Accurate electricity demand forecasts play a crucial role in sustainable power systems. To enable better decision-making especially for demand flexibility of the end-user, it is necessary to provide not only accurate but also understandable and actionable forecasts. To provide accurate forecasts Global Forecasting Models (GFM) trained across time series have shown superior results in many demand forecasting competitions and real-world applications recently, compared with univariate forecasting approaches. We aim to fill the gap between the accuracy and the interpretability in global forecasting approaches. In order to explain the global model forecasts, we propose Local Interpretable Model-agnostic Rule-based Explanations for Forecasting (LIMREF), a local explainer framework that produces k-optimal impact rules for a particular forecast, considering the global forecasting model as a black-box model, in a model-agnostic way. It provides different types of rules that explain the forecast of the global model and the counterfactual rules, which provide actionable insights for potential changes to obtain different outputs for given instances. We conduct experiments using a large-scale electricity demand dataset with exogenous features such as temperature and calendar effects. Here, we evaluate the quality of the explanations produced by the LIMREF framework in terms of both qualitative and quantitative aspects such as accuracy, fidelity, and comprehensibility and benchmark those against other local explainers.
翻译:准确的电力需求预测在可持续的电力系统中发挥着关键作用。为了更好地作出决策,特别是为了提高终端用户的需求灵活性,有必要提供准确的、可理解和可操作的预测。为了提供准确的预测,经过不同时间序列培训的全球预测模型(GFM)在最近许多需求预测竞争和现实世界应用中显示出优异的结果,而与单一预测方法相比,这种模型预测方法最近也显示出优异的结果。我们的目标是填补全球预测方法的准确性和可解释性之间的差距。为了解释全球模型预测,我们提出一个基于预测的本地解释者框架(LIMREF),即一个为特定预测提供K-最佳影响规则的地方解释者框架。考虑到全球预测模型作为黑盒模型,以模型-不可理解的方式,提供了不同种类的规则,解释全球模型的预测和反现实规则,为特定实例获得不同产出的潜在变化提供了可采取行动的洞察力。我们利用具有诸如温度和日历效果等外源特征的大规模电力需求示范性示范性规则解释(LIMREF)进行实验。我们在这里,用真实性、质量框架的质量来解释这些质量解释。