Abstract
In order to establish a smart farm, many kinds of equipment are built and operated inside and outside of a pig house. Thus, the environment for livestock (limited to pigs in this paper) in the barn is properly maintained for its growth conditions. However, due to poor environments such as closed pig houses, lack of stable power supply, inexperienced livestock management, and power outages, the failure of these environment equipment is high. Thus, there are difficulties in detecting its malfunctions during equipment operation. In this paper, based on deep learning, we provide a mechanism to quickly detect anomalies of multiple equipment (environmental sensors and controllers, etc.) in each pig house at the same time. In particular, environmental factors (temperature, humidity, CO2, ventilation, radiator temperature, external temperature, etc.) to be used for learning were extracted through the analysis of data accumulated for the generation of predictive models of each equipment. In addition, the optimal recurrent neural network (RNN) environment was derived by analyzing the characteristics of the learning RNN. In this way, the accuracy of the prediction model can be improved. In this paper, the real-time input data (only in the case of temperature) was intentionally induced above the threshold, and 93% of the abnormalities were detected to determine whether the equipment was abnormal.
Highlights
The scale of livestock farms has grown significantly and the number of livestock being reared is increasing on a large scale
Each pig house is built with IoT based environmental and control equipment
The proposed system has a part of deep learning
Summary
The scale of livestock farms has grown significantly and the number of livestock being reared is increasing on a large scale. We provide a mechanism to quickly detect abnormal situations of lots of equipment in each pig house at the same time This mechanism includes a series of processes such as data collection in the pig houses, generation and distribution of models to predict malfunctions of various equipment. During the data collection process, livestock farms and equipment installed inside and outside the pig house have a client relationship with the data server. The livestock environment in this paper belongs to a complex system, and prediction values are generated using huge data linked to each other (see Section 5.1.2) For this purpose, RNN, one of the deep learning techniques for time-sequential data analysis, was applied. Based on the distributed model, each farmhouse generates predictive data whenever sensor and control data flows in real time to diagnose equipment malfunction
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