Enhancements in cross-temporal forecast reconciliation, with an application to solar irradiance forecasts

09/15/2022
by   Tommaso Di Fonzo, et al.
0

In recent works by Yang et al. (2017a,b), and Yagli et al. (2019), geographical, temporal, and sequential deterministic reconciliation of hierarchical photovoltaic (PV) power generation have been considered for a simulated PV dataset in California. In the first two cases, the reconciliations are carried out in spatial and temporal domains separately. To further improve forecasting accuracy, in the third case these two reconciliation approaches are sequentially applied. During the replication of the forecasting experiment, some issues emerged about non-negativity and coherence (in space and/or in time) of the sequentially reconciled forecasts. Furthermore, while the accuracy improvement of the considered approaches over the benchmark persistence forecasts is clearly visible at any data granularity, we argue that an even better performance may be obtained by a thorough exploitation of cross-temporal hierarchies. In this paper the cross-temporal point forecast reconciliation approach is applied to generate non-negative, fully coherent (both in space and time) forecasts. In particular, some relationships between two-step, iterative and simultaneous cross-temporal reconciliation procedures are for the first time established, non-negativity issues of the final reconciled forecasts are correctly dealt with in a simple way, and the most recent cross-temporal reconciliation approaches are adopted. The normalised Root Mean Square Error is used to measure forecasting accuracy, and a statistical multiple comparison procedure is performed to rank the approaches. Besides assuring full coherence, and non-negativity of the reconciled forecasts, the results show that for the considered dataset, cross-temporal forecast reconciliation significantly improves on the sequential procedures proposed by Yagli et al. (2019), at any cross-sectional level of the hierarchy and for any temporal granularity.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/15/2020

Cross-temporal forecast reconciliation: Optimal combination method and heuristic alternatives

Forecast reconciliation is a post-forecasting process aimed to improve t...
research
06/10/2021

Forecast combination based forecast reconciliation: insights and extensions

In a recent paper, while elucidating the links between forecast combinat...
research
03/30/2023

Cross-temporal Probabilistic Forecast Reconciliation

Forecast reconciliation is a post-forecasting process that involves tran...
research
08/08/2018

Reconciliation of probabilistic forecasts with an application to wind power

New methods are proposed for adjusting probabilistic forecasts to ensure...
research
06/03/2020

Hierarchical forecast reconciliation with machine learning

Hierarchical forecasting methods have been widely used to support aligne...
research
09/01/2022

Spatial forecast postprocessing: The Max-and-Smooth approach

Numerical weather forecasts can exhibit systematic errors due to simplif...
research
04/29/2022

Task Embedding Temporal Convolution Networks for Transfer Learning Problems in Renewable Power Time-Series Forecast

Task embeddings in multi-layer perceptrons for multi-task learning and i...

Please sign up or login with your details

Forgot password? Click here to reset