumption. The results of prediction error test show that the hybrid model is more accurate for electricity consumption prediction. 展开更多
关键词 ELECTRICITY CONSUMPTION forecasting WAVELET decomposition STRUCTURAL BREAKS STRUCTURAL time series(STS) model
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老年2型糖尿病住院患者述情障碍影响因素的研究进展
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作者 夏晨霞 夏凤飞 刘伟 《糖尿病新世界》 2024年第23期195-198,共4页
随着人口老龄化的持续加剧,2型糖尿病在老年人群中的发病率显著上升。述情障碍成为众多老年患者在住院治疗期间的挑战之一。本文回顾并总结近年来关于老年2型糖尿病住院患者述情障碍影响因素的研究进展,通过从多个维度深入剖析相关影响... 随着人口老龄化的持续加剧,2型糖尿病在老年人群中的发病率显著上升。述情障碍成为众多老年患者在住院治疗期间的挑战之一。本文回顾并总结近年来关于老年2型糖尿病住院患者述情障碍影响因素的研究进展,通过从多个维度深入剖析相关影响因素,期望能为临床实践提供有益的参考,助力医护人员更全面地理解并有效应对老年2型糖尿病患者的述情障碍问题,进而为患者提供更加周全且高效的医疗服务。 展开更多
关键词 老年2型糖尿病 住院患者 述情障碍 影响因素
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Seasonal Least Squares Support Vector Machine with Fruit Fly Optimization Algorithm in Electricity Consumption Forecasting
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作者 WANG Zilong xia chenxia 《Journal of Donghua University(English Edition)》 EI CAS 2019年第1期67-76,共10页
Electricity is the guarantee of economic development and daily life. Thus, accurate monthly electricity consumption forecasting can provide reliable guidance for power construction planning. In this paper, a hybrid mo... Electricity is the guarantee of economic development and daily life. Thus, accurate monthly electricity consumption forecasting can provide reliable guidance for power construction planning. In this paper, a hybrid model in combination of least squares support vector machine(LSSVM) model with fruit fly optimization algorithm(FOA) and the seasonal index adjustment is constructed to predict monthly electricity consumption. The monthly electricity consumption demonstrates a nonlinear characteristic and seasonal tendency. The LSSVM has a good fit for nonlinear data, so it has been widely applied to handling nonlinear time series prediction. However, there is no unified selection method for key parameters and no unified method to deal with the effect of seasonal tendency. Therefore, the FOA was hybridized with the LSSVM and the seasonal index adjustment to solve this problem. In order to evaluate the forecasting performance of hybrid model, two samples of monthly electricity consumption of China and the United States were employed, besides several different models were applied to forecast the two empirical time series. The results of the two samples all show that, for seasonal data, the adjusted model with seasonal indexes has better forecasting performance. The forecasting performance is better than the models without seasonal indexes. The fruit fly optimized LSSVM model outperforms other alternative models. In other words, the proposed hybrid model is a feasible method for the electricity consumption forecasting. 展开更多
关键词 forecasting FRUIT FLY optimization algorithm(FOA) least SQUARES support vector machine(LSSVM) SEASONAL index
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