Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Energy consumption forecasting using neuro-fuzzy inference systems: Thales TRT building case study
Electrical energy consumption forecasting is, nowadays, essential in order to deal with the new paradigm of consumers' active participation in the power and energy system. The uncertainty related to the variability of consumption is associated to numerous factors, such as consumers' habits, the environmental temperature, luminosity, etc. Current forecasting methods are not suitable to deal with such a combination of input variables, with often highly variable influence on the outcomes of the actual energy consumption. This paper presents a study on the application of five different methods based on fuzzy rule-based systems. This type of method is able to find associations between the distinct input variables, thus creating rules that support and improve the actual forecasting process. A case study is presented, showing the results of applying these five methods to predict the consumption of a real building: the Thales TRT building, in France. ; This work has been developed under the EUREKA - ITEA2 Project FUSE-IT (ITEA-13023), Project GREEDI (ANI|P2020 17822), and has received funding from FEDER Funds through COMPETE program and from National Funds through FCT under the project UID/EEA/0076012013
Energy consumption forecasting using neuro-fuzzy inference systems: Thales TRT building case study
Electrical energy consumption forecasting is, nowadays, essential in order to deal with the new paradigm of consumers' active participation in the power and energy system. The uncertainty related to the variability of consumption is associated to numerous factors, such as consumers' habits, the environmental temperature, luminosity, etc. Current forecasting methods are not suitable to deal with such a combination of input variables, with often highly variable influence on the outcomes of the actual energy consumption. This paper presents a study on the application of five different methods based on fuzzy rule-based systems. This type of method is able to find associations between the distinct input variables, thus creating rules that support and improve the actual forecasting process. A case study is presented, showing the results of applying these five methods to predict the consumption of a real building: the Thales TRT building, in France. ; This work has been developed under the EUREKA - ITEA2 Project FUSE-IT (ITEA-13023), Project GREEDI (ANI|P2020 17822), and has received funding from FEDER Funds through COMPETE program and from National Funds through FCT under the project UID/EEA/0076012013
Energy consumption forecasting using neuro-fuzzy inference systems: Thales TRT building case study
Aria Jozi (Autor:in) / Tiago Pinto (Autor:in) / Isabel Praça (Autor:in) / Sérgio Ramos (Autor:in) / Zita Vale (Autor:in) / Bénédicte Goujon (Autor:in) / Teodora Petrisor (Autor:in)
08.02.2018
Aufsatz (Konferenz)
Elektronische Ressource
Englisch
DDC:
690
Energy consumption forecasting using neuro-fuzzy inference systems: Thales TRT building case study
BASE | 2017
|Stream flow forecasting using neuro-fuzzy inference system
British Library Online Contents | 2003
|D13-4 STREAMFLOW FORECASTING USING NEURO-FUZZY INFERENCE SYSTEM
British Library Conference Proceedings | 2005
|