Quinn Colin O, Brown Ronald H, Corliss George F, Povinelli Richard J
Department of Computer Science, Marquette University, 1313 W. Wisconsin Avenue, Milwaukee, WI 53233, USA.
Marquette Energy Analytics LLC, 313 North Plankinton Avenue, Suite 206, Milwaukee, WI 53203, USA.
Sensors (Basel). 2025 Feb 1;25(3):895. doi: 10.3390/s25030895.
Accurate time series forecasting often requires higher temporal resolution than that provided by available data, such as when daily forecasts are needed from monthly data. Existing temporal disaggregation techniques, which typically handle only single, uniformly sampled time series, have limited applicability in real-world, multi-source scenarios. This paper introduces the Iterative Shifting Disaggregation (ISD) algorithm, designed to process and disaggregate time series derived from sensor-sourced low-frequency measurements, transforming multiple, nonuniformly sampled sensor data streams into a single, coherent high-frequency signal. ISD operates in an iterative, two-phase process: a prediction phase that uses multiple linear regression to generate high-frequency series from low-frequency data and correlated variables, followed by an update phase that redistributes low-frequency observations across high-frequency periods. This process repeats, refining estimates with each iteration cycle. The ISD algorithm's key contribution is its ability to disaggregate multiple, nonuniformly spaced time series with overlapping intervals into a single daily representation. In two case studies using natural gas data, ISD successfully disaggregates billing cycle and grouped residential customer data into daily time series, achieving a 1.4-4.3% WMAPE improvement for billing cycle data and a 4.6-10.4% improvement for residential data over existing methods.
准确的时间序列预测通常需要比现有数据所提供的更高的时间分辨率,例如需要从月度数据得出每日预测时。现有的时间分解技术通常仅处理单个均匀采样的时间序列,在现实世界的多源场景中的适用性有限。本文介绍了迭代移位分解(ISD)算法,该算法旨在处理和分解源自传感器的低频测量的时间序列,将多个非均匀采样的传感器数据流转换为单个连贯的高频信号。ISD在一个迭代的两阶段过程中运行:一个预测阶段,使用多元线性回归从低频数据和相关变量生成高频序列,随后是一个更新阶段,将低频观测值重新分布到高频时间段。这个过程不断重复,在每个迭代周期中完善估计值。ISD算法的关键贡献在于它能够将多个具有重叠区间的非均匀间隔时间序列分解为单个每日表示形式。在使用天然气数据的两个案例研究中,ISD成功地将计费周期和分组住宅客户数据分解为每日时间序列,与现有方法相比,计费周期数据的加权平均绝对百分比误差(WMAPE)提高了1.4 - 4.3%,住宅数据提高了4.6 - 10.4%。