Martelli Francesco, Giacomozzi Claudia, Fadda Antonello, Frazzoli Chiara
Department of Cardiovascular, Dysmetabolic and Aging-Associated Diseases, Istituto Superiore di Sanità, Rome, Italy.
Front Public Health. 2018 Jun 15;6:175. doi: 10.3389/fpubh.2018.00175. eCollection 2018.
Food quality control techniques based on process control methods are increasingly adopted in livestock production systems to fulfill increasing market's expectations toward competitiveness and issues linked to One Health pillars (environment, animal, and human health). Control Charts allow monitoring and systematic investigation of sources of variability in dairy production parameters. These parameters, however, may be affected by seasonal variations that render impractical, biased or ineffective the use statistical control charts. A possible approach to this problem is to adapt seasonal adjustment methods used for the analysis of economic and demographic seasonal time series. The aim of the present work is to evaluate a seasonal decomposition technique called X-11 on milk parameters routinely collected also in small farms (fat, protein, and lactose content, solids-not-fat, freezing point, somatic cell count, total bacterial count) and to test the efficacy of different seasonal removal methods to improve the effectiveness of statistical control charting. Data collection was carried out for 3 years on routinely monitored bulk tank milk parameters of a small farm. Seasonality presence was statistically assessed on milk parameters and, for those parameters showing seasonality, control charts for individuals were applied on raw data, on X-11 seasonally adjusted data, and on data smoothed with a symmetric moving average filter. Correlation of seasonally influenced parameters with daily mean temperature was investigated. Presence of seasonality in milk parameters was statistically assessed for fat, protein, and solids-non-fat components. The X-11 seasonally-adjusted control charts showed a reduced number of violations (false alarms) with respect to non-seasonally adjusted control chart (from 5 to 1 violation for fat, from 17 to 1 violation for protein, and from 9 to none violation for solids-non-fat.). This result was achieved despite stricter control chart limits: with respect to raw data charts, the interval of control chart allowed variation (UCL-LCL) was reduced by 43% for fat, by 33.1% for protein, and by 14.3% for solids-not-fat. X-11 deseasonalization of routinely collected milk parameters was found to be an effective method to improve control chart application effectiveness in farms and milk collecting centers.
基于过程控制方法的食品质量控制技术在畜牧生产系统中越来越多地被采用,以满足市场对竞争力日益增长的期望以及与“同一个健康”支柱(环境、动物和人类健康)相关的问题。控制图允许对乳制品生产参数的变异性来源进行监测和系统调查。然而,这些参数可能会受到季节性变化的影响,这使得使用统计控制图变得不切实际、有偏差或无效。解决这个问题的一种可能方法是采用用于分析经济和人口季节性时间序列的季节性调整方法。本研究的目的是评估一种名为X - 11的季节性分解技术,该技术用于分析小型农场常规收集的牛奶参数(脂肪、蛋白质和乳糖含量、非脂乳固体、冰点、体细胞计数、总细菌数),并测试不同季节性去除方法提高统计控制图有效性的效果。在一个小型农场对常规监测的大容量罐牛奶参数进行了3年的数据收集。对牛奶参数进行了季节性存在的统计评估,对于那些显示季节性的参数,对原始数据、X - 11季节性调整后的数据以及用对称移动平均滤波器平滑后的数据应用了个体控制图。研究了受季节性影响的参数与日平均温度的相关性。对脂肪、蛋白质和非脂乳固体成分的牛奶参数进行了季节性存在的统计评估。与未进行季节性调整的控制图相比,X - 11季节性调整后的控制图显示违规(误报)数量减少(脂肪从5次违规减少到1次,蛋白质从17次违规减少到1次,非脂乳固体从9次违规减少到无违规)。尽管控制图界限更严格,但仍取得了这一结果:与原始数据图相比,脂肪的控制图允许变化区间(UCL - LCL)减少了43%,蛋白质减少了33.1%,非脂乳固体减少了14.3%。发现对常规收集的牛奶参数进行X - 11去季节性化是提高农场和牛奶收集中心控制图应用有效性的有效方法。