Analysis of Artificial Neural Network Architectures for Modeling Smart Lighting Systems for Energy Savings.
Author: Garcés Jiménez, Alberto; Castillo Sequera, José Luis; Corte Valiente, Antonio del; Gómez Pulido, José Manuel; Domínguez González-Seco, Esteban Patricio
Abstract: Currently, population growth is global and tends to concentrate in large cities, which increases
the demand for illuminating public spaces for safety, visual orientation, aesthetic considerations, and quality
of life. The undesirable side effects are increase in energy consumption and light pollution. The current tools
used for designing public lighting systems are not suitable for optimizing multiple objectives in addition to
energy savings, and these solutions could provide for a more sustainable environment. The application of
evolutionary optimization techniques seems to be growing rapidly because of the nonlinearity of the model
behavior and the nonproprietary nature of the algorithms, which are considered as black box systems. This
paper develops a data model for these types of optimizers, analyzing the ability of different arti cial neural
network (ANN) architectures to simulate a simple public lighting design by measuring the performance with
respect to the tness function, training speed, and goodness of t with a dataset generated with different
conditions. The architectures selected in this paper are those with multilayer perceptrons (MLPs) with
different hidden layer con gurations using different numbers of neurons in each layer, which have been
analyzed to determine the con guration that best ts the purpose of this work. The data for training the
ANNs were generated with a recognized open-software platform, DIALux. The experiments were repeated
and analyzed to determine the variance of the results obtained. In this way, it was possible to identify the
most appropriate number of iterations required. The results show that better precision is obtained when using
the Levenberg Marquardt training algorithm, especially when the ANN architecture has fewer neurons in
the hidden layer.
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