分时延迟灰色模型在一次能源消耗量预测中的应用

Qingping He, Yiwu Hao
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摘要

对能源消耗总量的预测在经济、环境、市场和地缘政治等各个领域都至关重要。准确的预测可以指导政策制定、投资决策和国际战略,促进可持续发展和能源安全。事实证明,分数模型能更好地捕捉系统的长期记忆效应和复杂动态特性,而时间延迟在捕捉动态行为方面发挥着至关重要的作用。这类模型提高了预测未来趋势和行为的准确性和可靠性。为了预测中南美洲、中东和非洲的一次能源消耗量,本研究选择了现有的分数时延灰色模型,并使用粒子群优化算法对分数阶数进行了优化。实验结果表明,在大多数情况下,分时延迟灰色模型的预测能力超过了其他灰色模型。这表明该模型在预测能源消耗方面的有效性和可靠性,为相关领域的决策提供了有价值的参考和依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Fractional Time Delayed Grey Model in Primary Energy Consumption Prediction
The prediction of total energy consumption is crucial across various domains including the economy, environment, market, and geopolitics. Accurate forecasts can guide policy-making, investment decisions, and international strategies, contributing to sustainable development and energy security. Fractional models have been proven to better capture the long-term memory effects and complex dynamic characteristics of systems, with time delay playing a crucial role in capturing dynamic behaviors. Such models enhance the accuracy and reliability of predicting future trends and behaviors. For the prediction of primary energy consumption in South and Central America, the Middle East, and Africa, this study opts for the existing fractional time delayed grey model, optimizing the fractional order using the particle swarm optimization algorithm. Experimental results demonstrate that in most cases, the predictive capability of the fractional time delayed grey model surpasses that of other grey models. This indicates the effectiveness and reliability of the model in forecasting energy consumption, providing valuable references and foundations for decision-making in relevant fields.
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