Diesel Retail Price Weekly Average by Region: Beginning 2007
收藏data.ny.gov2024-12-06 更新2025-01-15 收录
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Diesel retail prices weekly average by region dataset provides the weekly average retail diesel prices for New York State and eight New York metropolitan regions in U.S. dollars per gallon. Data is a weekly average from October 2007 through current. Some metropolitan regions begin in 2017.
Average daily retail diesel prices are collected from the American Automobile Association (AAA) Daily Fuel Gauge Report. The AAA Daily Fuel Gauge Report prices are averaged to produce a weekly average retail price for New York State and each metropolitan region.
The New York State metropolitan regions in the dataset are Albany (Albany-Schenectady-Troy), Batavia, Binghamton, Buffalo (Buffalo-Niagara Falls), Dutchess (Dutchess-Putnam), Elmira, Glens Falls, Ithaca, Kingston, Nassau (Nassau-Suffolk), New York City, Rochester, Syracuse, Utica (Utica-Rome), Watertown (Watertown-Fort Drum), and White Plains.
The New York State Energy Research and Development Authority (NYSERDA) offers objective information and analysis, innovative programs, technical expertise, and support to help New Yorkers increase energy efficiency, save money, use renewable energy, and reduce reliance on fossil fuels. To learn more about NYSERDA’s programs, visit https://nyserda.ny.gov or follow us on Twitter, Facebook, YouTube, or Instagram.
该数据集详尽地记录了纽约州及其八个主要都市区域的柴油零售价格周平均数,单位为每加仑美元。数据范围自2007年10月起至当前,部分都市区域的数据始于2017年。平均日柴油零售价格源自美国汽车协会(AAA)的每日燃料计量报告,经平均计算得出纽约州及各都市区域的周平均零售价格。
数据集中收录的纽约州都市区域包括:阿尔巴尼(阿尔巴尼-斯chenectady-特洛伊)、巴吞鲁日、宾汉顿、布法罗(布法罗-尼亚加拉瀑布)、达奇斯(达奇斯-普特南)、埃利马拉、格林斯福尔斯、伊萨卡、金斯顿、纳萨乌(纳萨乌-萨福克)、纽约市、罗切斯特、锡拉丘兹、尤提卡(尤提卡-罗马)、沃特敦(沃特敦-福特德鲁姆)和怀特普莱恩斯。
纽约州能源研究与发展局(NYSERDA)致力于提供客观信息与分析、创新项目、技术专长及支持,以协助纽约居民提升能源效率、节省开支、利用可再生能源并减少对化石燃料的依赖。欲了解更多关于NYSERDA项目的信息,请访问https://nyserda.ny.gov或关注我们的Twitter、Facebook、YouTube或Instagram。
提供机构:
State of New York | Open Data



