Abstract

With the emergence of the smart grid, both consumers and electricity providing companies can benefit from real-time interaction and pricing methods. In this work, a smart power system is considered, where consumers share a common energy source. Each consumer is equipped with a home energy management controller (HEMC) as scheduler and a smart meter. The HEMC keeps updating the utility with the load profile of the home. The smart meter is connected to a power grid having an advanced metering infrastructure which is responsible for two-way communication. Genetic teaching-learning based optimization, flower pollination teaching learning based optimization, flower pollination BAT and flower pollination genetic algorithm based energy consumption scheduling algorithms are proposed. These algorithms schedule the loads in order to shave the peak formation without compromising user comfort. The proposed algorithms achieve optimal energy consumption profile for the home appliances equipped with sensors to maximize the consumer benefits in a fair and efficient manner by exchanging control messages. Control messages contain energy consumption of consumer and real-time pricing information. Simulation results show that proposed algorithms reduce the peak-to-average ratio by 34.56% and help the users to reduce their energy expenses by 42.41% without compromising the comfort. The daily discomfort is reduced by 28.18%.

Highlights

  • To make an advanced and automated energy management and distribution system, the smart grid incorporates new, smart and intelligent technologies

  • This paper proposes a novel approach for appliances scheduling in residential buildings which gives a detailed smart home energy management system solution

  • The heuristic algorithms: genetic algorithm (GA), TLBO, BAT and flower pollination algorithm (FPA) are implemented via Matlab to reduce cost, peak-to-average ratio (PAR) and user discomfort

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Summary

Introduction

To make an advanced and automated energy management and distribution system, the smart grid incorporates new, smart and intelligent technologies. The smart grid incorporates new technologies from generation, transmission and distribution of power consumption at the consumer’s side. The recent smart appliances and smart grid technologies enable residential and commercial sector to use power efficiently using smart grid features Such electrical appliances have the capability to make their operation according to the changing electricity prices. This paper proposes a novel approach for appliances scheduling in residential buildings which gives a detailed smart home energy management system solution. This approach minimizes the overall daily electricity cost of home appliances. These proposed algorithms are used to schedule the load for reducing electricity cost, user discomfort and PAR.

Related Work
Problem Statement
Proposed Model Specifications
Mapping of Load Scheduling to MKP
Energy Consumption Model
Energy Cost Model
Waiting Time
Optimization Problem Formulation
Proposed System Model
Optimization Techniques
Existing Optimization Techniques
Proposed Optimization Techniques
Simulations and Discussion
Power Consumption
Electricity Consumption Cost
User Discomfort
Feasible Region for Electricity Cost and User Discomfort
Findings
The Performance Parameters Trade-Off
Conclusions and Future Work

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