Funciones probabilisticas predictivas para los precios de combustibles como entrada en simulaciones de montecarlo
- Adrien J.P. Grid 1
- Andrés Ortuño 1
- M. Socorro García Cascales 1
- Juan M. Sánchez Lozano 1
- 1 Universidad Politécnica Cartagena
Argitaletxea: Asociación Española de Ingeniería de Proyectos (AEIPRO)
ISBN: 978-84-617-2742-1
Argitalpen urtea: 2014
Orrialdeak: 1576-1585
Biltzarra: CIDIP. Congreso Internacional de Ingeniería de Proyectos (18. 2014. Alcañiz)
Mota: Biltzar ekarpena
Laburpena
The continual increase in energy costs and the volatility of energy prices are enforcing the implementation of energy efficiency measures (EEM) in companies. The choice of EEM in most cases is based on Pay-Back (PB) criteria, and in several cases on NVA and IRR criteria. In all these cases, it is necessary to estimate the price of energy in the following years so as to be able to study the profitability of the proposed EEM. Energy prices: electricity, biomass, petroleum, natural gas… change greatly throughout the period of a project, and their values are not easy to predict. If probabilistic functions are used to define the evolution of energy prices in the period of the project, the economic parameters (PB, IRR, NVA) could also be obtained as probabilistic functions, by applying Monte Carlo Simulation Methods. This paper shows how to obtain the probabilistic functions that best describe the variation of energy prices in the period of a project, and how to apply the Monte Carlo Simulation Method to obtain a better approach to predicting future energy prices.