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Early warning in egg production curves from commercial hens: A SVM approach

机译:来自商业母鸡的鸡蛋生产曲线的预警:一种SVM方法

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摘要

[Abstract] Artificial Intelligence allows the improvement of our daily life, for instance, speech and handwritten text recognition, real time translation and weather forecasting are common used applications. In the livestock sector, machine learning algorithms have the potential for early detection and warning of problems, which represents a significant milestone in the poultry industry. Production problems generate economic loss that could be avoided by acting in a timely manner.In the current study, training and testing of support vector machines are addressed, for an early detection of problems in the production curve of commercial eggs, using farm’s egg production data of 478,919 laying hens grouped in 24 flocks.Experiments using support vector machines with a 5 k-fold cross-validation were performed at different previous time intervals, to alert with up to 5 days of forecasting interval, whether a flock will experience a problem in production curve. Performance metrics such as accuracy, specificity, sensitivity, and positive predictive value were evaluated, reaching 0-day values of 0.9874, 0.9876, 0.9783 and 0.6518 respectively on unseen data (test-set).The optimal forecasting interval was from zero to three days, performance metrics decreases as the forecasting interval is increased. It should be emphasized that this technique was able to issue an alert a day in advance, achieving an accuracy of 0.9854, a specificity of 0.9865, a sensitivity of 0.9333 and a positive predictive value of 0.6135. This novel application embedded in a computer system of poultry management is able to provide significant improvements in early detection and warning of problems related to the production curve.
机译:[摘要]人工智能允许改善我们的日常生活,例如语音和手写的文本识别,实时翻译和天气预报是常用的应用程序。在畜牧业中,机器学习算法具有早期检测和问题的可能性,这代表了家禽业的重要里程碑。生产问题产生经济损失,可以及时行动。在目前的研究,使用农场鸡蛋生产数据的早期检测,解决了支持向量机的研究,培训和测试,用于早期检测商业蛋生产曲线中的问题478,919次铺设母鸡在24群中分组。使用支撑载体机的实验以不同的前一次间隔进行了5 k折叠交叉验证,以提醒最多5天的预测间隔,无论是植绒将遇到问题生产曲线。评估性能度量,例如准确性,特异性,灵敏度和阳性预测值,达到0.9874,0.9876,0.9783和0.6518的0日值(测试集)。最佳预测间隔为零至三天,随着预测间隔的增加,性能度量降低。应该强调的是,该技术能够提前每天发出警报,实现0.9854的精度,特异性为0.9865,灵敏度为0.9333,阳性预测值为0.6135。嵌入在家禽管理系统中的这种新颖应用能够在与生产曲线相关的问题的早期检测和警告中提供显着改善。

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