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http://dx.doi.org/10.21219/jitam.2022.29.5.027

Fuel Consumption Prediction and Life Cycle History Management System Using Historical Data of Agricultural Machinery  

Jung Seung Lee (School of Business, Hoseo University)
Soo Kyung Kim (School of International Business Administration, Dankook University)
Publication Information
Journal of Information Technology Applications and Management / v.29, no.5, 2022 , pp. 27-37 More about this Journal
Abstract
This study intends to link agricultural machine history data with related organizations or collect them through IoT sensors, receive input from agricultural machine users and managers, and analyze them through AI algorithms. Through this, the goal is to track and manage the history data throughout all stages of production, purchase, operation, and disposal of agricultural machinery. First, LSTM (Long Short-Term Memory) is used to estimate oil consumption and recommend maintenance from historical data of agricultural machines such as tractors and combines, and C-LSTM (Convolution Long Short-Term Memory) is used to diagnose and determine failures. Memory) to build a deep learning algorithm. Second, in order to collect historical data of agricultural machinery, IoT sensors including GPS module, gyro sensor, acceleration sensor, and temperature and humidity sensor are attached to agricultural machinery to automatically collect data. Third, event-type data such as agricultural machine production, purchase, and disposal are automatically collected from related organizations to design an interface that can integrate the entire life cycle history data and collect data through this.
Keywords
Agricultural Machinery; Long Short-Term Memory(LSTM); Fuel Consumption Prediction; History Maintenance System; Anomaly Detection; Historical Data;
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