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When multiple weather variables matter: Intelligent STLF of electricity demand for smart homes

机译:当多个天气变量都很重要时:智能家居的智能STLF电力需求

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Electricity consumption prediction in smart homes and its effective management are global concerns. One of the most important inventions to assist human living, electricity is used by residential users as well as commercial operations. These users often utilize different electronic devices and sometimes consume fluctuating amounts of electricity, generated from smart-grid infrastructure owned by the government or private investors. However, a repeated imbalance is noticeable between the demand and supply of electricity; these disparities are often brought about by different weather profiles such as temperature, wind speed, dew point, humidity and pressure of the electricity consumption locations. Therefore, effective planning through an intelligent data analysis of the electricity load is needed to enable a sustainable distribution among consumers. Such intelligent analysis and planning are activated by the need to visualize the data and predict future electricity consumption within a short period, considering how weather variables affect predictions. Although a variety of compelling state-of-the-art techniques are used for such predictions, they require data engineering improvement for reducing significant predictive errors in short-term load forecasting (STLF). This research deploys a near-zero cooperative probabilistic scenario analysis and decision tree (PSA-DT) model to address the predictive errors facing state-of-the-art models, and analyses the effect each weather profile has on the cooperative model. The PSA-DT is a machine learning (ML) model based on a probabilistic technique (in view of the uncertain nature of electricity consumption), complemented by a DT to reinforce collaboration between the two techniques. Based on detailed experimental intelligent data analytics (IDA) on residential and commercial data loads, together with multiple weather profiles, the PSA-DT model outperforms state-of-the-art models in terms of accuracy to a near-zero error rate. This implies that its deployment for electricity demand in planning smart homes will be of great benefit to various smart-grid operators and homes.
机译:智能家居中的用电量预测及其有效管理已成为全球关注的问题。电力是人类生活中最重要的发明之一,它被住宅用户以及商业运营所使用。这些用户经常使用不同的电子设备,有时会消耗由政府或私人投资者拥有的智能电网基础设施产生的波动电量。但是,电力的需求和供应之间反复出现不平衡现象。这些差异通常是由不同的天气状况引起的,例如温度,风速,露点,湿度和用电地点的压力。因此,需要通过对电力负荷进行智能数据分析的有效计划,以实现消费者之间的可持续分配。考虑到天气变量如何影响预测,需要可视化数据并在短期内预测未来用电量,从而激活了这种智能分析和计划。尽管将各种引人注目的最新技术用于此类预测,但它们需要改进数据工程以减少短期负荷预测(STLF)中的重大预测误差。这项研究部署了一种接近零的合作概率情景分析和决策树(PSA-DT)模型,以解决当前模型所面临的预测误差,并分析每种天气状况对合作模型的影响。 PSA-DT是一种基于概率技术的机器学习(ML)模型(鉴于用电量的不确定性),并辅以DT来加强这两种技术之间的协作。基于对住宅和商业数据负载的详细实验智能数据分析(IDA)以及多种天气概况,PSA-DT模型在准确性方面达到了最先进的模型,误差率几乎为零。这意味着,其用于规划智能家居的电力需求的部署将为各种智能电网运营商和家居带来巨大好处。

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