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Brilliant Corp Yield Prediction Utilizing Internet of Things

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Data Engineering and Communication Technology

Part of the book series: Advances in Intelligent Systems and Computing ((AISC,volume 1079))

Abstract

A decent yield from horticulture relies upon various parameters or integral elements. Water assumes an essential part for the best possible yield of product since water prerequisite of harvest shifts as it develops, i.e., water prerequisite changes with developing periods of a harvest. Different parameters can be considered like supply of synthetic substances and the amount in which it is utilized, as a rule because of absence of learning ranchers utilize synthetic substances in either gigantic or low sum and once in a while utilize it in a period when it is minimum required, and this absence of information prompts colossal misfortune in the yearly yield of a harvest. This part proposes a shrewd method to deal with and handle this issue, by the utilization of IOT. In this framework, different sensors are sent to the rural field and the motivation behind these sensors is to consistently screen the readings of different parameters for which they are utilized. These readings are then sent to a microcontroller which thusly advances the information to cloud, where it broke down and the move is made in view of information. At the cloud, the readings are contrasted the use of supplemental with the limit readings of every sensor information that is chosen by the agriculturist in the wake of counseling with a specialist, if some anomaly is distinguished, a message is sent to the rancher specifying about the issue and furthermore the actuators associated with the microcontroller gets initiated, the area where the supplements are required is passed on to the actuators utilizing the GPS module associated with the microcontroller. This in this manner expands the odds of having a decent yearly yield of yield. In this manner, a framework naturally recognizes and makes a move as indicated by the regularly changing parameters to at last help in expanding the yield cleverly to handle the issue in the field.

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Correspondence to Somula Ramasubbareddy .

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Vijaya Saraswathi, R., Nalluri, S., Ramasubbareddy, S., Govinda, K., Swetha, E. (2020). Brilliant Corp Yield Prediction Utilizing Internet of Things. In: Raju, K.S., Senkerik, R., Lanka, S.P., Rajagopal, V. (eds) Data Engineering and Communication Technology. Advances in Intelligent Systems and Computing, vol 1079. Springer, Singapore. https://doi.org/10.1007/978-981-15-1097-7_75

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