We created an automated Predictive Analytics tool called the Butterfly Effect that integrates different data sets like the real time COVID 19 data, Satellite Images and climate data using advanced computer vision techniques like RNN giving companies a decisive edge when it comes to trading decisions in a range of businesses. By examining the existing relationship between Air Quality (taking NO2 as an indicator during social distancing) and increasing COVID cases (weekly) in the 10 most populated counties in the United States, we can measure the requirements of production and measure the volume of oil stock piles as they grow and shrink in different regions. With the increasing number of confirmed COVID cases in a county, there is a decreased amount of No2 emissions correlating with fewer people driving cars or boarding planes. Using NASA's satellite image data we keep track of world's oil storage to in turn boost oil prices by cutting down production and stabilising the market.
The Challenge :
The coronavirus has emptied out cities and fewer people are driving cars or boarding planes decimating demand for energy around the globe. Fuel burning business like airlines and factories are idled. But many of the world's major oil producers have been pumping more than ever, leading to a crash in oil prices. Price movement in one asset shows some correlation with price movement in other assets, for example, if the price of oil rises, then it will cost more to make plastic, and a plastics company will then pass on some or all of this cost to the consumer, which raises prices and thus creates inflation. Other industries like the Transportation, Supply chain, Logistics and Manufacturing sectors also get affected. COVID-19 has severe negative impacts on human health and the world economy.
What inspired The Butterfly effect?
The Oil bust is reshaping Global Markets, even though consumers like low prices, but in today's environment, where so many people are quarantined, the people cannot benefit from low oil prices, so there's no winner in this current situation. Market turmoil is about more than just the virus. Without clear picture on what is happening on and to the earth, bad business decisions can cause billions of dollars for companies and further destroy our planet.
Our Approach
Our Analytics platform tool integrates various datasets between Jan 2020 and May 2020. For our initial prototype we decided to focus on 3 areas:
We built a single layer 64 neurons LSTM which was implemented to find the correlations between trends and gas prices and NO2 emission in big cities, before and after the peak in the number of cases. We used Keras Tensor flow and Python (sklearn, Keras, Pandas, Numpy, Matplotlib).
The input is the NO2 weekly data and the output is gas prices.
Analysis
Logically, the behaviors captured by the datasets in our solution are:
https://drive.google.com/file/d/1Rfh3FL4yXOQT8fiu7Sl01syVx5ECMNm8/view?usp=sharing