The prediction of residential power usage is essential in assisting a smart grid to manage and preserve energy to ensure efficient use. An accurate energy forecasting at the customer level will reflect directly into efficiency improvements across the power grid system, however forecasting building energy use is a complex task due to many influencing factors, such as meteorological and occupancy patterns. In addiction, high-dimensional time series increasingly arise in the Internet of Energy (IoE), given the emergence of multi-sensor environments and the two way communication between energy consumers and the smart grid. Therefore, methods that are capable of computing high-dimensional time series are of great value in smart building and IoE applications. Fuzzy Time Series (FTS) models stand out as data-driven non-parametric models of easy implementation and high accuracy. Unfortunately, the existing FTS models can be unfeasible if all features were used to train the model. We present a new methodology for handling high-dimensional time series, by projecting the original high-dimensional data into a low dimensional embedding space and using multivariate FTS approach in this low dimensional representation. Combining these techniques enables a better representation of the complex content of multivariate time series and more accurate forecasts.
翻译:预测住宅用电对于协助智能电网管理和保存能源以确保高效使用至关重要。准确的客户一级的能源预报将直接反映整个电网系统的效率提高,然而,预测建筑能源使用是一项复杂的任务,因为许多影响因素,如气象和占用模式等。在成瘾方面,鉴于多传感器环境的出现以及能源消费者和智能电网之间的双向交流,高维时间序列越来越多地出现在能源互联网(IoE)中。因此,能够计算高维时间序列的方法在智能建筑和IoE应用中具有巨大价值。Fuzzy 时间序列(FTS)模型是数据驱动的非参数型执行和高精确度模型。不幸的是,如果使用所有功能来训练模型,现有的FTS模型可能不可行。我们提出了处理高维时间序列的新方法,将原始高维数据投射到一个低维嵌入空间,并在这一低维代表中采用多变量FTS方法。这些技术的合并使得多变量时间序列和更精确的复杂内容能够更好地反映。