Details
- Publication date
- 1 September 2019
- EPAH Type of publication
- Scientific paper
Description
Many studies are focused on the diagnosis of fuel poverty. However, its prediction before occupying households is a developing research area. This research studies the feasibility of implementing the FPPRI in different climate zones of Chile by means of regression models based on artificial neural networks (ANNs). A total of 116,640 representative case studies were carried out in the three cities with the largest population in Chile: Santiago, Concepción, and Valparaiso. Apart from energy price (EP) and income (IN), 9 variables related to the morphology of the building were considered in approach 1. Furthermore, approach 2 was developed by including comfort hours (NCH). A total of 84 datasets were combined considering both approaches and the 5 most unfavourable deciles according to the income level of Chilean families. The results of both approaches showed a better performance in the use of individual models for each climate and the dataset with all deciles (Full) could be used.
Authors: David Bienvenido-Huertas, Alexis Pérez-Fargallo, Raúl Alvarado-Amador, Carlos Rubio-Bellido
