AILGSep 16, 2025

Mob-based cattle weight gain forecasting using ML models

arXiv:2509.12615v11 citationsh-index: 8Smart Agricultural Technology
Originality Synthesis-oriented
AI Analysis

This work addresses weight gain prediction for livestock farmers to improve feeding and breeding decisions, but it is incremental as it applies existing methods to a specific agricultural context.

The paper tackled forecasting mob-based cattle weight gain using machine learning models, finding that a Random Forest model with weather and age factors achieved high accuracy with an R^2 of 0.973, RMSE of 0.040, and MAE of 0.033, outperforming SVR and LSTM models.

Forecasting mob based cattle weight gain (MB CWG) may benefit large livestock farms, allowing farmers to refine their feeding strategies, make educated breeding choices, and reduce risks linked to climate variability and market fluctuations. In this paper, a novel technique termed MB CWG is proposed to forecast the one month advanced weight gain of herd based cattle using historical data collected from the Charles Sturt University Farm. This research employs a Random Forest (RF) model, comparing its performance against Support Vector Regression (SVR) and Long Short Term Memory (LSTM) models for monthly weight gain prediction. Four datasets were used to evaluate the performance of models, using 756 sample data from 108 herd-based cattle, along with weather data (rainfall and temperature) influencing CWG. The RF model performs better than the SVR and LSTM models across all datasets, achieving an R^2 of 0.973, RMSE of 0.040, and MAE of 0.033 when both weather and age factors were included. The results indicate that including both weather and age factors significantly improves the accuracy of weight gain predictions, with the RF model outperforming the SVR and LSTM models in all scenarios. These findings demonstrate the potential of RF as a robust tool for forecasting cattle weight gain in variable conditions, highlighting the influence of age and climatic factors on herd based weight trends. This study has also developed an innovative automated pre processing tool to generate a benchmark dataset for MB CWG predictive models. The tool is publicly available on GitHub and can assist in preparing datasets for current and future analytical research..

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