2014 IEEE PES General Meeting | Conference &Amp; Exposition 2014
DOI: 10.1109/pesgm.2014.6938864
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Fast demand forecast of Electric Vehicle Charging Stations for cell phone application

Abstract: This paper describes the core cellphone application algorithm which has been implemented for the prediction of energy consumption at Electric Vehicle (EV) Charging Stations at UCLA. For this interactive user application, the total time of accessing database, processing the data and making the prediction, needs to be within a few seconds. We analyze four relatively fast Machine Learning based time series prediction algorithms for our prediction engine: Historical Average, kNearest Neighbor, Weighted k-Nearest N… Show more

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Cited by 17 publications
(8 citation statements)
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References 17 publications
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“…Therefore, the Fair Charging Algorithm counts heavily on the accuracy of the prediction of user's stay time. A forecast of users to the PEV charging station in [ 18 ] can be used for more accuracy on user's stay time. If the prediction of the user's stay time is accurate, fairness maximization can be obtained while only switching charging once.…”
Section: Proposed Control Scheme and Results For Level 1 Evsementioning
confidence: 99%
“…Therefore, the Fair Charging Algorithm counts heavily on the accuracy of the prediction of user's stay time. A forecast of users to the PEV charging station in [ 18 ] can be used for more accuracy on user's stay time. If the prediction of the user's stay time is accurate, fairness maximization can be obtained while only switching charging once.…”
Section: Proposed Control Scheme and Results For Level 1 Evsementioning
confidence: 99%
“…It is important to note that the areas under both curves are equal to each other, meaning that they both report the same amount of energy being consumed. If the ultimate goal is predicting the available energy at each outlet as in [36], the predictions based on either one are expected to behave competitively.…”
Section: Comparing Two Datasetsmentioning
confidence: 99%
“…Previous studies focused on developing various forecast models of high accuracy given this randomness. They use various types of data sources, from historical data to mathematical models, weather data, and other societal data [11,12]. Zhu et al run demand forecast and solar generation forecast from history data, and then develop a battery (dis)charging scheduling algorithm [13].…”
Section: Forecasting Energy Activitiesmentioning
confidence: 99%
“…The MP also implements forecast services for optimization. In particular, it adopts three different models for forecasting: A persistence model, an auto regressive moving average (ARMA) model, and a machine learning model for load forecasting, PV forecasting [11], and EV forecasting [12], respectively. The MP uses the CAISO's forecast data to provide market forecast services.…”
Section: Microgrid Controlmentioning
confidence: 99%
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