This paper proposes an online-learning-based strategy for a distribution system operator (DSO) to determine optimal retail prices, considering the optimal operations of heating, ventilation, and air-conditioning (HVAC) systems in commercial buildings. An artificial neural network (ANN) is trained online with building energy data and represented using an explicit set of linear and nonlinear equations. An optimization problem for price-based demand response (DR) is then formulated using the explicit ANN model and repeatedly solved, producing data on optimal HVAC load schedules for various profiles of electricity prices and building environments. Another ANN is then trained online to predict directly the optimal load schedules, which is referr...
In this paper, we propose a profit-maximization-based pricing optimization model for the demand resp...
peer reviewedBuilding operation faces great challenges in electricity cost control as prices on elec...
This paper investigates how to develop a learning-based demand response approach for electric water ...
Retail pricing can be well deployed with support of distribution companies (DISCOs) to promote deman...
Electricity grid is currently being transformed into smart grid. Increased number of renewables requ...
Electricity grid is currently being transformed into smart grid. Increased number of renewables requ...
With the increasing complexity of building infrastructure, building management systems have been wid...
Summarization: Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers ...
Thermal energy capacity of buildings can be coupled to power networks via heating, ventilating, and ...
Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers to the necessar...
AbstractCommercial and residential buildings consume more than 40% of the total energy in most count...
Electricity is the basis for the functioning of modern society. It is used for many purposes, includ...
xviii, 184 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P EE 2017 MaiIn order ...
Abstract Air conditioning systems play a vital role in maintaining comfortable indoor environments, ...
In this paper, we propose a profit-maximization-based pricing optimization model for the demand resp...
In this paper, we propose a profit-maximization-based pricing optimization model for the demand resp...
peer reviewedBuilding operation faces great challenges in electricity cost control as prices on elec...
This paper investigates how to develop a learning-based demand response approach for electric water ...
Retail pricing can be well deployed with support of distribution companies (DISCOs) to promote deman...
Electricity grid is currently being transformed into smart grid. Increased number of renewables requ...
Electricity grid is currently being transformed into smart grid. Increased number of renewables requ...
With the increasing complexity of building infrastructure, building management systems have been wid...
Summarization: Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers ...
Thermal energy capacity of buildings can be coupled to power networks via heating, ventilating, and ...
Demand Response (DR) is a fundamental aspect of the smart grid concept, as it refers to the necessar...
AbstractCommercial and residential buildings consume more than 40% of the total energy in most count...
Electricity is the basis for the functioning of modern society. It is used for many purposes, includ...
xviii, 184 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P EE 2017 MaiIn order ...
Abstract Air conditioning systems play a vital role in maintaining comfortable indoor environments, ...
In this paper, we propose a profit-maximization-based pricing optimization model for the demand resp...
In this paper, we propose a profit-maximization-based pricing optimization model for the demand resp...
peer reviewedBuilding operation faces great challenges in electricity cost control as prices on elec...
This paper investigates how to develop a learning-based demand response approach for electric water ...