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Designing a health assessment system for the quality of napier leaves for animal feeding in Rwanda

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dc.contributor.author OMAR, Ramadhan Said
dc.date.accessioned 2023-07-05T09:00:09Z
dc.date.available 2023-07-05T09:00:09Z
dc.date.issued 2022-12-20
dc.identifier.uri http://hdl.handle.net/123456789/2017
dc.description Master's Dissertation en_US
dc.description.abstract Livestock keeping is considered one of the main sources of both domestic and commercial products which plays a crucial role in the household and national economies in the respective country of Rwanda. The lack of equipment to monitor the quality of the best environment for animals makes animal caregivers continue to use local methods in their livestock-keeping activities. This leads to an increase in outbreaks of diseases in animals and makes its products decrease its quality in the market. With the current improvement in the development of the Internet of Things in the agricultural sector, the Internet of Thing Animal Healthcare (IoTAH) using the spread of computing is considered a fundamental approach through sensing and actuating technologies in assessing animal health. IoT devices in different forms such as wearable devices, sensors deployed units, and Unmanned Aircraft Vehicle (UAV) moving devices have been used to track the stimuli of husbandry activities, thus present a gap in precision to manage health assessment parameters of the quality of Napier leaves for animal food. Internet of things (IoT) nowadays is based on the smart farming system as a solution for monitoring animals. This involves IoT-based technologies to enable farmers to control animals based on such as movement control, weather detection, disease detection, and other parameters of treating those animals such as the safety of clean water. Within the previous research, the use of sensors in animal investments has not sufficiently provided the optimized solution for better food selection for animals to be improved. Therefore, there is still a need to improve the existing methods of examining the quality of leaves that can give animals vii better health. which is an important need, and the system could be able to help collect data to support future studies processing and optimize decision-making. In this research work, we introduce a Quality-Leaf-IoT Assessment System (QLIAS) for examining the quality of leaves for the best animal feed. Firstly, the primary intention of QLIAS is to evaluate the quality of the leaves, based on the basic colour of Red, Green, and Blue (RGB) appearance using a colour sensor to assess the solid colour of the leaf. Secondly, QLIAS will track the weather level in the leaf nest areas to check the possible source of the bad growth of the leaves. In addition, we will develop a Leave-Pack Quality Accessing Kit (LPQAK) a portable kit mounted with sensors, the low-cost best tool, and easy to use in assessing the quality leaves. LPQAK will be the best-fit tool for collecting Napier leaves parameters and storing data in the cloud platform. Furthermore, the tool is configured with an Machine Learning (ML) model and gives results of an assessed leave of Full nutritional, moderate, and unhealthy leaves. en_US
dc.language.iso en en_US
dc.publisher University of Rwanda (College of science and Technology) en_US
dc.subject Napier leaves for animal feeding in Rwanda en_US
dc.subject Napier grass gradients en_US
dc.subject Napier leave en_US
dc.title Designing a health assessment system for the quality of napier leaves for animal feeding in Rwanda en_US
dc.type Dissertation en_US


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