کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
382672 | 660778 | 2013 | 11 صفحه PDF | دانلود رایگان |

Although over a thousand scientific papers address the topic of load forecasting every year, only a few are dedicated to finding a general framework for load forecasting that improves the performance, without depending on the unique characteristics of a certain task such as geographical location. Meta-learning, a powerful approach for algorithm selection has so far been demonstrated only on univariate time-series forecasting. Multivariate time-series forecasting is known to have better performance in load forecasting. In this paper we propose a meta-learning system for multivariate time-series forecasting as a general framework for load forecasting model selection. We show that a meta-learning system built on 65 load forecasting tasks returns lower forecasting error than 10 well-known forecasting algorithms on 4 load forecasting tasks for a recurrent real-life simulation. We introduce new metafeatures of fickleness, traversity, granularity and highest ACF. The meta-learning framework is parallelized, component-based and easily extendable.
► We forecast electric load using meta-learning.
► We propose 4 new metafeatures and test them using ReliefF.
► Meta-learning has 29% runtime of all components that build it.
► Meta-learning has lower load forecasting error than single algorithms.
Journal: Expert Systems with Applications - Volume 40, Issue 11, 1 September 2013, Pages 4427–4437