NY Energy Data

Citation Author(s):
Saquib
Ahmed
Saquib Ahmed, Assistant Professor, Engineering Technology, SUNY Buffalo State University
Submitted by:
Saquib Ahmed
Last updated:
Fri, 03/14/2025 - 10:03
DOI:
10.21227/d8jc-pw65
Data Format:
License:
0
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Abstract 

Clean energy technologies, encompassing renewable resources like solar, wind, and hydropower, are essential in the global effort to reduce greenhouse gas emissions and combat climate change. As the globe prepares to transition away from fossil fuels, understanding the factors and parameters influencing the penetration of clean energy into existing energy markets has become a critical step. Controversies surrounding the environmental impacts of renewable technologies, variability in market structures, and economic pressures on clean energy companies can complicate this transition. Thus, resources must be focused in the right areas to ensure the growing demand for sustainable energy solutions is being met adequately. Strategic investments in high-potential parameters, alongside targeted policy interventions and technological advancements, can maximize the impact of clean energy initiatives while ensuring long-term sustainability and economic viability. This study leverages machine learning models to analyze and focus on geographic as well as policy-driven parameters that have influenced clean energy adoption over the past few years, focusing on various regions in New York State. Key parameters analyzed include solar and wind potential, average energy prices, subsidy amounts, grid capacity, public awareness, renewable and fossil energy market shares, and policy support indices. Despite challenges such as market variability and infrastructure limitations, this research offers a data-driven blueprint to bridge demand-supply gaps and guide policymaking, making sure energy investments are focused in the right areas, fostering a sustainable energy future.

Instructions: 

All instructions, and in fact, all the data, code, etc. are all here in this Github repository:

https://github.com/Kamalnikhil/Renewable-Energy/tree/main

Documentation

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File README.md743 bytes