基于机器学习的猪死后健康检验决策支持系统

Ksh. Nilakanta Singh, L. S. Singh, K. Singh
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引用次数: 1

摘要

提出了一种生猪宰后检验决策支持系统,以帮助生猪屠宰场生产优质猪肉。通过计算机应用可以获得有关猪健康的有价值的信息。本文提出了一种利用不同的机器学习技术进行猪死后检验决策的高尚方法。为了防止食用不健康的猪肉,必须根据猪的死后发现做出正确的猪肉消费决策。该系统从兽医专家那里收集有关猪死后决策的综合信息。在该系统中训练了不同的机器学习算法模型,以根据不同的性能指标进行比较研究。研究发现,基于支持向量机(SVM)的猪死后健康预测模型是猪死后健康决策的最佳模型。通过使用开发的预测机器学习模型,它能够以很高的准确率对死猪进行正常、部分谴责或完全谴责的决定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Decision Support System for Post Mortem Inspection of Pig Health
This paper presents a decision support system for post mortem inspection of slaughtered pigs to help pig abattoirs in producing quality pork. Valuable information on pig health can be achieved by means of computer application. A noble method for decision making on post mortem inspection of pigs using different machine learning techniques is presented here. It is important to make an accurate decision for pork consumption from the post mortem finding of the pig to prevent consumption of unhealthy meat. The proposed system collects the comprehensive information regarding the post mortem decisions related to pig from the veterinary experts. Different models of Machine Learning Algorithms are trained in this system to perform a comparative study in terms of different performance measures. It is found that the predictive model with Support Vector Machine(SVM) is the best performing model for making a decision on the post mortem health of a pig for the pig datasets. By using the developed predictive machine learning model, it is able to take a decision on normal, partial condemnation or total condemnation of a post mortem pig with high accuracy.
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