Edge Computing for Cattle Behavior Analysis

Olivier Debauche, Saïd Mahmoudi, S. Mahmoudi, P. Manneback, J. Bindelle, F. Lebeau
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引用次数: 16

Abstract

Smartphones, particularly iPhone, can be relevant instruments for researchers because they are widely used around the world in multiple domains of applications such as animal behavior. iPhone are readily available on the market, contain many sensors and require no hardware development. They are equipped with high performance inertial measurement units (IMU) and absolute positioning systems analyzing user’s movements, but they can easily be diverted to analyze likewise the behaviors of domestic animals such as cattle. Using smartphones to study animal behavior requires the improvement of the autonomy to allow the acquisition of many variables at a high frequency over long periods of time on a large number of individuals for their further processing through various models and decision-making tools. Indeed, storing, treating data at the iPhone level with an optimal consumption of energy to maximize battery life was achieved by using edge computing on the iPhone. This processing reduced the size of the raw data by 42% on average by eliminating redundancies. The decrease in sampling frequency, the selection of the most important variables and postponing calculations to the cloud allowed also an increase in battery life by reducing of amount of data to transmit. In all these use cases, the lambda architectures were used to ingest streaming time series data from the Internet of Things. Cattle, farm animals’ behavior consumes relevant data from Inertial Measurement Unit (IMU) transmitted or locally stored on the device. Data are discharged offline and then ingested by batch processing of the Lambda Architecture.
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牛行为分析的边缘计算
智能手机,尤其是iPhone,可以成为研究人员的相关工具,因为它们在世界各地广泛应用于动物行为等多个应用领域。iPhone在市场上很容易买到,包含许多传感器,不需要硬件开发。它们配备了高性能的惯性测量单元(IMU)和绝对定位系统来分析用户的动作,但它们也很容易被转移到分析家畜(如牛)的行为上。使用智能手机研究动物行为需要提高自主性,以便在长时间内以高频率获取大量个体的许多变量,并通过各种模型和决策工具进行进一步处理。事实上,通过在iPhone上使用边缘计算,可以在iPhone级别以最佳的能量消耗来存储和处理数据,从而最大限度地延长电池寿命。通过消除冗余,这种处理将原始数据的大小平均减少了42%。采样频率的降低、最重要变量的选择以及将计算推迟到云端,也可以通过减少传输的数据量来延长电池寿命。在所有这些用例中,lambda架构用于从物联网中摄取流时间序列数据。牛和农场动物的行为消耗来自惯性测量单元(IMU)传输或本地存储在设备上的相关数据。数据离线释放,然后由Lambda架构的批处理接收。
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