Analysis of modern sensors and the feasibility of automated monitoring of feed consumption by pigs on farms
DOI:
https://doi.org/10.31734/agroengineering2023.27.043Keywords:
monitoring, automated processes, feed consumption, sensorsAbstract
An analysis was conducted on the process of automated monitoring of feed consumption by pigs on different farms to establish the peculiarities of the feed consumption process. Effective feeding management and optimal animal growth are based on these peculiarities. The feasibility of using modern sensors for automated monitoring of feed consumption by pigs was substantiated. The authors suggest using different types of sensors, including weight, movement, volume, and individual feed consumption sensors. The study established that image analysis methodology is preferred when using motion sensors to monitor feed consumption. Radio frequency identification (RFID) technology is recommended for monitoring individual feed consumption by pigs. RFID technology uses radio waves to read and capture information stored on a tag attached to the object. Each type of sensor has its advantages and disadvantages in terms of accuracy, reliability, cost, and ease of installation. Despite the shortcomings of existing sensors for automated monitoring of pig feed intake, they have significant advantages over manual feeding monitoring, including real-time data collection, increased accuracy, and reduced labor costs. The study defines the tasks that should be solved during the automated monitoring of fodder. Solving the main tasks can increase the accuracy of data collection and, accordingly, the efficiency of animal feeding. The study concludes that the use of modern sensors for automated monitoring of feed consumption has great potential for increasing the efficiency and profitability of pig farming. The choice of sensors for automated feed consumption monitoring systems significantly affects the efficiency and reliability of the systems and is a direction for further research.
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