Effect of introducing weather parameters on the accuracy of milk production forecast models
The objective of this study was to analyze the effect of adding meteorological data to the training process of two milk production forecast models. The two models chosen were the nonlinear auto-regressive model with exogenous input (NARX) and the multiple linear regression (MLR) model. The accuracy...
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2020-03-01
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Series: | Information Processing in Agriculture |
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doaj-d92c0c6a12d940629e43858c633a38dd2021-04-02T14:18:46ZengKeAi Communications Co., Ltd.Information Processing in Agriculture2214-31732020-03-0171120138Effect of introducing weather parameters on the accuracy of milk production forecast modelsFan Zhang0John Upton1Laurence Shalloo2Philip Shine3Michael D. Murphy4Department of Process, Energy and Transport Engineering, Cork Institute of Technology, Co. Cork, IrelandAnimal and Grassland Research Innovation Centre, Teagasc Moorepark, Co. Cork, IrelandAnimal and Grassland Research Innovation Centre, Teagasc Moorepark, Co. Cork, IrelandAnimal and Grassland Research Innovation Centre, Teagasc Moorepark, Co. Cork, IrelandDepartment of Process, Energy and Transport Engineering, Cork Institute of Technology, Co. Cork, Ireland; Corresponding author.The objective of this study was to analyze the effect of adding meteorological data to the training process of two milk production forecast models. The two models chosen were the nonlinear auto-regressive model with exogenous input (NARX) and the multiple linear regression (MLR) model. The accuracy of these models were assessed using seven different combinations of precipitation, sunshine hours and soil temperature as additional model training inputs. Lactation data (daily milk yield and days in milk) from 39 pasture-based Holstein-Friesian Irish dairy cows were selected to compare to the model outputs from a central database. The models were trained using historical milk production data from three lactation cycles and were employed to predict the total daily milk yield of a fourth lactation cycle for each individual cow over short (10-day), medium (30-day) and long-term (305-day) forecast horizons. The NARX model was found to provide a greater prediction accuracy when compared to the MLR model when predicting annual individual cow milk yield (kg), with R2 values greater than 0.7 for 95.5% and 14.7% of total predictions, respectively. The results showed that the introduction of sunshine hours, precipitation and soil temperature data improved the prediction accuracy of individual cow milk prediction for the NARX model in the short, medium and long-term forecast horizons. Sunshine hours was shown to have the largest impact on milk production with an improvement of forecast accuracy observed in 60% and 70% of all predictions (for all 39 test cows from both groups). However, the overall improvement in accuracy was small with a maximum forecast error reduction of 4.3%. Thus, the utilization of meteorological parameters in milk production forecasting did not have a substantial impact on forecast accuracy. Keywords: Milk production forecasting, Dairy modelling, Model optimization, Meteorological datahttp://www.sciencedirect.com/science/article/pii/S221431731830355X |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Fan Zhang John Upton Laurence Shalloo Philip Shine Michael D. Murphy |
spellingShingle |
Fan Zhang John Upton Laurence Shalloo Philip Shine Michael D. Murphy Effect of introducing weather parameters on the accuracy of milk production forecast models Information Processing in Agriculture |
author_facet |
Fan Zhang John Upton Laurence Shalloo Philip Shine Michael D. Murphy |
author_sort |
Fan Zhang |
title |
Effect of introducing weather parameters on the accuracy of milk production forecast models |
title_short |
Effect of introducing weather parameters on the accuracy of milk production forecast models |
title_full |
Effect of introducing weather parameters on the accuracy of milk production forecast models |
title_fullStr |
Effect of introducing weather parameters on the accuracy of milk production forecast models |
title_full_unstemmed |
Effect of introducing weather parameters on the accuracy of milk production forecast models |
title_sort |
effect of introducing weather parameters on the accuracy of milk production forecast models |
publisher |
KeAi Communications Co., Ltd. |
series |
Information Processing in Agriculture |
issn |
2214-3173 |
publishDate |
2020-03-01 |
description |
The objective of this study was to analyze the effect of adding meteorological data to the training process of two milk production forecast models. The two models chosen were the nonlinear auto-regressive model with exogenous input (NARX) and the multiple linear regression (MLR) model. The accuracy of these models were assessed using seven different combinations of precipitation, sunshine hours and soil temperature as additional model training inputs. Lactation data (daily milk yield and days in milk) from 39 pasture-based Holstein-Friesian Irish dairy cows were selected to compare to the model outputs from a central database. The models were trained using historical milk production data from three lactation cycles and were employed to predict the total daily milk yield of a fourth lactation cycle for each individual cow over short (10-day), medium (30-day) and long-term (305-day) forecast horizons. The NARX model was found to provide a greater prediction accuracy when compared to the MLR model when predicting annual individual cow milk yield (kg), with R2 values greater than 0.7 for 95.5% and 14.7% of total predictions, respectively. The results showed that the introduction of sunshine hours, precipitation and soil temperature data improved the prediction accuracy of individual cow milk prediction for the NARX model in the short, medium and long-term forecast horizons. Sunshine hours was shown to have the largest impact on milk production with an improvement of forecast accuracy observed in 60% and 70% of all predictions (for all 39 test cows from both groups). However, the overall improvement in accuracy was small with a maximum forecast error reduction of 4.3%. Thus, the utilization of meteorological parameters in milk production forecasting did not have a substantial impact on forecast accuracy. Keywords: Milk production forecasting, Dairy modelling, Model optimization, Meteorological data |
url |
http://www.sciencedirect.com/science/article/pii/S221431731830355X |
work_keys_str_mv |
AT fanzhang effectofintroducingweatherparametersontheaccuracyofmilkproductionforecastmodels AT johnupton effectofintroducingweatherparametersontheaccuracyofmilkproductionforecastmodels AT laurenceshalloo effectofintroducingweatherparametersontheaccuracyofmilkproductionforecastmodels AT philipshine effectofintroducingweatherparametersontheaccuracyofmilkproductionforecastmodels AT michaeldmurphy effectofintroducingweatherparametersontheaccuracyofmilkproductionforecastmodels |
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