Artificial Intelligence and IoT in Dairy Farm
DOI:
https://doi.org/10.18034/mjmbr.v5i2.516Keywords:
IoT, dairy industry, smart farm, innovative dairying technology, machine learningAbstract
Internet of things (IoT) and data-driven techniques are producing greater prospects for smart dairying. The demand for milk is unceasingly increasing because of the rising population of the globe. The employment of dairy products is more in developed countries as compared to developing countries. To fulfill this increased demand for milk products, better technological techniques for improving milk yield are required. It’s foreseeable that the use of IoT and different AI techniques can lend a hand to a farmer to beat different conventional farming challenges and increase milk production. During this research, the authors give a talk about different challenges that a dairy farmer has to countenance in their way of life. A brief introduction of smart dairying (SDF) is presented with relevancy to the modernization in production and therefore the processes of smart dairy farming. This review concentrates on different facets of smart dairying, and at last, a state-of-the-art framework that can aid the farmers to extend the milk yield by using different up-to-the-minute technologies has been proposed. These high-tech methods can reduce the factors negatively upsetting milk production and increase that positively heartrending production with trifling resources.
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References
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