@article{(Open Science Index):https://publications.waset.org/pdf/10003183,
	  title     = {Performance of Neural Networks vs. Radial Basis Functions When Forming a Metamodel for Residential Buildings},
	  author    = {Philip Symonds and  Jon Taylor and  Zaid Chalabi and  Michael Davies},
	  country	= {},
	  institution	= {},
	  abstract     = {Average temperatures worldwide are expected to
continue to rise. At the same time, major cities in developing
countries are becoming increasingly populated and polluted.
Governments are tasked with the problem of overheating and air
quality in residential buildings. This paper presents the development
of a model, which is able to estimate the occupant exposure
to extreme temperatures and high air pollution within domestic
buildings. Building physics simulations were performed using the
EnergyPlus building physics software. An accurate metamodel is
then formed by randomly sampling building input parameters and
training on the outputs of EnergyPlus simulations. Metamodels are
used to vastly reduce the amount of computation time required when
performing optimisation and sensitivity analyses. Neural Networks
(NNs) have been compared to a Radial Basis Function (RBF)
algorithm when forming a metamodel. These techniques were
implemented using the PyBrain and scikit-learn python libraries,
respectively. NNs are shown to perform around 15% better than RBFs
when estimating overheating and air pollution metrics modelled by
	    journal   = {International Journal of Civil and Environmental Engineering},
	  volume    = {9},
	  number    = {12},
	  year      = {2015},
	  pages     = {1594 - 1598},
	  ee        = {https://publications.waset.org/pdf/10003183},
	  url   	= {https://publications.waset.org/vol/108},
	  bibsource = {https://publications.waset.org/},
	  issn  	= {eISSN: 1307-6892},
	  publisher = {World Academy of Science, Engineering and Technology},
	  index 	= {Open Science Index 108, 2015},