| Literature DB >> 33804235 |
Anders Herlin1, Emma Brunberg2, Jan Hultgren3, Niclas Högberg4, Anna Rydberg5, Anna Skarin6.
Abstract
The opportunities for natural animal behaviours in pastures imply animal welfare benefits. Nevertheless, monitoring the animals can be challenging. The use of sensors, cameras, positioning equipment and unmanned aerial vehicles in large pastures has the potential to improve animal welfare surveillance. Directly or indirectly, sensors measure environmental factors together with the behaviour and physiological state of the animal, and deviations can trigger alarms for, e.g., disease, heat stress and imminent calving. Electronic positioning includes Radio Frequency Identification (RFID) for the recording of animals at fixed points. Positioning units (GPS) mounted on collars can determine animal movements over large areas, determine their habitat and, somewhat, health and welfare. In combination with other sensors, such units can give information that helps to evaluate the welfare of free-ranging animals. Drones equipped with cameras can also locate and count the animals, as well as herd them. Digitally defined virtual fences can keep animals within a predefined area without the use of physical barriers, relying on acoustic signals and weak electric shocks. Due to individual variations in learning ability, some individuals may be exposed to numerous electric shocks, which might compromise their welfare. More research and development are required, especially regarding the use of drones and virtual fences.Entities:
Keywords: animal welfare; cattle; monitoring; precision livestock farming; sensor; sheep; virtual fence
Year: 2021 PMID: 33804235 PMCID: PMC8000582 DOI: 10.3390/ani11030829
Source DB: PubMed Journal: Animals (Basel) ISSN: 2076-2615 Impact factor: 2.752
Figure 1Model of Precision Livestock Farming showing the principal flow of data, the process control where real-time results are compared with a target value, followed by a control function that determines if the information from the sensor matches the target value [6].
Examples of the sensors used in dairy farming, what they measure and what the alarm signal can inform the stockperson [14].
| Type of Sensor | Measurement | Information |
|---|---|---|
| Activity | Activity, rumination, lying time, step count | Oestrus, calving, lameness, general health |
| pH sensor | Rumen pH | Rumen acidosis |
| Camera | Activity, feed intake, body shape | Ketosis, body condition, lameness, mastitis |
| Thermometer, thermography | Body temperature thermal body surface radiation | Water intake, calving, infection, lameness, general health |
| Microphone | Rumination time | Rumen function, general health, oestrus, calving |
Commercially available and scientifically validated animal-based sensors for monitoring ruminant behaviours in pastures. 1 ρ = Spearman’s correlation coefficient, r = Pearson’s correlation coefficient, CCC = concordance correlation coefficient, Se = sensitivity, Sp = specificity, PPV = positive predictive value and r2 = coefficient of determination.
| Product | Manufacturer | Type & Features | Technology | Recorded Behaviour | Performance 1 | References |
|---|---|---|---|---|---|---|
| RumiWatch System | Itin + Hoch (Liestal, Switzerland) | Nose: Eating time, Rumination | Accelerometer | Eating time | [ | |
| IceTag | IceRobotics (Edinburgh, UK) | Leg: Activity | Accelerometer | Lying time | Se 0.99 | [ |
| CowManager SensOor | Agis Automatisering (Harmelen, The Netherlands) | Ear: Activity, Eating time, Rumination | Accelerometer | Activity | CCC 0.19–0.52; | [ |
| Heatime HR LD System | SCR Dairy (Netanya, Israel) | Neck: Activity, Eating time, Rumination | Accelerometer | Activity | CCC 0.95; | [ |