阿根廷vs墨西哥竞猜
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    artificial intelligence-enabled recommendation system for electric vehicles

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    embargoed until feb.1, 2025 (6.280mb)
    date
    2024
    author
    teimoori, zeinab
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    abstract
    the drastic growth in the conventional transportation system raises serious air pollution concerns. eco-friendly vehicles, in contrast, have been introduced as an alternative to alleviate such environmental issues. to support the canadian government’s goal of achieving 100% sales of zero-emission vehicles by 2035, there is an increasing need for advancements in charging infrastructure and the performance of electric vehicles (evs). these improvements aim to address range anxiety which is the primary concern of ev consumers who fear running out of electricity during a journey and being unable to find a charging point. however, so far, the main investment focus has been on the installation of fixed charging stations (fcss) which requires significant budget contributions and proper charging station placements. therefore, to achieve higher ev popularity, this work aims to elevate user satisfaction and alleviate range anxiety by developing an intelligent system to manage ev charging demands, accurately estimating state of charge (soc) levels, and offering user-centric suitable service recommendations. nevertheless, the scarcity of evs historical data for artificial intelligence (ai)-based predictions poses a significant difficulty. to mitigate the aforementioned concern, we present a model based on deep transfer learning (dtl) between domain-variant data sets, to reduce the need for the existence of a vast amount of ev data, including driving characteristics and patterns. [...]
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    https://knowledgecommons.lakeheadu.ca/handle/2453/5358
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    • electronic theses and dissertations from 2009 [1612]

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