Our solution uses an air quality sensor and recommends air emission plants(air pollutant absorbing plants) and pest repellent plants which absorb the air pollutants as shown by the air quality sensor and we recommend plants best suited for the customer's enviornment/workspace using unsupervised ML model(clustering), and take the feedback from the users(labels for the dataset) and then when we have enough plants+labels, we shift to supervised ML models, because it trains on the data provided by the previous users, thus sustaining our planet for the future.
These plants can then be vertically planted mainly in corporate offices and schools. In addition to that, they can also be planted in apartments and houses too. We can incorporate this as a Service-Based Business(SBB). We can contact unemployed gardeners whose source of income has been affected due to COVID for maintaining and shaping these plants, and contact farmers for wholesale plants, thereby increasing their income and increasing our profit margin. We can follow a drip irrigation system in which the drained out wasted water from the plants can be used as drinking water by filtering it out. If there is a lack of sunlight in the room, then we can use fluorescent light and LED's.
We hope to achieve a greener and more fresher enviornment for our future generation by sustaining our planet from the harms of climate change.
As time passes by swiftly, we realsie that the future generation and the current generation have seen a decline in the greenary around us. We are always around 4 walls. So, we thought due to the lack of space and the hazardous air quality index in India, we could devise a solution that solve this and we came up with the idea of recommending companies, instituitions and other people plants based on the air quality index around their living space for vertical gardening.
APPROACH:
TECHNICAL ASPECT:
Tools:
Coding Languages:
Hardware:
Software:
PROBLEMS:
One of the major problem which we faced was finding dataset, which we did later on but had limited rows and columns which wasn't enough to train a ML model so we manually added some data and used it to cluster the data, later on we are thinking of training the data once we get data from the users.
We used the data available on NASA's data portal on Air Emission plants in order to recommend the users the best plant for their surrounding to use it for Vertical Gardening.
PPT - https://drive.google.com/file/d/1oVCyRCrNWj7kvsg1H1olTPdMojhqvSX8/view?usp=sharing
Video - https://www.youtube.com/watch?v=dgqYahDZZFU
https://github.com/Mohammadsalahuddin/indoor_air_quality_monitoring/tree/master/lib
Since the NASA Data Portal wasn't opening in our laptops we used, https://catalog.data.gov/dataset/air-emission-plants