Neethirajan Suresh, Kemp Bas
Adaptation Physiology Group, Department of Animal Sciences, Wageningen University & Research, 6700 AH Wageningen, The Netherlands.
Animals (Basel). 2021 Apr 3;11(4):1008. doi: 10.3390/ani11041008.
Artificial intelligence (AI), machine learning (ML) and big data are consistently called upon to analyze and comprehend many facets of modern daily life. AI and ML in particular are widely used in animal husbandry to monitor both the animals and environment around the clock, which leads to a better understanding of animal behavior and distress, disease control and prevention, and effective business decisions for the farmer. One particularly promising area that advances upon AI is digital twin technology, which is currently used to improve efficiencies and reduce costs across multiple industries and sectors. In contrast to a model, a digital twin is a digital replica of a real-world entity that is kept current with a constant influx of data. The application of digital twins within the livestock farming sector is the next frontier and has the potential to be used to improve large-scale precision livestock farming practices, machinery and equipment usage, and the health and well-being of a wide variety of farm animals. The mental and emotional states of animals can be monitored using recognition technology that examines facial features, such as ear postures and eye white regions. Used with modeling, simulation and augmented reality technologies, digital twins can help farmers to build more energy-efficient housing structures, predict heat cycles for breeding, discourage negative behaviors of livestock, and potentially much more. As with all disruptive technological advances, the implementation of digital twin technology will demand a thorough cost and benefit analysis of individual farms. Our goal in this review is to assess the progress toward the use of digital twin technology in livestock farming, with the goal of revolutionizing animal husbandry in the future.
人工智能(AI)、机器学习(ML)和大数据不断被用于分析和理解现代日常生活的诸多方面。尤其是AI和ML在畜牧业中被广泛应用,用于全天候监测动物及其周围环境,这有助于更好地了解动物行为和痛苦、疾病控制与预防,以及为养殖户做出有效的商业决策。在AI基础上发展起来的一个特别有前景的领域是数字孪生技术,该技术目前用于提高多个行业和部门的效率并降低成本。与模型不同,数字孪生是现实世界实体的数字复制品,通过持续的数据输入保持最新状态。数字孪生在畜牧养殖领域的应用是下一个前沿领域,有可能用于改进大规模精准畜牧养殖实践、机械设备使用情况,以及各种农场动物的健康和福祉。动物的心理和情绪状态可以通过识别技术进行监测,该技术可检查面部特征,如耳朵姿势和眼白区域。与建模、模拟和增强现实技术结合使用,数字孪生可以帮助养殖户建造更节能高效的畜舍结构、预测繁殖的发情周期、抑制牲畜的负面行为,以及可能还有更多用途。与所有颠覆性技术进步一样,数字孪生技术的实施需要对各个农场进行全面的成本效益分析。我们撰写这篇综述的目的是评估数字孪生技术在畜牧养殖中的应用进展,以期在未来彻底变革畜牧业。