复杂数据空间的建模:NRG4CAST项目的体系结构和用例

K. Kenda, Maja Skrjanc, A. Borstnik
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引用次数: 2

摘要

以下贡献提供了基于开源QMiner平台构建的异构多变量数据流建模的技术解决方案。所呈现的基础设施能够从具有许多不同属性(频率、更新间隔等)的不同来源(传感器、天气、天气和其他预报、静态属性等)接收数据,它能够合并和重新采样这些数据,并在其基础上构建模型。利用技术为5种不同的能源相关用例准备预测模型,这些用例包括公共建筑、热电厂生产、大学校园建筑、EPEX能源现货市场价格和总交易能源。模型预测的平均相对平均绝对误差在5-10%之间,对预测结果的定性分析表明,预测结果与真实值之间存在显著的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling of the complex data space: Architecture and use cases from NRG4CAST project
The following contribution offers technical solution for heterogeneous multivariate data streaming modelling built on top of open-source QMiner platform. The presented infrastructure is able to receive data from different sources (sensors, weather, weather and other forecast, static properties, ...) with many different properties (frequency, update interval, ...), it is able to merge and resample this data and build models on top of it. Technology was used to prepare prediction models for 5 different energy related use cases which include public buildings, thermal plant production, university campus buildings, EPEX energy spot market prices and total traded energy. Average relative mean absolute error of the model predictions varies between 5-10%, and qualitative analysis of predictions shows significant correlation between predictions and true values.
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