A Literature Review of Modeling Approaches Applied to Data Collected in Automatic Milking Systems

Animals (Basel). 2023 Jun 8;13(12):1916. doi: 10.3390/ani13121916.

Abstract

Automatic milking systems (AMS) have played a pioneering role in the advancement of Precision Livestock Farming, revolutionizing the dairy farming industry on a global scale. This review specifically targets papers that focus on the use of modeling approaches within the context of AMS. We conducted a thorough review of 60 articles that specifically address the topics of cows' health, production, and behavior/management Machine Learning (ML) emerged as the most widely used method, being present in 63% of the studies, followed by statistical analysis (14%), fuzzy algorithms (9%), deterministic models (7%), and detection algorithms (7%). A significant majority of the reviewed studies (82%) primarily focused on the detection of cows' health, with a specific emphasis on mastitis, while only 11% evaluated milk production. Accurate forecasting of dairy cow milk yield and understanding the deviation between expected and observed milk yields of individual cows can offer significant benefits in dairy cow management. Likewise, the study of cows' behavior and herd management in AMSs is under-explored (7%). Despite the growing utilization of machine learning (ML) techniques in the field of dairy cow management, there remains a lack of a robust methodology for their application. Specifically, we found a substantial disparity in adequately balancing the positive and negative classes within health prediction models.

Keywords: algorithms; automatic milking system; cows’ behavior; dairy cows; machine learning; mastitis detection; milk production; modeling approaches; statistical analyses.

Publication types

  • Review

Grants and funding

This research is supported by Compagnia di San Paolo (ROL 63369 SIME 2020.1713).