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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Smart sensor/actuator node reprogramming in changing environments using a neural network model
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Smart sensor/actuator node reprogramming in changing environments using a neural network model

机译:使用神经网络模型在变化的环境中对智能传感器/执行器节点进行重新编程

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摘要

The techniques currently developed for updating software in sensor nodes located in changing environments require usually the use of reprogramming procedures, which clearly increments the costs in terms of time and energy consumption. This work presents an alternative to the traditional reprogramming approach based on an on-chip learning scheme in order to adapt the node behaviour to the environment conditions. The proposed learning scheme is based on C-Mantec, a novel constructive neural network algorithm especially suitable for microcontroller implementations as it generates very compact size architectures. The Arduino UNO board was selected to implement this learning algorithm as it is a popular, economic and efficient open source single-board microcontroller. C-Mantec has been successfully implemented in a microcontroller board by adapting it in order to overcome the limitations imposed by the limited resources of memory and computing speed of the hardware device. Also, this work brings an in-depth analysis of the solutions adopted to overcome hardware resource limitations in the learning algorithm implementation (e.g., data type), together with an efficiency assessment of this approach when the algorithm is tested on a set of circuit design benchmark functions. Finally, the utility, efficiency and versatility of the system is tested in three different-nature case studies in which the environmental conditions change its behaviour over time.
机译:当前开发的用于更新位于变化环境中的传感器节点中的软件的技术通常需要使用重新编程过程,这明显增加了时间和能耗方面的成本。这项工作提出了一种基于片上学习方案的传统重编程方法的替代方法,以使节点行为适应环境条件。所提出的学习方案基于C-Mantec,C-Mantec是一种新颖的构造性神经网络算法,因为它生成非常紧凑的大小体系结构,因此特别适合于微控制器实现。选择Arduino UNO板来实现这种学习算法,因为它是一种流行,经济且高效的开源单板微控制器。通过克服它,C-Mantec已成功地在微控制器板上实现,以克服有限的内存资源和硬件设备的计算速度所带来的限制。另外,这项工作对在学习算法实现(例如,数据类型)中克服硬件资源限制所采用的解决方案进行了深入分析,并在一组电路设计上测试了算法时对该方法的效率进行了评估基准功能。最后,在三个不同性质的案例研究中测试了该系统的效用,效率和多功能性,其中环境条件随时间变化。

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