DocumentCode :
3671565
Title :
Incomplete data in smart grid: Treatment of missing values in electric vehicle charging data
Author :
Mostafa Majidpour;Peter Chu;Rajit Gadh;Hemanshu R. Pota
Author_Institution :
Smart Grid Energy Research Center, UCLA, Los Angeles, California USA
fYear :
2014
Firstpage :
1041
Lastpage :
1042
Abstract :
In this paper, five imputation methods namely Constant (zero), Mean, Median, Maximum Likelihood, and Multiple Imputation methods have been applied to compensate for missing values in Electric Vehicle (EV) charging data. The outcome of each of these methods have been used as the input to a prediction algorithm to forecast the EV load in the next 24 hours at each individual outlet. The data is real world data at the outlet level from the UCLA campus parking lots. Given the sparsity of the data, both Median and Constant (=zero) imputations improved the prediction results. Since in most missing value cases in our database, all values of that instance are missing, the multivariate imputation methods did not improve the results significantly compared to univariate approaches.
Keywords :
"Time series analysis","Electric vehicles","Prediction algorithms","Algorithm design and analysis","Charging stations","Smart grids","Multiplexing"
Publisher :
ieee
Conference_Titel :
Connected Vehicles and Expo (ICCVE), 2014 International Conference on
Type :
conf
DOI :
10.1109/ICCVE.2014.7297505
Filename :
7297505
Link To Document :
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