ARCHIVES
Arecanut Yield Disease Forecast using IoT and MachineLearning
¹,²Assistant Professor, Department of Computer Science & Engineering, Srinivas Institute of Technology, Mangaluru, India.
Published Online: March-April 2021
Pages: 06-08
A general slump in the plant items region is obvious from the ongoing deficiency and nonattendance of food supplies. A huge support for this lack is the characteristic improvement of disorders in key harvests. A critical improvement is subsequently expected in this field for avoiding these issues from here on out. This progression is supposed to develop the organization tasks of different positions in agrarian ventures. A genuine suggestion of the meaning of disease assumption and regular components ought to be done to the less careful farmers. To address these challenges, we have proposed a disease assumption system that contemplates temperature (°C), humidity(%), rainfall(cm), wind flow(m/s) and soil clamminess (%) around the region of gather and encouraged a model to predict the occasion of disease. This structure will give information before the occasion of sickness by looking at different associations among environmentalfactors.
Related Articles
2021
Capacity of Perceptibility and Existing Weather Detection Using Scattering Technique of Light
2021
Preparation and Enlargement of Topical Flurbiprofen Emulgel by with Xanthan Gum
2021
Arecanut Yield Disease Forecast using IoT and MachineLearning
2021
Performance Assessment of EMG Pattern Recognition Techniques While Growing the Number of Movement Classes
2021
Investigation of Cognitive Radio Network Using Enhanced Stirred Annealing Algorithm
2021
Investigation on Reversible VM Using Cadence Technology
2021
Classification in High-resolution Aerial Imagery using Identification of Cloud
2021
Prediction of Dyslexia by Using of New Intuitionistic Fuzzy Linguistic Hybrid Aggregation
2021
Manipulative the Impact of Occurrence Using Emotion Recognition
2021
A Study of Industrial Impact of Goods and service tax On Purchaser buying Behavior


