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Climate Change Group Project

Team

  • Irene Depacina
  • Sebastian Villanoy
  • Stephanie Juniper
  • Vinutha Phani

Selected Topic : "Climate change by State in the USA"

Rationale

  • Climate change is an interesting topic with lot of available data.
  • US is one of the largest emitters of CO2 in developed countries.
  • Population density and land mass lends itself to analysis
  • Dataset availability

Discovery Questions

  • Can we quantify the human impact on climate change in the USA?
  • Does human impact affect how states individually experience climate change?
  • Are there climate change trends evident in temperature over time?
  • Are some states exacerbating climate change through consumption patterns?
  • Using the datasets, can we predict temperature using human impacts on climate change versus geographical information alone?
  • Is there a possibility to predict any other feature like CO2, year, state disasters from the datasets?

Key Findings from the analysis

  • A model that solely uses human-related features to predict climate change measured in average annual state temperature is not accurate
  • Location has major influence both temperature and human-related features
  • A model that quantifies the impact of a state's energy consumption pattern on CO2 emissions, the main culprit of rising temperatures
  • Energy consumption from non-renewable sources such as coal, petroleum, and natural gas contribute to increasing CO2 emissions
  • Energy consumption from renewable sources such as biomass, hydropower, solar, and wind either reduce CO2 emissions
  • While humna impact on temperature is difficult to determine concluively with our data, human impact on CO2 emissions can be predicted and impacted through responsible selection of energy sources.

Dashboard

Data Sources:

Database

  • Datasets of .csv file format, hence decided on Postgres DB, using SQL and PgAdmin
  • Total of 10 tables were designed, created and loaded into climate_change PostgreSQL DB.
  • Please see Database --> README for more details.

Machine Learning

  • Unsupervised Machine Learning performed as exploratory machine learning using PCA, Elbow curve & KMeans Algorithm
  • Multiple linear regression using Neural Network and SKLearn
  • Multiple linear regression models using R to identify confounding features and features behaving as proxies for US states
  • Detailed statistical analysis using various data transformation techniques
  • Please see Machine_Learning --> README for more details.


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