Forecasting U.S. Fossil Energy Consumption: Advancing Accuracy with Multilayer Perceptron and Residual Learning

Yiwu Hao, Qingping He
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Abstract

Accurate midterm forecasts of fossil fuel consumption are essential for effective energy planning, economic management, and resource allocation. While machine learning models have demonstrated their efficacy in handling large-scale nonlinear datasets, many, including Multilayer Perceptrons (MLPs), suffer from performance degradation with increased depth. Fortunately, recent studies have revealed that Residual Networks (ResNets) can mitigate or even overcome this challenge. In this paper, we propose a Weighted Residual Network based on MLP to enhance predictive performance. We employ the Adam algorithm for model training and utilize the Gridsearch algorithm for hyperparameter tuning. In the application section, we develop predictive models using three case studies: natural gas, petroleum, and total fossil fuel consumption. We validate the effectiveness of our proposed model and compare it with ten other machine learning models. Our findings demonstrate that our proposed model consistently outperforms others in all three cases, underscoring its superior performance in midterm forecasting of fossil fuel consumption.
预测美国化石能源消耗:利用多层感知器和残差学习提高准确性
准确的化石燃料消耗中期预测对于有效的能源规划、经济管理和资源分配至关重要。虽然机器学习模型在处理大规模非线性数据集方面已经证明了其功效,但包括多层感知器(MLP)在内的许多模型都会随着深度的增加而性能下降。幸运的是,最近的研究发现,残差网络(ResNets)可以缓解甚至克服这一难题。在本文中,我们提出了一种基于 MLP 的加权残差网络来提高预测性能。我们采用 Adam 算法进行模型训练,并利用 Gridsearch 算法进行超参数调整。在应用部分,我们使用三个案例研究开发了预测模型:天然气、石油和化石燃料总消耗量。我们验证了所提模型的有效性,并将其与其他十个机器学习模型进行了比较。我们的研究结果表明,在所有三个案例中,我们提出的模型始终优于其他模型,这突出表明了它在化石燃料消费中期预测方面的卓越性能。
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