Abstract

Internet of energy based smart power grids demonstrate high in-feed from renewable energy resources (RESs) and lofty out-feed to energy consumers. Uncertainties evolved by incorporating RESs and time-varying energy consumption present immense challenges to the optimal control of smart power networks. To deal with these challenges, it is important to make the system deterministic by making time-ahead prediction and scheduling of power supply and demand. The present work confers a model of a co-scheduling framework, organizing cost-efficient activation of energy supply entities (ESEs) and load demands in a home area power network (HAPN). It integrates roof-top photovoltaic (PV) panels, diesel energy generator (DE), energy storage devices (ESDs), and smart load demands (SLDs) along with grid-supplied power. The scheduling model is based on mixed-integer linear programming (MILP) framework, incorporates a “min-max” optimization algorithm that reduces the daily energy bills, maintains high comfort level for the energy consumers, and increases the self-sufficiency of the home. The proposed strategy exploits the flexibility in dynamic energy price signals and SLDs of various classes, providing day-ahead cost-optimal scheduling decisions for incorporated energy entities. A linearized component-based model is developed, considering inefficiencies, taking various power phase modes of the SLDs along with the cost of operation, maintenance, and degradation of the equipment. A case study based on numerical analysis determines the particular features of the proposed HAPN model. Simulation results demonstrate the real prospect of our implemented strategy, utilizing a cost-effective optimal blend of distinct energy entities in a smart home.

Highlights

  • According to the ‘US’ state department of energy, the ratio of utilizing energy is 60% to 40%, for the residential and commercial sectors, respectively

  • In this work, we have proposed a model for home area power network (HAPN)

  • We have proposed a home energy management system (HEMS), forcing various energy entities (EEs) of HAPN to coordinate with each other and establishes a cost-optimal scheduling framework of drawing power from energy supply entities (ESEs) and serving the smart load devices (SLDs)

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Summary

INTRODUCTION

DSM and DR are the two main elements of the smart grid encourage the energy consumers to use energy efficiently and economically It has a significant role in developing strategies for flexible operations of energy entities (EEs) keeping the power network stable [7]. This paper is an extension of our previous work [42], in which we have only analysed the generation side for cost optimal operations i.e., scheduling of energy supply entities (ESEs) These ESEs were limited to grid and PV sources only. It concludes the numerical observations as a prediction module output, ESEs utilization, activation of SLDs, ESDs cooperation, power mix, and algorithm computational results.

HAPN STRUCTURE AND OPERATING FEATURES
NANO-GRID MODEL
PV ARRAY MODEL
ESDS MODEL
HOME APPLIANCE MODEL
PROBLEM FORMULATION
16: Conclude day-ahead self-sufficiency
CASE STUDY EXAMPLE
NUMERICAL ANALYSIS
CONCLUSION
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