Abstract

The charging loads of electric vehicles (EVs) at residential premises are controlled through a tariff system based on fixed timing. The conventional tariff system presents the herding issue, such as with many connected EVs, all of them are directed to charge during the same off-peak period, which results in overloading the power grid and high charging costs. Besides, the random nature of EV users restricts them from following fixed charging times. Consequently, the real-time pricing scenarios are natural and can support optimizing the charging load and cost for EV users. This paper aims to develop charging cost optimization algorithm (CCOA) for residential charging of EVs. The proposed CCOA coordinates the charging of EVs by heuristically learning the real-time price pattern and the EV’s information, such as the battery size, current state-of-charge, and arrival & departure times. In contrast to the holistic price, the CCOA determines a threshold price value for each arrival and departure sequence of EVs and accordingly coordinates the charging process with optimizing the cost at each scheduling period. The charging cost is captured at the end of each charging activity and the cumulative cost is calculated until the battery’s desired capacity. Various charging scenarios for individual and aggregated EVs with random arrival sequences of EVs against the real-time price pattern are simulated through MATLAB. The simulation results show that the proposed algorithm outperforms with a low charging cost while avoiding the overloading of the grid compared to the conventional uncoordinated, flat-rate, and time-of-use systems.

Highlights

  • IntroductionGlobal warming affects human life in various ways, such as increasing temperature, rising sea levels, and severe floods

  • We developed a charging cost optimization algorithm that learns the characteristics of electric vehicles (EVs) and real-time price patterns and computes a threshold value of price for each arrival and departure sequence of EVs

  • We developed charging cost optimization algorithms CCOA based on real-time prices for the residential charging of EVs

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Summary

Introduction

Global warming affects human life in various ways, such as increasing temperature, rising sea levels, and severe floods. It is mainly caused by the massive CO2 emission from petroleum, natural gas, coal, geothermal, and automobile industries due to internal combustion engines (ICEs) automobiles discharging unhealthy CO2. Cars and trucks emit almost 26%, while other transportation methods account for about 12% of carbon dioxide emissions [1]. In the USA, transportation is the second-largest source (34%) of CO2 emission, where light-duty vehicles (passenger cars and light trucks) and medium- and heavy-duty vehicles are responsible for almost 60% and 23%, respectively [2]. The transportation sector is heavily dependent on the use of fossil fuels

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