A platform for research: civil engineering, architecture and urbanism
Neural network based real-time pricing in demand side management for future smart grid
Electricity grid is currently being transformed into smart grid. Increased number of renewables require more and more ancillary services to backup intermittent power generation. A very important topic in tomorrow's electricity grid is demand side management. This tool should be used as an alternative for traditional backup power reserves. It requires a deep understanding on how consumption depends on dynamic pricing. This paper proposes a method for modelling the electricity demand response to a real-time pricing. A virtual smart house is modelled using Gridlab-D smart grid simulator. The HVAC system is setup to respond to real-time price sent by the utility. The paper is analysing the ability of neural network to predict the exact price, which is sent to the end user in order to maintain the supply balance in the system. It should also reduce the peaks in demand and increase system resilience.
Neural network based real-time pricing in demand side management for future smart grid
Electricity grid is currently being transformed into smart grid. Increased number of renewables require more and more ancillary services to backup intermittent power generation. A very important topic in tomorrow's electricity grid is demand side management. This tool should be used as an alternative for traditional backup power reserves. It requires a deep understanding on how consumption depends on dynamic pricing. This paper proposes a method for modelling the electricity demand response to a real-time pricing. A virtual smart house is modelled using Gridlab-D smart grid simulator. The HVAC system is setup to respond to real-time price sent by the utility. The paper is analysing the ability of neural network to predict the exact price, which is sent to the end user in order to maintain the supply balance in the system. It should also reduce the peaks in demand and increase system resilience.
Neural network based real-time pricing in demand side management for future smart grid
Gelažanskas, Linas (author) / Gamage, Kelum A.A. (author)
2014-01-01
7th IET International Conference on Power Electronics, Machines and Drives (PEMD 2014), 8-10 April 2014. Vol. 1, Manchester : IEEE, 2014, p. 590-594 ; ISBN 9781632666390 ; eISBN 9781849198158
Article (Journal)
Electronic Resource
English
DDC:
690
Demand side management of smart grid: Load shifting and incentives
American Institute of Physics | 2014
|Adaptive residential demand-side management using rule-based techniques in smart grid environments
Online Contents | 2016
|Optimal Energy Management in a Smart Micro Grid with Demand Side Participation
Online Contents | 2022
|Optimal Energy Management in a Smart Micro Grid with Demand Side Participation
DOAJ | 2022
|