A New Intelligent Neuro #x2013;Fuzzy Paradigm for Energy-Efficient Homes
Title | A New Intelligent Neuro #x2013;Fuzzy Paradigm for Energy-Efficient Homes |
Publication Type | Journal Article |
Year of Publication | 2014 |
Authors | Shahgoshtasbi, D., Jamshidi, M.M. |
Journal | Systems Journal, IEEE |
Volume | 8 |
Pagination | 664-673 |
Date Published | June |
ISSN | 1932-8184 |
Keywords | associative neural network, automated energy management systems, demand response, Demand response (DR), DR, energy consumption, Energy efficiency, Energy management, energy management systems, energy-efficient homes, Fuzzy logic, fuzzy rules, fuzzy set theory, fuzzy subsystem, Home appliances, home automation, iEMS, intelligent EMS, intelligent lookup table, intelligent neuro-fuzzy paradigm, neural nets, Neural networks, Neurons, power engineering computing, Pricing, Smart grid, Smart grids, smart house, Table lookup |
Abstract | Demand response (DR), which is the action voluntarily taken by a consumer to adjust amount or timing of its energy consumption, has an important role in improving energy efficiency. With DR, we can shift electrical load from peak demand time to other periods based on changes in price signal. At residential level, automated energy management systems (EMS) have been developed to assist users in responding to price changes in dynamic pricing systems. In this paper, a new intelligent EMS (iEMS) in a smart house is presented. It consists of two parts: a fuzzy subsystem and an intelligent lookup table. The fuzzy subsystem is based on its fuzzy rules and inputs that produce the proper output for the intelligent lookup table. The second part, whose core is a new model of an associative neural network, is able to map inputs to desired outputs. The structure of the associative neural network is presented and discussed. The intelligent lookup table takes three types of inputs that come from the fuzzy subsystem, outside sensors, and feedback outputs. Whatever is trained in this lookup table are different scenarios in different conditions. This system is able to find the best energy-efficiency scenario in different situations. |
DOI | 10.1109/JSYST.2013.2291943 |
Citation Key | 6705637 |
- Home appliances
- Table lookup
- smart house
- Smart Grids
- Smart Grid
- Pricing
- power engineering computing
- Neurons
- Neural networks
- neural nets
- intelligent neuro-fuzzy paradigm
- intelligent lookup table
- intelligent EMS
- iEMS
- home automation
- associative neural network
- fuzzy subsystem
- fuzzy set theory
- fuzzy rules
- Fuzzy logic
- energy-efficient homes
- energy management systems
- energy management
- Energy Efficiency
- energy consumption
- DR
- Demand response (DR)
- demand response
- automated energy management systems