基于纳米复合材料的水培种植系统设计与控制

V. Jothiprakash, M. Sezhian
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引用次数: 0

摘要

水培是一种无土栽培植物的做法,它结合了水培(在水中种植植物)和循环水养殖(养鱼)系统。在水产养殖系统的再循环过程中,水的一些营养物质会流失,但系统中的植物能够通过吸收营养物质来清洁水。日益严重的粮食短缺问题促使人们对城市农业采取更有创意的方法。水培法是水培法的一种,可用于在城市环境中种植植物。然而,为了种植植物,智能水培系统需要密切监控、机械化和管理。实现基于视觉的系统,结合利用机器学习的算法来提高农业产量,是将这一理论付诸实践的一种有希望的方式。为此,我们分析了逻辑回归(LR)、k近邻(KNN)和线性支持向量机(L-SVM)的近似效果。为了做到这一点,我们使用计算机视觉从计算机控制的鱼菜共生系统中生长的芹菜图像中提取特征,并将这些图像用作算法的训练数据。为了教算法,我们拍了这些照片。每种方法的备份系统和交叉验证检查都得到了改进。CNN被证明是最成功的方法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nanocomposites based Aquaponic Cropping System Design and Control for Agriculture Industry
Aquaponics is the practice of growing plants without soil, and it combines hydroponics (growing plants in water) and recirculating aquaculture (raising fish) systems. Some of the water’s nutrients are lost during the recirculation process in an aquaculture system, but the plants in the system are able to clean the water by absorbing the nutrients. The increasing problem of food scarcity has prompted more creative approaches to urban farming. Aquaponics is a type of hydroponics that can be used to grow plants in an urban environment. However, in order to grow plants, a smart aquaponic system requires close monitoring, mechanization, and management. Implementing vision-based systems that incorporate algorithms that make use of machine learning to boost agricultural output is one promising way to put this theory into practice. To do this, we analyzed how well the approximations of Logistic Regression (LR), K-Nearest Neighbor (KNN), and Linear Support Vector Machine (L-SVM) performed. To do this, we used computer vision to extract features from images of celery grown in a computer-controlled aquaponics system and used those images as training data for the algorithms. In order to teach the algorithms, these pictures were taken. The backup systems and cross-validation checks for each method have been improved. CNN was shown to be the most successful method
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