Generalised Regression Hypothesis Induction for Energy Consumption Forecasting
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Rueda:2019:Energies,
-
author = "R. Rueda and M. P. Cuellar and M. Molina-Solana and
Y. Guo and M. C. Pegalajar",
-
title = "Generalised Regression Hypothesis Induction for Energy
Consumption Forecasting",
-
journal = "Energies",
-
year = "2019",
-
volume = "12",
-
number = "6",
-
pages = "1069",
-
month = "20 " # mar,
-
keywords = "genetic algorithms, genetic programming, symbolic
regression, energy consumption, forecasting, pattern
recognition",
-
ISSN = "1996-1073",
-
URL = "https://spiral.imperial.ac.uk/bitstream/10044/1/67867/5/energies-12-01069.pdf",
-
DOI = "doi:10.3390/en12061069",
-
size = "22 pages",
-
abstract = "We address the problem of energy consumption time
series forecasting. In our approach, a set of time
series containing energy consumption data is used to
train a single, parameterised prediction model that can
be used to predict future values for all the input time
series. As a result, the proposed method is able to
learn the common behaviour of all time series in the
set (i.e., a fingerprint) and use this knowledge to
perform the prediction task, and to explain this common
behaviour as an algebraic formula. To that end, we use
symbolic regression methods trained with both single-
and multi-objective algorithms. Experimental results
validate this approach to learn and model shared
properties of different time series, which can then be
used to obtain a generalised regression model
encapsulating the global behaviour of different energy
consumption time series.",
-
notes = "Department of Computer Science and Artificial
Intelligence, University of Granada, 18071 Granada,
Spain.
Data Science Institute, Imperial College, London SW7
2AZ, UK",
- }
Genetic Programming entries for
Ramon Rueda Delgado
Manuel Pegalajar Cuellar
Miguel Molina-Solana
Yi-Ke Guo
Maria del Carmen Pegalajar Jimenez
Citations