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Offloading and Transmission Strategies for IoT Edge Devices and Networks

机译:物联网边缘设备和网络的卸载和传输策略

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摘要

We present a machine and deep learning method to offload trained deep learning model and transmit packets efficiently on resource-constrained internet of things (IoT) edge devices and networks. Recently, the types of IoT devices have become diverse and the volume of data has been increasing, such as images, voice, and time-series sensory signals generated by various devices. However, transmitting large amounts of data to a server or cloud becomes expensive owing to limited bandwidth, and leads to latency for time-sensitive operations. Therefore, we propose a novel offloading and transmission policy considering energy-efficiency, execution time, and the number of generated packets for resource-constrained IoT edge devices that run a deep learning model and a reinforcement learning method to find an optimal contention window size for effective channel access using a contention-based medium access control (MAC) protocol. A Reinforcement learning is used to improve the performance of the applied MAC protocol. Our proposed method determines the offload and transmission strategies that are better to directly send fragmented packets of raw data or to send the extracted feature vector or the final output of deep learning networks, considering the operation performance and power consumption of the resource-constrained microprocessor, as well as the power consumption of the radio transceiver and latency for transmitting the all the generated packets. In the performance evaluation, we measured the performance parameters of ARM Cortex-M4 and Cortex-M7 processors for the network simulation. The evaluation results show that our proposed adaptive channel access and learning-based offload and transmission methods outperform conventional role-based channel access schemes. They transmit packets of raw data and are effective for IoT edge devices and network protocols.
机译:我们提出了一种机器和深度学习方法,以减轻训练有素的深度学习模型的负担,并在资源受限的物联网(IoT)边缘设备和网络上高效地传输数据包。近年来,物联网设备的类型变得多样化,并且数据量不断增加,例如图像,语音和由各种设备生成的时序感官信号。但是,由于带宽有限,将大量数据传输到服务器或云变得昂贵,并导致时间敏感型操作的延迟。因此,我们提出了一种新的卸载和传输策略,其中考虑了能源效率,执行时间以及资源受限的IoT边缘设备的生成数据包的数量,这些设备运行深度学习模型并采用强化学习方法来找到最佳的竞争窗口大小使用基于竞争的媒体访问控制(MAC)协议进行有效的信道访问。强化学习用于改善所应用的MAC协议的性能。考虑到资源受限的微处理器的运行性能和功耗,我们提出的方法确定了更好的卸载和传输策略,以便更好地直接发送原始数据的碎片数据包或发送提取的特征向量或深度学习网络的最终输出,以及无线电收发器的功耗和传输所有生成的数据包的等待时间。在性能评估中,我们测量了用于网络仿真的ARM Cortex-M4和Cortex-M7处理器的性能参数。评估结果表明,我们提出的自适应信道访问和基于学习的卸载和传输方法优于常规的基于角色的信道访问方案。它们传输原始数据包,对于IoT边缘设备和网络协议有效。

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