通过嵌入式系统上的情境感知循环神经网络估算温室气候

Claudio Tomazzoli;Elia Brentarolli;Davide Quaglia;Sara Migliorini
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摘要

温室种植不再接受气候均一的假设,因为这可能导致不理想的决策。同时,在每个相关区域安装一个传感器不仅成本高昂,而且不适合田间操作。在本文中,我们提出了虚拟传感器的概念来解决这一问题;虚拟传感器的行为是由一个情境感知递归神经网络来模拟的,该网络是通过一小套永久监测站和一小套短期放置在特定兴趣点的临时传感器之间的情境关系来训练的。更确切地说,我们不仅考虑空间位置,还考虑时间特征和与永久传感器之间的距离。本文展示了配置递归神经网络、执行训练以及将生成的模型部署到嵌入式系统中供现场应用执行的完整流程。
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Estimating Greenhouse Climate Through Context-Aware Recurrent Neural Networks Over an Embedded System
The assumption of climate homogeneity is no longer acceptable in greenhouse farming since it can result in less-than-ideal decisions. At the same time, installing a sensor in each area of interest is costly and unsuitable for field operations. In this article, we address this problem by putting forth the idea of virtual sensors; their behavior is modeled by a context-aware recurrent neural network trained through the contextual relationships between a small set of permanent monitoring stations and a set of temporary sensors placed in specific points of interest for a short period. More precisely, we consider not only space location but also temporal features and distance with respect to the permanent sensors. This article shows the complete pipeline to configure the recurrent neural network, perform training, and deploy the resulting model into an embedded system for on-site application execution.
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2024 Index IEEE Transactions on AgriFood Electronics Vol. 2 Table of Contents Front Cover IEEE Circuits and Systems Society Information IEEE Circuits and Systems Society Information
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