학술논문

IoT-Based Bacillus Number Prediction in Smart Turmeric Farms Using Small Data Sets
Document Type
Periodical
Source
IEEE Internet of Things Journal IEEE Internet Things J. Internet of Things Journal, IEEE. 10(6):5146-5157 Mar, 2023
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Soil
Microorganisms
Sensors
Predictive models
Laboratories
Internet of Things
Temperature sensors
electrical conductivity (EC)
humidity
machine learning
moisture
pH
sensor
smart agriculture
temperature
Language
ISSN
2327-4662
2372-2541
Abstract
The Bacillus genus is one of the most commercially exploited bacteria in the agro-biotechnology industry, and the Bacillus information is very useful for crop growth. Most existing studies on the analysis of the amount of Bacillus were conducted in laboratories. Performing such a task on open field farming is difficult because only a small data set is available during a long observation period for the soil analysis of Bacillus. For example, turmeric growth takes nine months with one soil sample per month, and we found that increasing the frequency of soil analysis for turmeric growth is not practically useful. Therefore, we can only collect a very small data set for AI training. This article proposes the AgriTalk approach that predicts the amount of Bacillus based on novel IoT and machine learning technologies. AgriTalk uses a small data set (five data items) per farm for training and performs prediction for the subsequent four months. Good results are obtained. Specifically, the inference mean absolute percentage errors (MAPEs) range from 6.73% to 19.76%. In the experiments of five farm fields, we have correctly captured the trends for the number of changes of Bacillus. Such prediction provides useful information for fertilization management. Our prediction is more accurate for farms covered by peanut shells (the average MAPE is 13.24%) than for farms covered by rice husks (the average MAPE is 15.43%).