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A novel grey Riccati-Bernoulli model and its application for the clean energy consumption prediction

机译:一种新型灰色Riccati-Bernoulli模型及其在清洁能耗预测中的应用

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摘要

Accurately forecasting energy demand can better predict future changes in energy demand. This study is aimed to develop more accurate clean energy prediction model from two perspectives of the modeling mechanisms and improvements on the model structure. For this purpose, a novel Riccati-Bernoulli differential equation is established through social practice theory, supply-demand relationship, and the preference of consumption in the energy economy. Considering the limited information in observation data, this differential equation is then transformed into a grey Riccati-Bernoulli model (GRBM(1,1)) according to the differential information principle. With the response function solved on the basis of polynomial equation theory and the power exponent optimized combining the modified flower pollination algorithm, the main process of GRBM(1,1) can be summarized. The four validation examples are provided for confirming the effectiveness and reliability of the new model by comparing with other existing models. Finally, the proposed model is employed to estimate and forecast the clean energy consumption in China and India. The results show that the proposed model demonstrates better estimation in all cases and efficiency in short-term clean energy consumption forecasting. Therefore, by using this optimum model, China's preference coefficient in total energy consumption is 0.7103, lower than that of India (0.8799), and China's preference coefficient in clean energy consumption is 0.9665, higher than that of Indian (0.7155), which means China has less interest to increase total energy consumption but more interest in popularizing the clean energy.
机译:准确预测能源需求可以更好地预测能源需求的未来变化。本研究旨在从建模机制的两个视角和模型结构的改进来发展更准确的清洁能量预测模型。为此目的,通过社会实践理论,供需关系以及能源经济消费的优先级,建立新的Riccati-Bernoulli微分方程。考虑到观察数据中的有限信息,然后根据差分信息原理将该微分方程转换为灰色Riccati-Bernoulli模型(GRBM(1,1))。利用在多项式方程理论的基础上解决的响应函数和改进的花授粉算法的功率指数优化,可以概括GRBM(1,1)的主要过程。提供了四个验证示例,用于通过与其他现有模型进行比较来确认新模型的有效性和可靠性。最后,拟议的模型用于估计和预测中国和印度的清洁能源消耗。结果表明,该拟议模型在短期清洁能耗预测中显示出所有情况和效率的更好估计。因此,通过使用这种最佳模型,中国总能耗的偏好系数为0.7103,低于印度(0.8799),中国清洁能耗的偏好系数为0.9665,高于印度(0.7155),这意味着中国对增加总能耗的兴趣较少,但对普及清洁能源感兴趣。

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