利用内燃机汽车加油交易统计数据预测美国联邦车队电动汽车充电模式

IF 10.1 1区 工程技术 Q1 ENERGY & FUELS Applied Energy Pub Date : 2024-11-08 DOI:10.1016/j.apenergy.2024.124778
Karen Ficenec, Mark Singer, Cabell Hodge
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引用次数: 0

摘要

作者利用内燃机汽车(ICEV)的加油交易,估算了美国联邦车队电池电动汽车(BEV)中午需要公共充电的频率。加油交易汇总统计数据比行程级别的远程信息处理数据更容易获得,因此这种方法更容易被其他研究人员和考虑更换 BEV 的车队经理使用。例如,读者只需使用相距超过 57 英里直线距离的加油站背靠背加油事件的计数,就能轻松应用线性模型来预测超出续航里程的天数。这种线性回归预测超过 250 英里的分档天数的准确率为 80%,测试集来自与训练数据相同的车队,准确率为 66%,测试集来自显示不同驾驶行为的新车队。作者还提供了超过 200 英里和 300 英里天数的线性方程,作为替代续航里程估计值,以考虑 BEV 续航里程和温度影响的差异。除了读者可以应用的单一特征线性模型外,作者还根据各种加油交易统计数据调整和训练了其他机器学习模型,包括连续交易距离、从车库出发的交易距离、根据燃油经济性和燃油量估算的行驶里程以及交易周期。作者利用 1678 辆轻型联邦车队车辆的子集(除加油统计数据外,还包含每日车辆行驶里程 (VMT)),确定了哪些加油交易统计数据与预测行驶里程超过 250 英里(BEV 额定行驶里程的近似值)的驾驶天数最为相关。为支持美国联邦政府车队向零排放车辆(ZEV)过渡,作者利用这些统计数据和机器学习模型来预测 BEV 中午充电的频率。在对具有 VMT 的子集进行模型训练后,作者使用支持向量回归器 (SVR) 预测了联邦车队中 112,902 辆在类似情况下运行的轻型车辆超出额定范围的天数。然后,他们将预测结果作为 ZEV 规划和充电 (ZPAC) 工具的一部分,为联邦车队确定最佳的 BEV 候选车型。ZPAC 的匿名版本包含在补充材料中。
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Predicting U.S. federal fleet electric vehicle charging patterns using internal combustion engine vehicle fueling transaction statistics
Utilizing fueling transactions from internal combustion engine vehicles (ICEVs), the authors estimated how frequently midday public charging would be required for U.S. federal fleet battery electric vehicles (BEVs). Fueling transaction summary statistics are more widely available than trip-level telematics data, making this methodology more accessible and transferable to other researchers and fleet managers considering BEV replacements. For example, readers can easily apply a linear model using only the count of back-to-back fueling events at gas stations over 57 straight-line miles apart to predict days exceeding range. This linear regression predicted binned days exceeding 250 miles at 80 % accuracy on a hold-out test set from the same fleet as the training data and 66 % accuracy on a new fleet displaying different driving behaviors. The authors additionally provide linear equations for days exceeding 200 and 300 miles as alternative range estimates to account for differences in BEV range and temperature impacts. Beyond the single-feature linear models which readers can apply, the authors tuned and trained other machine learning models on a variety of fueling transaction statistics including consecutive transaction distances, transaction distance from garage, estimated miles traveled from fuel economy and fuel quantity, and transaction periodicity. Utilizing a subset of 1678 light-duty federal fleet vehicles which contained daily vehicle miles traveled (VMT) in addition to fueling statistics, the authors determined which fueling transaction statistics were most relevant in predicting driving days exceeding 250 miles (an approximation of BEV rated driving range). In support of the U.S. federal fleet transition to zero-emission vehicles (ZEVs), the authors used these statistics and machine learning models to predict the frequency of BEV midday charging. After training models on the subset with VMT, the authors predicted days exceeding rated range for 112,902 light-duty vehicles operating in similar circumstances in the federal fleet using a Support Vector Regressor (SVR). They then used the projections as part of the ZEV Planning and Charging (ZPAC) tool to identify optimal candidates for BEVs for the federal fleet. An anonymized version of ZPAC is included in the supplementary materials.
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来源期刊
Applied Energy
Applied Energy 工程技术-工程:化工
CiteScore
21.20
自引率
10.70%
发文量
1830
审稿时长
41 days
期刊介绍: Applied Energy serves as a platform for sharing innovations, research, development, and demonstrations in energy conversion, conservation, and sustainable energy systems. The journal covers topics such as optimal energy resource use, environmental pollutant mitigation, and energy process analysis. It welcomes original papers, review articles, technical notes, and letters to the editor. Authors are encouraged to submit manuscripts that bridge the gap between research, development, and implementation. The journal addresses a wide spectrum of topics, including fossil and renewable energy technologies, energy economics, and environmental impacts. Applied Energy also explores modeling and forecasting, conservation strategies, and the social and economic implications of energy policies, including climate change mitigation. It is complemented by the open-access journal Advances in Applied Energy.
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