基于机器学习的非线性电力需求模式GP建模

Yong-Gil Kim
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引用次数: 0

摘要

自动化智能电网的出现已经成为应对这些问题的重要手段,并正在推动智能电网社会的发展。智能电网是实现电力供应商和消费者之间双向通信的一种新模式。智能电网的出现是由于工程师们的主动行动,使电网更加稳定、可靠、高效和安全。智能电网为电力消费者在电力使用中发挥更大作用创造了机会,并激励他们明智和有效地使用电力。因此,本研究的重点是通过机器学习进行电力需求管理。关于使用机器学习进行需求预测,目前引入和应用了各种机器学习模型,需要一种系统的方法。特别是,GP学习模型在一般消费预测和数据可视化方面比其他学习模型具有优势,但在智能电表数据预测方面受到数据独立性的强烈影响。
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GP Modeling of Nonlinear Electricity Demand Pattern based on Machine Learning
The emergence of the automated smart grid has become an essential device for responding to these problems and is bringing progress toward a smart grid-based society. Smart grid is a new paradigm that enables two-way communication between electricity suppliers and consumers. Smart grids have emerged due to engineers' initiatives to make the power grid more stable, reliable, efficient and safe. Smart grids create opportunities for electricity consumers to play a greater role in electricity use and motivate them to use electricity wisely and efficiently. Therefore, this study focuses on power demand management through machine learning. In relation to demand forecasting using machine learning, various machine learning models are currently introduced and applied, and a systematic approach is required. In particular, the GP learning model has advantages over other learning models in terms of general consumption prediction and data visualization, but is strongly influenced by data independence when it comes to prediction of smart meter data.
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