Title Artificial neural network-based decision support system for development of an energy-efficient built environment /
Authors Kaklauskas, Artūras ; Dzemyda, Gintautas ; Tupėnaitė, Laura ; Voitau, Ihar ; Kurasova, Olga ; Naimavičienė, Jurga ; Rassokha, Yauheni ; Kanapeckienė, Loreta
DOI 10.3390/en11081994
Full Text Download
Is Part of Energies.. Basel : MDPI. 2018, vol. 11, iss. 8, p. 1-20.. eISSN 1996-1073
Keywords [eng] energy-efficiency ; built environment ; solutions ; artificial neural networks ; decision support system ; quantitative and qualitative analysis
Abstract [eng] Implementing energy-efficient solutions in a built environment is important for reaching international energy reduction targets. For advanced energy efficiency-related solutions, computer-based decision support systems are proposed and rapidly used in a variety of spheres relevant to a built environment. Present research proposes a novel artificial neural network-based decision support system for development of an energy-efficient built environment. The system was developed by integrating methods of the multiple criteria evaluation and multivariant design, determination of project utility and market value, and visual data mining by artificial neural networks. It enables a user to compose up to 100,000,000 combinations of the energy-efficient solutions, analyze strengths and weaknesses of a built environment projects, provide advice for stakeholders, and calculate market value and utility degree of the projects. For visual data mining, self-organizing maps (type neural networks) are used, which may influence the choosing of the final set of alternatives and criteria in the decision-making problem, taking into account the discovered similarities of alternatives or criteria. A system was validated by the real case study on the design of an energy-efficient individual house.
Published Basel : MDPI
Type Journal article
Language English
Publication date 2018
CC license CC license description