2022
DOI: 10.28979/jarnas.984312
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Sensory Precipitation Forecast Using Artificial Neural Networks and Decision Trees

Abstract: Meteorology stations sold in the market have various difficulties in terms of their use, also these systems are costly to obtain. With state of the art sensor technologies, the development of mini weather stations has become easier. This study focuses on the development of a model weather station device using temperature, relative humidity, UV, LDR Light, rain and soil moisture sensors to collect major environmental data. The measured data were wirelessly transmitted to the remote station for logging via the G… Show more

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