Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture
Advanced technologies such as indoor hydroponics systems and vertical farms have emerged as potential solutions to address food security challenges. These systems create optimal growth environments, leveraging on artificial lighting, effectively maximizing crop yield while minimizing the need for ex...
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sg-ntu-dr.10356-1762962024-05-18T16:53:29Z Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture Sng, Ryan Wei Quan Ng Yin Kwee School of Mechanical and Aerospace Engineering MYKNG@ntu.edu.sg Agricultural Sciences Engineering Advanced technologies such as indoor hydroponics systems and vertical farms have emerged as potential solutions to address food security challenges. These systems create optimal growth environments, leveraging on artificial lighting, effectively maximizing crop yield while minimizing the need for extensive land space and natural lighting. However, these benefits come at the expense of increased energy consumption. This project aims to develop an advanced rooftop agriculture photovoltaic (AgriPV) hydroponics system that harnesses the energy generated by photovoltaic (PV) technology to drive a PV cooling system, provide horticultural lighting and integrate machine learning algorithms for image processing. The resulting system is an energy-efficient solution tailored for urban rooftop environments, significantly enhancing plant growth rates. The integration of deep learning algorithms will facilitate the continuous monitoring of plant growth profiles, enabling accurate predictions of growth trajectories, which will be used to efficiently activate supplementary lighting. Bachelor's degree 2024-05-15T02:05:19Z 2024-05-15T02:05:19Z 2024 Final Year Project (FYP) Sng, R. W. Q. (2024). Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/176296 https://hdl.handle.net/10356/176296 en application/pdf Nanyang Technological University |
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Agricultural Sciences Engineering Sng, Ryan Wei Quan Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
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Advanced technologies such as indoor hydroponics systems and vertical farms have emerged as potential solutions to address food security challenges. These systems create optimal growth environments, leveraging on artificial lighting, effectively maximizing crop yield while minimizing the need for extensive land space and natural lighting. However, these benefits come at the expense of increased energy consumption.
This project aims to develop an advanced rooftop agriculture photovoltaic (AgriPV) hydroponics system that harnesses the energy generated by photovoltaic (PV) technology to drive a PV cooling system, provide horticultural lighting and integrate machine learning algorithms for image processing. The resulting system is an energy-efficient solution tailored for urban rooftop environments, significantly enhancing plant growth rates. The integration of deep learning algorithms will facilitate the continuous monitoring of plant growth profiles, enabling accurate predictions of growth trajectories, which will be used to efficiently activate supplementary lighting. |
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Ng Yin Kwee |
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Ng Yin Kwee Sng, Ryan Wei Quan |
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Final Year Project |
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Sng, Ryan Wei Quan |
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Sng, Ryan Wei Quan |
title |
Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
title_short |
Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
title_full |
Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
title_fullStr |
Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
title_full_unstemmed |
Agri-photovoltaic and agriculture machine vision AI: AI-MV for yield prediction, growth forecasting in precision agriculture |
title_sort |
agri-photovoltaic and agriculture machine vision ai: ai-mv for yield prediction, growth forecasting in precision agriculture |
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Nanyang Technological University |
publishDate |
2024 |
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https://hdl.handle.net/10356/176296 |
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1806059843195240448 |