详细信息
Modeling of stored grain aeration based on BP neural network ( EI收录)
文献类型:会议论文
英文题名:Modeling of stored grain aeration based on BP neural network
作者:Zhou, Peiran[1]; Liu, Jingyun[1]
第一作者:Zhou, Peiran
通讯作者:Liu, J.[1]
机构:[1] College of Urban Rail Transit and Logistics, Beijing Union University, China
第一机构:北京联合大学城市轨道交通与物流学院
会议论文集:Proceedings of 2022 2nd International Conference on Control and Intelligent Robotics, ICCIR 2022
会议日期:June 24, 2022 - June 26, 2022
会议地点:Virtual, Online, China
语种:英文
外文关键词:Air - Atmospheric temperature - Digital storage - Moisture - Neural networks - Textures
摘要:Storage is the key part of grain logistics where aeration is very essential to keep the grain safe. Exploring the intelligent method in modeling of stored grain aeration is helpful to effectively predict the aeration process and solve the problem of on-line calculation. The BP neural network was used for modeling in this paper. Firstly, the mechanical model used to collect data for modeling was presented and the topology of the neural network was determined. The initial grain moisture, initial grain temperature, air inlet air velocity, inlet air temperature, inlet air relative humidity and aeration time were chosen as the input variables, and the temperature and moisture of grain, the intergranular air temperature and humidity were the output variables. Then the BP neural network was trained and tested using the collected data. The simulation results showed that the BP neural network model could accurately predict the temperature and moisture content of grain during aeration, and provided an intelligent solution for stored grain aeration modeling. ? 2022 ACM.
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