论文标题
对无线物联网链接的推论,具有重要的过滤更新
Inference over Wireless IoT Links with Importance-Filtered Updates
论文作者
论文摘要
我们考虑一个由传输到公共访问点(AP)的传输的通信单元格组成。假定细胞中的节点定期生成数据样本,这些样本将传输到AP。 AP托管机器学习模型,例如神经网络,该模型对收到的数据样本进行了培训以进行准确的推断。我们解决以下权衡:物联网节点传输的频率越高,AP所作的推论的准确性越高,但物联网节点的能量消耗越高。我们提出了一个由IoT节点采用的数据过滤方案,该方案我们称为分布式重要性过滤,以便在IoT节点上已经过滤冗余数据示例。物联网节点没有大型设备机学习模型,并且数据过滤方案是根据位于AP上的模型的定期说明中运行的。使用基准机视觉数据集上的神经网络以及两种实际情况进行了评估该方案:在水分配网络中泄漏检测和城市地区的空气冲洗检测。结果表明,所提出的方案在网络寿命方面提供了重大好处,因为它可以保留设备的资源,同时保持高推理准确性。我们的方法降低了训练模型的计算复杂性,并消除了对数据进行预处理的需求,这使其非常适用于实际的IoT方案。
We consider a communication cell comprised of Internet-of-Things (IoT) nodes transmitting to a common Access Point (AP). The nodes in the cell are assumed to generate data samples periodically, which are to be transmitted to the AP. The AP hosts a machine learning model, such as a neural network, which is trained on the received data samples to make accurate inferences. We address the following tradeoff: The more often the IoT nodes transmit, the higher the accuracy of the inference made by the AP, but also the higher the energy expenditure at the IoT nodes. We propose a data filtering scheme employed by the IoT nodes, which we refer to as distributed importance filtering in order to filter out redundant data samples already at the IoT nodes. The IoT nodes do not have large on-device machine learning models and the data filtering scheme operates under periodic instructions from the model placed at the AP. The proposed scheme is evaluated using neural networks on a benchmark machine vision dataset, as well as in two practical scenarios: leakage detection in water distribution networks and air-pollution detection in urban areas. The results show that the proposed scheme offers significant benefits in terms of network longevity as it preserves the devices' resources, whilst maintaining high inference accuracy. Our approach reduces the the computational complexity for training the model and obviates the need for data pre-processing, which makes it highly applicable in practical IoT scenarios.