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Analysis of Smart Sensors Nodes for Decision Making and Classification in Irrigation System

机译:触发系统决策与分类的智能传感器节点分析

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摘要

Artificial Intelligence (AI) has been considered as a booming approach that can be applied to huge amount of sensing environment for realization of prediction, recognition management and controlling tasks. Moreover, it merges with embedded system to offer effectual outcome, however encounters certain drawbacks. Here, a low power sensing system is anticipated with AI, WSN and deep learning based on-boards with special consideration towards agriculture applications with smart sensors. For this purpose, Convolutional Neural Network (CNN) with Fuzzy decision is modelled to attain effectual accuracy and finest Intersection over Union (IoU) parameter in collected sensor data and irrigation data from sensor placed over agriculture land for validating collected dataset. The anticipated solution is capable to carry out irrigation period recognition, feature detection for performing irrigation through processing collected data. For CNN training, collected data for irrigation purpose at diverse stages are validated. The complete system is evaluated in farming land. Experimental outcomes depict that anticipated system depicts extensive vista for smart agriculture application in context to smart sensors necessitating autonomous ad intelligent factors from nodes. The anticipated model includes regression to offer better trade off in contrary to prevailing approaches. It works superiorly with Performance metrics like IoU.
机译:人工智能(AI)被认为是一种蓬勃发展的方法,可以应用于实现预测,识别管理和控制任务的大量传感环境。此外,它与嵌入式系统合并以提供有效的结果,但是遇到某些缺点。这里,基于智能传感器的农业应用,预期低功率传感系统,并基于智能传感器的特殊考虑,预期了基于板的AI,WSN和深度学习。为此目的,具有模糊判定的卷积神经网络(CNN)被建模,以实现收集的传感器数据和来自农业土地上的传感器的收集传感器数据和灌溉数据中的联盟(iou)参数的有效准确性和最优质的交叉点来验证收集的数据集。预期的解决方案能够进行灌溉周期识别,通过处理收集的数据进行灌溉的特征检测。对于CNN培训,验证了在各种阶段进行灌溉用途的收集数据。完整的系统在农业土地上进行评估。实验结果描绘了预期的系统,描绘了在智能传感器中的智能农业应用中的广泛Vista,需要来自节点的自主广告智能因素。预期的模型包括回归,以提供更好的折扣与普遍的方法相反。它与iou等绩效指标优于。

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