人工智能增强型印度一次能源需求预测:模糊自动回归分布式滞后模型

T. Vaikunta Pai, Manmohan Singh, Nazeer Shaik, C. Ashokkumar, D. Anuradha, Amit Gangopadhyay, Goda Srinivasa Rao, T.Sunilkumar Reddy, D. Nagaraju
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引用次数: 0

摘要

随着印度能源需求的持续激增,准确的预测对于高效的资源分配和可持续发展至关重要。本研究通过将人工智能(AI)技术与模糊自回归分布式滞后(FADL)模型相结合,提出了一种预测印度一次能源需求的创新方法。FADL 模型结合了模糊逻辑,能够细致入微地反映能源需求动态中的不确定性和复杂性。在这项研究中,使用具有对称和非对称三角形系数的 FADL 模型对历史能源消耗数据进行了分析,从而提高了模型对与能源预测相关的固有不确定性的适应性。本研究解决了可持续发展背景下对增强型能源规划模型的迫切需求。我们的研究旨在提供一个预测未来最终消费总量(TFC)的综合框架,以符合印度国家能源计划到 2035 年实现净零排放的目标。认识到当前模型的局限性,我们的研究引入了一种整合了先进算法和方法的新方法,对最终消费总量趋势进行更灵活、更现实的评估。本研究的主要目标是开发一种改进的能源规划模型,通过采用先进的算法超越现有的预测。我们旨在完善
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AI-enhanced forecasting of Indian primary energy demand: Fuzzy auto-regressive distributed lag models
As the demand for energy in India continues to surge, accurate forecasting becomes paramount for efficient resource allocation and sustainable development. This study proposes an innovative approach to forecasting Indian primary energy demand by integrating Artificial Intelligence (AI) techniques with Fuzzy Auto-regressive Distributed Lag (FADL) models. FADL models, incorporating fuzzy logic, allow for a nuanced representation of uncertainties and complexities within the energy demand dynamics. In this research, historical energy consumption data is analysed using FADL models with both symmetric and non-symmetric triangular coefficients, enhancing the model’s adaptability to the inherent uncertainties associated with energy forecasting. This study addresses the urgent need for enhanced energy planning models in the context of sustainable development. Our research aims to provide a comprehensive framework for predicting future Total Final Consumption (TFC) in alignment with the Indian National Energy Plan’s net-zero emissions target by 2035. Recognizing the limitations of current models, our research introduces a novel approach that integrates advanced algorithms and methodologies, offering a more flexible and realistic assessment of TFC trends. The primary objective of this study is to develop an improved energy planning model that surpasses existing projections by incorporating sophisticated algorithms. We aim to refine
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