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Robust ensemble learning framework for day-ahead forecasting of household based energy consumption

机译:鲁棒的集成学习框架,用于基于家庭的能源消耗的提前一天预测

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摘要

Smart energy management mandates a more decentralized energy infrastructure, entailing energy consumption information on a local level. Household-based energy consumption trends are becoming important to achieve reliable energy management for such local power systems. However, predicting energy consumption on a household level poses several challenges on technical and practical levels. The literature lacks studies addressing prediction of energy consumption on an individual household level. In order to provide a feasible solution, this paper presents a framework for predicting the average daily energy consumption of individual households. An ensemble method, utilizing information diversity, is proposed to predict the day-ahead average energy consumption. In order to further improve the generalization ability, a robust regression component is proposed in the ensemble integration. The use of such robust combiner has become possible due to the diversity parameters provided in the ensemble architecture. The proposed approach is applied to a case study in France. The results show significant improvement in the generalization ability as well as alleviation of several unstable-prediction problems, existing in other models. The results also provide insights on the ability of the suggested ensemble model to produce improved prediction performance with limited data, showing the validity of the ensemble learning identity in the proposed model. We demonstrate the conceptual benefit of ensemble learning, emphasizing on the requirement of diversity within datasets, given to sub-ensembles, rather than the common misconception of data availability requirement for improved prediction.
机译:智能能源管理要求建立更加分散的能源基础架构,从而在地方层面提供能耗信息。基于家庭的能耗趋势对于实现此类本地电源系统的可靠能源管理变得越来越重要。然而,在家庭层面上预测能源消耗在技术和实践层面提出了一些挑战。文献缺乏针对单个家庭能源消耗预测的研究。为了提供可行的解决方案,本文提出了一个预测单个家庭平均每日能耗的框架。提出了一种利用信息多样性的集成方法来预测日均能耗。为了进一步提高泛化能力,在集成中提出了鲁棒的回归分量。由于集成体系结构中提供的多样性参数,使用这种鲁棒的组合器已成为可能。拟议的方法适用于法国的案例研究。结果表明,其他模型中存在的泛化能力显着提高,并且缓解了一些不稳定的预测问题。结果还提供了关于建议的集成模型在有限数据下产生改进的预测性能的能力的见解,显示了所提出的模型中集成学习身份的有效性。我们展示了集成学习的概念上的好处,着重强调了给子集成的数据集内多样性的需求,而不是常见的对数据可用性需求的误解以改善预测。

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