Mohammad Wazed AliIntelligent Embedded Systems, Asif bin MustafaSchool of CIT, Technical University of Munich, Munich, Germany, Md. Aukerul Moin ShuvoDept. of Computer Science and Engineering, Rajshahi University of Engg. & Technology, Rajshahi, Bangladesh, Bernhard SickIntelligent Embedded Systems
{"title":"Location based Probabilistic Load Forecasting of EV Charging Sites: Deep Transfer Learning with Multi-Quantile Temporal Convolutional Network","authors":"Mohammad Wazed AliIntelligent Embedded Systems, Asif bin MustafaSchool of CIT, Technical University of Munich, Munich, Germany, Md. Aukerul Moin ShuvoDept. of Computer Science and Engineering, Rajshahi University of Engg. & Technology, Rajshahi, Bangladesh, Bernhard SickIntelligent Embedded Systems","doi":"arxiv-2409.11862","DOIUrl":null,"url":null,"abstract":"Electrification of vehicles is a potential way of reducing fossil fuel usage\nand thus lessening environmental pollution. Electric Vehicles (EVs) of various\ntypes for different transport modes (including air, water, and land) are\nevolving. Moreover, different EV user groups (commuters, commercial or domestic\nusers, drivers) may use different charging infrastructures (public, private,\nhome, and workplace) at various times. Therefore, usage patterns and energy\ndemand are very stochastic. Characterizing and forecasting the charging demand\nof these diverse EV usage profiles is essential in preventing power outages.\nPreviously developed data-driven load models are limited to specific use cases\nand locations. None of these models are simultaneously adaptive enough to\ntransfer knowledge of day-ahead forecasting among EV charging sites of diverse\nlocations, trained with limited data, and cost-effective. This article presents\na location-based load forecasting of EV charging sites using a deep\nMulti-Quantile Temporal Convolutional Network (MQ-TCN) to overcome the\nlimitations of earlier models. We conducted our experiments on data from four\ncharging sites, namely Caltech, JPL, Office-1, and NREL, which have diverse EV\nuser types like students, full-time and part-time employees, random visitors,\netc. With a Prediction Interval Coverage Probability (PICP) score of 93.62\\%,\nour proposed deep MQ-TCN model exhibited a remarkable 28.93\\% improvement over\nthe XGBoost model for a day-ahead load forecasting at the JPL charging site. By\ntransferring knowledge with the inductive Transfer Learning (TL) approach, the\nMQ-TCN model achieved a 96.88\\% PICP score for the load forecasting task at the\nNREL site using only two weeks of data.","PeriodicalId":501301,"journal":{"name":"arXiv - CS - Machine Learning","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-09-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv - CS - Machine Learning","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/arxiv-2409.11862","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Electrification of vehicles is a potential way of reducing fossil fuel usage
and thus lessening environmental pollution. Electric Vehicles (EVs) of various
types for different transport modes (including air, water, and land) are
evolving. Moreover, different EV user groups (commuters, commercial or domestic
users, drivers) may use different charging infrastructures (public, private,
home, and workplace) at various times. Therefore, usage patterns and energy
demand are very stochastic. Characterizing and forecasting the charging demand
of these diverse EV usage profiles is essential in preventing power outages.
Previously developed data-driven load models are limited to specific use cases
and locations. None of these models are simultaneously adaptive enough to
transfer knowledge of day-ahead forecasting among EV charging sites of diverse
locations, trained with limited data, and cost-effective. This article presents
a location-based load forecasting of EV charging sites using a deep
Multi-Quantile Temporal Convolutional Network (MQ-TCN) to overcome the
limitations of earlier models. We conducted our experiments on data from four
charging sites, namely Caltech, JPL, Office-1, and NREL, which have diverse EV
user types like students, full-time and part-time employees, random visitors,
etc. With a Prediction Interval Coverage Probability (PICP) score of 93.62\%,
our proposed deep MQ-TCN model exhibited a remarkable 28.93\% improvement over
the XGBoost model for a day-ahead load forecasting at the JPL charging site. By
transferring knowledge with the inductive Transfer Learning (TL) approach, the
MQ-TCN model achieved a 96.88\% PICP score for the load forecasting task at the
NREL site using only two weeks of data.