With the rapid advancement in technology, electrical energy consumption is increasing rapidly. Especially, in the residential sector, more than 80% of electrical energy is being consumed because of consumer negligence. This brings the challenging task of maintaining the balance between the demand and supply of electric power. In this paper, we focus on the problem of load balancing via load scheduling under utility and rooftop photovoltaic (PV) units to reduce electricity cost and peak to average ratio (PAR) in demand-side management. For this purpose, we adopted genetic algorithm (GA), binary particle swarm optimization (BPSO), wind-driven optimization (WDO), and our proposed genetic WDO (GWDO) algorithm, which is a hybrid of GA and WDO, t...
To deal with the present power-scenario, this paper proposes a model of an advanced energy managemen...
With the emergence of automated environments, energy demand by consumers is increasing rapidly. More...
Smart grids (SG) allow users to plan and control device usage patterns optimally, thereby minimizing...
With the rapid advancement in technology, electrical energy consumption is increasing rapidly. Espec...
In a smart grid, several optimization techniques have been developed to schedule load in the residen...
In recent years, demand side management (DSM) techniques have been designed for residential, industr...
Smart grid enables consumers to control and schedule the consumption pattern of their appliances, mi...
Energy consumption schedulers have been widely adopted for energy management in smart microgrids. En...
The main problem for both the utility companies and the end-used is to efficiently schedule the home...
As compared to traditional flat electricity rates, real-time electricity pricing methods have the po...
Optimal energy management trends are indispensable in improving the power grid’s reliability. Howeve...
Residential demand response is one of the key enabling technologies which plays an important role in...
In this paper, we propose mathematical optimization models of household energy units to optimally co...
In recent years, with the introduction of renewable energy sources (RES) and digital technologies, g...
Traditional power grid and its demand-side management (DSM) techniques are centralized and mainly fo...
To deal with the present power-scenario, this paper proposes a model of an advanced energy managemen...
With the emergence of automated environments, energy demand by consumers is increasing rapidly. More...
Smart grids (SG) allow users to plan and control device usage patterns optimally, thereby minimizing...
With the rapid advancement in technology, electrical energy consumption is increasing rapidly. Espec...
In a smart grid, several optimization techniques have been developed to schedule load in the residen...
In recent years, demand side management (DSM) techniques have been designed for residential, industr...
Smart grid enables consumers to control and schedule the consumption pattern of their appliances, mi...
Energy consumption schedulers have been widely adopted for energy management in smart microgrids. En...
The main problem for both the utility companies and the end-used is to efficiently schedule the home...
As compared to traditional flat electricity rates, real-time electricity pricing methods have the po...
Optimal energy management trends are indispensable in improving the power grid’s reliability. Howeve...
Residential demand response is one of the key enabling technologies which plays an important role in...
In this paper, we propose mathematical optimization models of household energy units to optimally co...
In recent years, with the introduction of renewable energy sources (RES) and digital technologies, g...
Traditional power grid and its demand-side management (DSM) techniques are centralized and mainly fo...
To deal with the present power-scenario, this paper proposes a model of an advanced energy managemen...
With the emergence of automated environments, energy demand by consumers is increasing rapidly. More...
Smart grids (SG) allow users to plan and control device usage patterns optimally, thereby minimizing...